ARCHIVES

Research Article

A Comprehensive Survey of Machine Learning Algorithms for Multi-Disease Prognosis

Sharmila Rathod1 Aryan Panchal2 Jash Panchal3 Ashlesha Padvi4
1234 Department of Computer Engineering, Rajiv Gandhi Institute of Technology, Mumbai, Maharashtra, India.

Published Online: May-June 2024

Pages: 188-189

Abstract

Abstract: In this comprehensive analysis, study of various machine learning-based systems for multi-disease prognosis has been conducted. Predictive machine learning algorithms are used extensively in the domain of medical science thereby leading to a considerable improvement in accurately predicting a disease. The timely identification and accurate measurements of these conditions hold the potential for a methodical and efficacious treatment. As research solidifies, the possibilities of computing methods to both optimize and enhance comparative systems seems vast. This comprehensive review aims at providing an intricate and highly detailed analysis of numerous machine learning algorithms and the functioning working environment specifically focused on prognosis of diseases such as myocardial infarction, diabetes and chronic kidney disease. The study thus offers an amalgamation of the most recent medical surveys, thereby contributing to the ongoing research in the field of medical science.

Related Articles

2024

Embedding Artificial Intelligence for Personal Voice Assistant Using NLP

2024

Analysis of Pedestrian Steel Bridge subjected the Seismic Load and Wind Load using Damper at different Span

2024

Review Paper on Comparison of Asymmetric and Symmetric RCC Building with Soil Structure Interaction by Dynamic Loading

2024

BLYNK RFID and Retinal Lock Access System

2024

ML-Driven Facial Synthesis from Spoken Words Using Conditional GANs

2024

Research on smart baby cradle using sensor technology

Share Article

X
LinkedIn
Facebook
WhatsApp

Or copy link

https://theijire.com/archives/10.59256/ijire.20240503022

*Instagram doesn't support direct link sharing from web. Copy the link and share it in your Instagram story or post.