深度学习提高非小细胞肺癌的精准诊断和治疗:未来展望。

IF 3.5 2区 医学 Q2 ONCOLOGY
Translational lung cancer research Pub Date : 2025-08-31 Epub Date: 2025-08-21 DOI:10.21037/tlcr-2025-187
Xinran Zhang, Jia Liu, Wen Zhou, Junfei Lu, Liqin Wu, Yan Li, Yiyuan Wang, Zhichao Wang, Jun Cai
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引用次数: 0

摘要

非小细胞肺癌(NSCLC)是肺部恶性肿瘤的主要形式,也是全球癌症相关死亡的主要原因,它强调了对先进精确治疗方法的迫切需求。本文全面综述了深度学习技术在革新非小细胞肺癌的精确诊断和治疗管理方面的重要进展和未来发展方向。它展示了深度学习方法如何有潜力超越传统的肿瘤治疗范式,显着提高诊断准确性,个性化治疗选择,并以更高的精度预测患者预后。本文追溯了该领域深度学习模型的演变,从依赖单一数据模式的基本分析,如单独的成像或基因组学,到能够多模式数据融合的更复杂的架构。它强调了整合放射学、病理学、基因组学和临床数据在揭示更深层次生物学见解中的关键作用。此外,它概述了开发和部署非小细胞肺癌深度学习应用程序的典型工作流程,并列出了一些目前使用的模型,包括用于图像分析的卷积神经网络和用于多组学数据集成的复杂架构。这些模型在提高诊断准确性和优化治疗干预方面显示出相当大的潜力。然而,将这些计算工具转化为常规临床实践面临着一些挑战。该综述坦率地解决了关键问题,包括对大规模、高质量和标准化数据集的需求;复杂模型的“黑箱”性质,需要提高可解释性,以获得临床医生的信任并提供可操作的见解;以及关于数据隐私、算法偏见和公平访问的深刻伦理考虑。尽管存在这些障碍,但深度学习已经成为肿瘤学宝库中的一个强大工具,显著提高了非小细胞肺癌治疗的准确性和效率。最后,本文从辩证的角度探讨了深度学习在非小细胞肺癌中的未来,探讨了新兴趋势,并提出了克服当前局限性的建议,目标是最大限度地提高其提高患者生存率和生活质量的潜力。
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 enhances precision diagnosis and treatment of non-small cell lung cancer: future prospects.

Deep learning enhances precision diagnosis and treatment of non-small cell lung cancer: future prospects.

Deep learning enhances precision diagnosis and treatment of non-small cell lung cancer: future prospects.

Deep learning enhances precision diagnosis and treatment of non-small cell lung cancer: future prospects.

Non-small cell lung cancer (NSCLC), a major form of pulmonary malignancy and a leading global cause of cancer-related mortality, highlights the urgent need for advanced precision treatment approaches. This article comprehensively reviews the significant progress and future directions of deep learning techniques in revolutionizing the precise diagnosis and therapeutic management of NSCLC. It demonstrates how deep learning methods have the potential to surpass traditional tumor treatment paradigms, significantly enhancing diagnostic accuracy, personalizing treatment selection, and predicting patient outcomes with greater precision. The article traces the evolution of deep learning models in this field, from basic analyses relying on single data modalities, such as imaging or genomics alone, to more sophisticated architectures capable of multimodal data fusion. It emphasizes the crucial role of integrating radiological, pathological, genomic, and clinical data in uncovering deeper biological insights. Furthermore, it outlines the typical workflow involved in developing and deploying deep learning applications for NSCLC and lists some currently used models, including convolutional neural networks for image analysis and complex architectures for multi-omics data integration. These models show considerable potential for improving diagnostic accuracy and optimizing therapeutic interventions. However, translating these computational tools into routine clinical practice faces several challenges. The review candidly addresses key issues, including the need for large-scale, high-quality, and standardized datasets; the "black box" nature of complex models, which requires improved interpretability to gain clinicians' trust and provide actionable insights; and profound ethical considerations regarding data privacy, algorithmic bias, and equitable access. Despite these obstacles, deep learning has emerged as a powerful instrument in the oncological arsenal, significantly enhancing the precision and efficiency of NSCLC care. Finally, the article offers a dialectical perspective on the future of deep learning in NSCLC, exploring emerging trends and providing recommendations to overcome current limitations, with the goal of maximizing its potential to improve patient survival and quality of life.

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来源期刊
CiteScore
7.20
自引率
2.50%
发文量
137
期刊介绍: Translational Lung Cancer Research(TLCR, Transl Lung Cancer Res, Print ISSN 2218-6751; Online ISSN 2226-4477) is an international, peer-reviewed, open-access journal, which was founded in March 2012. TLCR is indexed by PubMed/PubMed Central and the Chemical Abstracts Service (CAS) Databases. It is published quarterly the first year, and published bimonthly since February 2013. It provides practical up-to-date information on prevention, early detection, diagnosis, and treatment of lung cancer. Specific areas of its interest include, but not limited to, multimodality therapy, markers, imaging, tumor biology, pathology, chemoprevention, and technical advances related to lung cancer.
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