Torres Elizabeth B, Nguyen Jillian, Mistry Sejal, Whyatt Caroline, Kalampratsidou Vilelmini, Kolevzon Alexander
Department of Psychology, Computer Science, Rutgers Center for Cognitive Sciences and Computational Biomedicine Imaging and Modelling Center of Computer Science, Rutgers The State University of New Jersey New Brunswick, NJ, USA.
Graduate Program in Neuroscience, Rutgers The State University of New Jersey New Brunswick, NJ, USA.
Front Integr Neurosci. 2016 Jun 27;10:22. doi: 10.3389/fnint.2016.00022. eCollection 2016.
There is a critical need for precision phenotyping across neurodevelopmental disorders, especially in individuals who receive a clinical diagnosis of autism spectrum disorder (ASD). Phelan-McDermid deletion syndrome (PMS) is one such example, as it has a high penetrance of ASD. At present, no biometric characterization of the behavioral phenotype within PMS exists.
We introduce a data-type and statistical framework that permits the personalized profiling of naturalistic behaviors. Walking patterns were assessed in 30 participants (16 PMS, 3 idiopathic-ASD and 11 age- and sex-matched controls). Each individual's micro-movement signatures were recorded at 240 Hz. We empirically estimated the parameters of the continuous Gamma family of probability distributions and calculated their ranges. These estimated stochastic signatures were then mapped on the Gamma plane to obtain several statistical indexes for each child. To help visualize complex patterns across the cohort, we introduce new tools that enable the assessment of connectivity and modularity indexes across the peripheral network of rotational joints.
Typical walking signatures are absent in all children with PMS as well as in the children with idiopathic-ASD (iASD). Underlying these patterns are atypical leg rotational acceleration signatures that render participants with PMS unstable with rotations that are much faster than controls. The median values of the estimated Gamma parameters serve as a cutoff to automatically separate children with PMS 5-7 years old from adolescents with PMS 12-16 years old, the former displaying more randomness and larger noise. The fluctuations in the arm's motions during the walking also have atypical statistics that separate males from females in PMS and show higher rates of noise accumulation in idiopathic ASD (iASD) children. Despite high heterogeneity, all iASD children have excess noise, a narrow range of probability-distribution shapes across the body joints and a distinct joint network connectivity pattern. Both PMS and iASD have systemic issues with noise in micro-motions across the body with specific signatures for each child that, as a cohort, selectively deviates from controls.
We provide a new methodology for precision behavioral phenotyping with the potential to use micro-movement output noise as a natural classifier of neurodevelopmental disorders of known etiology. This approach may help us better understand idiopathic neurodevelopmental disorders and personalize the assessments of natural movements in these populations.
在神经发育障碍中,尤其是在临床诊断为自闭症谱系障碍(ASD)的个体中,对精准表型分析有着迫切需求。费伦 - 麦克德米德缺失综合征(PMS)就是这样一个例子,因为它具有较高的自闭症谱系障碍发病率。目前,尚无关于PMS行为表型的生物特征描述。
我们引入了一种数据类型和统计框架,可对自然行为进行个性化分析。对30名参与者(16名PMS患者、3名特发性自闭症患者和11名年龄及性别匹配的对照者)的行走模式进行了评估。以240赫兹的频率记录每个人的微动作特征。我们通过实证估计了连续伽马概率分布族的参数并计算了其范围。然后将这些估计的随机特征映射到伽马平面上,为每个儿童获得几个统计指标。为了帮助直观呈现整个队列中的复杂模式,我们引入了新工具,能够评估旋转关节外周网络的连通性和模块化指标。
所有PMS患儿以及特发性自闭症(iASD)患儿均不存在典型的行走特征。这些模式背后是不典型的腿部旋转加速度特征,使得PMS患者在旋转时比对照组更加不稳定,旋转速度更快。估计的伽马参数的中位数可作为一个临界值,自动将5 - 7岁的PMS患儿与12 - 16岁的PMS青少年区分开来,前者表现出更多的随机性和更大的噪声。行走过程中手臂动作的波动也具有不典型的统计特征,可将PMS中的男性与女性区分开来,并显示出自发性自闭症(iASD)患儿中噪声积累的发生率更高。尽管存在高度异质性,但所有iASD患儿都有过多的噪声、身体各关节概率分布形状的范围较窄以及独特的关节网络连通模式。PMS和iASD在全身微动作的噪声方面都存在系统性问题,每个儿童都有特定的特征,作为一个队列,选择性地偏离对照组。
我们提供了一种用于精准行为表型分析的新方法,有可能将微动作输出噪声用作已知病因的神经发育障碍的自然分类器。这种方法可能有助于我们更好地理解特发性神经发育障碍,并对这些人群的自然运动评估进行个性化。