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A new bias field correction method combining N3 and FCM for improved segmentation of breast density on MRI

机译:结合N3和FCM的新的偏场校正方法可改善MRI上的乳房密度分割

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摘要

>Purpose: Quantitative breast density is known as a strong risk factor associated with the development of breast cancer. Measurement of breast density based on three-dimensional breast MRI may provide very useful information. One important step for quantitative analysis of breast density on MRI is the correction of field inhomogeneity to allow an accurate segmentation of the fibroglandular tissue (dense tissue). A new bias field correction method by combining the nonparametric nonuniformity normalization (N3) algorithm and fuzzy-C-means (FCM)-based inhomogeneity correction algorithm is developed in this work.>Methods: The analysis is performed on non-fat-sat T1-weighted images acquired using a 1.5 T MRI scanner. A total of 60 breasts from 30 healthy volunteers was analyzed. N3 is known as a robust correction method, but it cannot correct a strong bias field on a large area. FCM-based algorithm can correct the bias field on a large area, but it may change the tissue contrast and affect the segmentation quality. The proposed algorithm applies N3 first, followed by FCM, and then the generated bias field is smoothed using Gaussian kernal and B-spline surface fitting to minimize the problem of mistakenly changed tissue contrast. The segmentation results based on the N3+FCM corrected images were compared to the N3 and FCM alone corrected images and another method, coherent local intensity clustering (CLIC), corrected images. The segmentation quality based on different correction methods were evaluated by a radiologist and ranked.>Results: The authors demonstrated that the iterative N3+FCM correction method brightens the signal intensity of fatty tissues and that separates the histogram peaks between the fibroglandular and fatty tissues to allow an accurate segmentation between them. In the first reading session, the radiologist found (N3+FCM>N3>FCM) ranking in 17 breasts, (N3+FCM>N3=FCM) ranking in 7 breasts, (N3+FCM=N3>FCM) in 32 breasts, (N3+FCM=N3=FCM) in 2 breasts, and (N3>N3+FCM>FCM) in 2 breasts. The results of the second reading session were similar. The performance in each pairwise Wilcoxon signed-rank test is significant, showing N3+FCM superior to both N3 and FCM, and N3 superior to FCM. The performance of the new N3+FCM algorithm was comparable to that of CLIC, showing equivalent quality in 57∕60 breasts.>Conclusions: Choosing an appropriate bias field correction method is a very important preprocessing step to allow an accurate segmentation of fibroglandular tissues based on breast MRI for quantitative measurement of breast density. The proposed algorithm combining N3+FCM and CLIC both yield satisfactory results.
机译:>目的:定量的乳腺密度被认为是与乳腺癌发展相关的强烈危险因素。基于三维乳房MRI的乳房密度测量可能会提供非常有用的信息。在MRI上对乳房密度进行定量分析的重要步骤是校正视野不均匀性,以准确分割纤维腺组织(致密组织)。结合非参数非均匀性归一化(N3)算法和基于模糊C均值(FCM)的非均匀性校正算法,提出了一种新的偏场校正方法。>方法:使用1.5 T MRI扫描仪获取的非肥胖T1加权图像。分析了来自30名健康志愿者的60例乳房。 N3是一种稳健的校正方法,但它无法在大面积上校正强偏置场。基于FCM的算法可以在较大区域上校正偏场,但它可能会改变组织对比度并影响分割质量。所提出的算法首先应用N3,然后应用FCM,然后使用高斯核和B样条曲面拟合对生成的偏置场进行平滑处理,以最大程度地减少错误改变组织对比度的问题。将基于N3 + FCM校正图像的分割结果与单独的N3和FCM校正图像以及另一种方法(相干局部强度聚类(CLIC))校正图像进行比较。 >结果:作者证明,迭代N3 + FCM校正方法可以使脂肪组织的信号强度变亮,并且可以将两个图像之间的直方图峰分开纤维腺和脂肪组织可以在它们之间进行精确的分割。在第一次阅读中,放射科医生发现(N3 + FCM> N3> FCM)在17个乳房中排名,(N3 + FCM> N3 = FCM)在7个乳房中排名,(N3 + FCM = N3> FCM)在32个乳房中排名, (N3 + FCM = N3 = FCM)在2个乳房中,(N3> N3 + FCM> FCM)在2个乳房中。第二次阅读会议的结果相似。每个成对的Wilcoxon符号秩检验中的性能都很显着,显示N3 + FCM优于N3和FCM,并且N3优于FCM。新的N3 + FCM算法的性能与CLIC相当,在57×60的乳房中显示出相同的质量。>结论:选择合适的偏置场校正方法是非常重要的预处理步骤,可允许基于乳腺MRI的纤维腺腺组织的精确分割,可定量测量乳腺密度。结合N3 + FCM和CLIC提出的算法均获得令人满意的结果。

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