Generalizability of an Automatic Explanation Method for Machine Learning Prediction Results on Asthma-Related Hospital Visits in Patients With Asthma: Quantitative Analysis

被引:4
|
作者
Luo, Gang [1 ]
Nau, Claudia L. [2 ]
Crawford, William W. [3 ]
Schatz, Michael [2 ,4 ]
Zeiger, Robert S. [2 ,4 ]
Koebnick, Corinna [2 ]
机构
[1] Univ Washington, Dept Biomed Informat & Med Educ, Seattle, WA 98195 USA
[2] Kaiser Permanente Southern Calif, Dept Res & Evaluat, Pasadena, CA USA
[3] Kaiser Permanente South Bay Med Ctr, Dept Allergy & Immunol, Harbor City, CA USA
[4] Kaiser Permanente Southern Calif, Dept Allergy, San Diego, CA USA
基金
美国国家卫生研究院;
关键词
asthma; forecasting; patient care management; machine learning; COMPUTER-BASED MODELS; RISK-FACTORS; HEALTH-CARE; VALIDATION; OUTCOMES; ADULTS; EXACERBATIONS; ORGANIZATION; CHILDREN;
D O I
10.2196/24153
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Asthma exerts a substantial burden on patients and health care systems. To facilitate preventive care for asthma management and improve patient outcomes, we recently developed two machine learning models, one on Intermountain Healthcare data and the other on Kaiser Permanente Southern California (KPSC) data, to forecast asthma-related hospital visits, including emergency department visits and hospitalizations, in the succeeding 12 months among patients with asthma. As is typical for machine learning approaches, these two models do not explain their forecasting results. To address the interpretability issue of black-box models, we designed an automatic method to offer rule format explanations for the forecasting results of any machine learning model on imbalanced tabular data and to suggest customized interventions with no accuracy loss. Our method worked well for explaining the forecasting results of our Intermountain Healthcare model, but its generalizability to other health care systems remains unknown. Objective: The objective of this study is to evaluate the generalizability of our automatic explanation method to KPSC for forecasting asthma-related hospital visits. Methods: Through a secondary analysis of 987,506 data instances from 2012 to 2017 at KPSC, we used our method to explain the forecasting results of our KPSC model and to suggest customized interventions. The patient cohort covered a random sample of 70% of patients with asthma who had a KPSC health plan for any period between 2015 and 2018. Results: Our method explained the forecasting results for 97.57% (2204/2259) of the patients with asthma who were correctly forecasted to undergo asthma-related hospital visits in the succeeding 12 months. Conclusions: For forecasting asthma-related hospital visits, our automatic explanation method exhibited an acceptable generalizability to KPSC.
引用
收藏
页数:14
相关论文
共 38 条
  • [31] Prognostic Value of Admission Neutrophil Count in Asthma Patients with COVID-19: A Comparative Analysis with Other Systemic Inflammation Indices for In-hospital Mortality Prediction
    Ghobadi, Hassan
    Mohammadshahi, Jafar
    Tarighi, Aylin
    Hosseini, Seyed Amir Hossein
    Garjani, Kara
    Aslani, Mohammad Reza
    IRANIAN JOURNAL OF ALLERGY ASTHMA AND IMMUNOLOGY, 2023, 22 (04) : 390 - 397
  • [32] Prediction of In- Hospital Mortality Following Vertebral Fracture Fixation in Patients With Ankylosing Spondylitis or Diffuse Idiopathic Skeletal Hyperostosis: Machine Learning Analysis
    Cabrera, Andrew
    Bouterse, Alexander
    Nelson, Michael
    Dietrich, Coleman
    Razzouk, Jacob
    Oyoyo, Udochukwu
    Bono, Christopher M.
    Danisa, Olumide
    INTERNATIONAL JOURNAL OF SPINE SURGERY, 2024, 18 (01) : 62 - 68
  • [33] Prediction model of in-hospital mortality in intensive care unit patients with cardiac arrest: a retrospective analysis of MIMIC -IV database based on machine learning
    Sun, Yiwu
    He, Zhaoyi
    Ren, Jie
    Wu, Yifan
    BMC ANESTHESIOLOGY, 2023, 23 (01)
  • [34] Prediction model of in-hospital mortality in intensive care unit patients with cardiac arrest: a retrospective analysis of MIMIC -IV database based on machine learning
    Yiwu Sun
    Zhaoyi He
    Jie Ren
    Yifan Wu
    BMC Anesthesiology, 23
  • [35] Machine Learning for In-hospital Mortality Prediction in Critically Ill Patients With Acute Heart Failure: A Retrospective Analysis Based on the MIMIC-IV Database
    Li, Jun
    Sun, Yiwu
    Ren, Jie
    Wu, Yifan
    He, Zhaoyi
    JOURNAL OF CARDIOTHORACIC AND VASCULAR ANESTHESIA, 2025, 39 (03) : 666 - 674
  • [36] Machine learning-derived prediction of in-hospital mortality in patients with severe acute respiratory infection: analysis of claims data from the German-wide Helios hospital network
    Johannes Leiner
    Vincent Pellissier
    Sebastian König
    Sven Hohenstein
    Laura Ueberham
    Irit Nachtigall
    Andreas Meier-Hellmann
    Ralf Kuhlen
    Gerhard Hindricks
    Andreas Bollmann
    Respiratory Research, 23
  • [37] Prediction model of in-hospital mortality in intensive care unit patients with heart failure: machine learning-based, retrospective analysis of the MIMIC-III database
    Li, Fuhai
    Xin, Hui
    Zhang, Jidong
    Fu, Mingqiang
    Zhou, Jingmin
    Lian, Zhexun
    BMJ OPEN, 2021, 11 (07):
  • [38] Machine Learning Prediction Model to Predict Length of Stay of Patients Undergoing Hip or Knee Arthroplasties: Results from a High-Volume Single-Center Multivariate Analysis
    Di Matteo, Vincenzo
    Tommasini, Tobia
    Morandini, Pierandrea
    Savevski, Victor
    Grappiolo, Guido
    Loppini, Mattia
    JOURNAL OF CLINICAL MEDICINE, 2024, 13 (17)