1. การเปรียบเทียบประสิทธิภาพของแบบจำลองการทำนายความเสี่ยงโรคหัวใจและหลอดเลือดโดยใช้อัลกอริทึมเหมืองข้อมูล.
- Author
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นงเยาว์ ในอรุณ
- Subjects
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ARTIFICIAL neural networks , *CARDIOVASCULAR diseases , *RANDOM forest algorithms , *PREDICTION models , *DIAGNOSIS , *DECISION trees , *WEB-based user interfaces , *HOSPITAL quality control - Abstract
This research aimed (1) to create cardiovascular risk diagnosis prediction models using algorithms including Neural Network, Random Forest, Naïve Bayes, K-Nearest Neighbors and Decision Tree (2) five algorithms were used with attribute selection and (3) comparing the model performance using 10f Fold cross validation method. Tools usee were MySQL and RapidMiner Studio programs. The data see comprised people who had been screened as patients with cardiovascular disease that were collected from the Saraburi Provincial Public Health Office during 2018-2019 from 12 Saraburi hospitals and 126 health promoting hospitalsreIt was found that the model with the best prediction performance was the neural network model with attribute selection having 99.29% accuracy, and the lowest was the decision tree model with 70.39% accuracy. This research concluded that the neural network model with attribute selection of the best qualificationt should be further developed for early diagnosis of cardiovascular risk web applications. [ABSTRACT FROM AUTHOR]
- Published
- 2021