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Polar labeling: silver standard algorithm for training disease classifiers.


ABSTRACT: MOTIVATION:Expert-labeled data are essential to train phenotyping algorithms for cohort identification. However expert labeling is time and labor intensive, and the costs remain prohibitive for scaling phenotyping to wider use-cases. RESULTS:We present an approach referred to as polar labeling (PL), to create silver standard for training machine learning (ML) for disease classification. We test the hypothesis that ML models trained on the silver standard created by applying PL on unlabeled patient records, are comparable in performance to the ML models trained on gold standard, created by clinical experts through manual review of patient records. We perform experimental validation using health records of 38 023 patients spanning six diseases. Our results demonstrate the superior performance of the proposed approach. AVAILABILITY AND IMPLEMENTATION:We provide a Python implementation of the algorithm and the Python code developed for this study on Github. SUPPLEMENTARY INFORMATION:Supplementary data are available at Bioinformatics online.

SUBMITTER: Wagholikar KB 

PROVIDER: S-EPMC7214041 | biostudies-literature | 2020 May

REPOSITORIES: biostudies-literature

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Polar labeling: silver standard algorithm for training disease classifiers.

Wagholikar Kavishwar B KB   Estiri Hossein H   Murphy Marykate M   Murphy Shawn N SN  

Bioinformatics (Oxford, England) 20200501 10


<h4>Motivation</h4>Expert-labeled data are essential to train phenotyping algorithms for cohort identification. However expert labeling is time and labor intensive, and the costs remain prohibitive for scaling phenotyping to wider use-cases.<h4>Results</h4>We present an approach referred to as polar labeling (PL), to create silver standard for training machine learning (ML) for disease classification. We test the hypothesis that ML models trained on the silver standard created by applying PL on  ...[more]

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