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

Author:

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

Abstract

Aim 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. Background 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. Objective 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. Methods 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. Results 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. Conclusion 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.

Publisher

Bentham Science Publishers Ltd.

Reference54 articles.

1. Ross A. Ligamentous knee joint instability: Association with chronic conditions of the knee and treatment with prolotherapy. The Open Pain J 2023; 16 (1) : e18763863267142.

2. Holmboe ES, Durning SJ. Assessing clinical reasoning: Moving from in vitro to in vivo. Diagnosis (Berl) 2014; 1 (1) : 111-7.

3. Taverner F J, Wylie N E, Lachlan DM. Hindquarter amputation as a successful treatment of chronic pain in an adolescent with PTEN hamartoma tumor syndrome. The Open Pain J 2023; 16 (1) : e187638632303310.

4. Kononenko I. Machine learning for medical diagnosis: History, state of the art and perspective. Artif Intell Med 2001; 23 (1) : 89-109.

5. Krizhevsky A, Sutskever I, Hinton GE. ImageNet classification with deep convolutional neural networks. Adv Neural Inf Process Syst 2012; 2012 : 1097-105.

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