Department of Computing Science, Institute of High Performance Computing, A*STAR, 1 Fusionopolis Way, Connexis, Singapore, 138632, Singapore.
School of Electrical and Electronics Engineering, Nanyang Technological University, 50 Nanyang Avenue, Singapore, 639798, Singapore.
Med Biol Eng Comput. 2017 Sep;55(9):1563-1577. doi: 10.1007/s11517-017-1614-1. Epub 2017 Feb 3.
In this paper, a computational framework is proposed to perform a fully automatic segmentation of the left ventricle (LV) cavity from short-axis cardiac magnetic resonance (CMR) images. In the initial phase, the region of interest (ROI) is automatically identified on the first image frame of the CMR slices. This is done by partitioning the image into different regions using a standard fuzzy c-means (FCM) clustering algorithm where the LV region is identified according to its intensity, size and circularity in the image. Next, LV segmentation is performed within the identified ROI by using a novel clustering method that utilizes an objective functional with a dissimilarity measure that incorporates a circular shape function. This circular shape-constrained FCM algorithm is able to differentiate pixels with similar intensity but are located in different regions (e.g. LV cavity and non-LV cavity), thus improving the accuracy of the segmentation even in the presence of papillary muscles. In the final step, the segmented LV cavity is propagated to the adjacent image frame to act as the ROI. The segmentation and ROI propagation are then iteratively executed until the segmentation has been performed for the whole cardiac sequence. Experiment results using the LV Segmentation Challenge validation datasets show that our proposed framework can achieve an average perpendicular distance (APD) shift of 2.23 ± 0.50 mm and the Dice metric (DM) index of 0.89 ± 0.03, which is comparable to the existing cutting edge methods. The added advantage over state of the art is that our approach is fully automatic, does not need manual initialization and does not require a prior trained model.
本文提出了一种计算框架,用于从心脏磁共振(CMR)短轴图像中自动分割左心室(LV)腔。在初始阶段,通过使用标准模糊 C 均值(FCM)聚类算法将 ROI 自动识别到 CMR 切片的第一帧图像上。在图像中,根据 LV 区域的强度、大小和圆度将图像划分为不同区域,从而实现 ROI 的自动识别。接下来,在识别的 ROI 内进行 LV 分割,使用一种新的聚类方法,该方法利用具有不相似度量的目标函数,该度量包含圆形形状函数。这种圆形形状约束 FCM 算法能够区分具有相似强度但位于不同区域(例如 LV 腔和非 LV 腔)的像素,从而提高了分割的准确性,即使在存在乳头肌的情况下也是如此。在最后一步,分割的 LV 腔被传播到相邻的图像帧,用作 ROI。然后,对分割和 ROI 传播进行迭代执行,直到对整个心脏序列进行了分割。使用 LV 分割挑战验证数据集的实验结果表明,我们提出的框架可以实现平均垂直距离(APD)位移 2.23±0.50mm 和骰子度量(DM)指数 0.89±0.03,与现有前沿方法相当。与现有方法相比,我们的方法的优点是完全自动化,不需要手动初始化,也不需要预先训练的模型。