Temporal Events Detector for Pregnancy Care (TED-PC): A Rule-based Algorithm to Infer Gestational Age and Delivery Date from Electronic Health Records of Pregnant Women with and without COVID-19
Tianchu Lyu, Chen Liang, Jihong Liu, Berry Campbell, Peiyin Hung,, Yi-Wen Shih, Nadia Ghumman, Xiaoming Li (on behalf of the National COVID, Cohort Collaborative Consortium)

TL;DR
This paper presents TED-PC, a rule-based algorithm that accurately infers gestational age and delivery dates from electronic health records, enabling better study of pregnancy outcomes during COVID-19.
Contribution
The study introduces a novel rule-based algorithm for extracting precise pregnancy timelines from EHR data, validated across a large cohort including COVID-19 cases.
Findings
High accuracy in inferring delivery dates (100%)
Moderate-high accuracy in gestational age detection (95%)
Effective in characterizing pregnancy and COVID-19 timing
Abstract
Objective: To develop a rule-based algorithm that detects temporal information of clinical events during pregnancy for women with COVID-19 by inferring gestational weeks and delivery dates from Electronic Health Records (EHR) from the National COVID Cohort Collaborate (N3C). Materials and Methods: The EHR are normalized by the Observational Medical Outcomes Partnership (OMOP) Clinical Data Model (CDM). EHR phenotyping resulted in 270,897 pregnant women (2018-06-01 to 2021-05-31). We developed a rule-based algorithm and performed a multi-level evaluation to test content validity and clinical validity of the algorithm; and extreme value analysis for individuals with <150 or >300 days of gestation. Results: The algorithm identified 296,194 pregnancies (16,659 COVID-19 174 and 744 without COVID-19 peri-pandemic) in 270,897 pregnant women. For inferring gestational age, 95% cases (n=40) have…
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Taxonomy
TopicsArtificial Intelligence in Healthcare · Machine Learning in Healthcare · Bayesian Modeling and Causal Inference
