Deep Machine Learning for Medical Diagnosis, Application to Lung Cancer Detection: A Review

Hadrien T. Gayap, Moulay A. Akhloufi
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Abstract

Deep learning has emerged as a powerful tool for medical image analysis and diagnosis, demonstrating high performance on tasks such as cancer detection. This literature review synthesizes current research on deep learning techniques applied to lung cancer screening and diagnosis. This review summarizes the state-of-the-art in deep learning for lung cancer detection, highlighting key advances, limitations, and future directions. We prioritized studies utilizing major public datasets, such as LIDC, LUNA16, and JSRT, to provide a comprehensive overview of the field. We focus on deep learning architectures, including 2D and 3D convolutional neural networks (CNNs), dual-path networks, Natural Language Processing (NLP) and vision transformers (ViT). Across studies, deep learning models consistently outperformed traditional machine learning techniques in terms of accuracy, sensitivity, and specificity for lung cancer detection in CT scans. This is attributed to the ability of deep learning models to automatically learn discriminative features from medical images and model complex spatial relationships. However, several challenges remain to be addressed before deep learning models can be widely deployed in clinical practice. These include model dependence on training data, generalization across datasets, integration of clinical metadata, and model interpretability. Overall, deep learning demonstrates great potential for lung cancer detection and precision medicine. However, more research is required to rigorously validate models and address risks. This review provides key insights for both computer scientists and clinicians, summarizing progress and future directions for deep learning in medical image analysis.
用于医疗诊断的深度机器学习,在肺癌检测中的应用:综述
深度学习已成为医学图像分析和诊断的强大工具,在癌症检测等任务中表现出很高的性能。本文献综述总结了当前应用于肺癌筛查和诊断的深度学习技术研究。本综述总结了深度学习在肺癌检测方面的最新研究成果,突出强调了主要进展、局限性和未来方向。我们优先考虑利用主要公共数据集(如 LIDC、LUNA16 和 JSRT)进行的研究,以提供该领域的全面概述。我们重点关注深度学习架构,包括二维和三维卷积神经网络(CNN)、双路径网络、自然语言处理(NLP)和视觉转换器(ViT)。在各项研究中,深度学习模型在 CT 扫描肺癌检测的准确性、灵敏度和特异性方面始终优于传统的机器学习技术。这归功于深度学习模型能够自动学习医学图像中的鉴别特征,并对复杂的空间关系进行建模。然而,在将深度学习模型广泛应用于临床实践之前,仍有一些挑战有待解决。这些挑战包括模型对训练数据的依赖性、跨数据集的泛化、临床元数据的整合以及模型的可解释性。总体而言,深度学习在肺癌检测和精准医疗方面具有巨大潜力。然而,还需要更多的研究来严格验证模型并解决风险问题。本综述为计算机科学家和临床医生提供了重要见解,总结了深度学习在医学图像分析方面的进展和未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.70
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0.00%
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