Critical Review on the Contribution of Machine Learning to Health Science

Neji Hasni
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Abstract

Background: The field of machine learning in health science is evolving exponentially, with a focus on accelerating scientific discoveries, improving holistic well-being, and advancing personalized healthcare. Aim: In this same spirit, this critical review article aims to provide a comprehensive understanding of the role, challenges, opportunities, and ethical considerations of integrating machine learning into health science, with an emphasis on healthcare research and practice. Methods: To base its critiques on previous literature, the elucidative survey considered specific criteria, such as the significance and contribution of each source to the field, methodology or approach, and argument, as well as the use of evidence. Results: The study results indicate that machine learning holds great promise to improve evidence-based health science, but significant work is needed to ensure the technology is developed and deployed in a way that is trustworthy and ethical. Conclusion: In conclusion, the literature review presents a balanced assessment of the strengths, weaknesses, and notable features of the current state of machine learning in health science. The key takeaway point is that while machine learning has demonstrated significant potential to improve health science outcomes and strategic management, there are still important challenges, limitations, and research gaps that need to be addressed to facilitate widespread adoption and trust in these technologies.
关于机器学习对健康科学贡献的重要评论
背景:健康科学中的机器学习领域正在飞速发展,其重点是加速科学发现、改善整体健康和推进个性化医疗保健。目的:本着同样的精神,这篇评论性文章旨在让人们全面了解将机器学习融入健康科学的作用、挑战、机遇和伦理考虑,重点关注医疗保健研究和实践。方法:为了在以往文献的基础上进行评论,阐释性调查考虑了具体的标准,如每篇文献对该领域的意义和贡献、方法论或方法、论据以及证据的使用。研究结果研究结果表明,机器学习在改善循证健康科学方面大有可为,但还需要做大量工作,以确保该技术的开发和部署方式值得信赖且符合道德规范。结论总之,文献综述对机器学习在健康科学中的应用现状的优势、劣势和显著特点进行了均衡的评估。其主要启示是,虽然机器学习在改善健康科学成果和战略管理方面已展现出巨大潜力,但仍存在重大挑战、局限性和研究空白,需要加以解决,以促进这些技术的广泛采用和信任。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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