University of Miami.
Department of Radiation Oncology, University of Miami Miller School of Medicine, Sylvester Comprehensive Cancer Center, Miami, Fl 33136, USA.
Crit Rev Oncog. 2024;29(3):33-65. doi: 10.1615/CritRevOncog.2023050852.
Deep learning (DL) is poised to redefine the way medical images are processed and analyzed. Convolutional neural networks (CNNs), a specific type of DL architecture, are exceptional for high-throughput processing, allowing for the effective extraction of relevant diagnostic patterns from large volumes of complex visual data. This technology has garnered substantial interest in the field of neuro-oncology as a promising tool to enhance medical imaging throughput and analysis. A multitude of methods harnessing MRI-based CNNs have been proposed for brain tumor segmentation, classification, and prognosis prediction. They are often applied to gliomas, the most common primary brain cancer, to classify subtypes with the goal of guiding therapy decisions. Additionally, the difficulty of repeating brain biopsies to evaluate treatment response in the setting of often confusing imaging findings provides a unique niche for CNNs to help distinguish the treatment response to gliomas. For example, glioblastoma, the most aggressive type of brain cancer, can grow due to poor treatment response, can appear to grow acutely due to treatment-related inflammation as the tumor dies (pseudo-progression), or falsely appear to be regrowing after treatment as a result of brain damage from radiation (radiation necrosis). CNNs are being applied to separate this diagnostic dilemma. This review provides a detailed synthesis of recent DL methods and applications for intratumor segmentation, glioma classification, and prognosis prediction. Furthermore, this review discusses the future direction of MRI-based CNN in the field of neuro-oncology and challenges in model interpretability, data availability, and computation efficiency.
深度学习(DL)有望重新定义医学图像处理和分析的方式。卷积神经网络(CNNs)是一种特定类型的 DL 架构,非常适合高通量处理,能够从大量复杂的视觉数据中有效提取相关诊断模式。这项技术在神经肿瘤学领域引起了广泛关注,是提高医学成像通量和分析的有前途的工具。已经提出了许多利用基于 MRI 的 CNN 的方法,用于脑肿瘤分割、分类和预后预测。它们通常应用于神经胶质瘤,这是最常见的原发性脑癌,以分类亚型为目标,指导治疗决策。此外,由于成像结果常常令人困惑,需要重复进行脑部活检以评估治疗反应,这为 CNN 提供了一个独特的机会,帮助区分脑肿瘤的治疗反应。例如,胶质母细胞瘤是最具侵袭性的脑癌类型,由于治疗反应不佳而生长,由于肿瘤死亡引起的与治疗相关的炎症而表现出急性生长(假性进展),或者由于放射治疗引起的脑损伤而在治疗后看起来重新生长(放射性坏死)。CNN 用于分离这种诊断困境。这篇综述详细综合了最近用于肿瘤内分割、神经胶质瘤分类和预后预测的 DL 方法和应用。此外,这篇综述还讨论了基于 MRI 的 CNN 在神经肿瘤学领域的未来方向以及模型可解释性、数据可用性和计算效率方面的挑战。