Diabetes Prediction Model for Better Clarification by using Machine Learning

J. L. Eben, R. Jayasudha, S. Ramya, S. Kaliappan, Shobha Aswal, Khalid Ali Salem Al-Salehi
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Abstract

Diabetes mellitus is one of the most pressing health concerns because so many people are afflicted by its disabling symptoms. Factors such as age, excess body fat, insufficient physical activity, a history of diabetes in one's family, a sedentary lifestyle, an unhealthy diet, hypertension, etc., all increase the likelihood of developing diabetes mellitus. Health complications are more common in people with diabetes, including cardiovascular disease, renal failure, stroke, blindness, and nerve injury. To validate a diagnosis of diabetes, hospitals typically perform a battery of procedures on the patient. Big data analytics has many vital applications in the healthcare sector. Numerous large computer systems are used in the healthcare sector. With the help of big data analytics, researchers can sift through mountains of data in search of previously unseen patterns and insights. Current techniques have a poor degree of precision in classification and forecast. While previous research has focused on factors such as glucose, body mass index, age, insulin, etc., the proposed model takes these into account and also the other factors that may be more relevant to the development of diabetes. The newer sample is superior to the older one based on categorization accuracy. A workflow algorithm for diabetes prognosis is also required to improve the accuracy.
利用机器学习更好地澄清糖尿病预测模型
糖尿病是最紧迫的健康问题之一,因为许多人都受到其致残症状的折磨。年龄、身体脂肪过多、身体活动不足、家族有糖尿病史、久坐不动的生活方式、不健康的饮食、高血压等因素,都会增加患糖尿病的可能性。健康并发症在糖尿病患者中更为常见,包括心血管疾病、肾衰竭、中风、失明和神经损伤。为了验证糖尿病的诊断,医院通常会对患者进行一系列的检查。大数据分析在医疗保健领域有许多重要的应用。医疗保健部门使用了许多大型计算机系统。在大数据分析的帮助下,研究人员可以筛选大量数据,寻找以前未见过的模式和见解。目前的技术在分类和预测方面精度较差。虽然之前的研究主要集中在葡萄糖、体重指数、年龄、胰岛素等因素上,但该模型考虑了这些因素以及其他可能与糖尿病发展更相关的因素。基于分类精度,新样本优于旧样本。还需要一种糖尿病预后的工作流算法来提高准确性。
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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