A combined fuzzy and level sets' based approach for brain MRI image segmentation

B. Anami, Prakash H. Unki
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引用次数: 20

Abstract

The different tissues namely gray matter (GM) white matter (WM), and cerebrospinal fluid (CSF) are spread over the entire brain. It is difficult to demarcate them individually when a brain image is considered. The boundaries are not well defined. Modified fuzzy C means (MFCM) and level sets segmentation based methodology is proposed in this paper for automated brain MRI image segmentation into WM, GM and CSF. The initial segmentation is done by MFCM approach and the results thus obtained are input to the level set methodology. We have tested the methodology on 100 different brain MRI images. The results are compared by using individual MFCM and level set segmentation methods. We took the opinion of 10 expert radiologists to corroborate our results. The results are validated by radiologists as `Accurate', `Satisfactory', `Adequate' and `Not acceptable'. The results obtained using only level set are `not acceptable'. Most of the results obtained using MFCM are `Adequate'. The results obtained using combined method are `Satisfactory'. Hence, the results obtained using combined MFCM and level sets based segmentation are considered better than using individual MFCM and level set segmentation methods. The manual intervention is avoided in the combined approach. The time required to segment using combined approach is also less compared to level set method. The segmentation using proposed methodology is helpful for radiologists in hospitals for brain MRI image analysis.
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基于模糊和水平集的脑MRI图像分割方法
不同的组织,即灰质(GM)、白质(WM)和脑脊液(CSF)遍布整个大脑。当考虑大脑图像时,很难将它们单独区分开来。边界没有很好地界定。提出了基于改进模糊C均值(MFCM)和水平集分割的脑MRI图像自动分割方法。初始分割由MFCM方法完成,由此获得的结果输入到水平集方法。我们已经在100张不同的大脑核磁共振图像上测试了这种方法。采用单个MFCM和水平集分割方法对分割结果进行了比较。我们听取了10位放射专家的意见来证实我们的结果。结果由放射科医生验证为“准确”,“满意”,“足够”和“不可接受”。仅使用水平集获得的结果是“不可接受的”。使用MFCM获得的大多数结果是“足够的”。综合计算结果令人满意。因此,结合MFCM和基于水平集的分割方法得到的结果被认为比单独使用MFCM和水平集分割方法得到的结果更好。在组合方法中避免了人工干预。与水平集法相比,组合法分割所需的时间也更短。本文提出的分割方法有助于医院放射科医师对脑MRI图像进行分析。
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