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DOI: 10.1055/s-0039-1697592
A Systematic Review of Patient-Facing Visualizations of Personal Health Data
Address for correspondence
Publication History
15 April 2019
02 August 2019
Publication Date:
09 October 2019 (online)
- Abstract
- Background and Significance
- Objectives
- Methods
- Results
- Discussion
- Conclusion
- Clinical Relevance Statement
- Multiple Choice Questions
- References
Abstract
Objectives As personal health data are being returned to patients with increasing frequency and volume, visualizations are garnering excitement for their potential to facilitate patient interpretation. Evaluating these visualizations is important to ensure that patients are able to understand and, when appropriate, act upon health data in a safe and effective manner. The objective of this systematic review was to review and evaluate the state of the science of patient-facing visualizations of personal health data.
Methods We searched five scholarly databases (PubMed, Embase, Scopus, ACM Digital Library [Association for Computing Machinery Digital Library], and IEEE Computational Index [Institute of Electrical and Electronics Engineers Computational Index]) through December 1, 2018 for relevant articles. We included English-language articles that developed or tested one or more patient-facing visualizations for personal health data. Three reviewers independently assessed quality of included articles using the Mixed methods Appraisal Tool. Characteristics of included articles and visualizations were extracted and synthesized.
Results In 39 articles included in the review, there was heterogeneity in the sample sizes and methods for evaluation but not sample demographics. Few articles measured health literacy, numeracy, or graph literacy. Line graphs were the most common visualization, especially for longitudinal data, but number lines were used more frequently in included articles over past 5 years. Article findings suggested more patients understand the number lines and bar graphs compared with line graphs, and that color is effective at communicating risk, improving comprehension, and increasing confidence in interpretation.
Conclusion In this review, we summarize types and components of patient-facing visualizations and methodologies for development and evaluation in the reviewed articles. We also identify recommendations for future work relating to collecting and reporting data, examining clinically actionable boundaries for diverse data types, and leveraging data science. This work will be critically important as patient access of their personal health data through portals and mobile devices continues to rise.
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Keywords
data visualization - comprehension - patient engagement - health literacy - consumer health informationBackground and Significance
Initiatives to return personal health data to patients are on the rise. Driven largely by meaningful use stage-2,[1] patient portals have allowed patients and caregivers direct electronic access to medical results that were previously only released to the patient in paper format after an onerous request process.[2] Other initiatives have pushed for increased transparency of all personal medical information, such as OpenNotes, and have been met with positive responses from patients.[3] At the same time, patients are increasingly capable of generating their own health data through mobile health technologies and patient-reported outcomes (PROs) surveys.[4] [5] Patients can immediately visualize their PROs and other patient-generated health data (PGHD) easily and quickly through the same electronic systems, including smartphone applications and wearables.[6] [7]
The potential benefits of returning health data to the patient include increased comprehension of health status, engagement in care, and adoption of positive health behaviors.[8] [9] [10] As such, it represents an opportunity for the patient to become a more active participant in their health and wellbeing. Nonetheless, there is reticence to allow patients direct access to their health data without clinician interpretation due to concerns about poor comprehension, risk perception, and possibly dangerous or unhealthy behaviors in response to the data.[7] [11] Personal health information can be complex, especially when including numerous data points and medical jargon. It may also require contextualization based on age, gender, baseline status, and other personal characteristics. Many clinicians prefer to deliver medical results and information to patients so they can provide necessary interpretation and contextualization.[12] [13] [14] However, the sheer volume of patient data capable of being generated and returned to patients in today's electronic age makes this infeasible in many circumstances.
Information visualizations are a promising solution to aid patients in interpreting and contextualizing their health information.[15] [16] [17] They represent data and convey information by leveraging the powerful ability of humans to visually perceive differences in the sizes, shapes, colors, and spatial positions of objects.[18] Information visualizations are especially appealing because they do not rely on the patient having high literacy or numeracy. For example, specific design components, such as colors, may facilitate interpretation as effectively as explanatory text.[19] Moreover, information visualizations can be delivered to patients easily through the technologies they are already widely using, such as smartphone applications and web pages.[15]
Despite this promise, those developing patient-facing visualizations must overcome several obstacles to successfully convey meaning from personal health data. Patients vary widely with regards to health literacy, cultural context, and cognitive status, all of which influence comprehension.[20] Prior reviews have investigated health-related information visualizations and evaluation methods more broadly,[21] [22] [23] [24] but none have examined visualizations and methods pertaining specifically to patients' personal health data. The cognitive processes employed by patients interpreting personal health data differ from those employed by researchers and clinicians with advanced statistical and medical knowledge.[25] [26] Therefore, a focused investigation on the unique needs and preferences of patients viewing their personal health information is warranted to develop tools that display personal health data for use in clinical practice that align with patients' cognitive processes. Those developing, implementing, and evaluating visualizations for patients require the latest evidence to ensure that patients are able to understand and, when appropriate, act upon health data in a safe and effective manner.
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Objectives
The overall objective of this systematic review was to summarize the state of the science of patient-facing information visualizations of personal health data. Specifically, we aimed to investigate (1) the types and components of patient-facing visualizations, and (2) methods and findings related to the development and evaluation of patient-facing visualizations currently reported in the literature. We aimed to examine published literature across several scientific fields in which tools that display personal health data are being developed and deployed, including but not limited to informatics, medicine, nursing, computer science, and engineering. By describing and synthesizing these findings, we aimed to generate an initial set of recommendations for those seeking to develop patient-facing visualizations that promote understanding and interpretation of personal health data.
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Methods
Information Sources and Search Strategy
We searched five scholarly databases (PubMed, Embase, Scopus, ACM Digital Library [Association for Computing Machinery Digital Library], and IEEE computation index [Institute of Electrical and Electronics Engineers Computational Index]) in consultation with a biomedical librarian in December 2018. These databases were selected with the goal of capturing relevant literature from a variety of fields, including medicine, nursing, biomedical informatics, computer science, and engineering. Our search strategy included the following terms: (patient OR patients OR consumer* OR user*) AND (“Computer Graphics” [Mesh] OR visualiz* OR graph*) AND (“Health Records, Personal”[Mesh] OR “Electronic Health Records”[Mesh] OR “Telemedicine”[Mesh] OR “electronic health record” OR “test results”). Search terms were also determined in consultation with a biomedical librarian and content experts and iteratively by examining keywords in retrieved articles. No filters or additional search criteria were applied. Scopus was searched for literature that was not formally published in peer-reviewed journals (gray literature)[27] using the same terms. An inspection of reference lists from retrieved articles and of the authors' personal libraries identified any relevant articles not obtained through the database search.
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Eligibility Criteria and Screening
Eligibility criteria are presented in [Table 1]. We excluded visualizations that contained only population-level data, such as prevalence of certain health conditions, because our primary interest was in visual tools that return a patients' own data to them. In addition, we excluded articles that lacked figures showing the visualizations as these were necessary to evaluate and compare visualizations between articles; text-based descriptions alone do not provide adequate detail and names for certain visualizations vary between disciplines. Three reviewers (M.R.T., S.I., and A.M.) used Covidence, a Cochrane's technology platform, to select eligible articles from the pool of retrieved articles.[28] The reviewers screened titles and abstracts against the eligibility criteria. Full texts of the articles included were rescreened using the same criteria. Any discrepancies between the reviewers were discussed and resolved.
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Methodological Quality Assessment of Articles
We appraised risk of bias in the included articles with the Mixed Methods Appraisal Tool (MMAT).[29] Appraising risk of bias uncovers limitations of methodological quality for consideration when gathering evidence. The MMAT is specifically designed for concomitantly appraising studies with different designs, such as quantitative, qualitative, and mixed-methods researches. It produces comparable scores across study designs[30] with highly reliable interclass correlations (ICC) ranging from 0.84 to 0.94.[31] [32] [33]
The MMAT consists of two initial screening questions that identify articles for which further appraisal may not be feasible or appropriate, as follows: (1) Are there clear qualitative and quantitative research questions/objectives, or a clear mixed methods question/objective? and (2) Do the collected data address the research question/objective? Articles failing either or both screening questions do not proceed to domain-specific appraisal. Subsequent question sets are specific to the study design. Domain-specific questions number four for qualitative articles and four questions for each of the three quantitative study designs (randomized controlled, nonrandomized, or descriptive). Mixed-method articles are evaluated using both the qualitative and appropriate quantitative study questions. There are three additional questions specific to mixed-method articles. The quality appraisal score is determined by dividing n criteria met by N total criteria in each applicable domain and converted to percentages for comparison across articles. Following this protocol, three reviewers (M.R.T., A.M., and D.B.) independently appraised each study. Interrater reliability was calculated and discrepancies were discussed until resolved. Scores are reported according to a star-rating system as suggested by the authors of the MMAT[34] and in alignment with a recent review that also used this tool to appraise quality.[35]
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Data Extraction and Synthesis
The data extraction methods for this systematic review followed preferred reporting items for systematic reviews and meta-analyses (PRISMA) guidelines.[36] [37] We conducted several activities to extract and synthesize findings in formats that aligned with the two research objectives. To address the first objective, two authors (M.R.T. and A.M.) independently extracted information about characteristics of the visualizations included in each manuscript, including type (e.g., line graph, bar graph, etc.), aesthetic components (e.g., use of color), and informational components (e.g., contextualizing information). The two authors worked from the same definitions of visualization types during this phase, depicted in [Fig. 1], for standardization in the data extraction process. In addition, the two authors discussed visualization types or components in the included articles that were unclear until consensus was reached. To address the second objective, the two authors independently extracted relevant characteristics from each study including field of publication, research aims, study design and methods, sample characteristics, clinical focus, outcome measures, and major findings. The first author (M.R.T.) initially synthesized extracted information by comparing articles within the data extraction tables and creating visualizations. All authors participated in further synthesis and final reporting of results.


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Results
Search Results
A total of 2,362 articles were retrieved from five databases ([Fig. 2]). After 224 (10%) duplicate articles were excluded, 2,138 articles were screened based on title and abstract. During title/abstract screening, 2,032 articles were excluded. The most common reasons were articles described visualizations of nonhealth data (n = 870; 41%) and were not patient-facing (n = 834; 39%). During full-text screening of the remaining articles (n = 106), 67 articles were also excluded. The most common reason was that no visualization was discussed or included in the article (n = 47; 44%). A total of 39 articles were ultimately included.


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Results Pertaining to Visualizations
Description of Visualizations in Included Articles
[Table 2] addresses the first research objective by describing the visualizations in the included articles (n = 39). Most patient-facing visualizations focused on monitoring and management of various chronic conditions (n = 21, 54%). Of these, almost half (n = 12) were specifically for diabetes. Visualizations for wellness or prevention (n = 15, 38%) mostly displayed laboratory values that are routinely monitored for preventive purposes, such as cholesterol. In most articles, visualizations were embedded in an existing mobile or web-based application (n = 22, 56%), such as patient portals and consumer-facing applications. Half of these applications (n = 11) were integrated into clinical care. The remaining articles (n = 17, 44%) displayed visualizations in paper or web-based mockups. Overall, the data displayed in the visualizations came from patients (e.g., self-reported symptoms) and providers (e.g., laboratory values) nearly equally. Continuous data were by far the most common type of data displayed (83%), and it was most frequently presented in line graphs and number lines. Icons were the most common types of visualizations displaying categorical data, including both nominal and ordinal data.
First author (year) |
Tested with human patients[b] |
Clinical focus |
Clinical purpose |
Display medium |
Health data being displayed and visualization information |
||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Paper |
Electronic (web or mobile) |
Embedded in existing tool |
Data |
Source |
Visualization type |
Data type |
|||||||
User |
Clinician |
Continuous |
Nominal |
Ordinal |
|||||||||
Ankerson, (2017)[76] |
Chronic condition (irritable bowel syndrome) |
Monitoring and management; decision support |
Constant Care application[c] |
Total inflammatory burden score (TIBS) calculated using colitis/Crohn's indices and fecal calprotectin level |
✓ |
Line graph[d] |
✓ |
||||||
✓ |
General |
Wellness/prevention |
✓ |
Stress, exercise, sleep, blood pressure, diet |
✓ |
✓ |
Icon |
✓ |
✓ |
||||
Number line |
✓ |
||||||||||||
✓ |
General |
Wellness/prevention |
✓ |
Stress, exercise, sleep, blood pressure, diet |
✓ |
✓ |
Icon |
✓ |
✓ |
||||
Number line |
✓ |
||||||||||||
Beaudin, (2006)[77] |
✓ |
General |
Wellness/prevention |
✓ |
✓ |
Weight, step count, diet, groceries, symptoms, skin changes, general behaviors (e.g., time spent watching television) |
✓ |
Line graph[d] |
✓ |
||||
Bar graph |
✓ |
||||||||||||
Body map |
✓ |
||||||||||||
Brewer et al, (2012) |
✓ |
General |
Wellness/prevention |
✓ |
BMI, BP, cholesterol |
✓ |
Bar graph |
✓ |
|||||
Britto et al, (2009) |
✓ |
Chronic condition (pediatric cystic fibrosis, diabetes, and arthritis) |
Monitoring and management |
Patient portal MyCare Connection[c] |
Laboratory values |
✓ |
Bar graph |
✓ |
|||||
Cox et al, (2015) |
✓ |
Chronic condition (cystic fibrosis) |
Increasing physical activity |
Web-based application: ActivOnline |
Passively collected physical activity data (steps, exercise duration) |
✓ |
Line graph[d] |
✓ |
|||||
Desai, (2018)[78] |
✓ |
Chronic condition (type-2 diabetes) |
Monitoring and management |
Mobile application |
Current and forecasted blood glucose levels |
✓ |
Icon |
✓ |
|||||
Number line |
✓ |
||||||||||||
Line graph |
✓ |
||||||||||||
Elder and Barney, (2012) |
✓ |
General |
Wellness/prevention |
✓ |
Cholesterol |
✓ |
Number line |
✓ |
|||||
Line graph |
✓ |
||||||||||||
Radar graph |
✓ |
||||||||||||
Farmer, (2005)[79] |
Chronic condition (type-1 diabetes) |
Monitoring and management |
✓ |
Blood glucose readings; blood glucose data at set time points (pre-meal and bedtime), mean blood glucose, insulin dosage |
✓ |
Bar graph[d] |
✓ |
||||||
Filipi, (2013)[80] |
Chronic condition (migraine) |
Symptom monitoring and management |
✓ |
Headache severity |
✓ |
Bar graph[d] |
✓ |
||||||
Foraker, (2014)[81] |
Cardiovascular disease in older women |
Wellness/prevention |
Patient portal (Epic MyChart)[c] |
American Heart Association's Life's Simple 7: smoking status, body mass index, blood pressure, cholesterol, fasting glucose, physical activity, and diet. |
✓ |
Icon |
✓ |
||||||
Fraccaro et al, (2018)[63] |
✓ |
Chronic condition (chronic kidney disease) |
Monitoring and management |
Web-based application: PatientView[c] |
Laboratory values |
✓ |
Number line |
✓ |
|||||
Line graph[d] |
✓ |
||||||||||||
Frost and Massagli, (2008)[52] |
✓ |
Chronic condition (amyotrophic lateral sclerosis/ALS) |
Shared decision-making |
Web-based application: PatientsLikeMe |
Progression rates, prescriptions, symptoms |
✓ |
Line graph[d] |
✓ |
|||||
Bar graph |
✓ |
||||||||||||
Harris et al, (2010)[50] |
✓ |
Chronic condition (diabetes) |
Monitoring and management |
Mobile application HealthReach Mobile[c] |
Blood glucose levels |
✓ |
Line graph[d] |
✓ |
|||||
Hohenstein et al, (2018)[62] |
✓ |
General |
Wellness/prevention |
Mobile application: Nutriphone |
Laboratory values |
✓ |
Visual paragraph |
✓ |
✓ |
||||
Number line |
✓ |
||||||||||||
Hosseini, (2017)[82] |
Chronic condition (pediatric asthma) |
Monitoring and management |
✓ |
Risk Level, Peak Expiratory Flow, and Forced Expiratory Volume |
✓ |
Icon |
✓ |
||||||
Line graph[d] |
✓ |
||||||||||||
Ilic, (2009)[83] |
Cognitive status |
Wellness/prevention |
✓ |
Results of cognitive testing such as attention and working memory |
✓ |
Bar graph |
✓ |
||||||
Line graph[d] |
✓ |
||||||||||||
Icon |
✓ |
||||||||||||
Kallen, (2012)[84] |
✓ |
Hospice care |
Symptom monitoring and management; patient-provider communication |
✓ |
Symptom trends, pain assessment, laboratory values, vital signs |
✓ |
✓ |
Bar graph |
✓ |
||||
Body map |
✓ |
||||||||||||
Line graph[d] |
✓ |
||||||||||||
Kopanitsa, (2015)[a] |
✓ |
General |
Wellness/prevention |
Patient portal[c] |
Laboratory values |
✓ |
Line graph[d] |
✓ |
|||||
✓ |
Older adult health |
Wellness/prevention; patient-provider communication |
Patient portal[c] |
Laboratory values |
✓ |
Line graph[d] |
✓ |
||||||
Lee, (2005)[86] |
Chronic condition (asthma) |
Monitoring and management |
✓ |
Medication usage and symptoms |
✓ |
Line graph[d] |
✓ |
||||||
Lowe-Strong, (2005)[87] |
Chronic condition (multiple sclerosis) |
Symptom monitoring and management |
✓ |
Pain/incontinence/weakness severity |
✓ |
Bar graph[d] |
✓ |
||||||
Body map |
✓ |
||||||||||||
Martinez et al, (2018)[57] |
✓ |
Chronic condition (type-2 diabetes) |
Monitoring and management |
Patient portal |
Hemoglobin A1c, blood pressure, cholesterol, microalbumin, flu vaccine status |
✓ |
Icon |
✓ |
|||||
Number line |
✓ |
||||||||||||
Mena, (2013)[88] |
✓ |
Cardiovascular disease |
Wellness/prevention |
Mobile application: ARV mobile[c] |
Ambulatory blood pressure (systolic and diastolic) and heart rate |
✓ |
Line graph[d] |
✓ |
|||||
Morrow et al, (2017)[48] |
✓ |
Older adult health |
Wellness/prevention |
Patient portal[c] |
Cholesterol |
✓ |
Number line |
✓ |
|||||
Robu, (2016)[89] |
Pregnancy |
Monitoring and management |
Mobile application: ObGynCare [c] |
Blood pressure, heart rate, weight, blood sugar |
✓ |
Line graph[d] |
✓ |
||||||
Rudin, (2017)[90] |
✓ |
Chronic condition (asthma) |
Monitoring and management |
Patient portal[c] |
Asthma symptoms |
✓ |
Line graph[d] |
✓ |
|||||
Schenk, (2011)[91] |
Chronic condition (diabetes) |
Monitoring and management |
✓ |
Blood glucose levels, medication adherence |
✓ |
Line graph[d] |
✓ |
||||||
✓ |
Chronic condition (type-2 diabetes) |
Monitoring and management |
Patient portal |
Hemoglobin A1c and laboratory values |
✓ |
Number line |
✓ |
||||||
Skrovseth, (2012)[92] |
Chronic condition (diabetes) |
Monitoring and management |
Mobile application FewTouch |
Glucose measurements |
✓ |
Line graph[d] |
✓ |
||||||
Scatterplot |
✓ |
||||||||||||
Smith et al, (2006)[53] |
✓ |
Chronic condition (type 1 diabetes) |
Monitoring and management; patient-provider communication |
✓ |
Blood glucose, health behaviors |
✓ |
Scatterplot[d] |
✓ |
|||||
Snyder, (2018)[93] |
✓ |
Cancer |
Monitoring and management |
✓ |
Physical and emotional function and symptoms |
✓ |
Line graph[d] |
✓ |
|||||
Solomon et al, (2016)[61] |
✓ |
Chronic condition (diabetes) |
Monitoring and management |
Patient portal |
Hemoglobin A1c and laboratory values |
✓ |
Number line |
✓ |
|||||
Tao et al, (2018)[60] |
✓ |
General |
Wellness/prevention |
✓ |
Blood glucose levels |
✓ |
Number line[d] |
✓ |
|||||
Voils, (2012)[94] |
Chronic condition (diabetes) |
Genetic testing for diabetes self-management |
✓ |
Calculated lifetime risk of diabetes |
✓ |
Number line |
✓ |
||||||
Watson et al, (2009)[64] |
✓ |
Chronic condition (diabetes) |
Monitoring and management |
✓ |
Blood glucose levels |
✓ |
Line graph[d] |
✓ |
|||||
✓ |
General |
Wellness/prevention |
Patient portal |
Laboratory values |
✓ |
Number line |
✓ |
||||||
✓ |
General |
Wellness/prevention |
Patient portal |
Laboratory values |
✓ |
Number line |
✓ |
Abbreviations: ALS, amyotrophic lateral sclerosis; ARV, average real variability; BMI, body mass index; BP, blood pressure.
a The following articles originate from the same parent study: Arcia et al 2015 and 2016; Kopanitsa 2015 and 2016; Zikmund-Fisher et al 2017 and 2018.
b Characteristics and quality appraisal for the 27 studies that do contain human patients testing are reported in [Table 3].
c Integrated into clinical care.
d Longitudinal data display.
[Fig. 3] displays the prevalence and relationship between visualization types and components. The most common visualization types in these articles were line graphs (35%), followed by number lines (25%), bar graphs (16%), and icons (12%). Line graphs were the most common types of visualizations employed when longitudinal data were displayed. Other visualizations were used in three or fewer articles, and included body maps, scatterplots, radar graphs, and visual paragraphs. The most common visualization component overall was numbers, included in 88% of visualizations, and in all types of visualizations we reviewed except body maps. Color was also frequently included (77%) and was found in all types of visualizations we reviewed except visual paragraphs and radar graphs. The “traffic light” color scheme (red–yellow–green) was most frequently employed among the visualizations that included color. Data labels (which specify units and other details about the data within the visualization), longitudinal data displays, contextual information, such as descriptive text (“your blood pressure improved”) and references ranges were included in nearly half of visualizations (40–47%). Legends for colors or symbols and advanced data analytics were included in relatively few visualizations. The visualizations that did feature data analytics included algorithms that calculated risk scores and identified significant trends or patterns in the data. All other visualizations displayed raw scores or values, or simple descriptive statistics, such as counts and means.


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Frequencies of Patient-Facing Visualizations in Published Literature
[Fig. 4] maps characteristics of the visualizations in the articles included in this review during the publication timeframe, from 2005 to 2018 ([Fig. 4]). While chronic conditions remained a major clinical focus, visualizations pertaining to general wellness, and prevention (e.g., exercise data) became more widely used in the articles we examined. Informatics journals were the initial fields publishing this work, and for the past few years have been leading the number of articles in this area once again. Visualizations embedded in existing tools (e.g., mobile applications and patient portals) increased in the included articles, as did visualizations displaying laboratory values. Publications reporting visualizations of PGHD and PROs have remained common. Overall, line graphs were the most common of all visualizations throughout the examined publication timeframe. Number lines and icons increased in the past few years, with six articles publishing number line visualizations in 2018. Bar graphs and other visualization types became less common in the articles we examined since 2013.


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Results Pertaining to Human Patients Research on Visualizations
The characteristics and quality appraisal results of the 27 articles of the 39 articles that reported on human patients, research are reported in [Table 3], addressing the second research objective. The articles that did not include human patients research (n = 12) reported instead on the development of a patient-focused technical system and technical feasibility.
Abbreviations: ABP, ambulatory blood pressure; CF, cystic fibrosis; EHR, electronic health record; ISO, the International Organization for Standardization; MMAT, mixed-methods appraisal tool PRO, patient-reported outcome.
Note: MMAT scores denoted by star rating system as follows: a51–75% and b76–100%.
Risk of Bias
Of the 27 articles, qualitative articles (n = 12) scored between 50 and 100%, indicating low-to-high quality. They primarily lost points for inconsistencies between identified qualitative methodology and description of procedures, and for failing to consider the researchers' influence on findings through interactions with participants. Quantitative articles (n = 8) scored between 50 and 100% (low-to-high quality), losing points for sampling issues (nonrepresentative samples and biased sampling strategies), and failing to use validated scales when measuring outcomes. Mixed-method articles (n = 7) scored between 54 and 85% (low-to-high quality). In addition to losing points for the same reasons as qualitative and quantitative articles, the mixed-method articles also lost points for failing to cohesively integrate the quantitative and qualitative findings. Interrater reliability between the three reviewers was acceptable (0.77–0.88).
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Characteristics of Articles with Human Patients Research
The vast majority of the articles (n = 17, 63%) were published in informatics journals, while seven (26%) were published in medical and health care journals, and three (11%) were published in computer science or engineering journals. Sample sizes varied from seven to over 6,700 participants (mean = 369 ± 1,255). Among the articles reporting these characteristics, participants were predominantly middle aged (mean = 51 ± 11), female (60% on average), and White non-Hispanic (70% on average).
Educational attainment was reported in eight articles (30%) and was generally high with 77% of participants in these articles having a college degree or higher on average. Health literacy was measured in five articles (19%), most commonly using the brief three-item screener.[38] Three articles measured numeracy, all using the Subjective Numeracy Scale,[39] and two measured graph literacy using the scale published by Galesic and Garcia-Retamero.[40] Levels of health literacy, numeracy, and graph literacy vary widely between these articles, but the format for reporting (e.g., raw scores, percentages, or descriptions such as “inadequate”) was inconsistent.
The most prevalent research purposes stated by authors were feasibility testing (n = 8), comprehension testing (n = 7), user-centered design sessions (n = 6), and usability testing (n = 4). Common methods for assessing cognitive processes in response to visualizations included “think-aloud protocols,” a usability method in which end-users think aloud as they are performing a set of specified, representative tasks,[41] [42] and eye tracking in which eye movements are unobtrusively measured as the user views content of interest.[43] [44] In some articles (n = 4, 15%), randomization was employed to vary either the order in which visualizations were presented or conditions that participants viewed.[45] [46] [47] [48]
Outcomes pertinent to the visualizations included comprehension (including accuracy and perceived confidence in interpretation), risk perception, behavioral intention (i.e., intention to act in response to the visualization), satisfaction, and preferences. The level of detail in study findings related to visualizations versus other outcomes, for example, usability of an application in which visualizations are embedded, varied widely. Of the articles reporting visualization-specific findings, many reported that visualizations were generally well liked by patients and considered valuable.[49] [50] [51] Visualizations helped patients to ask more sophisticated clinical questions, identify relationships over time, and articulate specific health concerns.[52] [53]
The level of support for patient comprehension of different visualization types varied between studies. For example, two articles reported that line graphs were difficult for patients to interpret.[54] [55] Conversely, a panel of experts in a third article recommended line graphs for longitudinal data.[56] Metaphorical icons increased comprehension in some cases[57] but not when patients interpreted them too literally. For example, patients in one study interpreted icons of fruit baskets, intended to represent the number of fruit servings they had consumed, to mean they consumed each of the illustrated fruits.[58] Nonetheless, bar graphs and number lines were liked and understood by most patients,[55] [59] and they also improved understanding of borderline test results.[47] [59]
Some articles reported that coloring particular regions of visualizations helps patients to understand when values have reached levels that are considered high risk and also increases confidence in interpretation.[58] [60] [61] Importantly, confidence in interpretation did not always correlate with objective comprehension.[62] Several articles showed that inclusion of contextual information in visualizations (e.g., reference ranges and explanatory text), especially when personalized, also improves objective comprehension.[45] [46] [55] [56] [57] [58] [60] Although these components are also helpful for patients interpreting medium risk clinical scenarios and borderline test results, these scenarios remained the most challenging for patients to interpret.[47] [63]
The only study measuring a clinical outcome reported a trend of decreasing blood glucose and hemoglobin A1c levels over 3 months among participants who completed a web-based self-monitoring intervention that included line graphs of blood glucose over time.[64] However, the small sample size (n = 7) prevented the statistical significance of these trends from being assessed.
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Discussion
In this systematic review, we reviewed 39 articles to evaluate the types and components of patient-facing visualizations, and research methods and findings related to the development and evaluation of visualizations with patients currently reported in the literature. The visualization types and components in the 39 articles differed, but most included color and number components, and line graphs were the most common type of visualization. The evaluation methods used in the 27 articles that conducted human patients' research on the visualizations varied enormously, with little standardization across the articles with regards to instruments, methodologies, or measurement of patient characteristics that may influence interpretation, such as health literacy or numeracy. As a result, findings cannot easily be compared, and best practices are difficult to identify.
In fact, our review suggests that there is a need for greater attention to developing patient-facing visualizations in general. Our search identified a significantly larger number of articles that included health-care provider or researcher-facing visualizations (n = 834) compared with patient-facing visualizations. This suggests that systems for patients to visualize their health data are not being developed at the same pace as provider-facing systems, despite the fact that more than half of individuals nationwide currently have the patient-portal access.[65] Below we highlight three key opportunities that may advance future research on patient-facing visualizations and allow best practices to more readily be identified.
First, in research on patient-facing visualizations, there are opportunities for more robust data collection and reporting. Nearly half of the articles included in this review either did not conduct any human patients' research on the technology system they developed or did not report findings, specifically related to the visualizations. We also excluded a large number of articles that appeared otherwise eligible for inclusion because they did not include actual images of the visualizations. In addition, many articles reported either no characteristics of the patient sample or a very limited number (e.g., age and gender only). Patient characteristics that were reported indicate nongeneralizable samples, with most participants being middle aged, female, White, and having high-educational attainment. This suggests that findings may be biased to a specific set of patients, and less applicable to underserved, very young, and very old individuals. Importantly, health literacy, graph literacy, and numeracy of the patients were rarely measured or reported. These patient characteristics influence comprehension and risk perception and are therefore important to measure, so that visualizations can be appropriately tailored. Color blindness also influences comprehension of certain colored visual elements, such as the “traffic-light” color scheme that was popular in the included articles. Given that this condition affects an estimated 8% of the male population,[66] color-blindness screening should also be included in future research. In addition, colors and symbols take on different meanings depending on the patient's cultural background[19] [67] which highlights the importance of investigating how the target patient population interprets color when evaluating visualizations which use color encodings. In sum, efforts to collect and report more detailed sample data will facilitate identification of optimal visualizations for specific patient populations.
Second, this review shows there are no consistent approaches in the literature for selecting, developing, or evaluating visualizations according to a particular data type or goal. Nuances in visualization types and components varied widely between articles, as did the methods and measures used to evaluate them. For example, some articles reported general qualitative preferences while some conducted quantitative comprehension and risk perception testing using randomization methods. Moreover, in several articles, the purposes of the visualizations were not explicitly stated. The range of possible purposes is wide, from interpreting a single value, to interpreting values in the context of a goal value or range, to identifying important trends over time. Ultimately, this makes comparison and identification of visualizations that are successful in achieving a particular communication goal challenging. Related reviews examining evaluation methods of health-related visualizations, albeit more broadly, also found a lack of standardized tools and methods for evaluating these visualizations,[21] [22] which hinders progress toward identifying optimal visualizations for an intended audience.
Finally, there exist synergistic opportunities to enhance interpretation and guide behaviors by leveraging data science and using clinically meaningful boundaries, otherwise known as minimally important differences (MIDs).[68] Less than one quarter of the visualizations in the reviewed articles used advanced analytics to generate deeper insights in the data, such as risk scores and significant trends. There have been countless advancements in health data science such that algorithms can now identify meaningful patterns and generate predictions from personal health data. As such, there exists a major opportunity to pair advanced analytics with visualization to convey clinically meaningful and actionable information to patients. It will also be important to extend this work beyond visualizations of data with clear boundaries for action, such as laboratory values, which have well-established normal ranges. The prevalence of visualizations displaying laboratory values among articles in this review is aligned with a recent report showing that laboratory test results are the most common type of information currently offered in patient portals.[65] Nonetheless, MIDs for many other types of personal health data (symptoms and health behaviors) are equally important but more challenging to identify and convey to patients. Currently, research identifying MIDs in PROs and other PGHD is gaining momentum.[68] Visualization-focused research can move this research forward by identifying optimal formats for conveying the MIDs to patients.
Future work should always consider the evolving clinical infrastructure in which these visualizations, and the digital tools in which they are embedded, are being deployed. Clinical practice is changing in the wake of the Affordable Care Act and associated legislation (HITECH, MACRA, 21st Century Cures), which led to a cascade of policies and initiatives encouraging patients to directly exchange health data with providers.[69] [70] [71] [72] This legislation also led to regulatory changes, including a more defined role of the Food and Drug Administration (FDA) in regulating digital health.[69] Whereas low-risk general wellness products (e.g., weight management and physical fitness tracking) are generally not regulated, some tools may be considered Software as a Medical Device (SaMD) and subject to FDA regulation.[73] While compliance with the FDA's evolving regulations will be important, the safety implications of releasing technologies for use by patients that are not regulated will be even more important to address. Without thoughtful design and evaluation, patients without high levels of health literacy and numeracy may draw inaccurate conclusions from personal health data and take inappropriate, possibly unsafe actions as a result of these conclusions.[74] [75] Thus, future work should address the potential role that information visualizations may play in mitigating unintended negative impacts of these policy changes on clinical care, patient safety, health behaviors, and the patient-provider relationship, while bolstering positive impacts.
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Conclusion
This systematic review evaluating the state of the science of patient-facing visualizations reveals current trends and research findings that suggest certain visualization types and components that may foster comprehension and interpretation. However, more attention on developing and evaluating patient-facing visualizations is needed. We find opportunities for such research to engage in more robust data collection and reporting and more systematic methods for evaluation; identify and communicate clinically actionable boundaries (MIDs) for diverse data types; and use data science to bolster the patients' ability to interpret and act upon the data. This research will be critically important as patient access of their personal health data through digital health tools continues to rise.
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Clinical Relevance Statement
Direct patient access of personal health information through digital and electronic platforms is becoming increasingly prevalent. Patient-facing visualizations may be a powerful a tool for increasing understanding and interpretation of these data. Recommendations generated from the literature base are important for those seeking to develop or implement patient-facing visualizations in clinical settings.
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Multiple Choice Questions
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Which of the following was the most popular type of visualization for displaying longitudinal data among the articles included in this review?
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Bar graphs.
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Scatterplots.
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Line graphs.
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Number lines.
Correct Answer: The correct answer is option c. In addition to being the most common visualization in the publication timeframe examined (2005–2018), in general, line graphs were the most common visualization type for displaying longitudinal data; 80% of longitudinal data visualizations used line graphs.
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Which type of personal health data are most common in both patient portals and in the visualizations in this review that were specifically focused on wellness and prevention?
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Laboratory values.
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Blood pressure readings.
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Symptoms.
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List of current medications.
Correct Answer: The correct answer is option a. A recent report from the Office of the National Coordinator for Health Information Technology (ONC) showed that laboratory test results are the most common type of information currently offered in patient portals.[65] In our review, over half of the visualizations focused on wellness and prevention displayed laboratory values, more than any other type of health data.
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Conflict of Interest
None declared.
Acknowledgments
We thank Drew Wright of Information Technologies and Services at Weill Cornell Medical College for assistance in developing and implementing a search strategy, and for his general support and guidance on this review.
Protection of Human and Animal Subjects
This project did not involve human patients' research.
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References
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Address for correspondence
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References
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