Graduate School of Medical Science and Engineering, Korea Advanced Institute for Science and Technology (KAIST), Daejeon, Republic of Korea.
KAIST Institute for Health Science and Technology, Korea Advanced Institute for Science and Technology (KAIST), Daejeon, Republic of Korea.
Neuro Oncol. 2019 Sep 6;21(9):1197-1209. doi: 10.1093/neuonc/noz095.
The aim of this study was to predict isocitrate dehydrogenase (IDH) genotypes of gliomas using an interpretable deep learning application for dynamic susceptibility contrast (DSC) perfusion MRI.
Four hundred sixty-three patients with gliomas who underwent preoperative MRI were enrolled in the study. All the patients had immunohistopathologic diagnoses of either IDH-wildtype or IDH-mutant gliomas. Tumor subregions were segmented using a convolutional neural network followed by manual correction. DSC perfusion MRI was performed to obtain T2* susceptibility signal intensity-time curves from each subregion of the tumors: enhancing tumor, non-enhancing tumor, peritumoral edema, and whole tumor. These, with arterial input functions, were fed into a neural network as multidimensional inputs. A convolutional long short-term memory model with an attention mechanism was developed to predict IDH genotypes. Receiver operating characteristics analysis was performed to evaluate the model.
The IDH genotype predictions had an accuracy, sensitivity, and specificity of 92.8%, 92.6%, and 93.1%, respectively, in the validation set (area under the curve [AUC], 0.98; 95% confidence interval [CI], 0.969-0.991) and 91.7%, 92.1%, and 91.5%, respectively, in the test set (AUC, 0.95; 95% CI, 0.898-0.982). In temporal feature analysis, T2* susceptibility signal intensity-time curves obtained from DSC perfusion MRI with attention weights demonstrated high attention on the combination of the end of the pre-contrast baseline, up/downslopes of signal drops, and/or post-bolus plateaus for the curves used to predict IDH genotype.
We developed an explainable recurrent neural network model based on DSC perfusion MRI to predict IDH genotypes in gliomas.
本研究旨在通过一种可解释的深度学习应用程序,利用动态对比磁共振灌注成像(DSC)预测脑胶质瘤的异柠檬酸脱氢酶(IDH)基因型。
本研究共纳入 463 例术前接受 MRI 检查的脑胶质瘤患者,所有患者均经免疫组织化学病理诊断为 IDH 野生型或 IDH 突变型脑胶质瘤。使用卷积神经网络对肿瘤亚区进行分割,然后进行手动校正。对肿瘤的各个亚区进行 DSC 灌注 MRI 检查,从每个肿瘤亚区(增强肿瘤、非增强肿瘤、瘤周水肿和整个肿瘤)获取 T2* 磁化率信号强度-时间曲线。将这些曲线和动脉输入函数作为多维输入输入到神经网络中。开发了一种具有注意力机制的卷积长短时记忆模型来预测 IDH 基因型。采用受试者工作特征曲线分析评估模型。
在验证集(曲线下面积[AUC],0.98;95%置信区间[CI],0.969-0.991)中,IDH 基因型预测的准确性、敏感度和特异度分别为 92.8%、92.6%和 93.1%,在测试集(AUC,0.95;95% CI,0.898-0.982)中,其分别为 91.7%、92.1%和 91.5%。在时间特征分析中,使用注意力权重对 DSC 灌注 MRI 获得的 T2*磁化率信号强度-时间曲线进行分析,结果表明,用于预测 IDH 基因型的曲线中,对对比前基线结束、信号下降的上升/下降斜率和/或对比后平台的综合组合关注度较高。
我们开发了一种基于 DSC 灌注 MRI 的可解释的递归神经网络模型,用于预测脑胶质瘤的 IDH 基因型。