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A Study on the Comparison of Predictive Models of Cardiovascular Disease Incidence Based on Machine Learning
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논문 기본 정보

Type
Academic journal
Author
Ji Woo SEOK (Dept. of Medical IT Eulji University) Won ro LEE (NASCALLAB Korea.) Min Soo Kang (Eulji University)
Journal
한국인공지능학회 인공지능연구 인공지능연구 제11권 제1호 KCI Candidated Journals
Published
2023.3
Pages
1 - 7 (7page)

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A Study on the Comparison of Predictive Models of Cardiovascular Disease Incidence Based on Machine Learning
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In this paper, a study was conducted to compare the prediction model of cardiovascular disease occurrence. It is the No.1 disease that accounts for 1/3 of the world's causes of death, and it is also the No. 2 cause of death in Korea. Primary prevention is the most important factor in preventing cardiovascular diseases before they occur. Early diagnosis and treatment are also more important, as they play a role in reducing mortality and morbidity. The Results of an experiment using Azure ML, Logistic Regression showed 88.6% accuracy, Decision Tree showed 86.4% accuracy, and Support Vector Machine (SVM) showed 83.7% accuracy. In addition to the accuracy of the ROC curve, AUC is 94.5%, 93%, and 92.4%, indicating that the performance of the machine learning algorithm model is suitable, and among them, the results of applying the logistic regression algorithm model are the most accurate. Through this paper, visualization by comparing the algorithms can serve as an objective assistant for diagnosis and guide the direction of diagnosis made by doctors in the actual medical field.

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