分析在医学诊断中使用人工智能的挑战和可能性。

Q4 Medicine
Georgian medical news Pub Date : 2024-12-01
T Fartushok, D Bishchak, I Bronova, O Barabanchyk, Y Prudnikov
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引用次数: 0

摘要

背景:本研究旨在分析不同人工智能类型和应用的地理分布,记录实施挑战,评估感兴趣的结果以及提高医疗效率的潜在机会。方法:系统回顾分析了来自IEEE Xplore、PubMed和谷歌Scholar的24项研究(2019-2024),使用MeSH关键词,遵循特定的纳入和排除标准。结果:结果表明,人工智能几乎应用于生活的所有领域,多模态人工智能、深度学习和机器学习模型在精准医疗、早期诊断和工作流程集成方面具有广阔的应用前景。共同的挑战包括数据短缺、算法偏差、道德和监管,这表明需要制定适当的准则和跨学科伙伴关系。然而,趋势包括多模式数据整合、自动化程度提高和国际标准趋同。人工智能的优势、先进的诊断准确性、更高的临床可预测性和临床处理效率证明了它有能力改变医疗保健的面貌,同时消除了其广泛使用的重大障碍。结论:人工智能可以提高医学诊断过程的准确性,提高诊断速度,并进一步使其适应个体患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ANALYSIS OF CHALLENGES AND POSSIBILITIES OF USING ARTIFICIAL INTELLIGENCE IN MEDICAL DIAGNOSTICS.

Background: This study aims to analyze the geographical distribution of different AI types and applications, document implementation challenges, and assess outcomes of interest as well as potential opportunities for increasing healthcare efficiency.

Methodology: A systematic review analyzed 24 studies (2019-2024) from IEEE Xplore, PubMed, and Google Scholar using MeSH keywords, following specific inclusion and exclusion criteria.

Results: Results show that AI was applied to almost all spheres of life, with multi-modal AI, deep learning and machine learning models having promising applications in precision medicine, early diagnostics and integration of work processes. Common challenges included data shortages, bias in the algorithm, ethics and regulation, which indicated the need for appropriate guidelines and cross-disciplinary partnerships. Trends, however, included multi-modal data integration, increased automation and international convergence of standards. AI's benefits, advanced diagnostic accuracy, greater clinical predictability, and clinical processing efficiency are evidence of its ability to change the face of healthcare while removing significant barriers to its broader use.

Conclusion: AI can improve diagnostic processes in medicine by increasing their accuracy, improving their speed, and further adapting them to individual patients.

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来源期刊
Georgian medical news
Georgian medical news Medicine-Medicine (all)
CiteScore
0.60
自引率
0.00%
发文量
207
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