Diabetes Diagnosis and Prediction using Data Mining and Machine Learning Techniques

Muhammad Iqbal Fadillah,Afrig Aminuddin,Majid Rahardi,Ferian Fauzi Abdulloh,Hartatik Hartatik, Bima Pramudya Asaddulloh

2023 International Workshop on Artificial Intelligence and Image Processing (IWAIIP)(2023)

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摘要
Diabetes mellitus is a chronic metabolic disorder affecting millions of individuals worldwide, posing a significant healthcare challenge. Early diagnosis and accurate diabetes prediction can improve patient outcomes and reduce healthcare costs. This research uses three machine learning algorithms (K-Nearest Neighbors, Random Forest, and Logistic Regression) to predict diabetes, a significant healthcare problem. A dataset containing 100,000 patients was used, and the K-fold cross-validation method was used to select the best model from the three algorithms based on f1 value, accuracy, precision, and recall. The results showed that the K-Nearest Neighbors algorithm with parameter K=10 produced the highest accuracy of 87% at 10-fold. The Random Forest algorithm produces the highest accuracy of 90.70% at 10-fold. Meanwhile, logistic regression produced the highest accuracy of 88.64% at a 10-fold rate. This research provides an overview of how artificial intelligence algorithms can be applied to classify diabetes status to improve this disease’s management. It provides a basis for effective and accurate decision-making in treating diabetic patients.
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关键词
diabetes diagnosis,data mining,machine learning
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