基于机器学习的早期糖尿病预测检测方法

GK Yudheksha, Vijay Murugadoss, P. Reddy, T. Harshavardan, Shivram Sriramulu
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引用次数: 1

摘要

糖尿病是美国死亡率飙升的主要原因之一。糖尿病患者的激增与不健康的生活方式、城市化、肥胖/超重、遗传、激素失衡、不良饮食、吸烟和酗酒直接相关。糖尿病如果长期不被发现,危害非常大,可能导致中风和心脏病等危及生命的疾病。通过将机器学习算法应用于现实生活中的问题,有可能提出高效、有效和量身定制的解决方案,在早期阶段检测糖尿病。本文对几种用于糖尿病早期检测的机器学习模型进行了比较和分析。用于我们模型开发的各种分类技术是SVM, DT,随机森林,XGBoost, KNN,逻辑回归。通过网格搜索,调整模型的超参数以达到最优性能。该算法的性能使用各种性能指标进行评估,如精度,准确度,召回率和F1-Score以及ROC-AUC曲线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning based Approach to Detect Early Stage Diabetes Prediction
Diabetes is one of the nation's primary causes of the spike in mortality rates. The surge in diabetes has been directly associated with an unhealthy lifestyle, urbanization, obesity/overweight, genetics, hormonal imbalance, poor diet, smoking, and alcoholism. Diabetes is very much harmful if left unidentified over the long term, which can lead to life- threatening difficulties like stroke and heart diseases. Through the application of Machine Learning algorithms to real-life problems, it is possible to come up with efficient, effective, and tailor-made solutions to detect diabetes at early stages. In this research paper, several ML models are compared and analyzed for early diabetes detection. The various categorization techniques used for our model development are SVM, DT, Random Forest, XGBoost, KNN, Logistic Regression. Through grid search, the hyperparameters of the models are tuned to achieve optimal performance. The proposed algorithm's performance is evaluated using various performance metrics like precision, Accuracy, Recall and F1-Score and ROC-AUC Curve.
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