Harnessing the Electronic Health Record and Computerized Provider Order Entry Data for Resource Management During the COVID-19 Pandemic.

2021 
BACKGROUND The coronavirus disease 2019 (COVID-19) pandemic resulted in shortages of diagnostic tests, personal protective equipment (PPE), hospital beds, and other critical resources. OBJECTIVE We sought to improve management of scarce resources by leveraging electronic health record (EHR) functionality, computerized provider order entry, clinical decision support (CDS), and data analytics. METHODS With complex eligibility criteria for COVID-19 tests and a challenging EHR implementation of associated testing orders, providers faced obstacles selecting the appropriate test modality. As test choice was dependent upon specific patient criteria, we built a decision tree within the EHR to automate test selection using a branching series of questions that linked clinical criteria to the appropriate SARS-CoV-2 test and triggered an EHR flag for patients who met our institutional persons under investigation (PUI) criteria. RESULTS The percentage of tests that had to be canceled and reordered due to errors in selecting the correct testing modality was 3.8% (23/608) pre-CDS implementation and 1.0% (262/26,643) post-CDS implementation (P < .0001). Patients with multiple tests orders during a 24-hour period accounted for 0.8% (5/608) and 0.3% (76/26,643) of orders pre- and post-CDS implementation, respectively (P = .035). Nasopharyngeal molecular assay results for patients classified as asymptomatic were positive in 3.4% (826/24,170) of patients compared to 10.9% (1,421/13,074) for symptomatic patients (P < .0001). Positive tests were more frequent among asymptomatic patients with a history of exposure to COVID-19 (12.7%, 36/283) than among asymptomatic patients without such history (3.3%, 790/23,887; P < .0001). CONCLUSIONS Leveraging the EHR and our CDS algorithm decreased order entry errors and appropriately flagged PUI status. These interventions optimized reagent and PPE usage. Data collection in the decision tree regarding symptom and exposure status correlated with the likelihood of positive test results, suggesting that clinicians appropriately utilized questions in the decision tree algorithm. CLINICALTRIAL
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