Health Informatics Department, Informatics Institute, Middle East Technical University, Ankara, Turkey.
Comput Methods Programs Biomed. 2012 Dec;108(3):1106-20. doi: 10.1016/j.cmpb.2012.07.006. Epub 2012 Sep 6.
The aim of this study was to develop automatic image segmentation methods to segment human facial tissue which contains very thin anatomic structures. The segmentation output can be used to construct a more realistic human face model for a variety of purposes like surgery planning, patient specific prosthesis design and facial expression simulation. Segmentation methods developed were based on Bayesian and Level Set frameworks, which were applied on three image types: magnetic resonance imaging (MRI), computerized tomography (CT) and fusion, in which case information from both modalities were utilized maximally for every tissue type. The results on human data indicated that fusion, thickness adaptive and postprocessing options provided the best muscle/fat segmentation scores in both Level Set and Bayesian methods. When the best Level Set and Bayesian methods were compared, scores of the latter were better. Number of algorithm parameters (to be trained) and computer run time measured were also in favour of the Bayesian method.
本研究旨在开发自动图像分割方法,以分割包含非常薄的解剖结构的人体面部组织。分割输出可用于构建更逼真的人脸模型,用于各种目的,如手术规划、患者特定假体设计和面部表情模拟。所开发的分割方法基于贝叶斯和水平集框架,应用于三种图像类型:磁共振成像 (MRI)、计算机断层扫描 (CT) 和融合,在这种情况下,两种模态的信息都被最大化地用于每种组织类型。对人体数据的结果表明,融合、厚度自适应和后处理选项在水平集和贝叶斯方法中均提供了最佳的肌肉/脂肪分割评分。当比较最佳的水平集和贝叶斯方法时,后者的评分更好。要训练的算法参数数量和计算机运行时间也有利于贝叶斯方法。