首页> 外文期刊>Medical Physics >Treatment response assessment of breast masses on dynamic contrast-enhanced magnetic resonance scans using fuzzy c-means clustering and level set segmentation.
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Treatment response assessment of breast masses on dynamic contrast-enhanced magnetic resonance scans using fuzzy c-means clustering and level set segmentation.

机译:在动态对比增强磁共振扫描中使用模糊c均值聚类和水平集分割对乳腺肿块的治疗反应评估。

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摘要

The goal of this study was to develop an automated method to segment breast masses on dynamic contrast-enhanced (DCE) magnetic resonance (MR) scans and to evaluate its potential for estimating tumor volume on pre- and postchemotherapy images and tumor change in response to treatment. A radiologist experienced in interpreting breast MR scans defined a cuboid volume of interest (VOI) enclosing the mass in the MR volume at one time point within the sequence of DCE-MR scans. The corresponding VOIs over the entire time sequence were then automatically extracted. A new 3D VOI representing the local pharmacokinetic activities in the VOI was generated from the 4D VOI sequence by summarizing the temporal intensity enhancement curve of each voxel with its standard deviation. The method then used the fuzzy c-means (FCM) clustering algorithm followed by morphological filtering for initial mass segmentation. The initial segmentation was refined by the 3D level set (LS) method. The velocity field of the LS method was formulated in terms of the mean curvature which guaranteed the smoothness of the surface, the Sobel edge information which attracted the zero LS to the desired mass margin, and the FCM membership function which improved segmentation accuracy. The method was evaluated on 50 DCE-MR scans of 25 patients who underwent neoadjuvant chemotherapy. Each patient had pre- and postchemotherapy DCE-MR scans on a 1.5 T magnet. The in-plane pixel size ranged from 0.546 to 0.703 mm and the slice thickness ranged from 2.5 to 4.5 mm. The flip angle was 15 degrees, repetition time ranged from 5.98 to 6.7 ms, and echo time ranged from 1.2 to 1.3 ms. Computer segmentation was applied to the coronal T1-weighted images. For comparison, the same radiologist who marked the VOI also manually segmented the mass on each slice. The performance of the automated method was quantified using an overlap measure, defined as the ratio of the intersection of the computer and the manual segmentation volumes to the manual segmentation volume. Pre- and postchemotherapy masses had overlap measures of 0.81 +/- 0.13 (mean +/- s.d.) and 0.71 +/- 0.22, respectively. The percentage volume reduction (PVR) estimated by computer and the radiologist were 55.5 +/- 43.0% (mean +/- s.d.) and 57.8 +/- 51.3%, respectively. Paired Student's t test indicated that the difference between the mean PVRs estimated by computer and the radiologist did not reach statistical significance (p = 0.641). The automated mass segmentation method may have the potential to assist physicians in monitoring volume change in breast masses in response to treatment.
机译:这项研究的目的是开发一种自动方法,可以在动态对比增强(DCE)磁共振(MR)扫描中对乳腺肿块进行分割,并评估其在化疗前后的图像中估计肿瘤体积以及根据肿瘤的变化而估计肿瘤的潜力。治疗。一位在解释乳房MR扫描方面经验丰富的放射科医生定义了一个感兴趣的长方体(VOI),该体积在DCE-MR扫描序列中的某个时间点将体积包裹在MR体积中。然后自动提取整个时间序列中的相应VOI。通过汇总每个体素的时间强度增强曲线及其标准偏差,从4D VOI序列中生成代表VOI中局部药代动力学活性的新3D VOI。然后,该方法使用模糊c均值(FCM)聚类算法,然后使用形态学滤波进行初始质量分割。通过3D水平集(LS)方法完善了初始分割。 LS方法的速度场是根据保证表面光滑度的平均曲率,将零LS吸引到所需质量余量的Sobel边缘信息以及提高了分割精度的FCM隶属函数来制定的。该方法在25例接受新辅助化疗的患者的50次DCE-MR扫描中进行了评估。每位患者在化疗前和化疗后在1.5 T磁体上进行DCE-MR扫描。面内像素大小范围为0.546至0.703 mm,切片厚度范围为2.5至4.5 mm。翻转角为15度,重复时间范围为5.98至6.7 ms,回波时间范围为1.2至1.3 ms。计算机分割应用于冠状T1加权图像。为了进行比较,标记VOI的放射线医师还手动将每个切片上的质量分割。自动化方法的性能使用重叠量度进行量化,该重叠量度定义为计算机与手动分割量的交点与手动分割量的比值。化疗前后的质量重叠度分别为0.81 +/- 0.13(平均+/- s.d.)和0.71 +/- 0.22。计算机和放射科医生估计的体积减少百分比(PVR)分别为55.5 +/- 43.0%(平均+/- s.d.)和57.8 +/- 51.3%。配对的学生t检验表明,计算机和放射科医生估计的平均PVR之间的差异未达到统计学显着性(p = 0.641)。自动质量分割方法可能具有协助医师监测乳腺肿块响应治疗的体积变化的潜力。

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