Novel Machine Learning Ensemble Models for Active Diabetes Diagnosis

Mohamed A M Iesa, Abhinandan P Shirahatt, Harsha Sharma, Mohit Kumar Goyal, Amit Shrivastava, Baba Vajrala
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Abstract

Now that diabetes is on the rise as a silent killer, it will have catastrophic consequences if preventative measures are not implemented soon enough. Given that diabetes cannot be cured after it has been diagnosed in a patient, early identification of the illness is critical in diabetes. Doctors are finding it more difficult to do manual detection as the number of patients grows on a daily basis. We can do some automobile detection using tools like Machine Learning. This issue of diabetes diagnosis has been the subject of much study up to this point. Using two ensemble machine learning algorithms like Random Forest and GBDT, this study does predictive analysis. Pima Indians Diabetes Dataset, which includes data of diabetes patients, was used in this study to conduct different experiments. The findings are presented in this article. This article also addresses the significance of output interpretability in the healthcare sector and explains how providing output interpretability together with the machine learning model’s output on the patient record would assist physicians in real-time (in the future).
用于活动性糖尿病诊断的新型机器学习集成模型
现在,糖尿病作为一个无声的杀手正在上升,如果不尽快实施预防措施,它将产生灾难性的后果。糖尿病患者一旦确诊就无法治愈,因此对糖尿病的早期诊断至关重要。随着患者数量的增加,医生发现人工检测越来越困难。我们可以使用机器学习之类的工具来做一些汽车检测。到目前为止,糖尿病的诊断问题一直是许多研究的主题。本研究使用随机森林和GBDT两种集成机器学习算法进行预测分析。本研究使用了包含糖尿病患者数据的皮马印第安人糖尿病数据集进行不同的实验。本文介绍了研究结果。本文还讨论了输出可解释性在医疗保健领域的重要性,并解释了如何将输出可解释性与机器学习模型在患者记录上的输出结合起来,实时地(在未来)帮助医生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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