人工智能驱动的癌症诊断:通过可重复性、可解释性和多模态增强放射学和病理学

IF 16.6 1区 医学 Q1 ONCOLOGY
Pegah Khosravi, Thomas J. Fuchs, David Joon Ho
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引用次数: 0

摘要

人工智能(AI)在癌症研究中的整合显著推进了放射学、病理学和多模式方法,在图像分析、诊断和治疗计划方面提供了前所未有的能力。人工智能技术为临床医生提供了标准化的帮助,其中许多诊断和预测任务是手动执行的,导致重复性低。这些人工智能方法还可以提供可解释性,帮助临床医生为患者护理做出最佳决策。本文探讨了最新的人工智能方法,重点介绍了它们在图像分类、图像分割、多实例学习、生成模型和自监督学习方面的应用。在放射学中,人工智能通过先进的成像模式和实时应用增强了肿瘤检测、诊断和治疗计划。在病理学方面,人工智能驱动的图像分析提高了癌症检测、生物标志物发现和诊断一致性。多模式人工智能方法可以整合来自放射学、病理学和基因组学的数据,以提供全面的诊断见解。讨论了人工智能驱动的癌症研究的新趋势、挑战和未来方向,强调了这些技术在改善患者预后和推进癌症治疗方面的变革潜力。本文是特别系列文章的一部分:用计算研究、数据科学和机器学习/人工智能驱动癌症发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence–Driven Cancer Diagnostics: Enhancing Radiology and Pathology through Reproducibility, Explainability, and Multimodality
The integration of artificial intelligence (AI) in cancer research has significantly advanced radiology, pathology, and multimodal approaches, offering unprecedented capabilities in image analysis, diagnosis, and treatment planning. AI techniques provide standardized assistance to clinicians, in which many diagnostic and predictive tasks are manually conducted, causing low reproducibility. These AI methods can additionally provide explainability to help clinicians make the best decisions for patient care. This review explores state-of-the-art AI methods, focusing on their application in image classification, image segmentation, multiple instance learning, generative models, and self-supervised learning. In radiology, AI enhances tumor detection, diagnosis, and treatment planning through advanced imaging modalities and real-time applications. In pathology, AI-driven image analysis improves cancer detection, biomarker discovery, and diagnostic consistency. Multimodal AI approaches can integrate data from radiology, pathology, and genomics to provide comprehensive diagnostic insights. Emerging trends, challenges, and future directions in AI-driven cancer research are discussed, emphasizing the transformative potential of these technologies in improving patient outcomes and advancing cancer care. This article is part of a special series: Driving Cancer Discoveries with Computational Research, Data Science, and Machine Learning/AI.
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来源期刊
Cancer research
Cancer research 医学-肿瘤学
CiteScore
16.10
自引率
0.90%
发文量
7677
审稿时长
2.5 months
期刊介绍: Cancer Research, published by the American Association for Cancer Research (AACR), is a journal that focuses on impactful original studies, reviews, and opinion pieces relevant to the broad cancer research community. Manuscripts that present conceptual or technological advances leading to insights into cancer biology are particularly sought after. The journal also places emphasis on convergence science, which involves bridging multiple distinct areas of cancer research. With primary subsections including Cancer Biology, Cancer Immunology, Cancer Metabolism and Molecular Mechanisms, Translational Cancer Biology, Cancer Landscapes, and Convergence Science, Cancer Research has a comprehensive scope. It is published twice a month and has one volume per year, with a print ISSN of 0008-5472 and an online ISSN of 1538-7445. Cancer Research is abstracted and/or indexed in various databases and platforms, including BIOSIS Previews (R) Database, MEDLINE, Current Contents/Life Sciences, Current Contents/Clinical Medicine, Science Citation Index, Scopus, and Web of Science.
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