A Predictive Study of Machine Learning and Deep Learning Procedures Over Chronic Disease Datasets

Nimay Seth
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Abstract

People's health and well-being are not given priority in the technological and Internet-savvy world we live in. People are becoming worse because they don't regularly attend the hospital for checkups due to job and unanticipated events. Most people nowadays suffer from one or more chronic illnesses, such as diabetes, hypothyroidism, heart disease, breast cancer, and dermatology. According to the World Health Organization (WHO), these chronic illnesses account for half of all fatalities in most nations and are the main cause of premature mortality. Patients who are identified early on potentially have their condition stop progressing. Many dispersed studies clearly demonstrated that conventional approaches to diagnosing chronic illnesses are prone to prejudice and heterogeneity among physicians, making it difficult to promptly and precisely diagnose problems. Still, Despite the availability of up-to-date information and a variety of machine learning-based methods, there have been enormous published efforts demonstrating that machine learning (ML)/deep learning (DL) based approach can considerably enhance the timely estimation of various health conditions. However, precise diagnosis of such diseases remains a difficulty. There are many machine learning-based techniques and current knowledge available, however despite this, a great deal of published research has shown that machine learning/deep learning based approach can considerably enhance the timely estimation of various health conditions. However, precise diagnosis of such diseases remains a difficulty. In order to tackle this problem, this work uses the UCI/KAGGLE ML/DL disease dataset to evaluate various ML/DL procedures and explores how different machine learning algorithms forecast chronic diseases. Accuracy and confusion matrix are used to verify the results. In order to help inexperienced researchers comprehend the disease prediction function of ML/DL-based techniques and determine the direction of Upcoming research, this study also discusses the advantages and disadvantages of accessible disease prediction schemes.
机器学习和深度学习程序对慢性病数据集的预测研究
在我们生活的这个技术和互联网发达的世界里,人们的健康和幸福并没有被放在首位。由于工作原因和意外事件,人们没有定期去医院检查,导致身体状况越来越差。如今,大多数人都患有一种或多种慢性疾病,如糖尿病、甲状腺功能减退症、心脏病、乳腺癌和皮肤病。根据世界卫生组织(WHO)的数据,在大多数国家,这些慢性病导致的死亡人数占总死亡人数的一半,是导致过早死亡的主要原因。早期发现的患者有可能使病情不再恶化。许多分散的研究清楚地表明,传统的慢性疾病诊断方法容易受到偏见和医生之间差异的影响,很难及时准确地诊断出问题。不过,尽管有了最新信息和各种基于机器学习的方法,已有大量研究表明,基于机器学习(ML)/深度学习(DL)的方法可以大大提高对各种健康状况的及时估计。然而,对这类疾病的精确诊断仍然是一个难题。目前有许多基于机器学习的技术和知识,尽管如此,大量已发表的研究表明,基于机器学习/深度学习的方法可以大大提高对各种健康状况的及时估计。然而,对这类疾病的精确诊断仍然是一个难题。为了解决这一问题,本研究利用 UCI/KAGGLE ML/DL 疾病数据集来评估各种 ML/DL 程序,并探索不同的机器学习算法如何预测慢性疾病。准确率和混淆矩阵用于验证结果。为了帮助缺乏经验的研究人员理解基于 ML/DL 技术的疾病预测功能并确定即将开展的研究方向,本研究还讨论了可获得的疾病预测方案的优缺点。
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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