Zhu Hai-Tao, Zhang Xiao-Yan, Shi Yan-Jie, Li Xiao-Ting, Sun Ying-Shi
Department of Radiology, Key Laboratory of Carcinogenesis and Translational Research (Ministry of Education/Beijing), Peking University Cancer Hospital & Institute, Beijing, China.
Front Oncol. 2020 Oct 29;10:574337. doi: 10.3389/fonc.2020.574337. eCollection 2020.
Pretreatment prediction of the response to neoadjuvant chemoradiotherapy (NCRT) helps to determine the subsequent plans for the patients with locally advanced rectal cancer (LARC). If the good responders (GR) and non-good responders (non-GR) can be accurately predicted, they can choose to intensify the neoadjuvant chemoradiotherapy to decrease the risk of tumor progression during NCRT and increase the chance of organ preservation. Compared with radiomics methods, deep learning (DL) may adaptively extract features from the images without the need of feature definition. However, DL suffers from limited training samples and signal discrepancy among different scanners. This study aims to construct a DL model to predict GRs by training apparent diffusion coefficient (ADC) images from different scanners.
The study retrospectively recruited 700 participants, chronologically divided into a training group (n = 500) and a test group (n = 200). Deep convolutional neural networks were constructed to classify GRs and non-GRs. The networks were designed with a max-pooling layer parallelized by a center-cropping layer to extract features from both the macro and micro scale. ADC images and T2-weighted images were collected at 1.5 Tesla and 3.0 Tesla. The networks were trained by the image patches delineated by radiologists in ADC images and T2-weighted images, respectively. Pathological results were used as the ground truth. The deep learning models were evaluated on the test group and compared with the prediction by mean ADC value.
Area under curve (AUC) of receiver operating characteristic (ROC) is 0.851 (95% CI: 0.789-0.914) for DL model with ADC images (DL_ADC), significantly larger (P = 0.018, Z = 2.367) than that of mean ADC with AUC = 0.723 (95% CI: 0.637-0.809). The sensitivity, specificity, positive predictive value (PPV) and negative predictive value (NPV) of DL_ADC model are 94.3%, 68.3%, 87.4% and 83.7%, respectively. The DL model with T2-weighted images (DL_T2) produces an AUC of 0.721 (95% CI: 0.640-0.802), significantly (P = 0.000, Z = 3.554) lower than that of DL_ADC model.
Deep learning model reveals the potential of pretreatment apparent diffusion coefficient images for the prediction of good responders to neoadjuvant chemoradiotherapy.
新辅助放化疗(NCRT)疗效的预处理预测有助于确定局部晚期直肠癌(LARC)患者的后续治疗方案。如果能够准确预测良好反应者(GR)和非良好反应者(非GR),他们可以选择强化新辅助放化疗,以降低NCRT期间肿瘤进展的风险,并增加器官保留的机会。与放射组学方法相比,深度学习(DL)可以从图像中自适应提取特征,而无需进行特征定义。然而,DL存在训练样本有限以及不同扫描仪之间信号差异的问题。本研究旨在通过训练来自不同扫描仪的表观扩散系数(ADC)图像来构建一个DL模型,以预测GR。
本研究回顾性招募了700名参与者,按时间顺序分为训练组(n = 500)和测试组(n = 200)。构建深度卷积神经网络对GR和非GR进行分类。网络设计有一个由中心裁剪层并行化的最大池化层,以从宏观和微观尺度提取特征。在1.5特斯拉和3.0特斯拉下采集ADC图像和T2加权图像。网络分别通过放射科医生在ADC图像和T2加权图像中勾勒的图像块进行训练。病理结果用作金标准。在测试组上对深度学习模型进行评估,并与平均ADC值的预测结果进行比较。
基于ADC图像的DL模型(DL_ADC)的受试者操作特征(ROC)曲线下面积(AUC)为0.851(95%CI:0.789 - 0.914),显著大于平均ADC的AUC = 0.723(95%CI:0.637 - 0.809)(P = 0.018,Z = 2.367)。DL_ADC模型的敏感性、特异性、阳性预测值(PPV)和阴性预测值(NPV)分别为94.3%、68.3%、87.4%和83.7%。基于T2加权图像的DL模型(DL_T2)的AUC为0.721(95%CI:0.640 - 0.802),显著低于DL_ADC模型(P = 0.000,Z = 3.554)。
深度学习模型揭示了预处理表观扩散系数图像在预测新辅助放化疗良好反应者方面的潜力。