比较不同机器学习技术在早期糖尿病预测中的应用

CC 2023 Pub Date : 2024-03-22 DOI:10.3390/engproc2024062020
Shweta Yadu, Rashmi Chandra, Vivek Kumar Sinha
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引用次数: 0

摘要

:糖尿病是不断蔓延的疾病之一,据估计在全世界造成大量死亡。它是由血糖分子中葡萄糖的数量决定的。人们已经用多种方法预测了这种疾病的可能性。要在早期预测糖尿病,就需要有足够、清晰的糖尿病患者数据。在这项研究中,我们使用了来自孟加拉国一家医院的 520 份记录,其中包含 16 个不同的特征编号来进行预测。在 UCI,每个人都可以访问这个数据集。在特征选择后,我们使用了随机森林、Ada Booster、KNN 和 Bagging 算法。通过 10 倍交叉验证,我们发现随机森林法的测试准确率最高,正确率为 97.03%,而袋集算法的正确率为 95.03%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing Different Machine Learning Techniques in Predicting Diabetes on Early Stage
: One of the diseases that is constantly spreading and is estimated to cause a significant number of deaths worldwide is diabetes mellitus. It is determined by the quantity of a blood sugar molecule made from glucose. The possibility of this disease has been predicted using a variety of methods. To forecast diabetes at an early stage, adequate and clear data on diabetic individuals are needed. In this study, 520 records from a hospital in Bangladesh with 16 different characteristic numbers were used to make predictions. At UCI, this dataset is accessible to everyone. We used Random Forest, Ada Booster, KNN, and Bagging algorithms after feature selection. Through 10-fold cross-validation, it was discovered that the Random Forest method had the best test accuracy, scoring 97.03% correctly and 95.03% correctly.
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