Cerebrovascular disease case identification in inpatient electronic medical record data using natural language processing

被引:2
|
作者
Pan, Jie [1 ,2 ]
Zhang, Zilong [1 ]
Peters, Steven Ray [3 ]
Vatanpour, Shabnam [1 ]
Walker, Robin L. [1 ,4 ]
Lee, Seungwon [1 ,2 ,4 ]
Martin, Elliot A. [1 ,4 ]
Quan, Hude [1 ,2 ]
机构
[1] Univ Calgary, Ctr Hlth Informat, Cumming Sch Med, Calgary, AB, Canada
[2] Univ Calgary, Cumming Sch Med, Dept Community Hlth Sci, Calgary, AB, Canada
[3] Univ Calgary, Cumming Sch Med, Dept Clin Neurosci, Calgary, AB, Canada
[4] Alberta Hlth Serv, Edmonton, AB, Canada
基金
加拿大健康研究院;
关键词
Cerebrovascular disease; Machine learning; Natural language processing; Electronic health records; Disease identification;
D O I
10.1186/s40708-023-00203-w
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Background Abstracting cerebrovascular disease (CeVD) from inpatient electronic medical records (EMRs) through natural language processing (NLP) is pivotal for automated disease surveillance and improving patient outcomes. Existing methods rely on coders' abstraction, which has time delays and under-coding issues. This study sought to develop an NLP-based method to detect CeVD using EMR clinical notes.Methods CeVD status was confirmed through a chart review on randomly selected hospitalized patients who were 18 years or older and discharged from 3 hospitals in Calgary, Alberta, Canada, between January 1 and June 30, 2015. These patients' chart data were linked to administrative discharge abstract database (DAD) and Sunrise (TM) Clinical Manager (SCM) EMR database records by Personal Health Number (a unique lifetime identifier) and admission date. We trained multiple natural language processing (NLP) predictive models by combining two clinical concept extraction methods and two supervised machine learning (ML) methods: random forest and XGBoost. Using chart review as the reference standard, we compared the model performances with those of the commonly applied International Classification of Diseases (ICD-10-CA) codes, on the metrics of sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV).Result Of the study sample (n = 3036), the prevalence of CeVD was 11.8% (n = 360); the median patient age was 63; and females accounted for 50.3% (n = 1528) based on chart data. Among 49 extracted clinical documents from the EMR, four document types were identified as the most influential text sources for identifying CeVD disease ("nursing transfer report," "discharge summary," "nursing notes," and "inpatient consultation."). The best performing NLP model was XGBoost, combining the Unified Medical Language System concepts extracted by cTAKES (e.g., top-ranked concepts, "Cerebrovascular accident" and "Transient ischemic attack"), and the term frequency-inverse document frequency vectorizer. Compared with ICD codes, the model achieved higher validity overall, such as sensitivity (25.0% vs 70.0%), specificity (99.3% vs 99.1%), PPV (82.6 vs. 87.8%), and NPV (90.8% vs 97.1%).Conclusion The NLP algorithm developed in this study performed better than the ICD code algorithm in detecting CeVD. The NLP models could result in an automated EMR tool for identifying CeVD cases and be applied for future studies such as surveillance, and longitudinal studies.
引用
收藏
页数:10
相关论文
共 50 条
  • [1] Using natural language processing of the electronic medical record for rapid prospective identification of patients
    Pakhomov, Serguei V.
    Weston, Susan
    Jacobsen, Steven
    Chute, Christopher G.
    Meverden, Ryan
    Roger, Veronique
    CIRCULATION, 2006, 113 (21) : E792 - E792
  • [2] Electronic Medical Record Data Mining and Processing Based on Natural Language Processing
    Zhang, Shichen
    PROCEEDINGS OF 2024 INTERNATIONAL CONFERENCE ON MACHINE INTELLIGENCE AND DIGITAL APPLICATIONS, MIDA2024, 2024, : 212 - 217
  • [3] Automated Identification of Postoperative Complications Within an Electronic Medical Record Using Natural Language Processing
    Murff, Harvey J.
    FitzHenry, Fern
    Matheny, Michael E.
    Gentry, Nancy
    Kotter, Kristen L.
    Crimin, Kimberly
    Dittus, Robert S.
    Rosen, Amy K.
    Elkin, Peter L.
    Brown, Steven H.
    Speroff, Theodore
    JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2011, 306 (08): : 848 - 855
  • [4] Detecting inpatient falls by using natural language processing of electronic medical records
    Shin-ichi Toyabe
    BMC Health Services Research, 12
  • [5] Detecting inpatient falls by using natural language processing of electronic medical records
    Toyabe, Shin-ichi
    BMC HEALTH SERVICES RESEARCH, 2012, 12
  • [6] Natural Language Processing Improves Identification of Colorectal Cancer Testing in the Electronic Medical Record
    Denny, Joshua C.
    Choma, Neesha N.
    Peterson, Josh F.
    Miller, Randolph A.
    Bastarache, Lisa
    Li, Ming
    Peterson, Neeraja B.
    MEDICAL DECISION MAKING, 2012, 32 (01) : 188 - 197
  • [7] A Case Study of the Incremental Utility for Disease Identification of Natural Language Processing in Electronic Medical Records
    Weiss L.S.
    Zhou X.
    Walker A.M.
    Ananthakrishnan A.N.
    Shen R.
    Sobel R.E.
    Bate A.
    Reynolds R.F.
    Pharmaceutical Medicine, 2018, 32 (1) : 31 - 37
  • [8] Prediction of intra-abdominal injury using natural language processing of electronic medical record data
    Danna, Giovanna
    Garg, Ravi
    Buchheit, Joanna
    Patel, Radha
    Zhan, Tiannan
    Ellyn, Alexander
    Maqbool, Farhan
    Yala, Linda
    Moklyak, Yuriy
    Frydman, James
    Kho, Abel
    Kong, Nan
    Furmanchuk, Alona
    Lundberg, Alexander
    Stey, Anne M.
    SURGERY, 2024, 176 (03) : 577 - 585
  • [9] Extracting social determinants of health from inpatient electronic medical records using natural language processing
    Martin, Elliot A.
    D'Souza, Adam G.
    Saini, Vineet
    Tang, Karen
    Quan, Hude
    Eastwood, Cathy A.
    JOURNAL OF EPIDEMIOLOGY AND POPULATION HEALTH, 2024, 72 (06):
  • [10] NATURAL LANGUAGE PROCESSING TO IMPROVE IDENTIFICATION OF PERIPHERAL ARTERIAL DISEASE IN ELECTRONIC HEALTH DATA
    Duke, Jon
    Chase, Monica
    Poznanski-Ring, Nate
    Martin, Joel
    Fuhr, Rachel
    Chatterjee, Arnaub
    Hirsch, Alan
    JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY, 2016, 67 (13) : 2280 - 2280