首页> 外文会议>2011 8th IEEE International Symposium on Biomedical Imaging: From Nano to Macro >Local intensity model: An outlier detection framework with applications to white matter hyperintensity segmentation
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Local intensity model: An outlier detection framework with applications to white matter hyperintensity segmentation

机译:局部强度模型:异常值检测框架及其在白质高强度分割中的应用

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Automatic segmentation of white matter hyperintensities (WMH) from T2-Weighted and FLAIR MRI is a common task that needs to be performed in the analysis of many different diseases. A method to segment the WMH is proposed whereby a local intensity model (LIM) of normal tissue is generated. WMH are detected as outliers from this model. The LIM enables an accurate modeling of intensity variations thus reducing false positives. Moreover only scans with normal tissues are required to create the model. Twelve normal scans were used to generate the LIM and validation was conducted on a set of 46 scans. Similarity indices between the proposed approach and manual segmentations were 0.59±0.15, 0.65±0.08 and 0.77±0.08 for subjects with small, moderate and large volume of lesions respectively. The proposed approach performed better than support vector machines on the same dataset and compared favorably to approaches in literature.
机译:从T2加权和FLAIR MRI自动分离白质高信号(WMH)是一项常见任务,需要对许多不同的疾病进行分析。提出了一种分割WMH的方法,从而生成正常组织的局部强度模型(LIM)。从此模型中检测到WMH为异常值。 LIM可以对强度变化进行精确建模,从而减少误报。此外,只需要对正常组织进行扫描即可创建模型。使用十二个正常扫描来生成LIM,并在一组46次扫描中进行验证。对于病变量较小,中等和较大的受试者,建议的方法与手动分割之间的相似性指数分别为0.59±0.15、0.65±0.08和0.77±0.08。所提出的方法在相同数据集上的性能优于支持向量机,并且与文献中的方法相比具有优势。

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