Automated Phenotyping Tool for Identifying Developmental Language Disorder Cases in Health Systems Data (APT-DLD): A New Research Algorithm for Deployment in Large-Scale Electronic Health Record Systems

Author:

Walters Courtney E.12,Nitin Rachana13ORCID,Margulis Katherine45,Boorom Olivia4,Gustavson Daniel E.16ORCID,Bush Catherine T.4,Davis Lea K.67ORCID,Below Jennifer E.67ORCID,Cox Nancy J.67ORCID,Camarata Stephen M.4ORCID,Gordon Reyna L.136ORCID

Affiliation:

1. Department of Otolaryngology, Vanderbilt University Medical Center, Nashville, TN

2. Neuroscience Program, College of Arts and Science, Vanderbilt University, Nashville, TN

3. Vanderbilt Brain Institute, Vanderbilt University, Nashville, TN

4. Department of Hearing and Speech Sciences, Vanderbilt University Medical Center, Nashville, TN

5. Kennedy Krieger Institute, Baltimore, MD

6. Vanderbilt Genetics Institute, Vanderbilt University Medical Center, Nashville, TN

7. Department of Medicine, Vanderbilt University Medical Center, Nashville, TN

Abstract

Purpose Data mining algorithms using electronic health records (EHRs) are useful in large-scale population-wide studies to classify etiology and comorbidities ( Casey et al., 2016 ). Here, we apply this approach to developmental language disorder (DLD), a prevalent communication disorder whose risk factors and epidemiology remain largely undiscovered. Method We first created a reliable system for manually identifying DLD in EHRs based on speech-language pathologist (SLP) diagnostic expertise. We then developed and validated an automated algorithmic procedure, called, Automated Phenotyping Tool for identifying DLD cases in health systems data (APT-DLD), that classifies a DLD status for patients within EHRs on the basis of ICD (International Statistical Classification of Diseases and Related Health Problems) codes. APT-DLD was validated in a discovery sample ( N = 973) using expert SLP manual phenotype coding as a gold-standard comparison and then applied and further validated in a replication sample of N = 13,652 EHRs. Results In the discovery sample, the APT-DLD algorithm correctly classified 98% (concordance) of DLD cases in concordance with manually coded records in the training set, indicating that APT-DLD successfully mimics a comprehensive chart review. The output of APT-DLD was also validated in relation to independently conducted SLP clinician coding in a subset of records, with a positive predictive value of 95% of cases correctly classified as DLD. We also applied APT-DLD to the replication sample, where it achieved a positive predictive value of 90% in relation to SLP clinician classification of DLD. Conclusions APT-DLD is a reliable, valid, and scalable tool for identifying DLD cohorts in EHRs. This new method has promising public health implications for future large-scale epidemiological investigations of DLD and may inform EHR data mining algorithms for other communication disorders. Supplemental Material https://doi.org/10.23641/asha.12753578

Publisher

American Speech Language Hearing Association

Subject

Speech and Hearing,Linguistics and Language,Language and Linguistics

Reference87 articles.

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