Yogananda Chandan Ganesh Bangalore, Shah Bhavya R, Yu Frank F, Pinho Marco C, Nalawade Sahil S, Murugesan Gowtham K, Wagner Benjamin C, Mickey Bruce, Patel Toral R, Fei Baowei, Madhuranthakam Ananth J, Maldjian Joseph A
Department of Radiology, University of Texas Southwestern Medical Center, Dallas, Texas, USA.
Department of Neurological Surgery, University of Texas Southwestern Medical Center, Dallas, Texas, USA.
Neurooncol Adv. 2020 Jul 17;2(1):vdaa066. doi: 10.1093/noajnl/vdaa066. eCollection 2020 Jan-Dec.
One of the most important recent discoveries in brain glioma biology has been the identification of the isocitrate dehydrogenase (IDH) mutation and 1p/19q co-deletion status as markers for therapy and prognosis. 1p/19q co-deletion is the defining genomic marker for oligodendrogliomas and confers a better prognosis and treatment response than gliomas without it. Our group has previously developed a highly accurate deep-learning network for determining IDH mutation status using T2-weighted (T2w) MRI only. The purpose of this study was to develop a similar 1p/19q deep-learning classification network.
Multiparametric brain MRI and corresponding genomic information were obtained for 368 subjects from The Cancer Imaging Archive and The Cancer Genome Atlas. 1p/19 co-deletions were present in 130 subjects. Two-hundred and thirty-eight subjects were non-co-deleted. A T2w image-only network (1p/19q-net) was developed to perform 1p/19q co-deletion status classification and simultaneous single-label tumor segmentation using 3D-Dense-UNets. Three-fold cross-validation was performed to generalize the network performance. Receiver operating characteristic analysis was also performed. Dice scores were computed to determine tumor segmentation accuracy.
1p/19q-net demonstrated a mean cross-validation accuracy of 93.46% across the 3 folds (93.4%, 94.35%, and 92.62%, SD = 0.8) in predicting 1p/19q co-deletion status with a sensitivity and specificity of 0.90 ± 0.003 and 0.95 ± 0.01, respectively and a mean area under the curve of 0.95 ± 0.01. The whole tumor segmentation mean Dice score was 0.80 ± 0.007.
We demonstrate high 1p/19q co-deletion classification accuracy using only T2w MR images. This represents an important milestone toward using MRI to predict glioma histology, prognosis, and response to treatment.
脑胶质瘤生物学领域最近最重要的发现之一是,将异柠檬酸脱氢酶(IDH)突变和1p/19q共缺失状态确定为治疗和预后的标志物。1p/19q共缺失是少突胶质细胞瘤的决定性基因组标志物,与无此缺失的胶质瘤相比,其预后和治疗反应更好。我们团队之前开发了一种仅使用T2加权(T2w)磁共振成像(MRI)来确定IDH突变状态的高精度深度学习网络。本研究的目的是开发一个类似的1p/19q深度学习分类网络。
从癌症影像存档库和癌症基因组图谱中获取了368名受试者的多参数脑MRI和相应的基因组信息。130名受试者存在1p/19共缺失,238名受试者未发生共缺失。开发了一个仅使用T2w图像的网络(1p/19q-net),以使用3D密集型U-Net进行1p/19q共缺失状态分类和同时进行单标签肿瘤分割。进行了三折交叉验证以概括网络性能,还进行了受试者操作特征分析,计算Dice分数以确定肿瘤分割准确性。
1p/19q-net在预测1p/19q共缺失状态时,三折的平均交叉验证准确率为93.46%(分别为93.4%、94.35%和92.62%,标准差=0.8),敏感性和特异性分别为0.90±0.003和0.95±0.01,曲线下平均面积为0.95±0.01。全肿瘤分割的平均Dice分数为0.80±0.007。
我们证明仅使用T2w MR图像就能实现较高的1p/19q共缺失分类准确率。这代表了朝着使用MRI预测胶质瘤组织学、预后和治疗反应迈出的重要里程碑。