综合统计和机器学习分析为区分早发性2型糖尿病的关键影响症状提供了见解

Q1 Medicine
David A. Wood
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引用次数: 0

摘要

背景:能够从潜在患者表现出的一系列体征和症状(特征)中自信地预测2型糖尿病的早期发病是及时开始治疗的可取之处。晚期或不确定的诊断可能给患者带来更严重的健康后果,从长远来看,还会增加卫生保健服务的费用。方法提出了一种新的综合方法,包括相关性、统计分析、机器学习、多重k -fold交叉验证和混淆矩阵,从大量特征中提供可靠的糖尿病阳性和阴性个体分类。该方法还确定了每个特征对糖尿病诊断的相对影响,并突出了最重要的特征。使用了十种统计和机器学习方法进行分析。结果:对520人(孟加拉国Sylthet糖尿病医院)的公开数据集进行建模,显示支持向量分类器生成最准确的早发性2型糖尿病状态预测,只有11个错误分类(2.1%的误差)。多饮和多尿是最具影响的特征,而肥胖和年龄在预测模型中被分配的权重较低。结论:本文提出的方法能够快速预测早发性2型糖尿病,具有较高的置信度,同时对此类预测中涉及的关键影响特征提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Integrated statistical and machine learning analysis provides insight into key influencing symptoms for distinguishing early-onset type 2 diabetes

Integrated statistical and machine learning analysis provides insight into key influencing symptoms for distinguishing early-onset type 2 diabetes

Integrated statistical and machine learning analysis provides insight into key influencing symptoms for distinguishing early-onset type 2 diabetes

Integrated statistical and machine learning analysis provides insight into key influencing symptoms for distinguishing early-onset type 2 diabetes

Integrated statistical and machine learning analysis provides insight into key influencing symptoms for distinguishing early-onset type 2 diabetes

Background

Being able to predict with confidence the early onset of type 2 diabetes from a suite of signs and symptoms (features) displayed by potential sufferers is desirable to commence treatment promptly. Late or inconclusive diagnosis can result in more serious health consequences for sufferers and higher costs for health care services in the long run.

Methods

A novel integrated methodology is proposed involving correlation, statistical analysis, machine learning, multi-K-fold cross-validation, and confusion matrices to provide a reliable classification of diabetes-positive and -negative individuals from a substantial suite of features. The method also identifies the relative influence of each feature on the diabetes diagnosis and highlights the most important ones. Ten statistical and machine learning methods are utilized to conduct the analysis.

Results

A published data set involving 520 individuals (Sylthet Diabetes Hospital, Bangladesh) is modeled revealing that a support vector classifier generates the most accurate early-onset type 2 diabetes status predictions with just 11 misclassifications (2.1% error). Polydipsia and polyuria are among the most influential features, whereas obesity and age are assigned low weights by the prediction models.

Conclusion

The proposed methodology can rapidly predict early-onset type 2 diabetes with high confidence while providing valuable insight into the key influential features involved in such predictions.

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来源期刊
CiteScore
6.70
自引率
0.00%
发文量
195
审稿时长
35 weeks
期刊介绍: This journal aims to promote progress from basic research to clinical practice and to provide a forum for communication among basic, translational, and clinical research practitioners and physicians from all relevant disciplines. Chronic diseases such as cardiovascular diseases, cancer, diabetes, stroke, chronic respiratory diseases (such as asthma and COPD), chronic kidney diseases, and related translational research. Topics of interest for Chronic Diseases and Translational Medicine include Research and commentary on models of chronic diseases with significant implications for disease diagnosis and treatment Investigative studies of human biology with an emphasis on disease Perspectives and reviews on research topics that discuss the implications of findings from the viewpoints of basic science and clinical practic.
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