Abstract
AbstractElectronic health records (EHRs) contain a wealth of information that can be used to further precision health. One particular data element in EHRs that is not only under-utilized but oftentimes unaccounted for is missing data. However, missingness can provide valuable information about comorbidities and best practices for monitoring patients, which could save lives and reduce burden on the healthcare system. We characterize patterns of missing data in laboratory measurements collected at the University of Pennsylvania Hospital System from long-term COVID-19 patients and focus on the changes in these patterns between 2020 and 2021. We investigate how these patterns are associated with comorbidities such as acute respiratory distress syndrome (ARDS), and 90-day mortality in ARDS patients. This work displays how knowledge and experience can change the way clinicians and hospitals manage a novel disease. It can also provide insight into best practices when it comes to patient monitoring to improve outcomes.
Publisher
Cold Spring Harbor Laboratory
Reference30 articles.
1. Mining for equitable health: assessing the impact of missing data in electronic health records;J Biomed Inform,2023
2. Mining electronic health records in the genomics era, PLoS Comput;Biol,2012
3. Challenges in using electronic health record data for CER: experience of 4 learning organizations and solutions applied, Med;Care,2013
4. Care coordination gaps due to lack of interoperability in the United States: a qualitative study and literature review, BMC Health Serv;Res,2016
5. Shinozaki A. Electronic medical records and machine learning approaches to drug development. Artificial Intelligence in Oncology Drug Discovery and Development 2019.
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