Literature DB >> 32791019

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.

Courtney E Walters1,2, Rachana Nitin1,3, Katherine Margulis4,5, Olivia Boorom4, Daniel E Gustavson1,6, Catherine T Bush4, Lea K Davis6,7, Jennifer E Below6,7, Nancy J Cox6,7, Stephen M Camarata4, Reyna L Gordon1,3,6.   

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.

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Year:  2020        PMID: 32791019      PMCID: PMC7890229          DOI: 10.1044/2020_JSLHR-19-00397

Source DB:  PubMed          Journal:  J Speech Lang Hear Res        ISSN: 1092-4388            Impact factor:   2.297


  75 in total

1.  Criteria for SLI: the Stark and Tallal legacy and beyond.

Authors:  E Plante
Journal:  J Speech Lang Hear Res       Date:  1998-08       Impact factor: 2.297

2.  Children with specific language impairment and their contribution to the study of language development.

Authors:  Laurence B Leonard
Journal:  J Child Lang       Date:  2014-07

3.  A note on intelligence assessment within studies of specific language impairment.

Authors:  S Camarata; L Swisher
Journal:  J Speech Hear Res       Date:  1990-03

4.  Reconceptualizing developmental language disorder as a spectrum disorder: issues and evidence.

Authors:  Hope S Lancaster; Stephen Camarata
Journal:  Int J Lang Commun Disord       Date:  2018-11-13       Impact factor: 3.020

5.  Development of a data-mining algorithm to identify ages at reproductive milestones in electronic medical records.

Authors:  Jennifer Malinowski; Eric Farber-Eger; Dana C Crawford
Journal:  Pac Symp Biocomput       Date:  2014

Review 6.  Autism, Language Disorder, and Social (Pragmatic) Communication Disorder: DSM-V and Differential Diagnoses.

Authors:  Mark D Simms; Xing Ming Jin
Journal:  Pediatr Rev       Date:  2015-08

7.  Comorbidities in Childhood Celiac Disease: A Phenome Wide Association Study Using the Electronic Health Record.

Authors:  Ariana Prinzbach; Soheil Moosavinasab; Steve Rust; Brendan Boyle; John A Barnard; Yungui Huang; Simon Lin
Journal:  J Pediatr Gastroenterol Nutr       Date:  2018-10       Impact factor: 2.839

8.  Estimating summary statistics for electronic health record laboratory data for use in high-throughput phenotyping algorithms.

Authors:  D J Albers; N Elhadad; J Claassen; R Perotte; A Goldstein; G Hripcsak
Journal:  J Biomed Inform       Date:  2018-01-31       Impact factor: 6.317

9.  Next-generation phenotyping of electronic health records.

Authors:  George Hripcsak; David J Albers
Journal:  J Am Med Inform Assoc       Date:  2012-09-06       Impact factor: 4.497

10.  Leveraging electronic health records to study pleiotropic effects on bipolar disorder and medical comorbidities.

Authors:  M L Prieto; E Ryu; G D Jenkins; A Batzler; M M Nassan; A B Cuellar-Barboza; J Pathak; S L McElroy; M A Frye; J M Biernacka
Journal:  Transl Psychiatry       Date:  2016-08-16       Impact factor: 6.222

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  2 in total

1.  Identifying developmental stuttering and associated comorbidities in electronic health records and creating a phenome risk classifier.

Authors:  Dillon G Pruett; Douglas M Shaw; Hung-Hsin Chen; Lauren E Petty; Hannah G Polikowsky; Shelly Jo Kraft; Robin M Jones; Jennifer E Below
Journal:  J Fluency Disord       Date:  2021-04-15       Impact factor: 2.538

2.  Test of Prosody via Syllable Emphasis ("TOPsy"): Psychometric Validation of a Brief Scalable Test of Lexical Stress Perception.

Authors:  Srishti Nayak; Daniel E Gustavson; Youjia Wang; Jennifer E Below; Reyna L Gordon; Cyrille L Magne
Journal:  Front Neurosci       Date:  2022-02-09       Impact factor: 4.677

  2 in total

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