结核病诊断中的人工智能:检测和治疗的革命

Sankalp Yadav, Naveen Jeyaraman, Madhan Jeyaraman, G. Rawal
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摘要

人工智能(AI)正在迅速改变结核病(TB)诊断。它正在解决准确性、效率和可及性方面的长期挑战。传统诊断方法虽然有效,但往往受到灵敏度不稳定和周转时间过长等限制。人工智能技术,包括机器学习和深度学习算法,通过自动分析胸部 X 光片、基因组数据和临床参数,提供了创新的解决方案。这些进步有望提高诊断准确性、加快治疗启动和个性化医疗方法。然而,要成功实施这些技术,就必须克服与数据质量、与医疗保健系统集成和伦理考虑有关的挑战。展望未来,本文揭示了人工智能驱动的结核病诊断,它有望通过增强检测能力和优化治疗策略来提高全球医疗保健成果。
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Artificial intelligence in tuberculosis diagnosis: Revolutionizing detection and treatment
Artificial intelligence (AI) is rapidly transforming tuberculosis (TB) diagnosis. It is addressing the longstanding challenges in accuracy, efficiency, and accessibility. Traditional diagnostic methods, while effective, often suffer from limitations such as variability in sensitivity and lengthy turnaround times. AI technologies, including machine learning and deep learning algorithms, offer innovative solutions by automating the analysis of chest X-rays, genomic data, and clinical parameters. These advancements promise improved diagnostic accuracy, expedited treatment initiation, and personalized medicine approaches. However, successful implementation requires overcoming challenges related to data quality, integration with healthcare systems, and ethical considerations. Moving forward, this paper sheds light on AI-driven TB diagnosis, which stands poised to enhance global healthcare outcomes through enhanced detection capabilities and optimized treatment strategies.
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