利用机器学习和人工智能预测女性糖尿病。

IF 2.4 Q3 ENDOCRINOLOGY & METABOLISM
Ali Mamoon Alfalki
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引用次数: 0

摘要

背景:糖尿病是一种慢性健康状况(长期)由于血糖水平控制不足。本研究使用各种机器学习算法预测女性2型糖尿病。在Kaggle上发布的加州大学欧文分校糖尿病数据集被用于分析。方法:数据集包括预测2型糖尿病的8个危险因素,包括年龄、收缩压、血糖、体重指数、胰岛素、皮肤厚度、糖尿病谱系功能和妊娠。数据可视化使用R语言,研究考虑的算法有Logistic回归、支持向量机、决策树和极端梯度增强。本文还介绍了这些算法在各种分类指标上的性能分析,考虑到曲线下面积和接收者操作特征得分对于极端梯度提升(85%)是最好的,其次是支持向量机和决策树。结果:Logistic回归表现不佳。但是决策树和极端梯度增强在所有分类指标上都表现出很好的性能。但支持向量机的支持值较低;因此,它不能被称为一个好的分类器。该模型显示,2型糖尿病最显著的预测因子与血糖水平密切相关,与体重指数中等相关,而年龄、皮肤厚度、收缩压、胰岛素、妊娠和谱系功能不显著。这种类型的实时分析已经证明,与男性相比,女性2型糖尿病的症状完全不同,这突出了女性血糖水平和体重指数的重要性。结论:2型糖尿病的预测有助于公共卫生专业人员通过建议女性合理的食物摄入和调整生活方式活动以及良好的健身管理来控制血糖水平和体重指数。因此,卫生保健系统应特别关注女性糖尿病状况,以减少疾病恶化和其他相关症状。本研究试图从女性的行为和生理状况来预测2型糖尿病的发生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Machine Learning and Artificial Intelligence to Predict Diabetes Mellitus among Women Population.

Background: Diabetes Mellitus is a chronic health condition (long-lasting) due to inadequate control of blood levels of glucose. This study presents a prediction of Type 2 Diabetes Mellitus among women using various Machine Learning Algorithms deployed to predict the diabetic condition. A University of California Irvine Diabetes Mellitus Dataset posted in Kaggle was used for analysis.

Methods: The dataset included eight risk factors for Type 2 Diabetes Mellitus prediction, including Age, Systolic Blood Pressure, Glucose, Body Mass Index, Insulin, Skin Thickness, Diabetic Pedigree Function, and Pregnancy. R language was used for the data visualization, while the algorithms considered for the study are Logistic Regression, Support Vector Machines, Decision Trees and Extreme Gradient Boost. The performance analysis of these algorithms on various classification metrics is also presented here, considering the Area Under the Curve and Receiver Operating Characteristics score is the best for Extreme Gradient Boost with 85%, followed by Support Vector Machines and Decision Trees.

Results: The Logistic Regression is showing low performance. But the Decision Trees and Extreme Gradient Boost show promising performance against all the classification metrics. But the Support Vector Machines offers a lower support value; hence it cannot be claimed to be a good classifier. The model showed that the most significant predictors of Type 2 Diabetes Mellitus were strongly correlated with Glucose Levels and mediumly correlated with Body Mass Index, whereas Age, Skin Thickness, Systolic Blood Pressure, Insulin, Pregnancy, and Pedigree Function were less significant. This type of real-time analysis has proved that the symptoms of Type 2 Diabetes Mellitus in women fall entirely different compared to men, which highlights the importance of Glucose Levels and Body Mass Index in women.

Conclusion: The prediction of Type 2 Diabetes Mellitus helps public health professionals to help people by suggesting proper food intake and adjusting lifestyle activities with good fitness management in women to make glucose levels and body mass index controlled. Therefore, the healthcare systems should give special attention to diabetic conditions in women to reduce exacerbations of the disease and other associated symptoms. This work attempts to predict the occurrence of Type 2 Diabetes Mellitus among women on their behavioral and biological conditions.

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来源期刊
Current diabetes reviews
Current diabetes reviews ENDOCRINOLOGY & METABOLISM-
CiteScore
6.30
自引率
0.00%
发文量
158
期刊介绍: Current Diabetes Reviews publishes frontier reviews on all the latest advances on diabetes and its related areas e.g. pharmacology, pathogenesis, complications, epidemiology, clinical care, and therapy. The journal"s aim is to publish the highest quality review articles dedicated to clinical research in the field. The journal is essential reading for all researchers and clinicians who are involved in the field of diabetes.
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