RSS-Feed abonnieren
DOI: 10.1055/s-0041-1731004
The Cosmos Collaborative: A Vendor-Facilitated Electronic Health Record Data Aggregation Platform
Funding Y.T. and D.K. report support by the Clinical and Translational Science Collaborative (CTSC) of Cleveland which is funded by the National Institutes of Health (NIH), National Center for Advancing Translational Science (NCATS), Clinical and Translational Science Award (CTSA) grant, UL1TR002548. The content is solely the responsibility of the authors and do not necessarily represent the official views of the NIH.Abstract
Objective Learning healthcare systems use routinely collected data to generate new evidence that informs future practice. While implementing an electronic health record (EHR) system can facilitate this goal for individual institutions, meaningfully aggregating data from multiple institutions can be more empowering. Cosmos is a cross-institution, single EHR vendor-facilitated data aggregation tool. This work aims to describe the initiative and illustrate its potential utility through several use cases.
Methods Cosmos is designed to scale rapidly by leveraging preexisting agreements, clinical health information exchange networks, and data standards. Data are stored centrally as a limited dataset, but the customer facing query tool limits results to prevent patient reidentification.
Results In 2 years, Cosmos grew to contain EHR data of more than 60 million patients. We present practical examples illustrating how Cosmos could further efforts in chronic disease surveillance (asthma and obesity), syndromic surveillance (seasonal influenza and the 2019 novel coronavirus), immunization adherence and adverse event reporting (human papilloma virus and measles, mumps, rubella, and varicella vaccination), and health services research (antibiotic usage for upper respiratory infection).
Discussion A low barrier of entry for Cosmos allows for the rapid accumulation of multi-institutional and mostly de-duplicated EHR data to power research and quality improvement queries characteristic of learning healthcare systems. Limitations are being vendor-specific, an “all or none” contribution model, and the lack of control over queries run on an institution's healthcare data.
Conclusion Cosmos provides a model for within-vendor data standardization and aggregation and a steppingstone for broader intervendor interoperability.
Keywords
electronic health record - data aggregation - research network - health information exchange - collaborationProtection of Human and Animal Subjects
Since data returned from Cosmos is de-identified and presented in aggregate, Cosmos queries do not constitute human subjects research and so do not require institutional review board approval for research purposes.
Authors' Contributions
All listed authors provided substantial contributions to the conception of the work, as well as the analysis and interpretation of data for the work. All listed authors were involved in drafting and approving the final manuscript, and agree to be accountable for all aspects of the work.
Publikationsverlauf
Eingereicht: 14. Februar 2021
Angenommen: 13. April 2021
Artikel online veröffentlicht:
30. Juni 2021
© 2021. The Author(s). This is an open access article published by Thieme under the terms of the Creative Commons Attribution License, permitting unrestricted use, distribution, and reproduction so long as the original work is properly cited. (https://creativecommons.org/licenses/by/4.0/)
Georg Thieme Verlag KG
Rüdigerstraße 14, 70469 Stuttgart, Germany
-
References
- 1 H.R. 1 - American Recovery and Reinvestment Act of 2009. Accessed September 8, 2018 at: https://www.congress.gov/bill/111th-congress/house-bill/1
- 2 Henry J, Pylypchuk S, Searcy Y, Patel V. Adoption of electronic health record systems among U.S. non-federal acute care hospitals. : 2008–2015. Accessed September 8, 2018 at: https://www.cms.gov/Regulations-and-Guidance/Legislation/EHRIncentivePrograms/Certification.html
- 3 McGinnis JM, Aisner D, Olsen L. The Learning Healthcare System: Workshop Summary. Washington, D.C.: National Academies Press; 2007
- 4 Friedman C, Rubin J, Brown J. et al. Toward a science of learning systems: a research agenda for the high-functioning learning health system. J Am Med Inform Assoc 2015; 22 (01) 43-50
- 5 Cohen ME, Liu Y, Ko CY, Hall BL. Improved surgical outcomes for ACS NSQIP hospitals over time. Ann Surg 2016; 263 (02) 267-273
- 6 Hall BL, Hamilton BH, Richards K, Bilimoria KY, Cohen ME, Ko CY. Does surgical quality improve in the American College of Surgeons National Surgical Quality Improvement Program: an evaluation of all participating hospitals. Ann Surg 2009; 250 (03) 363-376
- 7 Khuri SF, Henderson WG, Daley J. et al; Principal Investigators of the Patient Safety in Surgery Study. Successful implementation of the Department of Veterans Affairs' National Surgical Quality Improvement Program in the private sector: the Patient Safety in Surgery study. Ann Surg 2008; 248 (02) 329-336
- 8 Lenert L, Sundwall DN. Public health surveillance and meaningful use regulations: a crisis of opportunity. Am J Public Health 2012; 102 (03) e1-e7
- 9 Topaloglu U, Palchuk MB. Using a federated network of real-world data to optimize clinical trials operations. JCO Clin Cancer Inform 2018; 2: 1-10
- 10 Califf RM. The Patient-Centered Outcomes Research Network: a national infrastructure for comparative effectiveness research. N C Med J 2014; 75 (03) 204-210
- 11 Kaelber DC, Foster W, Gilder J, Love TE, Jain AK. Patient characteristics associated with venous thromboembolic events: a cohort study using pooled electronic health record data. J Am Med Inform Assoc 2012; 19 (06) 965-972
- 12 Psaty BM, Breckenridge AM. Mini-Sentinel and regulatory science--big data rendered fit and functional. N Engl J Med 2014; 370 (23) 2165-2167
- 13 Vogel J, Brown JS, Land T, Platt R, Klompas M. MDPHnet: secure, distributed sharing of electronic health record data for public health surveillance, evaluation, and planning. Am J Public Health 2014; 104 (12) 2265-2270
- 14 Buck MD, Anane S, Taverna J, Amirfar S, Stubbs-Dame R, Singer J. The Hub Population Health System: distributed ad hoc queries and alerts. J Am Med Inform Assoc 2012; 19 (e1): e46-e50
- 15 Tarabichi Y, Goyden J, Liu R, Lewis S, Sudano J, Kaelber DC. A step closer to nationwide electronic health record-based chronic disease surveillance: characterizing asthma prevalence and emergency department utilization from 100 million patient records through a novel multisite collaboration. J Am Med Inform Assoc 2020; 27 (01) 127-135
- 16 Bodenreider O. The Unified Medical Language System (UMLS): integrating biomedical terminology. Nucleic Acids Res 2004; 32 (Database issue, suppl_1): D267-D270
- 17 American Medical Association, National Uniform Claim Committee. Health care provider taxonomy. Accessed July 16, 2020 at: http://www.nucc.org/index.php/code-sets-mainmenu-41/provider-taxonomy-mainmenu-40
- 18 National Uniform Billing Committee. Official UB-04 data file. Accessed July 16, 2020 at: https://www.nubc.org/license
- 19 National Center for Health Statistics. Classification of diseases, functioning, and disability. Accessed July 16, 2020 at: https://www.cdc.gov/nchs/icd/index.htm
- 20 Dolin RH, Alschuler L, Beebe C. et al. The HL7 clinical document architecture. J Am Med Inform Assoc 2001; 8 (06) 552-569
- 21 The Health Insurance Portability and Accountability Act of 1996. In. Vol Pub. L. 104–191. Stat. 1936. 1996. Accessed 1996 at: https://www.govinfo.gov/content/pkg/PLAW-104publ191/pdf/PLAW-104publ191.pdf
- 22 Winden TJ, Boland LL, Frey NG, Satterlee PA, Hokanson JS. Care everywhere, a point-to-point HIE tool: utilization and impact on patient care in the ED. Appl Clin Inform 2014; 5 (02) 388-401
- 23 Dang QH. Secure hash standard. Federal Inf. Process. Stds. (NIST FIPS) - 180–4. Accessed 2015 at: https://www.nist.gov/publications/secure-hash-standard
- 24 Kaelber DC, Waheed R, Einstadter D, Love TE, Cebul RD. Use and perceived value of health information exchange: one public healthcare system's experience. Am J Manag Care. 2013; 19 (10 Spec No): SP337-343
- 25 Ross MK, Sanz J, Tep B, Follett R, Soohoo SL, Bell DS. Accuracy of an electronic health record patient linkage module evaluated between neighboring academic health care centers. Appl Clin Inform 2020; 11 (05) 725-732
- 26 R: A Language and Environment for Statistical Computing [computer program]. Vienna, Austria: R Foundation for Statistical Computing; ; Accessed 2013 at: http://softlibre.unizar.es/manuales/aplicaciones/r/fullrefman.pdf
- 27 Wickham H. ggplot2. Elegant Graphics for Data Analysis. Springer-Verlag New York; ; Available at: 2016
- 28 Akinbami LJ, Fryar CD. Current asthma prevalence by weight status among adults: United States, 2001-2014. NCHS Data Brief 2016; 2016 (239) 1-8
- 29 Ma J, Xiao L, Stafford RS. Underdiagnosis of obesity in adults in US outpatient settings. Arch Intern Med 2009; 169 (03) 313-314
- 30 Bardia A, Holtan SG, Slezak JM, Thompson WG. Diagnosis of obesity by primary care physicians and impact on obesity management. Paper presented at: Mayo Clinic Proceedings Accessed 2007 at: https://www.mayoclinicproceedings.org/article/S0025-6196(11)61333-5/abstract
- 31 Hasegawa K, Tsugawa Y, Lopez BL, Smithline HA, Sullivan AF, Camargo Jr CA. Body mass index and risk of hospitalization among adults presenting with asthma exacerbation to the emergency department. Ann Am Thorac Soc 2014; 11 (09) 1439-1444
- 32 Schatz M, Zeiger RS, Zhang F, Chen W, Yang S-J, Camargo Jr CA. Overweight/obesity and risk of seasonal asthma exacerbations. J Allergy Clin Immunol Pract 2013; 1 (06) 618-622
- 33 Centers for Disease Control and Prevention. U.S. Influenza Surveillance System: Purpose and Methods. Accessed 2020 at: https://www.cdc.gov/flu/weekly/overview.htm#:~:text=The%20U.S.%20influenza%20surveillance%20system,%2C%20clinics%2C%20and%20emergency%20departments
- 34 Jeudin P, Liveright E, Del Carmen MG, Perkins RB. Race, ethnicity, and income factors impacting human papillomavirus vaccination rates. Clin Ther 2014; 36 (01) 24-37
- 35 Chen RT, Glasser JW, Rhodes PH. et al; The Vaccine Safety Datalink Team. Vaccine Safety Datalink project: a new tool for improving vaccine safety monitoring in the United States. Pediatrics 1997; 99 (06) 765-773
- 36 Klein NP, Fireman B, Yih WK. et al; Vaccine Safety Datalink. Measles-mumps-rubella-varicella combination vaccine and the risk of febrile seizures. Pediatrics 2010; 126 (01) e1-e8
- 37 Nyquist A-C, Gonzales R, Steiner JF, Sande MA. Antibiotic prescribing for children with colds, upper respiratory tract infections, and bronchitis. JAMA 1998; 279 (11) 875-877
- 38 Gonzales R, Steiner JF, Sande MA. Antibiotic prescribing for adults with colds, upper respiratory tract infections, and bronchitis by ambulatory care physicians. JAMA 1997; 278 (11) 901-904
- 39 Ashman JJ. QuickStats. Percentage of Emergency Department Visits for Acute Viral Upper Respiratory Tract Infection at Which an Antimicrobial Was Given or Prescribed, by Age — United States. , 2010–2017. MMWR Morb Mortal Wkly Rep. 2020 (69:174). Accessed 2010 at: https://www.cdc.gov/mmwr/volumes/69/wr/pdfs/mm6906a6-H.pdf
- 40 Fuchshuber PR, Greif W, Tidwell CR. et al. The power of the National Surgical Quality Improvement Program--achieving a zero pneumonia rate in general surgery patients. Perm J 2012; 16 (01) 39-45
- 41 Toh S, Reichman ME, Houstoun M. et al. Comparative risk for angioedema associated with the use of drugs that target the renin-angiotensin-aldosterone system. Arch Intern Med 2012; 172 (20) 1582-1589
- 42 Adamson DM, Chang S, Hansen LGJNYTH. Health research data for the real world: the MarketScan databases. Accessed 2008 at: http://patientprivacyrights.org/wp-content/uploads/2011/06/Thomson-Medstat-white-paper.pdf:b28
- 43 Kirby JC, Speltz P, Rasmussen LV. et al. PheKB: a catalog and workflow for creating electronic phenotype algorithms for transportability. 2016; 23 (06) 1046-1052
- 44 Birkhead GS. Successes and continued challenges of electronic health records for chronic disease surveillance. Am J Public Health 2017; 107 (09) 1365-1367
- 45 Klompas M, Cocoros NM, Menchaca JT. et al. State and local chronic disease surveillance using electronic health record systems. Am J Public Health 2017; 107 (09) 1406-1412
- 46 Newton-Dame R, McVeigh KH, Schreibstein L. et al. Design of the New York City macroscope: innovations in population health surveillance using electronic health records. EGEMS (Wash DC) 2016; 4 (01) 1265
- 47 Perlman SE, McVeigh KH, Thorpe LE, Jacobson L, Greene CM, Gwynn RC. Innovations in population health surveillance: using electronic health records for chronic disease surveillance. Am J Public Health 2017; 107 (06) 853-857
- 48 Curtis LH, Brown J, Platt R. Four health data networks illustrate the potential for a shared national multipurpose big-data network. Health Aff (Millwood) 2014; 33 (07) 1178-1186
- 49 Data Center Micro-Segmentation. A Software Defined Data Center Approach for a ”Zero Trust” Security Strategy. Accessed August 26, 2020 at: https://blogs.vmware.com/networkvirtualization/files/2014/06/VMware-SDDC-Micro-Segmentation-White-Paper.pdf
- 50 Kharrazi H, Gonzalez CP, Lowe KB, Huerta TR, Ford EW. Forecasting the maturation of electronic health record functions among US hospitals: retrospective analysis and predictive model. J Med Internet Res 2018; 20 (08) e10458
- 51 Casey JA, Schwartz BS, Stewart WF, Adler NE. Using electronic health records for population health research: a review of methods and applications. Annu Rev Public Health 2016; 37: 61-81