Semi-supervised ROC analysis for reliable and streamlined evaluation of phenotyping algorithms

Author:

Gao Jianhui1,Bonzel Clara-Lea2,Hong Chuan3,Varghese Paul4,Zakir Karim1,Gronsbell Jessica156

Affiliation:

1. Department of Statistical Sciences, University of Toronto , Toronto, ON, Canada

2. Department of Biomedical Informatics, Harvard Medical School , Boston, MA, United States

3. Department of Biostatistics and Bioinformatics, Duke University , Durham, NC, United States

4. Health Informatics, Verily Life Sciences , Cambridge, MA, United States

5. Department of Family and Community Medicine, University of Toronto , Toronto, ON, Canada

6. Department of Computer Science, University of Toronto , Toronto, ON, Canada

Abstract

Abstract Objective High-throughput phenotyping will accelerate the use of electronic health records (EHRs) for translational research. A critical roadblock is the extensive medical supervision required for phenotyping algorithm (PA) estimation and evaluation. To address this challenge, numerous weakly-supervised learning methods have been proposed. However, there is a paucity of methods for reliably evaluating the predictive performance of PAs when a very small proportion of the data is labeled. To fill this gap, we introduce a semi-supervised approach (ssROC) for estimation of the receiver operating characteristic (ROC) parameters of PAs (eg, sensitivity, specificity). Materials and Methods ssROC uses a small labeled dataset to nonparametrically impute missing labels. The imputations are then used for ROC parameter estimation to yield more precise estimates of PA performance relative to classical supervised ROC analysis (supROC) using only labeled data. We evaluated ssROC with synthetic, semi-synthetic, and EHR data from Mass General Brigham (MGB). Results ssROC produced ROC parameter estimates with minimal bias and significantly lower variance than supROC in the simulated and semi-synthetic data. For the 5 PAs from MGB, the estimates from ssROC are 30% to 60% less variable than supROC on average. Discussion ssROC enables precise evaluation of PA performance without demanding large volumes of labeled data. ssROC is also easily implementable in open-source R software. Conclusion When used in conjunction with weakly-supervised PAs, ssROC facilitates the reliable and streamlined phenotyping necessary for EHR-based research.

Funder

Natural Sciences and Engineering Research Council of Canada

University of Toronto Connaught New Researcher Award

University of Toronto Seed Funding for Methodologists Grant

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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