Prediction of Type 2 Diabetes Mellitus Using Soft Computing

A. Tak, Poonam Punjabi, Anuradha Yadav, M. Sankhla, S. Mathur, Harsh S. Dave, Vaishnavi Patel, Tushar Chavhan, Manisha, Mamta
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引用次数: 2

Abstract

Background: Type 2 Diabetes Mellitus (DM) is another pandemic of 21 century, and its control is of immense importance. Researchers developed many predictor models using soft computing techniques. The present study developed a prediction model for Type 2 DM using machine learning classifiers. The analysis excludes plasma glucose concentration and insulin concentration as predictors to explore relationships with other predictors. Background: Methods: This cross-sectional study enrolled 108 participants aged 25 to 67 years from SMS Medical College, Jaipur (Rajasthan, India), after approval from the ethics committee. The study developed a prediction model using machine learning techniques. The classifiers used in the application include decision trees, support vector machines, K-nearest neighbors, and ensemble learning classifiers. A total of 25 predictors were collected and underwent feature reduction. The response levels include diabetes mellitus, prediabetes, and no diabetes mellitus. The models were run using three predictors and a response variable. The prediction model with the best accuracy and area under the receiver operator characteristic curve was selected. Results: The features that vary among the three groups include age, WHR, biceps skinfold thickness, total lipids, phospholipids, triglycerides, total cholesterol, LDL, VLDL, and serum creatinine, and family history of DM. After feature reduction, the age, biceps skinfold thickness, and serum creatinine were run on the Classification learner application to predict the diabetic category. The best model was subspace discriminant with accuracy, sensitivity, specificity, and AUC under the ROC curve was 62.4%, 74%, 94%, and 0.70, respectively. Conclusion: The present study concludes that age, biceps skinfold thickness, and serum creatinine combination have higher specificity in predicting type 2 DM. The study emphasized the selection of appropriate predictors along with newer machine learning algorithms.
用软计算预测2型糖尿病
背景:2型糖尿病(DM)是21世纪的另一种流行病,其控制具有极其重要的意义。研究人员利用软计算技术开发了许多预测模型。本研究使用机器学习分类器开发了2型糖尿病的预测模型。该分析排除了血浆葡萄糖浓度和胰岛素浓度作为预测因子,以探索与其他预测因子的关系。背景:方法:经伦理委员会批准,本横断面研究从斋浦尔(拉贾斯坦邦,印度)SMS医学院招募了108名年龄在25至67岁之间的参与者。该研究利用机器学习技术开发了一个预测模型。应用中使用的分类器包括决策树、支持向量机、k近邻和集成学习分类器。共收集了25个预测因子并进行了特征还原。反应水平包括糖尿病、前驱糖尿病和无糖尿病。这些模型使用三个预测因子和一个响应变量来运行。选择接收算子特征曲线下精度和面积最好的预测模型。结果:三组患者年龄、腰宽比、肱二头肌皮褶厚度、总脂、磷脂、甘油三酯、总胆固醇、LDL、VLDL、血清肌酐、糖尿病家族史等特征存在差异。特征还原后,在分类学习器应用程序上运行年龄、肱二头肌皮褶厚度、血清肌酐预测糖尿病类型。最佳模型为子空间判别,准确率为62.4%,灵敏度为74%,特异度为94%,ROC曲线下AUC为0.70。结论:本研究得出结论,年龄、二头肌皮褶厚度和血清肌酐组合在预测2型糖尿病方面具有更高的特异性。该研究强调选择合适的预测因子以及更新的机器学习算法。
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