Fully automatic mpMRI analysis using deep learning predicts peritumoral glioblastoma infiltration and subsequent recurrence.

Sunwoo Kwak, Hamed Akbari, Jose A Garcia, Suyash Mohan, Christos Davatzikos
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Abstract

Glioblastoma (GBM) is most aggressive and common adult brain tumor. The standard treatments typically include maximal surgical resection, followed adjuvant radiotherapy and chemotherapy. However, the efficacy of these treatment is often limited, as tumor often infiltrate into the surrounding brain tissue, often extending beyond the radiologically defined margins. This infiltration contributes to the high recurrence rate and poor prognosis associated with GBM patients, necessitating advanced methods for early and accurate detection of tumor infiltration. Despite the great promise traditional supervised machine learning shows in predicting tumor infiltration beyond resectable margins, these methods are heavily reliant on expert-drawn Regions of Interest (ROIs), which are used to construct multi-variate models of different Magnetic Resonance (MR) signal characteristics associated with tumor infiltration. This process is both time consuming and resource intensive. Addressing this limitation, our study proposes a novel integration of fully automatic methods for generating ROIs with deep learning algorithms to create predictive maps of tumor infiltration. This approach uses pre-operative multi-parametric MRI (mpMRI) scans, encompassing T1, T1Gd, T2, T2-FLAIR, and ADC sequences, to fully leverage the knowledge from previously drawn ROIs. Subsequently, a patch based Convolutional Neural Network (CNN) model is trained on these automatically generated ROIs to predict areas of potential tumor infiltration. The performance of this model was evaluated using a leave-one-out cross-validation approach. Generated predictive maps binarized for comparison against post-recurrence mpMRI scans. The model demonstrates robust predictive capability, evidenced by the average cross-validated accuracy of 0.87, specificity of 0.88, and sensitivity of 0.90. Notably, the odds ratio of 8.62 indicates that regions identified as high-risk on the predictive map were significantly more likely to exhibit tumor recurrence than low-risk regions. The proposed method demonstrates that a fully automatic mpMRI analysis using deep learning can successfully predict tumor infiltration in peritumoral region for GBM patients while bypassing the intensive requirement for expert-drawn ROIs.

利用深度学习进行全自动 mpMRI 分析,预测瘤周胶质母细胞瘤浸润和后续复发。
胶质母细胞瘤(GBM)是侵袭性最强、最常见的成人脑肿瘤。标准治疗通常包括最大限度的手术切除,然后进行辅助放疗和化疗。然而,这些治疗方法的疗效往往有限,因为肿瘤经常向周围脑组织浸润,往往超出放射学界定的边缘。这种浸润导致了 GBM 患者的高复发率和不良预后,因此需要先进的方法来早期准确检测肿瘤浸润。尽管传统的有监督机器学习在预测可切除边缘以外的肿瘤浸润方面大有可为,但这些方法在很大程度上依赖于专家绘制的感兴趣区(ROI),这些感兴趣区用于构建与肿瘤浸润相关的不同磁共振(MR)信号特征的多变量模型。这一过程既耗时又耗费资源。针对这一局限性,我们的研究提出了一种新方法,将生成 ROI 的全自动方法与深度学习算法相结合,创建肿瘤浸润的预测图。这种方法使用术前多参数磁共振成像(mpMRI)扫描,包括 T1、T1Gd、T2、T2-FLAIR 和 ADC 序列,充分利用先前绘制的 ROI 的知识。随后,在这些自动生成的 ROI 上训练基于补丁的卷积神经网络 (CNN) 模型,以预测潜在的肿瘤浸润区域。该模型的性能采用留空交叉验证法进行评估。生成的预测图经过二值化处理,可与复发后的 mpMRI 扫描图进行比较。该模型显示出强大的预测能力,平均交叉验证准确率为 0.87,特异性为 0.88,灵敏度为 0.90。值得注意的是,8.62 的几率比表明,在预测图上被确定为高风险区域的肿瘤复发几率明显高于低风险区域。所提出的方法表明,利用深度学习进行全自动 mpMRI 分析可以成功预测 GBM 患者瘤周区域的肿瘤浸润情况,同时绕过了专家绘制 ROI 的密集要求。
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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