Department of Computational Medicine and Bioinformatics, University of Michigan, Ann Arbor, MI, USA.
Department of Radiology, University of Michigan, Ann Arbor, MI, USA.
Sci Rep. 2020 Nov 23;10(1):20331. doi: 10.1038/s41598-020-77389-0.
Differentiating pseudoprogression from true tumor progression has become a significant challenge in follow-up of diffuse infiltrating gliomas, particularly high grade, which leads to a potential treatment delay for patients with early glioma recurrence. In this study, we proposed to use a multiparametric MRI data as a sequence input for the convolutional neural network with the recurrent neural network based deep learning structure to discriminate between pseudoprogression and true tumor progression. In this study, 43 biopsy-proven patient data identified as diffuse infiltrating glioma patients whose disease progressed/recurred were used. The dataset consists of five original MRI sequences; pre-contrast T1-weighted, post-contrast T1-weighted, T2-weighted, FLAIR, and ADC images as well as two engineered sequences; T1post-T1pre and T2-FLAIR. Next, we used three CNN-LSTM models with a different set of sequences as input sequences to pass through CNN-LSTM layers. We performed threefold cross-validation in the training dataset and generated the boxplot, accuracy, and ROC curve, AUC from each trained model with the test dataset to evaluate models. The mean accuracy for VGG16 models ranged from 0.44 to 0.60 and the mean AUC ranged from 0.47 to 0.59. For CNN-LSTM model, the mean accuracy ranged from 0.62 to 0.75 and the mean AUC ranged from 0.64 to 0.81. The performance of the proposed CNN-LSTM with multiparametric sequence data was found to outperform the popular convolutional CNN with a single MRI sequence. In conclusion, incorporating all available MRI sequences into a sequence input for a CNN-LSTM model improved diagnostic performance for discriminating between pseudoprogression and true tumor progression.
区分假性进展和真性肿瘤进展已成为弥漫性浸润性神经胶质瘤随访中的一个重大挑战,尤其是高级别胶质瘤,这可能导致早期胶质瘤复发患者的潜在治疗延误。在这项研究中,我们提出使用多参数 MRI 数据作为卷积神经网络的序列输入,该网络具有基于递归神经网络的深度学习结构,以区分假性进展和真性肿瘤进展。在这项研究中,我们使用了 43 名经活检证实的弥漫性浸润性神经胶质瘤患者的数据,这些患者的疾病进展/复发。该数据集由五个原始 MRI 序列组成;对比前 T1 加权、对比后 T1 加权、T2 加权、FLAIR 和 ADC 图像以及两个工程序列;T1post-T1pre 和 T2-FLAIR。接下来,我们使用三个具有不同序列集的 CNN-LSTM 模型作为输入序列,通过 CNN-LSTM 层。我们在训练数据集上进行了三折交叉验证,并使用测试数据集生成每个训练模型的箱线图、准确性和 ROC 曲线、AUC,以评估模型。VGG16 模型的平均准确率范围为 0.44 至 0.60,平均 AUC 范围为 0.47 至 0.59。对于 CNN-LSTM 模型,平均准确率范围为 0.62 至 0.75,平均 AUC 范围为 0.64 至 0.81。与使用单个 MRI 序列的流行卷积 CNN 相比,具有多参数序列数据的所提出的 CNN-LSTM 的性能被发现更好。总之,将所有可用的 MRI 序列合并到 CNN-LSTM 模型的序列输入中,提高了区分假性进展和真性肿瘤进展的诊断性能。