Identifying Cardiovascular Disease Risk Factors in Adults with Explainable Artificial Intelligence

被引:2
|
作者
Kirboga, Kevser Kubra [1 ,2 ]
Kucuksille, Ecir Ugur [3 ]
机构
[1] Bilecik Seyh Edebali Univ, Dept Bioengn, Fac Engn, Bilecik, Turkiye
[2] Istanbul Tech Univ, Informat Inst, Istanbul, Turkiye
[3] Suleyman Demirel Univ, Dept Comp Engn, Isparta, Turkiye
来源
ANATOLIAN JOURNAL OF CARDIOLOGY | 2023年 / 27卷 / 11期
关键词
Cardiovascular disease; explainable artificial intelligence; machine learning; prediction; risk factors; PREDICTION; WEIGHT; INDEX;
D O I
10.14744/AnatolJCardiol.2023.3214
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: The aim of this study was to evaluate the relationship between risk factors causing cardiovascular diseases and their importance with explainable machine learning models. Methods: In this retrospective study, multiple databases were searched, and data on 11 risk factors of 70 000 patients were obtained. Data included risk factors highly associated with cardiovascular disease and having/not having any cardiovascular disease. The explainable prediction model was constructed using 7 machine learning algorithms: Random Forest Classifier, Extreme Gradient Boost Classifier, Decision Tree Classifier, KNeighbors Classifier, Support Vector Machine Classifier, and GaussianNB. Receiver operating characteristic curve, Brier scores, and mean accuracy were used to assess the model's performance. The interpretability of the predicted results was examined using Shapley additive description values. Results: The accuracy, area under the curve values, and Brier scores of the Extreme Gradient Boost model (the best prediction model for cardiovascular disease risk factors) were calculated as 0.739, 0.803, and 0.260, respectively. The most important risk factors in the permutation feature importance method and explainable artificial intelligence-Shapley's explanations method are systolic blood pressure (ap_hi) [0.1335 +/- 0.0045 w (weight)], cholesterol (0.0341 +/- 0.0022 w), and age (0.0211 +/- 0.0036 w). Conclusion: The created explainable machine learning model has become a successful clinical model that can predict cardiovascular patients and explain the impact of risk factors. Especially in the clinical setting, this model, which has an accurate, explainable, and transparent algorithm, will help encourage early diagnosis of patients with cardiovascular diseases, risk factors, and possible treatment options.
引用
收藏
页码:657 / 663
页数:7
相关论文
共 50 条
  • [1] Explainable Artificial Intelligence Method for Identifying Cardiovascular Disease with a Combination CNN-XG-Boost Framework
    Sekhar J.C.
    Roy T.L.D.
    Sridharan K.
    Natrayan L.
    Saravanan K.A.
    Taloba A.I.
    Intl. J. Adv. Comput. Sci. Appl., 2024, 5 (1183-1193): : 1183 - 1193
  • [2] Explainable Artificial Intelligence Method for Identifying Cardiovascular Disease with a Combination CNN-XG-Boost Framework
    Sekhar, J. Chandra
    Roy, T. L. Deepika
    Sridharan, K.
    Natrayan, L.
    Saravanan, K. Aanandha
    Taloba, Ahmed I.
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2024, 15 (05) : 1183 - 1193
  • [3] Risk Prediction of Cardiovascular Events by Exploration of Molecular Data with Explainable Artificial Intelligence
    Westerlund, Annie M.
    Hawe, Johann S.
    Heinig, Matthias
    Schunkert, Heribert
    INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2021, 22 (19)
  • [4] Waist Circumference Cutoffs for Identifying Cardiovascular Disease Risk Factors in Chinese Adults
    He, Wei
    Zhao, Xinyu
    Zhu, Fei
    Zhu, Shankuan
    INTERNATIONAL JOURNAL OF OBESITY, 2011, 35 : S33 - S33
  • [5] An explainable artificial intelligence and Internet of Things framework for monitoring and predicting cardiovascular disease
    Umar, Mubarak Albarka
    Abuali, Najah
    Shuaib, Khaled
    Awad, Ali Ismail
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2025, 144
  • [6] Artificial intelligence improves risk prediction in cardiovascular disease
    Teshale, Achamyeleh Birhanu
    Htun, Htet Lin
    Vered, Mor
    Owen, Alice J.
    Ryan, Joanne
    Tonkin, Andrew
    Freak-Poli, Rosanne
    GEROSCIENCE, 2024,
  • [7] Identifying key factors influencing import container dwell time using eXplainable Artificial Intelligence
    Lee, Yongjae
    Park, Kikun
    Lee, Hyunjae
    Son, Jongpyo
    Kim, Seonhwan
    Bae, Hyerim
    MARITIME TRANSPORT RESEARCH, 2024, 7
  • [8] Identifying preflare spectral features using explainable artificial intelligence
    Panos, Brandon
    Kleint, Lucia
    Zbinden, Jonas
    ASTRONOMY & ASTROPHYSICS, 2023, 671
  • [9] Identifying Competitive Attributes Based on an Ensemble of Explainable Artificial Intelligence
    Younghoon Lee
    Business & Information Systems Engineering, 2022, 64 : 407 - 419
  • [10] Identifying Competitive Attributes Based on an Ensemble of Explainable Artificial Intelligence
    Lee, Younghoon
    BUSINESS & INFORMATION SYSTEMS ENGINEERING, 2022, 64 (04) : 407 - 419