脑部磁共振成像术后切除腔分割模型及后续治疗辅助工具

Sobha Xavier P, Sathish P. K., Raju G
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摘要

脑部磁共振成像(MRI)术后分割本身就具有挑战性,因为脑组织形态各异,难以准确识别切除区域。因此,亟需一种精确的分割模型。由于术后脑部磁共振成像扫描的稀缺性,使用需要大量训练数据的复杂模型并不可行。本文介绍了一种创新方法,用于准确分割和量化核磁共振成像扫描中的术后脑切除腔。所提出的模型被命名为注意力增强 VGG-U-Net 模型,在编码器部分集成了 VGG16 初始权重,并在解码器中集成了自注意力模块,从而提高了术后脑部 MRI 分割的准确性。注意力机制通过集中在特定的感兴趣区域来提高其准确性。VGG16 模型相对较轻,具有预先训练的权重,可从输入中提取极其详细的信息。该模型在公开的术后脑部核磁共振成像数据上进行了训练,Dice 系数值达到了 0.893。然后使用术后脑部核磁共振成像的临床数据集对该模型进行评估。该模型有助于量化切除区域,并能根据术前图像与每个脑区进行比较。该模型的功能有助于放射科医生评估手术成功率并指导后续手术。
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Post-Operative Brain MRI Resection Cavity Segmentation Model and Follow-Up Treatment Assistance
Post-operative brain magnetic resonance imaging (MRI) segmentation is inherently challenging due to the diverse patterns in brain tissue, which makes it difficult to accurately identify resected areas. Therefore, there is a crucial need for a precise segmentation model. Due to the scarcity of post-operative brain MRI scans, it is not feasible to use complex models that require a large amount of training data. This paper introduces an innovative approach for accurately segmenting and quantifying post-operative brain resection cavities in MRI scans. The proposed model, named Attention-Enhanced VGG-U-Net, integrates VGG16 initial weights in the encoder section and incorporates a self-attention module in the decoder, offering improved accuracy for postoperative brain MRI segmentation. The attention mechanism enhances its accuracy by concentrating on a specific area of interest. The VGG16 model is comparatively lightweight, has pre-trained weights, and allows the model to extract incredibly detailed information from the input. The model is trained on publicly available post-operative brain MRI data and achieved a Dice coefficient value of 0.893. The model is then assessed using a clinical dataset of postoperative brain MRIs. The model facilitates the quantification of the resected regions and enables comparisons with each brain region based on pre-operative images. The capabilities of the model assist radiologists in evaluating surgical success and directing follow-up procedures.
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