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Leveraging real-time patient data during the COVID-19 pandemic

Published online by Cambridge University Press:  08 October 2024

John C. O’Horo*
Affiliation:
Division of Public Health, Infectious Diseases and Occupational Medicine, Mayo Clinic, Rochester, MN, USA Division of Pulmonary and Critical Care Medicine, Mayo Clinic, Rochester, MN, USA
Douglas W. Challener
Affiliation:
Division of Public Health, Infectious Diseases and Occupational Medicine, Mayo Clinic, Rochester, MN, USA
Cory Kudrna
Affiliation:
Department of Information Technology, Mayo Clinic, Rochester, MN, USA
Jason R. Buckmeier
Affiliation:
Department of Information Technology, Mayo Clinic, Rochester, MN, USA
Steve G. Peters
Affiliation:
Division of Pulmonary and Critical Care Medicine, Mayo Clinic, Rochester, MN, USA
Daryl J. Kor
Affiliation:
Department of Anesthesiology and Perioperative Medicine, Mayo Clinic, Rochester, MN, USA Center for Digital Health, Mayo Clinic, Rochester, MN, USA
Mark W. Matson
Affiliation:
Center for Digital Health, Mayo Clinic, Rochester, MN, USA
Andrew D. Badley
Affiliation:
Division of Public Health, Infectious Diseases and Occupational Medicine, Mayo Clinic, Rochester, MN, USA Department of Molecular Medicine, Mayo Clinic, Rochester, MN, USA
Charles D. Burger
Affiliation:
Division of Pulmonary, Allergy and Sleep Medicine, Mayo Clinic, Jacksonville, FL, USA
Rajeev Chaudhry
Affiliation:
Division of Community Internal Medicine, Geriatrics, and Palliative Care, Mayo Clinic, Rochester, MN, USA Department of Quantitative Health Sciences, Mayo Clinic, Rochester, MN, USA
*
Corresponding author: John C. O’Horo; Email: [email protected]
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Abstract

Type
Letter to the Editor
Copyright
© Mayo Foundation for Medical Education and Research, 2024. Published by Cambridge University Press on behalf of The Society for Healthcare Epidemiology of America

The Society for Healthcare Epidemiology of America (SHEA) policy position highlights some critical lessons learned on how data management must be modernized to meet the data challenges of the COVID-19 pandemic. Reference Branch-Elliman, Banach and Jones Batshon1 We highlight some of our lessons learned from the pandemic with regard to effective use of data as a pandemic response tool.

Mayo Clinic is a large, multistate academic healthcare center, and 3 core work groups at our institution leveraged clinical data to inform our COVID-19 response. First, researchers needed various COVID-19 data to inform prospective clinical trial eligibility and enrollment, retrospective cohort studies, and the clinical outcomes of both study types. Second, decision-makers required real-time numbers of SARS-CoV-2 infections and resources used (eg, ventilators and hospital beds) for maintaining operational excellence and reporting to government agencies. Finally, clinicians needed guidance to ensure that patients with COVID-19 were receiving care congruent with the emerging set of best practices.

Data definitions between these groups were not consistently harmonized. Research registry definitions tended to be study-specific, policy definitions evolved, and practical guidance developed independently from either registry or policy definitions. The SHEA position statement calls for modern data collection and harmonization. Electronic health registries use rules-based logic for reporting purposes or driving changes in clinician behaviors. Reference Gliklich, Dreyer, Leavy, Gliklich, Dreyer and Leavy2 Despite nuanced differences between electronic health registries and research registries, the similarities for registry functionality present an opportunity to use standard definitions.

The COVID-19 pandemic led to a strain on information technology resources; therefore, we sought to create a translational research and clinical practice application to support a diverse array of both research and clinical needs. We termed our tool Cohort Knowledge Intelligence Solutions (CKIS). Use of standardized data definitions allowed for more scaled and reusable solutions that addressed the research, operations, and clinical care needs related to the COVID-19 pandemic. We viewed CKIS as an opportunity to embrace the learning health system model. 3

Previously at Mayo Clinic, registry efforts were primarily dedicated to helping clinical practices manage care for specific patient cohorts of interest, typically those with chronic health conditions. When the COVID-19 pandemic began, we realized that the schema used to build registries to support clinical practice could also be leveraged to support research of SARS-CoV-2. The registry launched in March 2020. We initially manually validated registry data on a case-by-case basis, but in less than 2 months, the performance of the registry system was sufficient that manual review became redundant.

We harmonized the metrics and end points needed for various research and clinical operational uses. These end points included common outcomes (ie, National Institute of Allergy and Infectious Diseases Ordinal Scale of COVID-19 Severity score), Reference Beigel, Tomashek and Dodd4 relevant comorbid conditions for risk scoring, Reference Nyman, Jose and Croghan5 and key clinical metrics, such as intensive care unit admissions or need for mechanical ventilation. This information was shared with the COVID-19 treatment review panel created by the Mayo Clinic COVID-19 Research Task Force to assist identification of patients at high risk for severe disease and potential trial candidates. Reference O’Horo, Cerhan and Cahn6 Examples of the metrics collected by one of our heavily used registries are shown in Table 1.

Table 1. Representative metrics used in the Cohort Knowledge Intelligence Solutions COVID-19 registry at Mayo Clinic a

Note. CAST, COVID-19 Antibody Screening Tool; MASS, Monoclonal Antibody Screening Score; NIAID, National Institute of Allergy and Infectious Diseases.

a At the time of publication, more than 500 metrics are included in the COVID-19 registry, which also has the ability to cross-reference other Mayo Clinic registries (eg, transplant and vaccination registries) for relevant information.

b Other metrics capture number of vaccinations administered, what type, and date of each vaccination.

The CKIS tool was used to identify patients and provide data for a comprehensive COVID-19 data mart, thereby supporting clinical operational use, predictive analytics, and research throughout the Mayo Clinic healthcare system. Reference Pollock and Carter7 Rules that were used for clinical trials of investigational treatments that later became standard of care (eg, remdesivir) were adapted to identify patients who had potential care gaps. Clinical decision support (CDS) rules were built from CKIS data to alert frontline clinicians about potential actions that could improve care for patients with COVID-19. This, in turn, provided another opportunity for ongoing CKIS validation, with real-time feedback on the utility and accuracy of CDS alerts.

To date, the CKIS COVID-19 registry at Mayo Clinic has directly supported more than 3 dozen published studies, in which the registry was leveraged to identify eligible patients, determine study feasibility, facilitate outcome assessments, and report results. Additionally, more than 70 CDS rules are driven directly by the CKIS COVID-19 registry, which yielded more than 65,000 best practice advisories during the COVID-19 pandemic. The CKIS COVID-19 registry was also used to support various other reporting tools for operational COVID-19 work and modeling. As of May 1, 2023, the registry consists of 19 subregistries (including registries used for vaccination outreach and confirmed COVID-19 cases), which contain information from more than 1.2 million patients and 887 distinct metrics.

The success of this approach to registry architecture led to several other CKIS tools. At the beginning of the 2022 monkeypox virus outbreak, we designed a similar CKIS registry and readied it to withstand similar challenges encountered during the COVID-19 pandemic. A similar CKIS solution is being deployed for Staphylococcus aureus and endocarditis.

Our experience with the CKIS COVID-19 registry is a practical example of the benefit of expending effort for harmonizing data collection methods, as recommended by the SHEA position statement, as well as the critical role of the multidisciplinary data management team. Early engagement of researchers, clinicians, informaticists, and information technology professionals made rapid deployment of a sustainable tool feasible. We support the framework and the call for strong data governance with defined stewardship and data definitions to yield substantial gains for patient care. In our viewpoint, this effort by SHEA is needed to not only prepare for the next pandemic but also ensure optimal care for patients who are affected by infectious diseases.

Acknowledgments

Nisha Badders, PhD, ELS, Mayo Clinic, provided editorial suggestions on an earlier draft of the manuscript.

J.C.O. and D.W.C. drafted the initial version of the manuscript. C.K., J.R.B., and M.W.M. provided insights into the structure and data regarding use of the registry. S.G.P., D.J.K., A.D.B., C.D.B., and R.C. provided support for creation of CKIS, and critical evaluation and feedback on the manuscript.

Financial support

None.

Competing interests

J.C.O. has received grants from the MITRE Corporation and Nference, Inc. A.D.B. is a paid consultant for AbbVie Inc, is a paid member of the data and safety monitoring board for Corvus Pharmaceuticals, Inc, owns equity for scientific advisory work for Zentalis Pharmaceuticals and Nference, Inc, and is founder and president of Splissen Therapeutics.

References

Branch-Elliman, W, Banach, DB, Jones Batshon, L, et al. SHEA position statement on pandemic preparedness for policymakers: pandemic data collection, maintenance, and release. Infect Control Hosp Epidemiol 2024;45 (forthcoming).CrossRefGoogle ScholarPubMed
Gliklich, RE, Dreyer, NA, Leavy, MB. AHRQ methods for effective health care. In: Gliklich, RE, Dreyer, NA, Leavy, MB, eds. Registries for Evaluating Patient Outcomes: A User’s Guide. USA: Agency for Healthcare Research and Quality; 2014.Google Scholar
Agency for Healthcare Research and Quality. About learning health systems. https://www.ahrq.gov/learning-health-systems/about.html. Updated May 2019, Published March 2019. Accessed January 30, 2024.Google Scholar
Beigel, JH, Tomashek, KM, Dodd, LE. Remdesivir for the treatment of COVID-19 - preliminary report. Reply. N Engl J Med. 2020;383:994. doi: 10.1056/NEJMc2022236 CrossRefGoogle Scholar
Nyman, MA, Jose, T, Croghan, IT, et al. Utilization of an electronic health record integrated risk score to predict hospitalization among COVID-19 patients. J Prim Care Community Health 2022;13:21501319211069748. doi: 10.1177/21501319211069748 CrossRefGoogle ScholarPubMed
O’Horo, JC, Cerhan, JR, Cahn, EJ, et al. Outcomes of COVID-19 with the Mayo Clinic model of care and research. Mayo Clin Proc 2021;96:601618. doi: 10.1016/j.mayocp.2020.12.006 CrossRefGoogle Scholar
Mayo Clinic COVID-19 Predictive Analytics Task Force, Pollock, BD, Carter, RE, et al. Deployment of an interdisciplinary predictive analytics task force to inform hospital operational decision-making during the COVID-19 pandemic. Mayo Clin Proc 2021;96:690698. doi: 10.1016/j.mayocp.2020.12.019 CrossRefGoogle ScholarPubMed
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Table 1. Representative metrics used in the Cohort Knowledge Intelligence Solutions COVID-19 registry at Mayo Clinica