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Automatic brain tumor segmentation.

机译:自动脑肿瘤分割。

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This thesis addresses the task of automatically segmenting brain tumors and edema in magnetic resonance images. This is motivated by potential applications in assessing tumor growth, assessing treatment responses, enhancing computer-assisted surgery, planning radiation therapy, and constructing tumor growth models. The presented framework forms an image processing pipeline, consisting of noise reduction, spatial registration, intensity standardization, feature extraction, pixel classification, and label relaxation. The key advantage of this framework is the simultaneous use of features computed from the image intensity properties, and the locations of pixels within an aligned template brain. Automatically learning to combine these features allows recognition of tumors and edema that have relatively normal intensity properties. Our results on 11 patients with brain tumors show that the system achieves nearly perfect performance given patient-specific training, but also achieves accurate results in segmenting patients not used in training.
机译:本论文致力于在磁共振图像中自动分割脑肿瘤和水肿的任务。这是由于在评估肿瘤生长,评估治疗反应,增强计算机辅助手术,规划放射治疗以及构建肿瘤生长模型方面的潜在应用而受到激励。所提出的框架形成了图像处理流水线,包括降噪,空间配准,强度标准化,特征提取,像素分类和标签松弛。该框架的主要优势是可以同时使用根据图像强度属性计算出的特征,以及对齐模板大脑中像素的位置。自动学习以结合这些特征可以识别具有相对正常强度特性的肿瘤和水肿。我们对11名脑肿瘤患者的研究结果表明,在针对特定患者进行培训的情况下,该系统可实现近乎完美的性能,但在对未接受培训的患者进行细分时,也可以获得准确的结果。

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