Analyzing the impact of AI-driven diagnostic tools on healthcare policy and resource allocation

The use of AI in healthcare has changed diagnostic methods, creating new opportunities and challenges. This study examines the diverse effects of AI-powered diagnostic tools on healthcare policy and resource allocation. Our primary research question was how do AI-powered diagnostic tools affect hea...

Full description

Saved in:
Bibliographic Details
Main Authors: Monali Gulhane, T. Sajana, Nitin S. Patil
Format: Article
Language:English
Published: Krishna Vishwa Vidyapeeth (Deemed to be University), Karad 2024-07-01
Series:Journal of Krishna Institute of Medical Sciences University
Subjects:
Online Access:https://www.jkimsu.com/jkimsu-vol13no3/JKIMSU,%20Vol.%2013,%20No.%203,%20July-September%202024%20Page%2014-24.pdf
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:The use of AI in healthcare has changed diagnostic methods, creating new opportunities and challenges. This study examines the diverse effects of AI-powered diagnostic tools on healthcare policy and resource allocation. Our primary research question was how do AI-powered diagnostic tools affect healthcare policy and resource allocation? This paper describes diagnostic tools history and the revolutionary power of AI applications like machine learning and deep learning. A thorough examination addresses dependability, precision, ethical implications, and regulatory issues, while prominent case studies highlight the achievements and changing nature of AI-powered diagnostics. AI powered diagnostic tools were assessed for their impact on healthcare policy and resource allocation using statistical methods. Current diagnostic policies were extensively analyzed to determine their impact on healthcare policy. Legal, regulatory, and privacy issues limit the impact of AI-driven tools on policy development, according to our study. Traditional diagnostic methods were compared to AI-driven diagnostic tools' cost-effectiveness and efficiency. The economic impact and workforce implications were examined to determine the feasibility of integrating AI technologies into healthcare systems. This paper explains how AI-driven diagnostic tools improve diagnostics and patient outcomes through case studies. These case studies will inform policymakers and healthcare providers. Ethical issues include patient consent, data privacy, and AI algorithm biases when integrating AI. Transparency and accountability are essential when using AI-driven diagnostic tools to build trust and encourage responsible use. The study concludes with a summary of key findings and their implications for healthcare policy and resource allocation.
ISSN:2231-4261