使用机器学习算法检测糖尿病

Nicole D'Souza, K. Shah, Pranav Singh
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引用次数: 0

摘要

糖尿病是一种严重的疾病。为了避免严重的副作用,及时预测这种疾病是必要的。目前的医疗实践规定,病人要接受一系列检查,以获得诊断所需的信息,然后根据诊断进行治疗。然而,在许多情况下,早期阶段未被发现,并且由于许多因素的相互依存,医生很难诊断。单一参数通常不足以准确诊断糖尿病,并可能导致错误的决定。为了在早期准确预测糖尿病,必须结合多种标准。本研究提出发展糖尿病早期检测模型。该模型不仅比人类更准确,而且还将减少医疗专业人员的工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diabetes Detection Using Machine Learning Algorithms
Diabetes is a serious illness. Predicting this disease in a timely manner is necessary to avoid severe side effects. Current medical practise dictates that a patient undergoes a battery of tests in order to obtain the information necessary for diagnosis, after which treatment is administered based on the diagnosis. However, in many cases, the early stages go undetected, and it is quite difficult for physicians to diagnose due to the interdependence of numerous factors. A single parameter is commonly inadequate for the accurate diagnosis of diabetes and may lead to erroneous decisions. To accurately forecast diabetes at an early stage, multiple criteria must be combined. This study proposes the development of an early diabetes detection model. The model will not only be more accurate than humans, but it will also reduce the workload of medical professionals.
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