Learning relevance models for patient cohort retrieval
收藏DataONE2020-06-30 更新2025-06-28 收录
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OBJECTIVE
We explored how judgements provided by physicians can be used to learn relevance models that enhance the quality of patient cohorts retrieved from Electronic Health Records (EHR) collections.
METHODS
A very large number of features were extracted from patient cohort descriptions as well as electronic health record collections. Specifically, we investigated retrieving (1) neurology-specific patient cohorts from the Temple University Hospital EEG Corpus as well as (2) the more general cohorts evaluated in the TREC Medical Records Track (TRECMed) from the de-identified hospital records provided by the University of Pittsburgh Medical Center. The features informed a Learning Relevance Model (LRM) that took advantage of relevance judgements provided by physicians. The LRM implements a pairwise learning-to-rank framework, which enables our learning patient cohort retrieval (L-PCR) system to learn from physiciansâ feedback.
RESULTS AND DISCUSSION
We evaluated the L-PCR system ag...
创建时间:
2025-06-22



