深度学习在临床癌症检测中的应用:实现挑战和解决方案综述。

Mayo Clinic Proceedings. Digital health Pub Date : 2025-07-18 eCollection Date: 2025-09-01 DOI:10.1016/j.mcpdig.2025.100253
Isaiah Z Yao, Min Dong, William Y K Hwang
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引用次数: 0

摘要

深度学习(DL)彻底改变了癌症检测的准确性、速度和可访问性。利用复杂的算法,深度学习在各种应用中展示了变革潜力,包括基于成像的诊断和基因组分析,最终导致更好的检测,改善患者的治疗结果,并降低总体死亡率。尽管前景光明,但将深度学习整合到临床实践中存在着巨大的挑战,包括数据质量和标准化方面的限制,以及伦理和监管方面的问题,以及对模型可解释性和透明度的需求。本综述对PubMed和IEEE Xplore数据库中检索到的最新研究(2018-2024)进行了全面分析,包括PubMed的1304项研究和IEEE的115项研究,以突出DL在肿瘤学中的当前应用、机遇和挑战。此外,本文还探讨了新兴的解决方案,包括联邦学习、可解释的人工智能和合成数据生成,以解决这些障碍。该综述还强调了跨学科合作的重要性,下一代人工智能技术的整合,以及采用多模态数据方法来提高诊断精度和支持个性化癌症治疗。通过系统地分析关键发展和挑战,本综述旨在指导肿瘤学未来的研究和DL技术,促进癌症治疗的公平和有影响力的进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Applications in Clinical Cancer Detection: A Review of Implementation Challenges and Solutions.

Deep learning (DL) has revolutionized cancer detection accuracy, speed, and accessibility. Leveraging sophisticated algorithms, DL has demonstrated transformative potential across diverse applications, including imaging-based diagnostics and genomic analysis, ultimately leading to better detection, improved patient treatment outcomes, and decreased overall mortality rates. Despite its promise, integrating DL into clinical practice presents substantial challenges, including limitations in data quality and standardization, as well as ethical and regulatory concerns, and the need for model interpretability and transparency. This review provides a comprehensive analysis of recent research (2018-2024) retrieved from PubMed and IEEE Xplore databases, encompassing 1304 studies from PubMed and 115 from IEEE, to highlight the current applications, opportunities, and challenges of DL in oncology. Additionally, this paper explores emerging solutions, including federated learning, explainable artificial intelligence, and synthetic data generation, to address these barriers. The review also emphasizes the importance of interdisciplinary collaboration, the integration of next-generation artificial intelligence techniques, and the adoption of multimodal data approaches to improve diagnostic precision and support personalized cancer treatment. By systematically analyzing key developments and challenges, this review aims to guide future research and DL technologies in oncology, promoting equitable and impactful advancements in cancer care.

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来源期刊
Mayo Clinic Proceedings. Digital health
Mayo Clinic Proceedings. Digital health Medicine and Dentistry (General), Health Informatics, Public Health and Health Policy
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