» Articles » PMID: 21682950

Using Electronic Medical Records to Enable Large-scale Studies in Psychiatry: Treatment Resistant Depression As a Model

Overview
Journal Psychol Med
Specialty Psychology
Date 2011 Jun 21
PMID 21682950
Citations 96
Authors
Affiliations
Soon will be listed here.
Abstract

Background: Electronic medical records (EMR) provide a unique opportunity for efficient, large-scale clinical investigation in psychiatry. However, such studies will require development of tools to define treatment outcome.

Method: Natural language processing (NLP) was applied to classify notes from 127 504 patients with a billing diagnosis of major depressive disorder, drawn from out-patient psychiatry practices affiliated with multiple, large New England hospitals. Classifications were compared with results using billing data (ICD-9 codes) alone and to a clinical gold standard based on chart review by a panel of senior clinicians. These cross-sectional classifications were then used to define longitudinal treatment outcomes, which were compared with a clinician-rated gold standard.

Results: Models incorporating NLP were superior to those relying on billing data alone for classifying current mood state (area under receiver operating characteristic curve of 0.85-0.88 v. 0.54-0.55). When these cross-sectional visits were integrated to define longitudinal outcomes and incorporate treatment data, 15% of the cohort remitted with a single antidepressant treatment, while 13% were identified as failing to remit despite at least two antidepressant trials. Non-remitting patients were more likely to be non-Caucasian (p<0.001).

Conclusions: The application of bioinformatics tools such as NLP should enable accurate and efficient determination of longitudinal outcomes, enabling existing EMR data to be applied to clinical research, including biomarker investigations. Continued development will be required to better address moderators of outcome such as adherence and co-morbidity.

Citing Articles

Diagnosis extraction from unstructured Dutch echocardiogram reports using span- and document-level characteristic classification.

Arends B, Vessies M, van Osch D, Teske A, van der Harst P, van Es R BMC Med Inform Decis Mak. 2025; 25(1):115.

PMID: 40050820 PMC: 11887187. DOI: 10.1186/s12911-025-02897-w.


Using a natural language processing toolkit to classify electronic health records by psychiatric diagnosis.

Hutto A, Zikry T, Bohac B, Rose T, Staebler J, Slay J Health Informatics J. 2024; 30(4):14604582241296411.

PMID: 39466373 PMC: 11657637. DOI: 10.1177/14604582241296411.


Case Identification of Depression in Inpatient Electronic Medical Records: Scoping Review.

Grothman A, Ma W, Tickner K, Martin E, Southern D, Quan H JMIR Med Inform. 2024; 12:e49781.

PMID: 39401130 PMC: 11493107. DOI: 10.2196/49781.


Clinical associations with treatment resistance in depression: An electronic health record study.

Coombes B, Sanchez-Ruiz J, Fennessy B, Pazdernik V, Adekkanattu P, Nunez N Psychiatry Res. 2024; 342():116203.

PMID: 39321638 PMC: 11617277. DOI: 10.1016/j.psychres.2024.116203.


Comparison of the Performance of GPT-3.5 and GPT-4 With That of Medical Students on the Written German Medical Licensing Examination: Observational Study.

Meyer A, Riese J, Streichert T JMIR Med Educ. 2024; 10:e50965.

PMID: 38329802 PMC: 10884900. DOI: 10.2196/50965.


References
1.
Fournier J, DeRubeis R, Hollon S, Dimidjian S, Amsterdam J, Shelton R . Antidepressant drug effects and depression severity: a patient-level meta-analysis. JAMA. 2010; 303(1):47-53. PMC: 3712503. DOI: 10.1001/jama.2009.1943. View

2.
Rush A, Trivedi M, Ibrahim H, Carmody T, Arnow B, Klein D . The 16-Item Quick Inventory of Depressive Symptomatology (QIDS), clinician rating (QIDS-C), and self-report (QIDS-SR): a psychometric evaluation in patients with chronic major depression. Biol Psychiatry. 2003; 54(5):573-83. DOI: 10.1016/s0006-3223(02)01866-8. View

3.
Penz J, Wilcox A, Hurdle J . Automated identification of adverse events related to central venous catheters. J Biomed Inform. 2006; 40(2):174-82. DOI: 10.1016/j.jbi.2006.06.003. View

4.
Turchin A, Morin L, Semere L, Kashyap V, Palchuk M, Shubina M . Comparative evaluation of accuracy of extraction of medication information from narrative physician notes by commercial and academic natural language processing software packages. AMIA Annu Symp Proc. 2007; :789-93. View

5.
Bates D, Evans R, Murff H, Stetson P, Pizziferri L, Hripcsak G . Detecting adverse events using information technology. J Am Med Inform Assoc. 2003; 10(2):115-28. PMC: 150365. DOI: 10.1197/jamia.m1074. View