Pagnozzi Alex M, Shen Kaikai, Doecke James D, Boyd Roslyn N, Bradley Andrew P, Rose Stephen, Dowson Nicholas
CSIRO Health and Biosecurity, The Australian e-Health Research Centre, Brisbane, Australia.
School of Information Technology and Electrical Engineering, The University of Queensland, Brisbane, Australia.
Hum Brain Mapp. 2016 Nov;37(11):3795-3809. doi: 10.1002/hbm.23276.
Understanding the relationships between the structure and function of the brain largely relies on the qualitative assessment of Magnetic Resonance Images (MRIs) by expert clinicians. Automated analysis systems can support these assessments by providing quantitative measures of brain injury. However, the assessment of deep gray matter structures, which are critical to motor and executive function, remains difficult as a result of large anatomical injuries commonly observed in children with Cerebral Palsy (CP). Hence, this article proposes a robust surrogate marker of the extent of deep gray matter injury based on impingement due to local ventricular enlargement on surrounding anatomy. Local enlargement was computed using a statistical shape model of the lateral ventricles constructed from 44 healthy subjects. Measures of injury on 95 age-matched CP patients were used to train a regression model to predict six clinical measures of function. The robustness of identifying ventricular enlargement was demonstrated by an area under the curve of 0.91 when tested against a dichotomised expert clinical assessment. The measures also showed strong and significant relationships for multiple clinical scores, including: motor function (r = 0.62, P < 0.005), executive function (r = 0.55, P < 0.005), and communication (r = 0.50, P < 0.005), especially compared to using volumes obtained from standard anatomical segmentation approaches. The lack of reliance on accurate anatomical segmentations and its resulting robustness to large anatomical variations is a key feature of the proposed automated approach. This coupled with its strong correlation with clinically meaningful scores, signifies the potential utility to repeatedly assess MRIs for clinicians diagnosing children with CP. Hum Brain Mapp 37:3795-3809, 2016. © 2016 Wiley Periodicals, Inc.
了解大脑结构与功能之间的关系很大程度上依赖于专家临床医生对磁共振成像(MRI)的定性评估。自动分析系统可以通过提供脑损伤的定量测量来支持这些评估。然而,由于脑瘫(CP)患儿中常见的大面积解剖损伤,对运动和执行功能至关重要的深部灰质结构的评估仍然困难。因此,本文基于局部脑室扩大对周围解剖结构的挤压,提出了一种深部灰质损伤程度的可靠替代标志物。局部扩大是使用从44名健康受试者构建的侧脑室统计形状模型计算得出的。对95名年龄匹配的CP患者的损伤测量用于训练回归模型,以预测六种功能的临床测量指标。当与二分法专家临床评估进行测试时,识别脑室扩大的稳健性通过曲线下面积为0.91得以证明。这些测量指标还显示出与多个临床评分之间有很强且显著的关系,包括:运动功能(r = 0.62,P < 0.005)、执行功能(r = 0.55,P < 0.005)和沟通能力(r = 0.50,P < 0.005),特别是与使用从标准解剖分割方法获得的体积相比。不依赖于精确的解剖分割及其对大解剖变异的稳健性是所提出的自动方法的一个关键特征。这再加上其与临床有意义评分的强相关性,表明了对临床医生反复评估CP患儿MRI的潜在效用。《人类大脑图谱》37:3795 - 3809,2016。© 2016威利期刊公司。