Explainability analysis in predictive models based on machine learning techniques on the risk of hospital readmissions

被引:4
|
作者
Bedoya, Juan Camilo Lopera [1 ]
Castro, Jose Lisandro Aguilar [1 ,2 ,3 ]
机构
[1] Univ EAFIT, GIDITIC, Medellin, Colombia
[2] Univ Los Andes, CEMISID, Merida, Venezuela
[3] IMDEA Networks Inst, Madrid, Spain
关键词
Explainability analysis; Prediction models; Machine learning; Hospital readmission; Health decision-making systems;
D O I
10.1007/s12553-023-00794-8
中图分类号
R-058 [];
学科分类号
摘要
PurposeAnalyzing the risk of re-hospitalization of patients with chronic diseases allows the healthcare institutions can deliver accurate preventive care to reduce hospital admissions, and the planning of the medical spaces and resources. Thus, the research question is: Is it possible to use artificial intelligence to study the risk of re-hospitalization of patients?MethodsThis article presents several models to predict when a patient can be hospitalized again, after its discharge. In addition, an explainability analysis is carried out with the predictive models to extract information to determine the degree of importance of the predictors/descriptors. Particularly, this article makes a comparative analysis of different explainability techniques in the study context.ResultsThe best model is a classifier based on decision trees with an F1-Score of 83% followed by LGMB with an F1-Score of 67%. For these models, Shapley values were calculated as a method of explainability. Concerning the quality of the explainability of the predictive models, the stability metric was used. According to this metric, more variability is evidenced in the explanations of the decision trees, where only 4 attributes are very stable (21%) and 1 attribute is unstable. With respect to the LGBM-based model, there are 12 stable attributes (63%) and no unstable attributes. Thus, in terms of explainability, the LGBM-based model is better.ConclusionsAccording to the results of the explanations generated by the best predictive models, LGBM-based predictive model presents more stable variables. Thus, it generates greater confidence in the explanations it provides.
引用
收藏
页码:93 / 108
页数:16
相关论文
共 50 条
  • [31] Machine learning based predictive modeling of readmissions following extracorporeal membrane oxygenation hospitalizations
    Balian, Jeffrey
    Sakowitz, Sara
    Verma, Arjun
    Vadlakonda, Amulya
    Cruz, Emma
    Ali, Konmal
    Benharash, Peyman
    SURGERY OPEN SCIENCE, 2024, 19 : 125 - 130
  • [32] A Predictive Analysis of Heart Rates Using Machine Learning Techniques
    Oyeleye, Matthew
    Chen, Tianhua
    Titarenko, Sofya
    Antoniou, Grigoris
    INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH, 2022, 19 (04)
  • [33] Advanced Machine Learning Techniques for Predictive Analysis of Health Insurance
    Prova, Nuzhat Noor Islam
    2024 SECOND INTERNATIONAL CONFERENCE ON INTELLIGENT CYBER PHYSICAL SYSTEMS AND INTERNET OF THINGS, ICOICI 2024, 2024, : 1166 - 1170
  • [34] A comparison of general and disease-specific machine learning models for the prediction of unplanned hospital readmissions
    Sutter, Thomas
    Roth, Jan A.
    Chin-Cheong, Kieran
    Hug, Balthasar L.
    Vogt, Julia E.
    JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION, 2021, 28 (04) : 868 - 873
  • [35] Predictive Analysis Of Breast Cancer Using Machine Learning Techniques
    Agrawal, Rashmi
    INGENIERIA SOLIDARIA, 2019, 15 (29):
  • [36] Predictive Analysis of Cervical Cancer Using Machine Learning Techniques
    Kumawat, Gaurav
    Vishwakarma, Santosh Kumar
    Chakrabarti, Prasun
    SMART TRENDS IN COMPUTING AND COMMUNICATIONS, VOL 1, SMARTCOM 2024, 2024, 945 : 501 - 516
  • [37] Comparative Analysis of Machine Learning Techniques Using Predictive Modeling
    Khandelwal, Ritu
    Goyal, Hemlata
    Shekhawat, Rajveer S.
    Recent Advances in Computer Science and Communications, 2022, 15 (03) : 466 - 477
  • [38] Identifying risk factors for 30-day hospital readmissions among heart failure patients using machine-learning techniques
    Menzin, Joseph
    Menzin, Jordan
    Friedman, Mark
    Watzker, Anna
    PHARMACOEPIDEMIOLOGY AND DRUG SAFETY, 2019, 28 : 66 - 66
  • [39] Designing predictive models for appraisal of outcome of neurosurgery patients using machine learning-based techniques
    Alizadeh, Behrooz
    Alibabaei, Ahmad
    Ahmadi, Soleiman
    Maroufi, Seyed Farzad
    Ghafouri-Fard, Soudeh
    Nateghinia, Saeedeh
    INTERDISCIPLINARY NEUROSURGERY-ADVANCED TECHNIQUES AND CASE MANAGEMENT, 2023, 31
  • [40] THE ECONOMIC EXPLAINABILITY OF MACHINE LEARNING AND STANDARD ECONOMETRIC MODELS-AN APPLICATION TO THE US MORTGAGE DEFAULT RISK
    Kim, Dong-sup
    Shin, Seungwoo
    INTERNATIONAL JOURNAL OF STRATEGIC PROPERTY MANAGEMENT, 2021, 25 (05) : 396 - 412