Advances in Machine Learning Models for Healthcare Applications: A Precise and Patient-Centric Approach.

Advances in Machine Learning Models for Healthcare Applications: A Precise and Patient-Centric Approach.

Publication date: Feb 11, 2025

Healthcare is rapidly leveraging machine learning to enhance patient care, streamline operations, and address complex medical issues. Though ethical issues, model efficiency, and algorithmic bias exist, the COVID-19 pandemic highlighted its usefulness in disease outbreak prediction and treatment optimization. This article aims to discuss machine learning applications, benefits, and the ethical and practical challenges in healthcare. Machine learning assists in diagnosis, patient monitoring, and epidemic prediction but faces challenges like algorithmic bias and data quality. Overcoming these requires high-quality data, impartial algorithms, and model monitoring. Machine learning might revolutionize healthcare by making it more efficient and better for patients. Full acceptance and the advancement of technologies to improve health outcomes on a global scale depend on resolving ethical, practical, and technological concerns.

Concepts Keywords
Covid bias
Healthcare data accuracy.
Informatics electronic medical records
Pandemic Machine learning
Revolutionize neural network
patient monitoring

Semantics

Type Source Name
disease MESH COVID-19 pandemic
disease IDO quality
drug DRUGBANK Tropicamide

Original Article

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