利用类不平衡 BRFSS 数据集研究用于糖尿病诊断的机器学习算法和数据增强技术

Mohammad Mihrab Chowdhury , Ragib Shahariar Ayon , Md Sakhawat Hossain
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引用次数: 0

摘要

糖尿病是一种普遍存在的慢性疾病,给早期诊断和识别高危人群带来了巨大挑战。机器学习利用其处理大量数据和识别复杂模式的能力,在糖尿病检测中发挥着至关重要的作用。然而,不平衡数据(即糖尿病病例数量远远少于非糖尿病病例)使得使用机器学习算法识别糖尿病患者变得复杂。本研究的重点是预测一个人是否有患糖尿病的风险,同时考虑到个人的健康状况和社会经济条件,并减轻不平衡数据带来的挑战。在应用机器学习算法之前,我们在训练数据上采用了几种数据增强技术,如超采样(名义数据合成少数群体超采样,即 SMOTE-N)、欠采样(编辑最近邻,即 ENN)和混合采样技术(SMOTE-Tomek 和 SMOTE-ENN),以最大限度地减少不平衡数据的影响。我们的研究揭示了在不泄露任何数据的情况下谨慎利用数据增强技术对提高机器学习算法有效性的重要意义。此外,它还为医疗从业人员提供了从数据获取到机器学习预测的完整机器学习结构,使他们能够做出明智的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An investigation of machine learning algorithms and data augmentation techniques for diabetes diagnosis using class imbalanced BRFSS dataset

Diabetes is a prevalent chronic condition that poses significant challenges to early diagnosis and identifying at-risk individuals. Machine learning plays a crucial role in diabetes detection by leveraging its ability to process large volumes of data and identify complex patterns. However, imbalanced data, where the number of diabetic cases is substantially smaller than non-diabetic cases, complicates the identification of individuals with diabetes using machine learning algorithms. This study focuses on predicting whether a person is at risk of diabetes, considering the individual’s health and socio-economic conditions while mitigating the challenges posed by imbalanced data. We employ several data augmentation techniques, such as oversampling (Synthetic Minority Over Sampling for Nominal Data, i.e.SMOTE-N), undersampling (Edited Nearest Neighbor, i.e. ENN), and hybrid sampling techniques (SMOTE-Tomek and SMOTE-ENN) on training data before applying machine learning algorithms to minimize the impact of imbalanced data. Our study sheds light on the significance of carefully utilizing data augmentation techniques without any data leakage to enhance the effectiveness of machine learning algorithms. Moreover, it offers a complete machine learning structure for healthcare practitioners, from data obtaining to machine learning prediction, enabling them to make informed decisions.

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来源期刊
Healthcare analytics (New York, N.Y.)
Healthcare analytics (New York, N.Y.) Applied Mathematics, Modelling and Simulation, Nursing and Health Professions (General)
CiteScore
4.40
自引率
0.00%
发文量
0
审稿时长
79 days
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