Machine learning (ML) in diet planning for type-1 diabetes - An overview

Swapan K. Banerjee
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引用次数: 1

Abstract

Diabetes is a chronic non-communicable disease that has become a significant public health issue for decades globally. Diabetes can slowly destroy the human body from head to leg if not appropriately treated and managed through medication, diet, and physical activities. The pancreas fails to secrete insulin or enough insulin in type-1 diabetes, while the organ secretes the same hormone sufficiently, but the body cannot process it properly in type 2. In this article, the focussed area is type-1 diabetes which is most prevalent among children and adolescents. The article tried to link up with Industry 4.0, which is a great blessing for all of us. Industries got machine learning and other applications that can help predict, analyze, assess, and intervene in diabetes and other deadly diseases. The data on type-1 diabetes can be collected from private and public settings for exploratory data analysis (EDA) followed by model selections (4ML models and Saving models). Different machine learning algorithms are usually employed for classification, prediction, and detection despite fluctuating blood sugar records. Various studies showed that an Artificial neural network (ANN) would be the best choice for these needful actions having a 34% rate of applications. In addition to these applications, calorie (diet and exercises) assessments can be done much more precisely. In conclusion, learning of machine learning has now become mandatory not only for data science people but also for physicians, dietitians, and healthcare researchers.
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机器学习(ML)在1型糖尿病饮食计划中的应用综述
糖尿病是一种慢性非传染性疾病,几十年来已成为全球一个重大的公共卫生问题。如果不通过药物、饮食和体育活动进行适当的治疗和管理,糖尿病会慢慢地从头到脚地破坏人体。1型糖尿病患者的胰腺不能分泌胰岛素或分泌不足,而2型糖尿病患者的胰腺分泌足够的胰岛素,但身体不能正常处理胰岛素。在这篇文章中,重点关注的是儿童和青少年中最普遍的1型糖尿病。这篇文章试图与工业4.0联系起来,这对我们所有人来说都是一个巨大的祝福。工业领域的机器学习和其他应用可以帮助预测、分析、评估和干预糖尿病和其他致命疾病。1型糖尿病的数据可以从私人和公共环境中收集,用于探索性数据分析(EDA),然后选择模型(4ML模型和save模型)。尽管血糖记录波动,但通常采用不同的机器学习算法进行分类、预测和检测。各种研究表明,人工神经网络(ANN)将是这些必要行动的最佳选择,其应用率为34%。除了这些应用之外,卡路里(饮食和锻炼)评估也可以做得更精确。总之,机器学习现在不仅是数据科学人员的必修课,也是医生、营养师和医疗保健研究人员的必修课。
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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