Semin Musculoskelet Radiol 2020; 24(04): 413-427
DOI: 10.1055/s-0040-1713608
Review Article

Advanced Quantitative Spine Imaging

 

Abstract

Although advanced quantitative imaging may not be currently used to any degree in the routine reporting of spinal examinations, this situation will change in the not too distant future. Advanced quantitative imaging has already allowed us to understand a great deal more regarding spinal development, marrow physiology, and disease pathogenesis. Radiologists are ideally suited to drive this research forward. To speed up this process and optimize the impact of studies reporting spine quantitative data, we should work toward universal standards on the acquisition of spine data that will allow quantitative studies to be more easily compared, contrasted, and amalgamated.


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The spine is the part of the musculoskeletal system most conducive to, and most likely to benefit from, quantitative imaging. Computed tomography (CT) and, more particularly, magnetic resonance imaging (MRI) allow bone and soft tissues to be evaluated free from the superimposition, magnification, and obliquity errors of radiography. This, and new imaging interrogation techniques, has enabled a profusion of new spine imaging data to be realized. This review looks broadly at the current issues, reported data, and potential benefits of advanced quantitative spine imaging, specifically addressing those areas considered to be of highest clinical relevance.

Uses of Quantitative Spine Imaging

Quantitative imaging data can potentially be used in a variety of ways.[1] On an individual patient basis, quantitative spine imaging data can be used in these arenas:

  • Diagnosis by having a normal or reference population reference interval and comparing suspicious imaging features with these reference intervals, for example to diagnose developmental canal stenosis or cord atrophy.

  • Stratifying disease severity according to predefined reference ranges as in stratifying bone loss by quantitative computed tomography (QCT) or stratifying sarcopenia or the degree of disk degeneration. Providing the patient with easily appreciable objective data as to, for example, their degree of disk degeneration or muscle mass relative to a matched population cohort.

  • Monitoring disease progress or response to therapy as in, for example, new treatments for spinal cord injury.

  • Predicting disease progress in the absence of intervention as in, for example, the likelihood of progressive canal stenosis following input of multiple quantitative data into a predictive model.

  • Predicting outcome following intervention as in patients who have spinal cord decompression.

  • Predicting risk in, for example, the risk of developing spinal cord injury if engaging in high-energy contact sports.

On a larger scale, quantifiable image data can be used in these situations:

  • Define reliable normal and population reference intervals for relevant covariables such as sex, height, and age.

  • Use investigative studies and big data research to define disease patterns, compare different populations, and provide valuable data on disease pathogenesis including early detection. This seems to be the main benefit of quantitative spine imaging.

When defining reference intervals for parameters such as developmental spinal canal stenosis, we should appreciate the difference between a normal sample and a population reference interval.[2] For a disease with progressive deterioration such as disk degeneration or bone density, reference limits are usually obtained in normal young skeletally mature individuals, usually aged 20 to 30 years. “Abnormality” is then rather arbitrarily defined as a deviation > 1 standard deviation (SD) or > 2 SDs from this young Gaussian-distributed population mean as, for example, for the bone mineral density (BMD) T-score. Alternatively, higher than the 90th percentile or > 97% cutoffs can be used.[3] The symptomatic and asymptomatic matched populations can be compared to help validate these cutoff values.

For diseases in which there is no known deterioration over time, such as developmental spinal canal size or facet joint orientation, a large cross section of the population of any age can be referenced before determining optimal arbitrary cutoff values. To include only asymptomatic subjects in this population, reference interval seems incorrect because this would, for example, if determining developmental spinal canal size, tend to favor patients with a developmentally normal or capacious spinal canal while conversely including only symptomatic patients would favor patients with a developmental spinal canal stenosis.


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Main Issues Limiting the More Widespread Use of Quantitative Spine Imaging

Currently, three overriding issues limit the more widespread use of quantitative spine image data: data reliability, time utilization, and clinical relevance.

Data Reliability

The objective data provided should be precise, reproducible, and clinically relevant.[1] One of the frustrating features currently of quantitative spine imaging is the variability of data reported by different, seemingly rigorously conducted studies. For example, comparing studies reporting cervical cord cross-sectional area (CSA), two studies on asymptomatic European and Japanese subjects, respectively, reported values of ∼ 72 to 79 mm2 for cervical cord CSA.[4] [5] Another study on asymptomatic Canadians reported values of ∼ 93 to 97 mm2.[6]

Because objective analysis of imaging-based research databases is normally undertaken by supervised research assistants, close supervision on how (e.g., slice selection, digital zooming, contrast adjustment) and where to obtain measures is critical. This is particularly pertinent for boundary demarcation in CSA measurements as, for example, whether spinal cord measurements are made at the outermost margin of the spinal cord or just outside the cord. Given πr2, if the radius changes by r ± x, then CSA will change by (r ± x).[2] Because the structures involved are often small, important before data point placement would seem helpful. Even after thorough training, though, readers still tend to produce different readings because there is a tendency to draw lines between gray levels of anatomical structures differently.[4] Also, small but statistically significant differences can exist between different MR imaging systems due to factors such as corrections of geographic distortion or systematic different placement of the patient.[4]

Given the level of high-resolution imaging data now achievable on all standard body CT and MR systems, the main reason for interstudy variability seems to be differences in measurement techniques such as using sagittal versus axial planes for anteroposterior (AP) diameters, true axial versus oblique axial planes, and variable placement of measurement points. Scientific publications showing precisely where measurements points were placed are very helpful, although articles often do not include such images.[7] Ideally, like guidelines available on who should acquire dual-energy X-ray absorptiometry (DXA) or QCT measurements, internationally accepted standardized protocols should be devised for the acquisition and measurement of advanced spine imaging quantitative data.[8] These guidelines could then be adopted into protocols of studies involving acquisition of quantitative spine imaging data. Until this is done, considerable interstudy variability is likely to persist.


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Time Utilization

For quantitative imaging data to be integrated into clinical practice, such data need to be obtained in an automated fashion because manual measurements are too time consuming for everyday use. Objective analytical data will someday be produced automatically by computer analysis of spine imaging raw data and be available for review when constructing the standard radiologic report. There is little doubt this will be available in the future with a digital readout of quantifiable data referenced to population or normal intervals like serology laboratory reports. That said, in our experience, current automated image segmentation/quantification techniques in the spine are not up to speed, requiring considerable adjustment following initial automatic segmentation.


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Clinical Relevance

Currently, little objective data are used in the day-to-day radiologic reporting of spine examinations because it is time consuming to obtain and of limited clinical relevance in the individual patient setting. Most of the measured variables can be readily reported in daily practice using semiquantitative descriptors such as minimal, mild, moderate, or severe or mild to moderate, for example. There is no doubt, however, that image quantification of the spine will become more widespread, more reliable, and more automated in the not too distant future. Radiologic reports will continue to be composed mainly of descriptive terminology as they are now with quantitative data providing additional backup information.

The remainder of this review looks at 13 specific aspects of quantitative spine imaging focusing mainly on age-related physiologic changes rather than disease-related changes.


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Developmental Cervical Spinal Canal Size

To date, no disadvantage has been found in having a large spinal canal. All problems arise when the canal is too small to accommodate the spinal contents ([Fig. 1]). There are two components to spinal canal stenosis. The first is how large the spinal canal is when it is fully developed (i.e., developmental spinal canal size).[9] Developmental canal narrowing is measured at the pedicle level removed from acquired degenerative narrowing that occurs at the diskovertebral level. The second is the degree of acquired spinal canal stenosis that occurs due to superimposed narrowing from, for example, disk herniation, osteophytosis, facet joint and capsular hypertrophy, ligamentum flavum hypertrophy, and spondylolisthesis.

Zoom Image
Fig. 1 (a) T2-weighted sagittal and (b) axial images of patient with developmentally normal caliber cervical spine compared with (c) T2-weighted sagittal and (d) axial images of a patient with a developmentally small caliber cervical spinal canal. The patient with a developmentally small caliber cervical spinal canal has developed cord compression with only moderate disk bulging at C4–C5, C5–C6, and C6–C7.

Cervical myelopathy is usually due to acquired degenerative change superimposed on a developmentally small spinal canal.[10] Patients with developmental canal stenosis tend to present 5.5 years earlier with degenerative cervical myelopathy and with worse baseline neurologic function.[11] Regarding treatment, surgeons may be more inclined to undertake posterior decompression in patients with significant developmental spinal canal narrowing because it alleviates cord compression by canal expansion rather than by removal of the anterior compressive elements.

A developmentally small cervical spinal canal also predisposes to traumatic cord injury because it associated with smaller neural foramina, degenerative foraminal stenosis, and radiculopathy. A developmentally narrow canal may affect cervical kinematics and mechanical loading, potentially accelerating degenerative disease.[12]

Given the frequency of degenerative cervical myelopathy, canal measurements from C3 to C7 are the most useful. Reference intervals should be related to sex and height because these are the two variables that most influence cervical spinal canal size.[4] [13] Radiographic measures (i.e., the Pavlov-Torg ratio) do not correlate well with MR and CT, so radiography should not be relied on to determine cervical spinal canal stenosis.[14] [15] [16] Spinal canal CSA can only be measured on axial images, but AP diameter can be measured on both sagittal and axial images. Sagittal and axial images yield comparable measures for spinal canal AP diameter with axial measurements possibly being very marginally (∼ 1.5%) larger.[4]

From an MRI-based study of 140 white asymptomatic volunteers (mean age: 38 years; range: 18–78 years), we can appreciate the considerable variability that exists for developmental cervical spinal canal size.[4] For example, the AP diameter of the spinal canal, measured on axial images at the mid-vertebral body level, for a 1.7-m tall woman was 12.5 mm (range: 9.5–16.5 mm) at C3 and 12.2 mm (range: 9.3–16.1 mm) at C6.[4] This represents a ∼ 70% spread for AP diameter across the cohort.

An even greater variability in developmental canal size was seen for spinal CSA than AP diameter.[4] For 1.7-m tall women, spinal canal CSA was 189 mm2 (125–287mm2) at C3 and 177 mm2 (117–268 mm2) at C6. This represents ∼ 120% for CSA across the cohort. In other words, developmental CSA varies more than AP diameter. Height has a much greater influence on canal AP diameter and CSA (both < 0.001) than age (0.042 and 0.031, respectively).[4]

The normal values reported by Ulbrich et al would have been considered abnormal based on other study criteria. For example, in a study of 1,211 asymptomatic subjects, the mean AP diameter of the spinal canal at the C5 mid-vertebral level was 15.8 ± 1.5 for all subjects, 16.2 ± 1.5 for men and 15.4 ± 1.4 for women.[17] A developmentally narrow canal was defined as an AP diameter < 14 mm,[17] which was present in 10% of subjects. In 0.5%, the canal was < 12 mm, in 2.4%, it was < 13 mm, and in 7.3%, it was < 14 mm. Elsewhere, developmental cervical canal stenosis was defined as a cervical canal diameter < 12 to 13 mm.[18] [19] [20] Asymptomatic subjects with spinal cord compression or cord signal changes had significantly smaller cervical spinal canals than those without cord compression or cord signal change.[13] The critical AP diameter below which cord compression was likely was < 14.8 mm in men and < 13.9 mm in women.[13] We can appreciate even from these results the variability seen in reported data. These is a real need for population reference intervals to be established for different heights and sex and move away from the one-measurement-fits-all scenario.

Symptomatic patients show a much higher prevalence of developmental canal narrowing. For example, 50% of symptomatic men and 78% of symptomatic women had an AP diameter of < 15 mm at the C5 mid-vertebral body level.[13] A total of 68% of those patients with a narrow spinal canal (< 14 mm AP diameter) were female.[13] This sex difference reflects using the same criteria for men and women.

A study of CT imaging comparing cervical spine injured patients with control subjects concluded that the shape of the spinal canal and not the area put the patient at risk for spinal cord injury.[7] The values for spinal canal size on this CT study were generally larger than the values reported from the MRI study.[7] No comparative study comparing CT versus MRI in cervical spinal measurements has been performed.


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Cervical Spinal Cord Dimensions

The spinal cord is malleable and changes shape to conform with the surrounding spinal canal configuration, from circular in the upper cervical region to ellipsoid coronally in the lower cervical region.[4] Although sagittal images provide an indication of the likelihood of cord injury or compression, cord size should only be measured as cord CSA on axial images because cord AP diameter will give a false underestimation of cord size due to the change in cord shape.

When measuring the spinal cord, cadaveric studies can underestimate cord size measurements due to the effects to fixation and shrinkage.[6] Also, for in vivo imaging, cord area tends to be slightly larger on T1-weighted rather than T2-weighted axial images.[21]

Men have slightly larger (∼ 3.5%) cervical cords than women.[4] [5] [21] [22] [23] [24] Taller people also have larger spinal cords.[4] [22] The cervical spinal cord size reduced slightly in size with age[25] in the order of 1% reduction in cord size per decade.[6] Spinal cord size seems to remain relatively constant in size during flexion and extension.[26] The largest CSA of the spinal cord seems to be at C4–C5 or C5–C6; the CSA of the spinal cord CSA at C3 and C6 is comparable.[4] [5] [6]

Comparing two separate studies that measured the spinal cord CSA in Japanese[5] and in European[4] volunteers, cervical spinal cord measurements were consistently ∼ 7% smaller for Japanese volunteers, which may be related to differences in height between both cohorts. So, for example, at C6, the difference in average spinal cord CSA for women was 68 mm2 versus 75 mm2; for men, it was 71 mm2 versus 77 mm2.[4] [5]

Within the same population cohort, the spinal cord does vary in size, but this variation is much less than that seen in spinal canal measurements. For 1.7-m tall European women, average spinal cord CSA was 75 mm2 (55–101 mm2) at C3 and 75 mm2 (56–102 mm2) at C6.[4] This represents an approximate 40% spread in spinal canal CSA for C3 and C6 across the studied cohort. Because the variation in spinal canal CSA (∼ 120%) is much greater than spinal cord CSA (∼ 40%), spinal canal size has a much greater bearing on spinal cord to canal mismatch than spinal cord CSA.

The spinal cord occupation ratio (SCOR), which reflects the amount of spinal canal space occupied by the spinal cord, has been used as a measure of spinal cord to canal mismatch.[5] [22] [27] [28] Patients with spinal cord to canal mismatch are at risk of spinal cord injury, degenerative cervical myelopathy, and neurapraxia. This may be due to less cerebrospinal fluid around the cord, (1) making the cord more prone to degenerative encroachment, (2) reducing the ability to absorb kinetic forces that are transferred to the cord, (3) increasing the likelihood of venous congestive myelopathy, and finally (4) smaller cervical vertebrae may biomechanically be more prone to degeneration.[12] [29] Patients with spinal cord mismatch have worse baseline neurologic function. Because lower baseline neurologic function is a negative predictor of outcome, identification of a significant spinal cord mismatch may alter patient prognosis.[11] Comparing SCORs in degenerative cervical myelopathy patients, the prevalence of mismatch was lower in Europe at 2.3% compared with ∼ 10% in Asia, Latin America, and North America.[30] Routine assessment of developmental spinal canal stenosis may be indicated in those engaged in extreme and high-impact contact sports such as rugby, skiing, basketball, waterskiing, and football. Because there is relatively more space around the cord in taller patients, this probably puts a shorter person at higher risk of cervical cord compression.[4]

The three approaches to assessing spinal cord objectively are canal mismatch quantifying the (1) AP space around the cord as a ratio, (2) AP space around the cord as an absolute measure, or (3) CSA around the cord as a ratio. It is not known which of these approaches is best.

Using the first of these measures, spinal cord AP divided by spinal canal AP diameter, it was recommended that an SCOR > 75% (i.e., a cord occupying > 75% of the canal) at C5, which was close to 2 SDs above the mean, should be used as an indicator of spinal canal to cord mismatch.[5] Alternatively, averaging SCOR at the two most adjacent noncompressed sites in patients with degenerative cervical myelopathy, a SCOR ≥ 70% was used as an indicator of significant mismatch.[31]

The second approach is to subtract the spinal cord AP diameter from the canal AP diameter.[32] [33] In a retrospective analysis of cervical spine MRI examinations in athletes with and without neuropraxia, a value < 5 mm increased the likelihood of chronic neurapraxia risk, particularly if it was < 4.3 mm.[32]

The third approach is to compare CSAs on axial imaging. In a review of patients with minor cervical spine trauma, a SCOR > 80% on axial MRI could identify patients at risk for spinal cord injury.[27]

Therefore, to date, a spinal cord to canal mismatch can be categorized as a SCOR ≥ 75% for an AP ratio, < 5 mm for an AP absolute measure, and ≥ 80% for a CSA ratio.[27] [28] [32] Clearly, SCOR at the moment can only be measured on MRI, whereas spinal canal dimensions can be measured on both MRI and CT. Spinal canal developmental size varies much more than spinal cord size. Whether spinal cord area is related to or independent of spinal canal area is not known. If the former is the case, the focus should be on spinal canal size rather than SCOR. If the latter is the case, it would seem reasonable to focus on SCOR.


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Cervical Vertebral Body Dimensions

The volume of the cervical vertebrae is relevant to study of factors governing cervical vertebral body size as well as corpectomy and cage placement, among other things. Establishing reference standards for normal vertebrae and spinal dimensions can be achieved only after controlling for sex, age, and ethnicity due to the influence of these factors on vertebral anatomy.[34] In a study of cervical vertebrae of 277 human skeletons born between 1825 and 1910, a detailed analysis of vertebral body dimensions showed that African Americans had significantly greater vertebral body width and depth in the C3–C5 region than European Americans.[34] The heights of the C3 and C4 vertebral bodies were significantly smaller in the African American population. Cervical vertebral bodies became wider and deeper with age with the changes in depth much more pronounced than the changes in width.[34] There was a significant reduction in vertebral body height with age.[34]

That males have larger cervical vertebral bodies than females regardless of ethnic origin is well documented.[35] While the height of the vertebral body decreases with age mainly between C3 and C6, the vertebral body expands. For example, in C3, between young and old patients, vertebral body width increased by 6% and vertebral body depth increased by 9%, whereas at C7, width increased by ∼ 6% while depth increased by ∼ 15%.[35] With advancing age, reduction in vertebral body height tends to be greater in women while the increase in vertebral body depth is similar for men and women.[36] Because there is no change in the two measurements of the exit foramen with age, it can be concluded that most of the vertebral body expansion in depth seems to occur anteriorly. Another possible explanation for the changing vertebral body shape with age is the charge in cervical spine curvature that occurs to compensate for the increased thoracic kyphosis.[37]


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Developmental Lumbar Spine Canal Size

Lumbar spinal canal stenosis is a common clinical entity. Similar to the cervical spine, two features govern the development of lumbar spinal canal stenosis: developmental lumbar spinal canal size and acquired narrowing of the lumbar spinal canal ([Fig. 2]). It is important to separate these two elements when quantifying lumbar spinal canal size.

Zoom Image
Fig. 2 (a) T2-weighted sagittal and (b) axial images of patient with developmentally normal caliber lumbar spinal canal compared with (c) T2-weighted sagittal and (d) axial images of patient with developmentally small caliber lumbar spinal canal. The patient with a developmentally small caliber lumbar spinal canal has developed lumbar spinal canal stenosis due to only mild anterolisthesis and disk bulging at L4–L5.

Developmental lumbar canal size relates to the size of the osseous spinal canal when spinal maturation is complete by the age of 17 years. It is unclear what factors govern lumbar spinal canal size, although it may be related to shorter gestation age, lower birth weight, primiparity, and lower socioeconomic class.[38] Developmental lumbar spinal canal size is measured at the level of the pedicles removed from the acquired changes that predominate at the diskovertebral level ([Fig. 3]). To develop population reference intervals, a large cross section of the population irrespective of symptoms must be studied. Using data obtained from abdominal pelvic CT examinations performed for reasons not related to the lumbar spine provides a good method of obtaining a population reference range for spinal dimensions with no need for additional specific imaging[39] [40] ([Fig. 4]).

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Fig. 3 (a) Developmental canal size is measured at the pedicular level removed from acquired degenerative narrowing that occurs at the diskovertebral level. (b) Anteroposterior and lateral diameters for lumbar developmental canal size. (c) Cross-sectional area for lumbar developmental canal size.
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Fig. 4 Population reference intervals for lumbar developmental canal size for (a) cross-sectional area (CSA) and (b) anteroposterior (AP) diameter of the L2, L3, and L4 lumbar levels for females and males. The demarcation of the smaller quartile (i.e., smaller 25%) at each level is indicated (modified from Griffith et al[40]).

Such an approach could be undertaken for each region, race, and sex because considerable cross-population variation does seem to exist in patients with smaller lumbar spinal canals who are more likely to develop symptoms and require surgical intervention.[39] [40] [41] Using this approach, a large (at least 34% between largest and smallest quartiles) variation in lumbar developmental spinal canal CSA can be appreciated.[40] Spinal canal CSA and depth is consistently smallest at L3, enlarging cranially and caudally within the lumbar region.[40] There is no accepted definition of what defines a normal or abnormal spinal canal size.[42] An L3 anteroposterior diameter < 13 mm for males and < 12.4 mm for females represented the smallest 25% for a southern Chinese population.[40] Similarly, an osseous spinal canal < 212 mm2 for males and < 213 mm2 for females represented the smallest 25% of the population.[40]


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Lumbar Vertebral Body Dimensions

The volume of the thoracic and lumbar vertebral bodies is relevant to vertebroplasty and other procedures. Using CT-based technique, verified by analysis of saw bone vertebral bodies, vertebral body volume increased from T1 to L4 for both female and male subjects.[43] Mean thoracic vertebral body volume was ∼ 15.0 cm3; mean lumbar vertebral body volume was much higher at ∼ 35 cm3.[43] [44] Considerable individual variation in vertebral body size was present ranging from 5.2 cm3 for a T1 vertebral body to 60.6 cm3 for a L4 vertebral body.[43] Vertebral body volume in men was larger than that of women only in the lumbar spine, mainly accountable by an increase in vertebral body CSA.[45] Although thoracic and lumbar vertebral body height is, as expected, closely related to patient height, lumbar vertebral body CSA in males is related to patient weight.[45] The L5 vertebral body volume is normally up to 5% smaller than the L3 or L4 vertebral bodies.[43] [44] Patients with L5 pars defects tend to have even smaller L5 vertebral bodies, ∼ 10% smaller than L4, with greater posterior wedging.[44]


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Bone Mineral Density

BMD is the most important surrogate marker of bone strength. It is most widely measured by DXA, although this is an areal rather than volumetric assessment measuring both cortical and trabecular BMD.[46] Trabecular volumetric BMD (vBMD) by single-energy QCT is a more accurate, although less practical, reference standard for noninvasive vBMD assessment.[47] With QCT, osteopenia is defined as a trabecular BMD < 120 mg/cm3; osteoporosis is defined as a trabecular BMD < 80 mg/cm3.[8] Radiation dose for lumbar QCT is ∼ 1 mSv for men and 1.6 mSv for women, many times higher than lumbar DXA (1–6 μSV) but comparable with lumbar spine radiography (0.7–2 MSv).[47] [48]

Using spectral detection CT as a feature of dual-energy CT, vBMD can be quantified without using a calibration phantom (“phantomless”) yielding high correlation with standard QCT assessment (r = 0.987).[49]

Partial volume averaging due to bone voxels that contain fat will reduce trabecular vBMD measurement by single-energy QCT by ∼ 15%.[50] A method to correct single-energy QCT for marrow fat content was also recently developed.[51] After first adjusting manufacturer-calibrated values for the European Spine Phantom (ESP-145), density measurements can be adjusted to account for bone marrow adipose tissue (BMAT) content as measured by MRI as follows:

vBMD BMATcorr = vBMD ESPcorr + 0.7576 × BMAT (%) – 12.96 (mg/cm3).

After correcting for marrow fat content, mean L2–L4 vertebral body vBMD decreased in women from 20 to 80 years by − 2.57 ± 0.11 mg/cm3/year, ∼ 15% less than the uncorrected value (− 3.00 ± 0.13 mg/cm3/year). Mean vBMD annual decrease for men was − 1.70 ± 0.14 mg/cm3/year, ∼ 10% less than the uncorrected value (1.92 ± 0.15 mg/cm3/year).[51] Dual-energy CT can also accurately measure marrow fat content and enable correction of QCT vBMD data accordingly.[50] [52]

Bone islands are much more common than sclerotic metastases and tend to have higher bone density.[53] [54] This density difference can be used to distinguish bone island and sclerotic metastasis with a high level of certainty. This is done by drawing a region of interest (ROI) as large as possible on the lesion without extending beyond the lesion's margins, irrespective of whether intravenous contrast was administered or not. Either a mean attenuation ≥ 885 HU or a maximum attenuation ≥ 1,060 HU for the lesion has a sensitivity of 95% and specificity of 96% for diagnosing a bone island.[53]


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Marrow Fat Content and Composition

Magnetic resonance spectroscopy (MRS) can measure bone marrow fat composition as well as content but is limited in allowing assessment of only one vertebral body. Single-voxel MRS-based marrow fat quantification should ideally be based on a multi-TE MRS measurement to minimize confounding effects on proton-density fat fraction and water fractions.[55]

Chemical shift encoded separation techniques (fat-water imaging) can also accurately measure marrow fat content and has a shorter acquisition time of 3 to 4 minutes across a wider scan plane, although it cannot assess marrow fat composition.[56] [57] [58] The reproducibility of 1H MR spectroscopy and chemical-shift imaging is high, tending to be best in those areas with the highest inherent fat fraction.[59] [60] [61] A standardized T1-signal intensity can also be measured, that is, the vertebral marrow to subcutaneous fat ratio.[62] Although straightforward, accuracy is compromised because T1 signal intensity depends on factors such as coil position, saturation band positioning, and postprocessing homogenization of B1 inhomogeneity, in addition to marrow fat.[62]

Marrow fat content increases from the cervical to the lumbar spine.[61] [62] When comparing fat measurements between studies, we need to consider from which vertebrae were taken. The L3 vertebral body is the most usually measured, although the T11 and L1 vertebral bodies may be more representative.[62] [63]

There is a gradual physiologic increase in vertebral marrow fat content with age, from ∼ 25% marrow fat content at 25 years to 65% at 65 years.[64] [65] This increase is different in males and females. Males show a gradual increase of 7% per decade in lumbar vertebral marrow fat content; females show an increase of ∼ 5% per decade up to 55 years followed by a dramatic increase in marrow fat content between 55 and 65 years of ∼ 25%[64] [66] ([Fig. 4]). Male lumbar vertebrae have ∼ 10% more fat than females up to 50 years.[64] Between 50 and 60 years, this sex difference narrows and disappears.[64] After 60 years, females have ∼ 10% more marrow fat in their vertebrae than males[66] ([Fig. 5]).

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Fig. 5 Marrow fat content, % of lumbar vertebral body stratified for age and sex. Throughout life, marrow fat increases slowly and steadily for both sexes with a dramatic increase in marrow fat content between the ages of 55 and 65 years for women. This mirrors the reduction in bone mineral density that occurs at that time in women.

Overall, there is at least a 40 to 50% increase in fat cell content with increasing age. This increase in fat content happens primarily due to an increase in fat cell number rather than fat cell size,[67] and it seems to be associated with little, if any, change in marrow fatty acid profile.[68] This increase in fat cell volume occurs primarily at the expense of red marrow volume. Although the trabecular volume decreases with age, the overall percentage decrease in trabecular volume is small at ∼ 5% in volume. Because the marrow cavity is a defined space and vascular sinusoids and other marrow structures do not seem to expand with age, we can infer that for any increase in fat cell content, there is almost a corresponding decrease in functioning or red marrow content. In other words, marrow fat content should be a good surrogate marker for hematopoietic marrow content ([Fig. 6]).[69]

Zoom Image
Fig. 6 The bone marrow is confined by the rigid bone cortex. As marrow fat content increases with age, red marrow content decreases because any age-related with or without osteoporotic-related change in trabecular bone volume is relatively small. In other words, marrow fat content is a surrogate marker of red marrow fat content. Physiologic changes in bone marrow content are exaggerated in patients with osteoporosis. BMD, bone mineral density.

The inverse relationship between increasing marrow fat and trabecular bone loss in osteoporosis has been recognized histologically for 50 years.[70] MRI, and more recently dual-energy CT, have enabled marrow fat content to be quantified noninvasively on a large scale and at different anatomical sites.[52] Over and above the physiologic increase in marrow fat content with age, osteoporosis is associated with an even greater increase in marrow fat content for both males and females. Using MRS, marrow fat content in older men with normal BMD, osteopenia, and osteoporosis was 50.1 ± 8.7%, 55.7 ± 10.2%, and 58.2 ± 7.8%, respectively (p = 0.002).[71] Similarly, for older women, marrow fat content in those with normal BMD, osteopenia, and osteoporosis was 59.2 ± 10.0%, 63.3 ± 9.5%, and 67.7 ± 8.5%, respectively (p = 0.002).[72] Similar results were shown using three-dimensional gradient-echo chemical-shift-encoded fat-water imaging.[56] In a study of 51 patients (28 females; mean age: 69.7 ± 9.0 years), mean fat content of normal BMD vertebrae (56.3 ± 14.8%) was higher than that of osteoporotic vertebrae (62.4 ± 11.0%; p = 0.007).[56] Trabecular bone loss, which can be specifically measured by QCT, as opposed to DXA that usually measures both trabecular and cortical bone loss, seems to be much more associated with increased marrow fat content than cortical bone loss.[73]

Higher prevalent marrow fat predicts future increased osteoporotic bone loss. Postmenopausal women with a marrow fat content above the median experienced average bone loss of 4.7% over 4 years, whereas those with a marrow fat content below the median only experienced bone loss of 1.6%.[74] Similarly, for each 1 SD (∼ 8%) increase in baseline marrow fat content, trabecular vBMD tended to increase by ∼ 0.9% more over a 3-year period.[75]

Increased marrow fat may also increase vertebral fracture risk. Mean vertebral marrow fat was 55% in those with a prevalent vertebral fracture compared with 45% (p < 0.001) in those without a prevalent vertebral fracture even after adjusting for the effect of marrow fat on DXA measurements.[76] To date, no longitudinal studies have investigated whether marrow fat content is related to incident vertebral fracture.[73] In addition, osteoporosis marrow fat is also increased in other conditions associated with reduced BMD such as anorexia nervosa, alcohol abuse, spinal cord injury, and prolonged bed rest.[52]

Although chronic osteoporotic-type fractures can be readily recognized on MRI, quantitative MR imaging can be helpful in distinguishing between acute/subacute vertebral fracture and malignant fracture. The presence of fat within the fractured vertebral body on T1-weighted images is very helpful sign in identifying the fracture as osteoporotic.[77] In equivocal cases, chemical shift fat to water imaging can augment standard imaging in quantifying fat content within the fractured vertebral body. Either the absolute fat content or a fat fraction ratio can be used where the fat content of the fractured vertebral body is compared with the fat content of an adjacent normal-appearing vertebral body. A fat fraction < 9% within the fractured vertebral body or a fat fraction ratio < 0.2 indicates malignancy with a 96% sensitivity and 89% specificity.[78] [79]

MRS can also evaluate fat composition. The portion of unsaturated vertebral marrow fat in healthy young subjects was higher than postmenopausal osteoporotic women (0.127 versus 0.091),[80] a finding confirmed by spectroscopy of iliac crest aspirates.[73] Patients with prevalent vertebral fracture patients have 1.7% lower unsaturation levels and 2.9% higher vertebral marrow fat saturation levels than those with no fracture.[81] People with diabetes also had 1.3% lower unsaturation and 3.3% higher vertebral marrow fat saturation levels, whereas diabetic patients with fracture had the lowest marrow unsaturation and highest saturation.[81] Diabetes may change marrow fat composition but have little or no effect on marrow fat content.[81]


#

Bone Marrow Perfusion

MRI can measure marrow perfusion with high reproducibly using empirical time-intensity curve measures such as maximal enhancement (Emax) and enhancement slope (Eslope).[60] Pharmacokinetic modeling can also be applied, although these measures are less robust and more theoretical. Within the rigid confines of the bone cortex, because the two main constituents of bone marrow are red and fatty marrow, fatty marrow content is a surrogate marker for red marrow content. In other words, the higher the fatty marrow content, the lower the red marrow content. Red marrow, being much more metabolically active than fatty marrow, is the main driver of bone marrow perfusion. Therefore, as expected, changes in bone marrow perfusion coincide well with changes in red marrow content.[67] Bone marrow perfusion is also related to endothelial dysfunction and atherosclerosis with a weak negative correlation (r = − 0.33; p = 0.0018) between vertebral body perfusion and carotid artery intima media thickness.[82]

Vertebral marrow perfusion reduces with aging.[83] [84] [85] [86] [87] Overall Emax was > 60% greater in subjects aged < 50 years (58.2 ± 44.6) than subjects aged > 50 years (21.9 ± 14.8).[83] For females only, an even greater difference was apparent with Eslope in those < 50 years (87.2 ± 54.1) being 80% greater than those > 50 years (18.0 ± 13.8).[83] Although vertebral bone marrow perfusion is higher in young females than young males, the rate of perfusion decline is also higher in females, such that vertebral bone marrow perfusion is higher in older men than older women.[83] This pattern closely matches changes that occur in red to fatty marrow composition with age. Also, in line with changing marrow fat content, the upper (L1–L2) lumbar vertebral bodies are better perfused than the lower (L3–L5) vertebral bodies.[85] [86]

Bone perfusion is also closely related to BMD. As BMD decreases, marrow fat increases. Patients with osteoporosis have lower bone marrow perfusion than those with osteopenia, whereas patients with osteopenia have lower bone marrow perfusion than those with normal BMD[88] ([Fig. 7]). This reduction in perfusion affects the marrow but not the surrounding muscle, indicating it is an integral marrow effect rather than part of a more generalized circulatory impairment.[72] Bone perfusion is a critical element in bone fracture healing including microfracture healing. Wee can appreciate how compromised perfusion in osteoporotic bone could lead to impaired microfracture healing and thus to microfracture propagation until a spontaneous macroscopic insufficiency fracture occurs, occasionally followed by fracture nonunion.[88] [89]

Zoom Image
Fig. 7 Typical time-intensity perfusion curves of vertebral body marrow perfusion from dynamic contrast-enhanced magnetic resonance imaging examination in subjects with (a) normal bone mineral density (BMD), (b) low bone mass (osteopenia), and (c) osteoporosis. The rate and degree of intravenous contrast in subjects with osteoporosis is less than in normal BMD subjects. Emax, maximal enhancement; Eslope, enhancement slope.

#

Bone Marrow Diffusion

Free movement of extracellular water molecules in the bone marrow is affected by the cellular compaction and the amount of interstitial fluid. Extracellular water motion also depends on factors such as blood flow, capillary permeability, interstitial pressure, temperature, and the viscosity of interstitial fluid. The standard measure of water diffusivity in tissues is the apparent diffusion coefficient (ADC) acquired from single-shot echo planar imaging. The ADC of water is 3.0 × 10−3mm2/s. The ADC of bone marrow is the lowest of nearly all tissues at 0.20 to 0.60 × 10−3mm2/s, and particularly fatty marrow that has an ADC about half that of red marrow.[90] [91] [92]

Overall, ADC values tend to decrease with increasing age; the correlation (r  =  − 0.3 to – 0.4; p = 0.001) is weak.[93] [94] Mean vertebral ADC values in subjects aged < 30 years (0.54 ± 0.07 × 10−3 mm2/s) is higher than that in subjects aged > 30 years (0.47 ± 0.08 × 10−3 mm2/s).[94] The correlation between decreasing ADC values and increasing age is higher in women (r = − 0.581; p < 0.001) than men,[93] [95] [96] most likely due to age-related increase in marrow fat and decrease in marrow perfusion. Marrow ADC values also decrease from L1 to L5 in line with increasing fat and decreasing perfusion from the upper to the lower lumbar region.[97]

ADC values in middle-aged to elderly patients with normal BMD were 0.47 ± 0.03; those with osteopenia were 0.42 ± 0.02 and with osteoporosis were 0.39 ± 0.03.[98] Similar differences were found by some[72] [99] but not all[100] other studies, probably related to different examination protocols, analytical methods, and cohorts.[73]


#

Bone Marrow Metabolism

Based on the degree of glucose utilization, fluorodeoxyglucose accumulation provides a measure of tissue metabolic activity and, as such, can be used as a useful measure of bone marrow metabolic activity.[101] Combining volumetric MRI data and quantitative metabolic data from positron emission tomography (PET) to calculate the relative metabolic activity of red and yellow marrow in the L1, L3, and L5 vertebral bodies, the mean maximum standardized uptake (SUVmax) of fat and red marrow was 0.38 ± 0.1 and 2.6 ± 0.6, respectively. In other words, metabolic activity of red marrow was seven times that of fatty marrow.[102] Bone marrow metabolic activity tended to decrease with age more in the proximal femora and humeri (r = − 0.60 to − 0.67; p < 0.01) than the axial skeletal (sternal manubrium, 12th thoracic, 5th lumbar vertebra, and iliac crests) correlation coefficient − 0.28 to − 0.48; p < 0.05).[103]

A 18F-NaF PET/CT provides a specific measure of mineralized bone, rather than bone marrow metabolism and can also quantify arterial calcification.[104] [105] Analyzing this tracer uptake in patients undergoing 18F-NaF PET/CT for suspected bone metastases, SUVmean in the lumbar spine was 6.9 ± 1.9 (2.2–14.4), which was several times higher than the femoral neck, 2.7 ± 1.0 (0.9–8.0).[100] Mean regional bone metabolism at the lumbar spine and femoral neck decreased with increasing age (r = − 0.44; p < 0.001) and overall was lower in female patients.[100] Bone mineral metabolism was also negatively correlated with hypertension (p = 0.003), hypercholesterolemia (p = 0.01), and prior cardiovascular events, which is not surprising given the well-known association between osteoporosis and arteriosclerosis, particularly arterial calcification.[100] [106]


#

Disk Volume and Degeneration

Disk volume is relevant to the study of disk degeneration and other aspects of spinal pathology.[107] The volume of a normal lumbar intervertebral disk is ∼ 10 cm3 when measured in the evening and ∼ 11 cm3 when measuring in the morning after a night's rest. In other words, the disk, through the effect of its hydrophilic proteoglycan molecules, attaches ∼ 0.9 cm3 of water into the disk overnight. Hence people are slightly taller in the morning and astronauts in space, who lack this cyclical fluid flow as a result of microgravity, lose height and have back pain. In osteoporotic and low bone mass patients, while central disk height is increased, giving rise to the biconcave appearance, overall lumbar disk volume is actually reduced compared with normal BMD patients.[108] This may be due to compromised nutritional supply from the neighboring vertebrae as BMD decreases.[108]

To improve the quantification of disk degeneration, surrogate MR measures of tissue hydration, such as T1-, T2-, and T2* relaxation times, and T1ρ have been investigated. Diskal T2 relaxation times decrease with disk hydration and, to a lesser extent, with reduced proteoglycan and collagen content.[109] [110] [111] [112] T2 relaxation provides a continuous measure of small changes in disk composition over time such as diurnal variation in disk water content[112] and the effect of normal aging.[112] [113] T2 relaxation times of the nucleus pulposus decrease ∼ 10% per decade with physiologic aging.[113] Overall disk T2 relaxation time tends to be lower in chronic low back pain patients than in symptomatic controls, especially in the posterior annulus fibrosus.[114] This heightens the importance of addressing different areas of the disk when comparing different cohorts. On T2-weighted images, T2 or T1ρ maps, both the nucleus pulposus and the inner fibers of the annulus fibrosus have comparable signal intensity because the boundary between these two components of the disk is indistinct.

Several methods have been described to demarcate the nucleus and annulus on MR images, either based on visual assessment or quantitative measures based on equal areas of five or seven ROIs placed horizontally across the disk, with or without an intervening gap. The central three ROIs are usually defined as the nucleus pulposus. Visual assessment seems to produce a more reliable delineation of the nucleus and annulus than quantitative delineation.[115] T1ρ relaxation measurement, which probes the interaction between water molecules and their macromolecular environment, has the potential to identify early biochemical changes in the disk, although the specific determinants of T1ρ relaxation are not well understood. T1ρ mapping may be slightly more sensitive than T2 mapping for disk degeneration, although it is more time consuming. Both T2 and T1ρ have a floor effect such that with more severe degeneration neither T2 or T1ρ measurements will change. Differences in T1ρ values between healthy and degenerative disks can be small, whereas errors in T1ρ quantification are many including B1 RF inhomogeneity and B0 field inhomogeneity as well as data acquisition. This limits its clinical application as does the current lack of validation with a reference standard.[116]


#

Ligamentum Flavum Thickness

The ligamentum flavum extends from C2 to S1, bridging the anteroinferior part of the more cephalad lamina to the posterosuperior aspect of the more caudad lamina. It prevents separation of the posterior elements during spinal flexion and restores an erect posture after flexion. With increasing age, there is reduced elasticity of the ligament with an increase in the collagen and a decrease in the elastic fiber content. Most ligamentum flavum hypertrophy is caused by reduced disk height bulking the ligament rather than true hypertrophy of the ligament.[107] [117] Hypertrophy of the ligamentum flavum reduces the size of the central canal, lateral recesses, and exit foramina, compressing the descending and exiting nerve roots, and leading to radiculopathy. Average thickness of the ligamentum flavum in the cervical spine is 2.2 ± 0.4 mm, thinnest at C2–C3 and thickest in the lower cervical region.[118]

Average thickness of the ligamentum flavum in the thoracic region is 2.6 ± 0.7 mm, thinnest in the upper and thickest in the mid- to lower thoracic region.[119] No age variation was apparent.[119] Maximum thickness of the ligamentum flavum in the thoracic spine is at the T10–T11 level (3.3 ± 0.9 mm), possibly due to larger tensile forces and mobility at this level.[119] In the lumbar spine, ligamentum flavum thickness > 4 mm is considered hypertrophy.[102] [120] The ligamentum flavum tends to be thickest at L4–L5 followed by L5–S1 and is ∼ 5 to 10% thicker on the left side.[121]


#

Facet Joint Orientation

Facet joint orientation/asymmetry is relevant to spinal biomechanics and seems to be related to the development of spondylolisthesis.[122]

The axial facet joint angle is typically measured either between the mid-vertebral body sagittal line and a line drawn between the anteromedial and posterolateral edges of the superior articular facet at the disk level[122] ([Fig. 8]). Normally, the facet joint angle moves away from the mid-sagittal line, from an average of ∼ 42 to 58 degrees while descending the lumbar spine.[102]

Zoom Image
Fig. 8 The axial facet joint angle is typically measured between the mid-vertebral body sagittal line and a line drawn between the anteromedial and posterolateral edges of the superior articular facet at the disk level. In this example, the angles are 32 degrees and 34 degrees. There is no facet joint tropism. The sagittal angle is measured as the angle between a line bisecting the intervertebral disk and one drawn between the superior and inferior aspects of the facet joint. In this example, the angle is 96 degrees.

In a population study, using data deemed from routine abdominopelvic CT examinations, and defining spondylolisthesis as an intervertebral body shift > 7% of the AP diameter of the inferior vertebral body, spondylolisthesis was present in 8.7% of males and 16.4% of females, and most prevalent at L4–L5.[122] Facet joint angles in the axial plane decreased, on average, with age in women but not in men, from ∼ 48 to 43 degrees at L4–L5 and from ∼ 53 to 47 degrees at L5–S1.[122] Facet joint angles in the sagittal plane decreased in men more than women[122] ([Fig. 8]). This sagittal decrease in men was from ∼ 83 to 80 degrees at L3–L4 and from ∼ 81 to 79 degrees at L4–L5.[122] This sagittalization and axialization of the facet joint with age may help explain why older people are more prone to degenerative spondylolisthesis.[122]

Facet joint tropism refers to facet joint angle symmetry. Facet joint trophism is considered acceptable if the side-to side difference in facet joint angles in either the axial or the sagittal plane is < 7 degrees.[122] Facet joint tropism in the axial plane is considered moderate if the difference is 7 to 15 degrees and severe if the difference is > 15 degrees.[102] Facet joint trophism is most severe at L4–L5, where a 20% prevalence of moderate and a 6% prevalence of severe trophism can exist.[102] Also, patients with degenerative spondylolisthesis tend to have more facet joint tropism.[122]

In conclusion, we can appreciate how the many aspects of spine anatomy and physiology make it particularly conducive to quantitative analysis. Quantitative analysis of spine imaging data has begun to provide us with a much better understanding of spinal disease. More standardized analytics methods will allow more ready comparison of research studies with radiologists in a great position to drive this research forward.


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Conflict of Interest

None declared.

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Address for correspondence

James F. Griffith, MB, BCh, BAO, MD (CUHK), MRCP (UK), FRCP (Edin), FRCR, FHKCR, FHKAM (Radiology)
LG12 Cancer Centre, Prince of Wales Hospital
Shatin, NT
Hong Kong   

Publication History

Article published online:
29 September 2020

© 2020. Thieme. All rights reserved.

Thieme Medical Publishers
333 Seventh Avenue, New York, NY 10001, USA.

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Fig. 1 (a) T2-weighted sagittal and (b) axial images of patient with developmentally normal caliber cervical spine compared with (c) T2-weighted sagittal and (d) axial images of a patient with a developmentally small caliber cervical spinal canal. The patient with a developmentally small caliber cervical spinal canal has developed cord compression with only moderate disk bulging at C4–C5, C5–C6, and C6–C7.
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Fig. 2 (a) T2-weighted sagittal and (b) axial images of patient with developmentally normal caliber lumbar spinal canal compared with (c) T2-weighted sagittal and (d) axial images of patient with developmentally small caliber lumbar spinal canal. The patient with a developmentally small caliber lumbar spinal canal has developed lumbar spinal canal stenosis due to only mild anterolisthesis and disk bulging at L4–L5.
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Fig. 3 (a) Developmental canal size is measured at the pedicular level removed from acquired degenerative narrowing that occurs at the diskovertebral level. (b) Anteroposterior and lateral diameters for lumbar developmental canal size. (c) Cross-sectional area for lumbar developmental canal size.
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Fig. 4 Population reference intervals for lumbar developmental canal size for (a) cross-sectional area (CSA) and (b) anteroposterior (AP) diameter of the L2, L3, and L4 lumbar levels for females and males. The demarcation of the smaller quartile (i.e., smaller 25%) at each level is indicated (modified from Griffith et al[40]).
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Fig. 5 Marrow fat content, % of lumbar vertebral body stratified for age and sex. Throughout life, marrow fat increases slowly and steadily for both sexes with a dramatic increase in marrow fat content between the ages of 55 and 65 years for women. This mirrors the reduction in bone mineral density that occurs at that time in women.
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Fig. 6 The bone marrow is confined by the rigid bone cortex. As marrow fat content increases with age, red marrow content decreases because any age-related with or without osteoporotic-related change in trabecular bone volume is relatively small. In other words, marrow fat content is a surrogate marker of red marrow fat content. Physiologic changes in bone marrow content are exaggerated in patients with osteoporosis. BMD, bone mineral density.
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Fig. 7 Typical time-intensity perfusion curves of vertebral body marrow perfusion from dynamic contrast-enhanced magnetic resonance imaging examination in subjects with (a) normal bone mineral density (BMD), (b) low bone mass (osteopenia), and (c) osteoporosis. The rate and degree of intravenous contrast in subjects with osteoporosis is less than in normal BMD subjects. Emax, maximal enhancement; Eslope, enhancement slope.
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Fig. 8 The axial facet joint angle is typically measured between the mid-vertebral body sagittal line and a line drawn between the anteromedial and posterolateral edges of the superior articular facet at the disk level. In this example, the angles are 32 degrees and 34 degrees. There is no facet joint tropism. The sagittal angle is measured as the angle between a line bisecting the intervertebral disk and one drawn between the superior and inferior aspects of the facet joint. In this example, the angle is 96 degrees.