A Detailed Investigation and Analysis of Using Machine Learning Techniques for Thyroid Diagnosis

N. K. Trivedi, R. Tiwari, A. Agarwal, Vinay Gautam
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引用次数: 2

Abstract

A Method of Classification Based on Norms Data mining greatly benefits several subfields within the healthcare industry. Detecting and treating diseases at an early stage is a challenging but essential objective in the healthcare field. If they are discovered early enough, many diseases can be diagnosed and treated while they are still in their early stages. Conditions that affect the thyroid are one example of this type of example. In the past, thyroid disorders were identified through a process that involved observing a patient's symptoms and doing a battery of blood tests. The primary goal is to enhance the accuracy with which diseases are detected in the initial stages of their progression. The healthcare business may gain a significant amount from using data mining techniques for decision-making, disease diagnosis, and the provision of superior treatment to patients at reduced prices. Thyroiditis is ongoing. The act of classifying things into different groups is significant. This study aims to determine the connection between TSH, T3, and T4 and hyperthyroidism and hypothyroidism. It also tries to determine the relationship between TSH, T3, T4, and gender. Additionally, the research will attempt to predict thyroid disease using several classification systems. Our study shows that the Neural network classifier generates the highest classification accuracy of 98.4%.
使用机器学习技术进行甲状腺诊断的详细调查与分析
一种基于规范数据挖掘的分类方法极大地造福了医疗保健行业的几个子领域。在早期阶段检测和治疗疾病是医疗保健领域的一个具有挑战性但又必不可少的目标。如果发现得足够早,许多疾病就可以在早期阶段得到诊断和治疗。影响甲状腺的疾病就是这种类型的例子之一。在过去,甲状腺疾病是通过观察病人的症状和做一系列血液测试来确定的。主要目标是提高在疾病进展的初始阶段检测疾病的准确性。医疗保健业务可以从使用数据挖掘技术进行决策、疾病诊断和以更低的价格为患者提供更好的治疗中获得大量收益。甲状腺炎正在进行中。把事物分成不同的组是很重要的。本研究旨在探讨TSH、T3、T4与甲亢、甲减之间的关系。它还试图确定TSH、T3、T4和性别之间的关系。此外,该研究将尝试使用几种分类系统来预测甲状腺疾病。我们的研究表明,神经网络分类器的分类准确率最高,达到98.4%。
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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