Mandell Jason G, Langelaan Jack W, Webb Andrew G, Schiff Steven J
Center for Neural Engineering, Department of Engineering Science and Mechanics, and
J Neurosurg Pediatr. 2015 Feb;15(2):113-24. doi: 10.3171/2014.9.PEDS12426. Epub 2014 Nov 28.
Accurate edge tracing segmentation remains an incompletely solved problem in brain image analysis. The authors propose a novel algorithm using a particle filter to follow the boundary of the brain in the style often used in autonomous air and ground vehicle navigation. Their goals were to create a versatile tool to segment brain and fluid in MRI and CT images of the developing brain, lay the foundation for an intelligent automated edge tracker that is modality independent, and segment normative data from MRI that can be applied to both MRI and CT.
Simulated MRI data sets were used to train and evaluate the particle filter segmentation algorithm. The method was then applied to produce normative growth curves for children and adolescents from 0 to 18 years of age for brain and fluid from MR images from the National Institutes of Health pediatric database and these data were compared to historical results. The authors further adapted this method for use with CT images of pediatric hydrocephalus and compared the results with hand-segmented data.
Segmentation of simulated MRI data with varied levels of noise (0%-9%) and spatial inhomogeneity (0%-40%) resulted in percent errors ranging from 0.06% to 5.38% for brain volume and 2.45% to 22.3% for fluid volume. The authors used this tool to create normal brain and CSF growth curves from MR images. The calculated growth curves showed excellent consistency with historical data. Additionally, compared with manual segmentation the particle filter accurately segmented brain and fluid volumes from CT scans of 5 pediatric patients with hydrocephalus (p<0.001).
The authors have produced the first normative brain and CSF growth curves for children and adolescents 0-18 years of age. In addition, this study includes the first use of a particle filter as an edge tracker in image segmentation and offers a semiautomatic method to segment both pediatric and adult brain data from MR and CT images. The particle filter has the potential to be further automated toward a clinical rather than research tool with both of these modalities. Because of its modality independence, it has the capability to allow CT to be a more effective diagnostic tool for neurological disorders, a task of substantial importance in emergency settings and in developing countries where CT is often the only available method of brain imaging.
在脑图像分析中,准确的边缘追踪分割仍是一个尚未完全解决的问题。作者提出了一种新颖的算法,该算法使用粒子滤波器以自主空中和地面车辆导航中常用的方式追踪脑边界。他们的目标是创建一种通用工具,用于在发育中脑的磁共振成像(MRI)和计算机断层扫描(CT)图像中分割脑和脑脊液,为一种与模态无关的智能自动边缘追踪器奠定基础,并从MRI中分割出可应用于MRI和CT的标准数据。
使用模拟的MRI数据集来训练和评估粒子滤波器分割算法。然后将该方法应用于从美国国立卫生研究院儿科数据库的MR图像中生成0至18岁儿童和青少年脑和脑脊液的标准生长曲线,并将这些数据与历史结果进行比较。作者进一步将此方法应用于小儿脑积水的CT图像,并将结果与手工分割数据进行比较。
对具有不同噪声水平(0%-9%)和空间不均匀性(0%-40%)的模拟MRI数据进行分割,脑体积的百分比误差范围为0.06%至5.38%,脑脊液体积的百分比误差范围为2.45%至22.3%。作者使用此工具从MR图像中创建正常脑和脑脊液的生长曲线。计算出的生长曲线与历史数据显示出极好的一致性。此外,与手工分割相比,粒子滤波器准确地分割了5例小儿脑积水患者CT扫描中的脑和脑脊液体积(p<0.001)。
作者生成了0至18岁儿童和青少年的首个标准脑和脑脊液生长曲线。此外,本研究首次将粒子滤波器用作图像分割中的边缘追踪器,并提供了一种半自动方法来分割来自MR和CT图像的小儿和成人脑数据。粒子滤波器有可能进一步朝着临床而非研究工具的方向实现自动化,适用于这两种模态。由于其与模态无关,它有能力使CT成为用于神经系统疾病的更有效的诊断工具,这在紧急情况下以及在CT通常是唯一可用脑成像方法的发展中国家是一项非常重要的任务。