Advanced machine learning techniques for cardiovascular disease early detection and diagnosis

被引:0
作者
Nadiah A. Baghdadi
Sally Mohammed Farghaly Abdelaliem
Amer Malki
Ibrahim Gad
Ashraf Ewis
Elsayed Atlam
机构
[1] Princess Nourah bint Abdulrahman University,Nursing Management and Education Department, College of Nursing
[2] Taibah University,Computer Science Section, College of Computer Science and Engineering
[3] Yanbu Campus,Computer Science Department, Faculty of Science
[4] Tanta University,Department of Public Health and Occupational Medicine, Faculty of Medicine
[5] Minia University,Department of Public Health, Faculty of Health Sciences, AlQunfudah
[6] Umm AlQura University,undefined
来源
Journal of Big Data | / 10卷
关键词
Heart disease; Machine learning; Feature selection; Cardiovascular diseases; Quality of life; Disease prevention; CVD;
D O I
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中图分类号
学科分类号
摘要
The identification and prognosis of the potential for developing Cardiovascular Diseases (CVD) in healthy individuals is a vital aspect of disease management. Accessing the comprehensive health data on CVD currently available within hospital databases holds significant potential for the early detection and diagnosis of CVD, thereby positively impacting disease outcomes. Therefore, the incorporation of machine learning methods holds significant promise in the advancement of clinical practice for the management of Cardiovascular Diseases (CVDs). By providing a means to develop evidence-based clinical guidelines and management algorithms, these techniques can eliminate the need for costly and extensive clinical and laboratory investigations, reducing the associated financial burden on patients and the healthcare system. In order to optimize early prediction and intervention for CVDs, this study proposes the development of novel, robust, effective, and efficient machine learning algorithms, specifically designed for the automatic selection of key features and the detection of early-stage heart disease. The proposed Catboost model yields an F1-score of about 92.3% and an average accuracy of 90.94%. Therefore, Compared to many other existing state-of-art approaches, it successfully achieved and maximized classification performance with higher percentages of accuracy and precision.
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