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Electronic Health Record Based Algorithm to Identify Patients with Autism Spectrum Disorder

Author

Listed:
  • Todd Lingren
  • Pei Chen
  • Joseph Bochenek
  • Finale Doshi-Velez
  • Patty Manning-Courtney
  • Julie Bickel
  • Leah Wildenger Welchons
  • Judy Reinhold
  • Nicole Bing
  • Yizhao Ni
  • William Barbaresi
  • Frank Mentch
  • Melissa Basford
  • Joshua Denny
  • Lyam Vazquez
  • Cassandra Perry
  • Bahram Namjou
  • Haijun Qiu
  • John Connolly
  • Debra Abrams
  • Ingrid A Holm
  • Beth A Cobb
  • Nataline Lingren
  • Imre Solti
  • Hakon Hakonarson
  • Isaac S Kohane
  • John Harley
  • Guergana Savova

Abstract

Objective: Cohort selection is challenging for large-scale electronic health record (EHR) analyses, as International Classification of Diseases 9th edition (ICD-9) diagnostic codes are notoriously unreliable disease predictors. Our objective was to develop, evaluate, and validate an automated algorithm for determining an Autism Spectrum Disorder (ASD) patient cohort from EHR. We demonstrate its utility via the largest investigation to date of the co-occurrence patterns of medical comorbidities in ASD. Methods: We extracted ICD-9 codes and concepts derived from the clinical notes. A gold standard patient set was labeled by clinicians at Boston Children’s Hospital (BCH) (N = 150) and Cincinnati Children’s Hospital and Medical Center (CCHMC) (N = 152). Two algorithms were created: (1) rule-based implementing the ASD criteria from Diagnostic and Statistical Manual of Mental Diseases 4th edition, (2) predictive classifier. The positive predictive values (PPV) achieved by these algorithms were compared to an ICD-9 code baseline. We clustered the patients based on grouped ICD-9 codes and evaluated subgroups. Results: The rule-based algorithm produced the best PPV: (a) BCH: 0.885 vs. 0.273 (baseline); (b) CCHMC: 0.840 vs. 0.645 (baseline); (c) combined: 0.864 vs. 0.460 (baseline). A validation at Children’s Hospital of Philadelphia yielded 0.848 (PPV). Clustering analyses of comorbidities on the three-site large cohort (N = 20,658 ASD patients) identified psychiatric, developmental, and seizure disorder clusters. Conclusions: In a large cross-institutional cohort, co-occurrence patterns of comorbidities in ASDs provide further hypothetical evidence for distinct courses in ASD. The proposed automated algorithms for cohort selection open avenues for other large-scale EHR studies and individualized treatment of ASD.

Suggested Citation

  • Todd Lingren & Pei Chen & Joseph Bochenek & Finale Doshi-Velez & Patty Manning-Courtney & Julie Bickel & Leah Wildenger Welchons & Judy Reinhold & Nicole Bing & Yizhao Ni & William Barbaresi & Frank M, 2016. "Electronic Health Record Based Algorithm to Identify Patients with Autism Spectrum Disorder," PLOS ONE, Public Library of Science, vol. 11(7), pages 1-16, July.
  • Handle: RePEc:plo:pone00:0159621
    DOI: 10.1371/journal.pone.0159621
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    1. Chen Lin & Elizabeth W Karlson & Helena Canhao & Timothy A Miller & Dmitriy Dligach & Pei Jun Chen & Raul Natanael Guzman Perez & Yuanyan Shen & Michael E Weinblatt & Nancy A Shadick & Robert M Plenge, 2013. "Automatic Prediction of Rheumatoid Arthritis Disease Activity from the Electronic Medical Records," PLOS ONE, Public Library of Science, vol. 8(8), pages 1-10, August.
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