Bertè Francesco, Lamponi Giuseppe, Bramanti Placido, Calabrò Rocco S
IRCCS Centro Neurolesi "Bonino-Pulejo", Messina, Italy.
IRCCS Centro Neurolesi "Bonino-Pulejo", Messina, Italy
Neuroradiol J. 2015 Oct;28(5):460-7. doi: 10.1177/1971400915609346. Epub 2015 Oct 1.
Brain computed tomography (CT) is useful diagnostic tool for the evaluation of several neurological disorders due to its accuracy, reliability, safety and wide availability. In this field, a potentially interesting research topic is the automatic segmentation and recognition of medical regions of interest (ROIs). Herein, we propose a novel automated method, based on the use of the active appearance model (AAM) for the segmentation of brain matter in CT images to assist radiologists in the evaluation of the images. The method described, that was applied to 54 CT images coming from a sample of outpatients affected by cognitive impairment, enabled us to obtain the generation of a model overlapping with the original image with quite good precision. Since CT neuroimaging is in widespread use for detecting neurological disease, including neurodegenerative conditions, the development of automated tools enabling technicians and physicians to reduce working time and reach a more accurate diagnosis is needed.
脑部计算机断层扫描(CT)因其准确性、可靠性、安全性和广泛可用性,是评估多种神经系统疾病的有用诊断工具。在该领域,一个潜在有趣的研究课题是医学感兴趣区域(ROI)的自动分割和识别。在此,我们提出一种基于主动外观模型(AAM)的新颖自动化方法,用于在CT图像中分割脑物质,以协助放射科医生评估图像。所描述的方法应用于来自认知障碍门诊患者样本的54张CT图像,使我们能够以相当高的精度生成与原始图像重叠的模型。由于CT神经成像广泛用于检测包括神经退行性疾病在内的神经系统疾病,因此需要开发自动化工具,使技术人员和医生能够减少工作时间并实现更准确的诊断。