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Identification of subjects with polycystic ovary syndrome using electronic health records

Authors :
Sean Finan
Sheng-Chun Yu
Candace C. Keefe
Vivian S. Gainer
Corrine K. Welt
Cindy T. Pau
Tianxi Cai
Guergana Savova
Yuanyuan Shen
Shawn N. Murphy
Victor Castro
Source :
Reproductive Biology and Endocrinology : RB&E
Publisher :
Springer Nature

Abstract

Background Polycystic ovary syndrome (PCOS) is a heterogeneous disorder because of the variable criteria used for diagnosis. Therefore, International Classification of Diseases 9 (ICD-9) codes may not accurately capture the diagnostic criteria necessary for large scale PCOS identification. We hypothesized that use of electronic medical records text and data would more specifically capture PCOS subjects. Methods Subjects with PCOS were identified in the Partners Healthcare Research Patients Data Registry by searching for the term “polycystic ovary syndrome” using natural language processing (n = 24,930). A training subset of 199 identified charts was reviewed and categorized based on likelihood of a true Rotterdam PCOS diagnosis, i.e. two out of three of the following: irregular menstrual cycles, hyperandrogenism and/or polycystic ovary morphology. Data from the history, physical exam, laboratory and radiology results were codified and extracted from notes of definite PCOS subjects. Thirty-two terms were used to build an algorithm for identifying definite PCOS cases and applied to the rest of the dataset. The positive predictive value cutoff was set at 76.8 % to maximize the number of subjects available for study. A true positive predictive value for the algorithm was calculated after review of 100 charts from subjects identified as definite PCOS cases with at least two documented Rotterdam criteria. The positive predictive value was compared to that calculated using 200 charts identified using the ICD-9 code for PCOS (256.4; n = 13,670). In addition, a cohort of previously recruited PCOS subjects was submitted for algorithm validation. Results Chart review demonstrated that 64 % were confirmed as definitely PCOS using the algorithm, with a 9 % false positive rate. 66 % of subjects identified by ICD-9 code for PCOS could be confirmed as definitely PCOS, with an 8.5 % false positive rate. There was no significant difference in the positive predictive values using the two methods (p = 0.2). However, the number of charts that had insufficient confirmatory data was lower using the algorithm (5 % vs 11 %; p

Details

Language :
English
ISSN :
14777827
Volume :
13
Issue :
1
Database :
OpenAIRE
Journal :
Reproductive Biology and Endocrinology
Accession number :
edsair.doi.dedup.....186f38404b1c5584879875761a55c060
Full Text :
https://doi.org/10.1186/s12958-015-0115-z