Radiology Informatics Lab, Department of Radiology, Mayo Clinic, S.W, 200 1St Street, Rochester, MN, 55905, USA.
J Digit Imaging. 2023 Jun;36(3):837-846. doi: 10.1007/s10278-022-00757-x. Epub 2023 Jan 5.
Glioblastoma (GBM) is the most common primary malignant brain tumor in adults. The standard treatment for GBM consists of surgical resection followed by concurrent chemoradiotherapy and adjuvant temozolomide. O-6-methylguanine-DNA methyltransferase (MGMT) promoter methylation status is an important prognostic biomarker that predicts the response to temozolomide and guides treatment decisions. At present, the only reliable way to determine MGMT promoter methylation status is through the analysis of tumor tissues. Considering the complications of the tissue-based methods, an imaging-based approach is preferred. This study aimed to compare three different deep learning-based approaches for predicting MGMT promoter methylation status. We obtained 576 T2WI with their corresponding tumor masks, and MGMT promoter methylation status from, The Brain Tumor Segmentation (BraTS) 2021 datasets. We developed three different models: voxel-wise, slice-wise, and whole-brain. For voxel-wise classification, methylated and unmethylated MGMT tumor masks were made into 1 and 2 with 0 background, respectively. We converted each T2WI into 32 × 32 × 32 patches. We trained a 3D-Vnet model for tumor segmentation. After inference, we constructed the whole brain volume based on the patch's coordinates. The final prediction of MGMT methylation status was made by majority voting between the predicted voxel values of the biggest connected component. For slice-wise classification, we trained an object detection model for tumor detection and MGMT methylation status prediction, then for final prediction, we used majority voting. For the whole-brain approach, we trained a 3D Densenet121 for prediction. Whole-brain, slice-wise, and voxel-wise, accuracy was 65.42% (SD 3.97%), 61.37% (SD 1.48%), and 56.84% (SD 4.38%), respectively.
胶质母细胞瘤(GBM)是成人中最常见的原发性恶性脑肿瘤。GBM 的标准治疗包括手术切除,然后进行同期放化疗和辅助替莫唑胺治疗。O-6-甲基鸟嘌呤-DNA 甲基转移酶(MGMT)启动子甲基化状态是一种重要的预后生物标志物,可预测替莫唑胺的反应,并指导治疗决策。目前,确定 MGMT 启动子甲基化状态的唯一可靠方法是通过分析肿瘤组织。考虑到基于组织的方法的并发症,更倾向于采用基于成像的方法。本研究旨在比较三种不同的基于深度学习的方法来预测 MGMT 启动子甲基化状态。我们从 The Brain Tumor Segmentation(BraTS)2021 数据集获得了 576 个带有相应肿瘤掩模的 T2WI 和 MGMT 启动子甲基化状态。我们开发了三种不同的模型:体素分类、切片分类和全脑分类。对于体素分类,将甲基化和非甲基化的 MGMT 肿瘤掩模分别制成 1 和 2,背景为 0。我们将每个 T2WI 转换为 32×32×32 个补丁。我们训练了一个 3D-Vnet 模型进行肿瘤分割。推理后,我们根据补丁的坐标构建整个大脑体积。通过最大连通分量的预测体素值之间的多数投票来做出 MGMT 甲基化状态的最终预测。对于切片分类,我们训练了一个用于肿瘤检测和 MGMT 甲基化状态预测的目标检测模型,然后进行最终预测,我们使用多数投票。对于全脑方法,我们训练了一个 3D Densenet121 进行预测。全脑、切片和体素分类的准确率分别为 65.42%(SD 3.97%)、61.37%(SD 1.48%)和 56.84%(SD 4.38%)。