Reviewing the Impact of Machine Learning on Disease Diagnosis and Prognosis: A Comprehensive Analysis

Radha Raman Chandan, Jagendra Singh, Vinayakumar Ravi, Basu Dev Shivahare, Tahani Jaser Alahmadi, Prabhishek Singh, M. Diwakar
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Abstract

This study aimed to explore how machine learning algorithms can enhance medical diagnostics through the analysis of illness imagery and patient data, assessing their effectiveness and potential to improve diagnostic accuracy and early disease detection. This study highlights the critical role of machine learning in healthcare, particularly in medical diagnostics. By leveraging advanced algorithms to analyse medical data and images, machine learning enhances disease detection and diagnosis, contributing significantly to improved patient outcomes and the advancement of precision medicine. The objective of this study was to thoroughly analyse and evaluate the efficacy of machine learning algorithms in medical diagnostics, focusing on their application in interpreting illness images and patient data. The goal was to ascertain the algorithms' accuracy in disease diagnosis and prognosis, aiming to demonstrate their potential in revolutionizing healthcare through improved diagnostic precision and early disease detection. A systematic approach has been used in this study to evaluate machine learning algorithms' effectiveness in diagnosing diseases from medical images and data. It involved selecting pertinent datasets, applying and comparing models, like SVM and K-nearest neighbors, and assessing their diagnostic accuracy and performance, aiming to identify the most effective methodologies in medical diagnostics. The results have highlighted the varying accuracy of machine learning algorithms in medical diagnostics, with a focus on the performance of models, such as SVM and K-nearest neighbors. A comparative analysis has illustrated the differential effectiveness of these algorithms across various diseases and datasets, underscoring their potential to enhance healthcare diagnostics. The study has concluded that machine learning algorithms have significantly improved medical diagnostics, offering varied effectiveness across different conditions. Their potential to revolutionize healthcare is evident, with enhanced diagnostic accuracy and efficiency. Ongoing research and clinical application are essential to harness these technologies' full benefits.
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回顾机器学习对疾病诊断和预后的影响:全面分析
本研究旨在探索机器学习算法如何通过分析疾病图像和患者数据来提高医疗诊断水平,评估其在提高诊断准确性和早期疾病检测方面的有效性和潜力。 这项研究强调了机器学习在医疗保健领域,特别是在医疗诊断方面的关键作用。通过利用先进的算法分析医疗数据和图像,机器学习提高了疾病检测和诊断水平,为改善患者预后和推进精准医疗做出了重大贡献。 本研究旨在全面分析和评估机器学习算法在医疗诊断中的功效,重点关注其在解读疾病图像和患者数据方面的应用。目标是确定算法在疾病诊断和预后方面的准确性,旨在通过提高诊断精确度和早期疾病检测来证明它们在革新医疗保健方面的潜力。 本研究采用了一种系统方法来评估机器学习算法从医学图像和数据中诊断疾病的有效性。其中包括选择相关的数据集,应用和比较 SVM 和 K-nearest neighbors 等模型,评估它们的诊断准确性和性能,目的是找出医疗诊断中最有效的方法。 结果凸显了机器学习算法在医疗诊断中的不同准确性,重点是 SVM 和 K 最近邻等模型的性能。对比分析表明了这些算法在不同疾病和数据集上的不同效果,凸显了它们在提高医疗诊断水平方面的潜力。 研究得出的结论是,机器学习算法极大地改进了医疗诊断,在不同病症中提供了不同的有效性。随着诊断准确性和效率的提高,它们彻底改变医疗保健的潜力显而易见。要充分发挥这些技术的优势,持续的研究和临床应用至关重要。
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