Brain Tumor Semi-automatic Segmentation on MRI T1-weighted Images using Active Contour Models

Ahmad Habbie Thias, Abdullah Faqih Al Mubarok, A. Handayani, D. Danudirdjo, Tati Erawati Rajab
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引用次数: 7

Abstract

Brain tumor is a collection of abnormal growth in brain tissue. One of the methods to diagnose brain tumor is using magnetic resonance imaging (MRI) to produce images of brain tissue, on which the radiologist will perform manual segmentation of the tumor boundary. Manual segmentation poses a challenge in a large number of images. A Computer Aided Diagnosis (CAD) system can be designed to perform an automated segmentation of tumor boundary, thus providing more efficient and objective results. In this work, we compared and analyze the performance of snake active contour (SAC), morphological active contour without edge (MACWE), and morphological geodesic active contour (MGAC) segmentation algorithms on 3049 brain MRI T1-weighted images containing glioma, meningioma, or pituitary tumor. The performance of these algorithms quantified using the Jaccard Similarity Index (JSI) and the Hausdorff Distance (HD). The best segmentation results were obtained by the MGAC with the average JSI and HD of 71.18% and 4.04 pixels, respectively. The JSI of MGAC segmentation was highest for meningioma (77.94%) and lowest for glioma (66.31%) while a random shift in contour initialization affected the glioma and pituitary tumors more than the meningiomas, as shown by the respective post-shift JSI of 76.42%, 76.84%, and 85.98% accuracy for glioma, pituitary, and meningioma.
基于活动轮廓模型的MRI t1加权图像脑肿瘤半自动分割
脑肿瘤是大脑组织中异常生长的集合。诊断脑肿瘤的方法之一是使用磁共振成像(MRI)产生脑组织图像,放射科医生将对肿瘤边界进行人工分割。在大量的图像中,人工分割是一个挑战。计算机辅助诊断(CAD)系统可以实现肿瘤边界的自动分割,从而提供更有效和客观的结果。在这项工作中,我们比较和分析了蛇形活动轮廓(SAC)、形态无边缘活动轮廓(MACWE)和形态测地线活动轮廓(MGAC)分割算法在3049张含有胶质瘤、脑膜瘤或垂体瘤的脑MRI t1加权图像上的性能。利用Jaccard相似性指数(JSI)和Hausdorff距离(HD)对这些算法的性能进行了量化。MGAC分割效果最好,平均JSI和HD分别为71.18%和4.04像素。MGAC分割的JSI在脑膜瘤中最高(77.94%),在胶质瘤中最低(66.31%),而轮廓初始化的随机移位对胶质瘤和垂体瘤的影响大于脑膜瘤,胶质瘤、垂体和脑膜瘤的移位后JSI分别为76.42%、76.84%和85.98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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