| Literature DB >> 31019657 |
Omar A Usman1,2, Connie Oshiro1, Justin G Chambers1, Samson W Tu2, Susana Martins1, Amy Robinson1, Mary K Goldstein1,2.
Abstract
Software testing of knowledge-based clinical decision support systems is challenging, labor intensive, and expensive; yet, testing is necessary since clinical applications have heightened consequences. Thoughtful test case selection improves testing coverage while minimizing testing burden. ATHENA-CDS is a knowledge-based system that provides guideline-based recommendations for chronic medical conditions. Using the ATHENA-CDS diabetes knowledgebase, we demonstrate a generalizable approach for selecting test cases using rules/ filters to create a set of paths that mimics the system's logic. Test cases are allocated to paths using a proportion heuristic. Using data from the electronic health record, we found 1,086 cases with glycemic control above target goals. We created a total of 48 filters and 50 unique system paths, which were used to allocate 200 test cases. We show that our method generates a comprehensive set of test cases that provides adequate coverage for the testing of a knowledge-based CDS.Entities:
Keywords: Clinical Decision Support; Expert Systems; Knowledge-Based Systems; Offline Testing; Path Testing; Software Testing; Software Verification; System Testing; Test Case Selection
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Year: 2018 PMID: 31019657 PMCID: PMC6457366
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076