Reswave-Net:一种基于小波的残差U-Net脑肿瘤分割和总体生存预测方法

Shilna E., Athira Vinod, Jeena R. S., Anurenjan P. R., S. G.
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引用次数: 0

摘要

脑瘤是脑组织中的一种异常,可能对神经系统造成伤害,严重时可导致死亡。脑肿瘤是一种死亡率很高的疾病,其分区域的检测和准确分割是疾病诊断和治疗过程中的一项关键任务。人工分割过程需要解剖学知识,昂贵,耗时,并且由于人为错误而不准确。因此,需要自动、可靠的分割方法;然而,脑肿瘤的巨大空间和结构变异性使得自动分割成为一个具有挑战性的问题。这项工作提出了Reswave-Net,这是一个深度学习网络,使用带有残余连接的编码器-解码器(U-Net)架构来自动化和标准化肿瘤分割任务,它还结合了输入图像的小波分解。在Brain tumor Segmentation (BraTS) Challenge-2020数据集上对该网络进行训练和评估,整个肿瘤的平均Dice Score分别为87.36%、70.45%和72.55%,Hausdorff距离分别为6.87、34.16和23.42,对肿瘤和肿瘤核心进行了增强。对于总体生存预测,使用随机森林模型,其中使用从图像中提取的放射性特征和受试者的年龄进行训练。该模型的准确率为58.4%。
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Reswave-Net: A wavelet based Residual U-Net for Brain Tumour Segmentation and Overall Survival Prediction
A brain tumour is an abnormality in brain tissue that may cause harm to the nervous system and in severe cases can lead to death. Being a disease with a high mortality rate, the detection and accurate segmentation of brain tumour sub-regions is a crucial task in the disease diagnosis and treatment procedure. The manual segmentation process requires anatomical knowledge, is expensive, time-consuming, and inaccurate due to human errors. So, automatic and reliable segmentation methods are required; however, the large spatial and structural variability among brain tumours make automatic segmentation a challenging problem. This work proposes Reswave-Net, a deep learning network using an encoder-decoder (U-Net) architecture with residual connections to automate and standardize the task of tumour segmentation, which also incorporates wavelet decomposition of the input images. The network is trained and evaluated on Brain Tumour Segmentation (BraTS) Challenge-2020 dataset and achieves a mean Dice Score of 87.36%, 70.45%, and 72.55% and the Hausdorff distance of 6.87, 34.16 and 23.42 for the whole tumour, enhancing tumour and tumour core, respectively. For overall survival prediction, a random forest model is used where the radiomic features extracted from the image and age of the subject are used for training. The model achieves an accuracy of 58.4%.
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