Advanced AI-driven image fusion techniques in lung cancer diagnostics: systematic review and meta-analysis for precisionmedicine

Meiling Sun, Changlei Cui
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Abstract

Purpose This paper aims to critically evaluate the role of advanced artificial intelligence (AI)-enhanced image fusion techniques in lung cancer diagnostics within the context of AI-driven precision medicine. Design/methodology/approach We conducted a systematic review of various studies to assess the impact of AI-based methodologies on the accuracy and efficiency of lung cancer diagnosis. The focus was on the integration of AI in image fusion techniques and their application in personalized treatment strategies. Findings The review reveals significant improvements in diagnostic precision, a crucial aspect of the evolution of AI in healthcare. These AI-driven techniques substantially enhance the accuracy of lung cancer diagnosis, thereby influencing personalized treatment approaches. The study also explores the broader implications of these methodologies on healthcare resource allocation, policy formation, and epidemiological trends. Originality/value This study is notable for both emphasizing the clinical importance of AI-integrated image fusion in lung cancer treatment and illuminating the profound influence these technologies have in the future AI-driven healthcare systems.
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肺癌诊断中先进的人工智能图像融合技术:精准医疗的系统回顾和荟萃分析
目的本文旨在批判性地评估在人工智能驱动的精准医疗背景下,先进的人工智能(AI)增强型图像融合技术在肺癌诊断中的作用。研究重点是人工智能在图像融合技术中的整合及其在个性化治疗策略中的应用。研究结果综述显示,诊断精确度有了显著提高,这是人工智能在医疗保健领域发展的一个重要方面。这些人工智能驱动的技术大大提高了肺癌诊断的准确性,从而影响了个性化治疗方法。本研究还探讨了这些方法对医疗资源分配、政策制定和流行病学趋势的广泛影响。原创性/价值本研究的显著特点是强调了人工智能集成图像融合在肺癌治疗中的临床重要性,并阐明了这些技术在未来人工智能驱动的医疗系统中的深远影响。
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