Brain tumor is the most common and deadliest disease that can be found in all age groups. Generally, MRI modality is adopted for identifying and diagnosing tumors by the radiologists. The correct identification of tumor regions and its type can aid to diagnose tumors with the followup treatment plans. However, for any radiologist analysing such scans is a complex and time-consuming task. Motivated by the deep learning based computer-aided-diagnosis systems, this paper proposes multi-task attention guided encoder-decoder network (MAG-Net) to classify and segment the brain tumor regions using MRI images. The MAG-Net is trained and evaluated on the Figshare dataset that includes coronal, axial, and sagittal views with 3 types of tumors meningioma, glioma, and pituitary tumor. With exhaustive experimental trials the model achieved promising results as compared to existing state-of-the-art models, while having least number of training parameters among other state-of-the-art models.
翻译:一般来说,放射科医生采用MRI模式来识别和诊断肿瘤。正确识别肿瘤区域及其类型有助于通过后续治疗计划诊断肿瘤。然而,对于任何分析这种扫描的放射科医生来说,这是一项复杂和耗时的任务。在基于计算机辅助的深入学习诊断系统的激励下,本文件建议多任务关注引导编码器脱科德尔网络(MAG-Net)使用MRI图像对脑肿瘤区域进行分类和分块。MAG-Net在包括冠状、轴形和外形观点的Figshare数据集(包括冠状、轴状和外形观点)上进行培训和评价,该数据集包括三种肿瘤的脑膜瘤、显微瘤和垂状肿瘤。通过详尽的实验,模型与其他最先进的模型相比,与其他最先进的模型相比,取得了大有希望的结果,同时与其他最先进的模型相比,培训参数也最少。