Effective Approach for Early Detection of Diabetes by Logistic Regression through Risk Prediction

K. Thangarajan
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Abstract

Heart disease, cancer, renal failure, eye damage, and blindness are just some of the complications that may result from uncontrolled diabetes. Scientists are inspired to develop a Machine Learning (ML) approach for diabetes forecasting. To improve illness diagnosis, medical personnel must make use of ML algorithms. Different ML algorithms for identifying diabetes risk at an early stage are examined and contrasted in this research. The goal in analysing diabetes prediction models is to develop criteria for selecting high-quality studies and synthesising the results from several studies. Nonlinearity, normality, correlation structure, and complexity characterise the vast majority of medical data, making analysis of diabetic data a formidable task. Algorithms based on machine learning are not permitted to be used in healthcare or medical imaging. Early diabetes mellitus prediction necessitates a strategy distinct from those often used. Diabetic patients and healthy individuals may be separated using a risk stratification approach based on machine learning. This study is highly recommended since it reviews a variety of papers that may be used by researchers working on diabetes prediction models.
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基于风险预测的Logistic回归早期发现糖尿病的有效方法
心脏病、癌症、肾衰竭、眼睛损伤和失明只是不受控制的糖尿病可能导致的一些并发症。科学家受到启发,开发了一种用于糖尿病预测的机器学习(ML)方法。为了提高疾病诊断,医务人员必须利用ML算法。在本研究中,不同的ML算法用于识别早期糖尿病风险进行了检查和对比。分析糖尿病预测模型的目的是制定选择高质量研究和综合多项研究结果的标准。非线性、正态性、相关结构和复杂性是绝大多数医疗数据的特点,这使得糖尿病数据的分析成为一项艰巨的任务。基于机器学习的算法不允许用于医疗保健或医学成像。早期糖尿病预测需要一种不同于常用的策略。可以使用基于机器学习的风险分层方法将糖尿病患者和健康人分开。这项研究被强烈推荐,因为它回顾了各种可能被研究糖尿病预测模型的研究人员使用的论文。
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