Automated risk assessment of newly detected atrial fibrillation poststroke from electronic health record data using machine learning and natural language processing

被引:2
|
作者
Sung, Sheng-Feng [1 ,2 ]
Sung, Kuan-Lin [3 ]
Pan, Ru-Chiou [4 ]
Lee, Pei-Ju [5 ,6 ]
Hu, Ya-Han [7 ]
机构
[1] Ditmanson Med Fdn, Dept Internal Med, Div Neurol, Chiayi Christian Hosp, Chiayi, Taiwan
[2] Min Hwei Jr Coll Hlth Care Management, Dept Nursing, Tainan, Taiwan
[3] Natl Taiwan Univ, Sch Med, Taipei, Taiwan
[4] Ditmanson Med Fdn, Clin Data Ctr, Chiayi Christian Hosp, Dept Med Res, Chiayi, Taiwan
[5] Natl Chung Cheng Univ, Dept Informat Management, Minxiong Township, Chiayi County, Taiwan
[6] Natl Chung Cheng Univ, Inst Healthcare Informat Management, Minxiong Township, Chiayi County, Taiwan
[7] Natl Cent Univ, Dept Informat Management, Taoyuan, Taiwan
来源
关键词
atrial fibrillation; electronic health records; ischemic stroke; natural language processing; prediction; TRANSIENT ISCHEMIC ATTACK; TEXT CLASSIFICATION; FEATURE-SELECTION; VASCULAR EVENTS; STROKE CARE; SCORE; VALIDATION; RECURRENCE; PREDICTION; TAIWAN;
D O I
10.3389/fcvm.2022.941237
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BackgroundTimely detection of atrial fibrillation (AF) after stroke is highly clinically relevant, aiding decisions on the optimal strategies for secondary prevention of stroke. In the context of limited medical resources, it is crucial to set the right priorities of extended heart rhythm monitoring by stratifying patients into different risk groups likely to have newly detected AF (NDAF). This study aimed to develop an electronic health record (EHR)-based machine learning model to assess the risk of NDAF in an early stage after stroke. MethodsLinked data between a hospital stroke registry and a deidentified research-based database including EHRs and administrative claims data was used. Demographic features, physiological measurements, routine laboratory results, and clinical free text were extracted from EHRs. The extreme gradient boosting algorithm was used to build the prediction model. The prediction performance was evaluated by the C-index and was compared to that of the AS5F and CHASE-LESS scores. ResultsThe study population consisted of a training set of 4,064 and a temporal test set of 1,492 patients. During a median follow-up of 10.2 months, the incidence rate of NDAF was 87.0 per 1,000 person-year in the test set. On the test set, the model based on both structured and unstructured data achieved a C-index of 0.840, which was significantly higher than those of the AS5F (0.779, p = 0.023) and CHASE-LESS (0.768, p = 0.005) scores. ConclusionsIt is feasible to build a machine learning model to assess the risk of NDAF based on EHR data available at the time of hospital admission. Inclusion of information derived from clinical free text can significantly improve the model performance and may outperform risk scores developed using traditional statistical methods. Further studies are needed to assess the clinical usefulness of the prediction model.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] Using Natural Language Processing and Machine Learning to Identify Opioids in Electronic Health Record Data
    McDermott, Sean P.
    Wasan, Ajay D.
    JOURNAL OF PAIN RESEARCH, 2023, 16 : 2133 - 2140
  • [2] Identifying Stroke Patients At Risk For Atrial Fibrillation Using Electronic Health Record Data And Machine Learning
    Su, Tongli
    Hasan, S. M. Shafiul
    Nahab, Fadi B.
    Hu, Xiao
    STROKE, 2023, 54
  • [3] Improving the Efficiency of Clinical Trial Recruitment Using Electronic Health Record Data, Natural Language Processing, and Machine Learning
    Cai, Tianrun
    Cai, Fiona
    Dahal, Kumar
    Hong, Chuan
    Liao, Katherine
    ARTHRITIS & RHEUMATOLOGY, 2019, 71
  • [4] Assessment of a Machine Learning Model Applied to Harmonized Electronic Health Record Data for the Prediction of Incident Atrial Fibrillation
    Tiwari, Premanand
    Colborn, Kathryn L.
    Smith, Derek E.
    Xing, Fuyong
    Ghosh, Debashis
    Rosenberg, Michael A.
    JAMA NETWORK OPEN, 2020, 3 (01)
  • [5] Identifying Goals of Care Conversations in the Electronic Health Record Using Natural Language Processing and Machine Learning
    Lee, Robert Y.
    Brumback, Lyndia C.
    Lober, William B.
    Sibley, James
    Nielsen, Elizabeth L.
    Treece, Patsy D.
    Kross, Erin K.
    Loggers, Elizabeth T.
    Fausto, James A.
    Lindvall, Charlotta
    Engelberg, Ruth A.
    Curtis, J. Randall
    JOURNAL OF PAIN AND SYMPTOM MANAGEMENT, 2021, 61 (01) : 136 - +
  • [6] Identifying Goals-of-Care Conversations in the Electronic Health Record Using Machine Learning and Natural Language Processing
    Lee, R. Y.
    Lober, W. B.
    Sibley, J.
    Kross, E. K.
    Engelberg, R. A.
    Curtis, J. R.
    AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 2019, 199
  • [7] Automated construction contract analysis for risk and responsibility assessment using natural language processing and machine learning
    Dikmen, Irem
    Eken, Gorkem
    Erol, Huseyin
    Birgonul, M. Talat
    COMPUTERS IN INDUSTRY, 2025, 166
  • [8] Machine Learning, Natural Language Processing, and the Electronic Health Record: Innovations in Mental Health Services Research
    Edgcomb, Juliet Beni
    Zima, Bonnie
    PSYCHIATRIC SERVICES, 2019, 70 (04) : 346 - 349
  • [9] Automated identification of patients with syncope in the textual health record - a feasibility study using machine learning and natural language processing
    Brekke, P.
    Pilan, I
    Husby, H.
    Gundersen, T.
    Dahl, F. A.
    Hurlen, P.
    Nytroe, O. E.
    Ovrelid, L.
    EUROPEAN HEART JOURNAL, 2020, 41 : 723 - 723
  • [10] Identification of recurrent atrial fibrillation using natural language processing applied to electronic health records
    Zheng, Chengyi
    Lee, Ming-sum
    Bansal, Nisha
    Go, Alan S.
    Chen, Cheng
    Harrison, Teresa N.
    Fan, Dongjie
    Allen, Amanda
    Garcia, Elisha
    Lidgard, Ben
    Singer, Daniel
    An, Jaejin
    EUROPEAN HEART JOURNAL-QUALITY OF CARE AND CLINICAL OUTCOMES, 2024, 10 (01) : 77 - 88