Patel Aryan Nikul, Srinivasan Kathiravan
School of Computer Science and Engineering, Vellore Institute of Technology, Vellore, India.
Phys Med. 2025 Mar;131:104914. doi: 10.1016/j.ejmp.2025.104914. Epub 2025 Feb 11.
Lung cancer is the leading cause of global cancer-related deaths, which emphasizes the critical importance of early diagnosis in enhancing patient outcomes. Deep learning has demonstrated significant promise in lung cancer diagnosis, excelling in nodule detection, classification, and prognosis prediction. This methodological review comprehensively explores deep learning models' application in lung cancer diagnosis, uncovering their integration across various imaging modalities. Deep learning consistently achieves state-of-the-art performance, occasionally surpassing human expert accuracy. Notably, deep neural networks excel in detecting lung nodules, distinguishing between benign and malignant nodules, and predicting patient prognosis. They have also led to the development of computer-aided diagnosis systems, enhancing diagnostic accuracy for radiologists. This review follows the specified criteria for article selection outlined by PRISMA framework. Despite challenges such as data quality and interpretability limitations, this review emphasizes the potential of deep learning to significantly improve the precision and efficiency of lung cancer diagnosis, facilitating continued research efforts to overcome these obstacles and fully harness neural network's transformative impact in this field.
肺癌是全球癌症相关死亡的主要原因,这凸显了早期诊断对改善患者预后的至关重要性。深度学习在肺癌诊断中已展现出巨大潜力,在结节检测、分类及预后预测方面表现出色。本方法学综述全面探讨了深度学习模型在肺癌诊断中的应用,揭示了它们在各种成像模态中的整合情况。深度学习始终能达到最先进的性能,偶尔还会超过人类专家的准确性。值得注意的是,深度神经网络在检测肺结节、区分良性和恶性结节以及预测患者预后方面表现卓越。它们还推动了计算机辅助诊断系统的发展,提高了放射科医生的诊断准确性。本综述遵循PRISMA框架规定的文章选择标准。尽管存在数据质量和可解释性限制等挑战,但本综述强调了深度学习显著提高肺癌诊断精度和效率的潜力,有助于持续开展研究以克服这些障碍,并充分利用神经网络在该领域的变革性影响。