Automatic segmentation is essential for the brain tumor diagnosis, disease prognosis, and follow-up therapy of patients with gliomas. Still, accurate detection of gliomas and their sub-regions in multimodal MRI is very challenging due to the variety of scanners and imaging protocols. Over the last years, the BraTS Challenge has provided a large number of multi-institutional MRI scans as a benchmark for glioma segmentation algorithms. This paper describes our contribution to the BraTS 2022 Continuous Evaluation challenge. We propose a new ensemble of multiple deep learning frameworks namely, DeepSeg, nnU-Net, and DeepSCAN for automatic glioma boundaries detection in pre-operative MRI. It is worth noting that our ensemble models took first place in the final evaluation on the BraTS testing dataset with Dice scores of 0.9294, 0.8788, and 0.8803, and Hausdorf distance of 5.23, 13.54, and 12.05, for the whole tumor, tumor core, and enhancing tumor, respectively. Furthermore, the proposed ensemble method ranked first in the final ranking on another unseen test dataset, namely Sub-Saharan Africa dataset, achieving mean Dice scores of 0.9737, 0.9593, and 0.9022, and HD95 of 2.66, 1.72, 3.32 for the whole tumor, tumor core, and enhancing tumor, respectively. The docker image for the winning submission is publicly available at (https://hub.docker.com/r/razeineldin/camed22).
翻译:大脑肿瘤诊断、疾病预测和对有显微瘤的病人进行后续治疗,必须进行自动断裂自动断层。不过,由于扫描机和成像程序多种多样,在多式联运MRI中准确探测显微镜及其分区是非常困难的。过去几年,布拉特斯古托挑战提供了大量多机构MRI扫描,作为滑析分解算法的基准。本文描述了我们对2022年BRATS持续评估挑战的贡献。我们提出了一套新的多种深层次学习框架,即DeepSeg、nnU-Net和DeepScan,用于在手术前MRI中自动探测显微镜界限及其分区。值得指出的是,我们的星象模型首次出现在对布拉特斯古数据集的最后评估中,Dice分数为0.294、0.87888和0.803;Hausdorf的距离为5.23、13.54和12.05,用于整个肿瘤、加强肿瘤。此外,拟议的entebleglegle 方法在手术前MRIMARMR 3的最后排名中排名中排名第一位。 972 95 和0.9-HD ROMCER 分别用于S。