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Automated identification of brain tumors from single MR images based on segmentation with refined patient-specific priors

机译:基于细分的患者特定先验基于单个MR图像自动识别脑肿瘤

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摘要

Brain tumors can have different shapes or locations, making their identification very challenging. In functional MRI, it is not unusual that patients have only one anatomical image due to time and financial constraints. Here, we provide a modified automatic lesion identification (ALI) procedure which enables brain tumor identification from single MR images. Our method rests on (A) a modified segmentation-normalization procedure with an explicit “extra prior” for the tumor and (B) an outlier detection procedure for abnormal voxel (i.e., tumor) classification. To minimize tissue misclassification, the segmentation-normalization procedure requires prior information of the tumor location and extent. We therefore propose that ALI is run iteratively so that the output of Step B is used as a patient-specific prior in Step A. We test this procedure on real T1-weighted images from 18 patients, and the results were validated in comparison to two independent observers' manual tracings. The automated procedure identified the tumors successfully with an excellent agreement with the manual segmentation (area under the ROC curve = 0.97 ± 0.03). The proposed procedure increases the flexibility and robustness of the ALI tool and will be particularly useful for lesion-behavior mapping studies, or when lesion identification and/or spatial normalization are problematic.
机译:脑肿瘤可以具有不同的形状或位置,使其识别非常具有挑战性。在功能性MRI中,由于时间和金钱的限制,患者只有一张解剖图像并不罕见。在这里,我们提供了一种经过改进的自动病变识别(ALI)程序,该程序可从单个MR图像识别脑肿瘤。我们的方法基于(A)对肿瘤进行明确的“额外优先”修改后的细分标准化过程,以及(B)对异常体素(即肿瘤)分类进行异常检测。为了最大程度地减少组织的错误分类,分割标准化程序需要事先获得肿瘤位置和范围的信息。因此,我们建议迭代运行ALI,以便在步骤A中将步骤B的输出用作患者特定的先验。我们在来自18位患者的真实T1加权图像上测试了此过程,并且与两个结果进行了比较独立的观察员手册追踪。自动化程序与手动分割(ROC曲线下的面积= 0.97±0.03)极为吻合,成功地鉴定出了肿瘤。所提出的程序增加了ALI工具的灵活性和鲁棒性,对于病变行为映射研究或当病变识别和/或空间归一化有问题时特别有用。

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