Facial expression recognition is linked to clinical and neurofunctional differences in autism.

IF 6.3 1区 医学 Q1 GENETICS & HEREDITY Molecular Autism Pub Date : 2022-11-10 DOI:10.1186/s13229-022-00520-7
Hannah Meyer-Lindenberg, Carolin Moessnang, Bethany Oakley, Jumana Ahmad, Luke Mason, Emily J H Jones, Hannah L Hayward, Jennifer Cooke, Daisy Crawley, Rosemary Holt, Julian Tillmann, Tony Charman, Simon Baron-Cohen, Tobias Banaschewski, Christian Beckmann, Heike Tost, Andreas Meyer-Lindenberg, Jan K Buitelaar, Declan G Murphy, Michael J Brammer, Eva Loth
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引用次数: 2

Abstract

Background: Difficulties in social communication are a defining clinical feature of autism. However, the underlying neurobiological heterogeneity has impeded targeted therapies and requires new approaches to identifying clinically relevant bio-behavioural subgroups. In the largest autism cohort to date, we comprehensively examined difficulties in facial expression recognition, a key process in social communication, as a bio-behavioural stratification biomarker, and validated them against clinical features and neurofunctional responses.

Methods: Between 255 and 488 participants aged 6-30 years with autism, typical development and/or mild intellectual disability completed the Karolinska Directed Emotional Faces task, the Reading the Mind in the Eyes Task and/or the Films Expression Task. We first examined mean-group differences on each test. Then, we used a novel intersection approach that compares two centroid and connectivity-based clustering methods to derive subgroups based on the combined performance across the three tasks. Measures and subgroups were then related to clinical features and neurofunctional differences measured using fMRI during a fearful face-matching task.

Results: We found significant mean-group differences on each expression recognition test. However, cluster analyses showed that these were driven by a low-performing autistic subgroup (~ 30% of autistic individuals who performed below 2SDs of the neurotypical mean on at least one test), while a larger subgroup (~ 70%) performed within 1SD on at least 2 tests. The low-performing subgroup also had on average significantly more social communication difficulties and lower activation in the amygdala and fusiform gyrus than the high-performing subgroup.

Limitations: Findings of autism expression recognition subgroups and their characteristics require independent replication. This is currently not possible, as there is no other existing dataset that includes all relevant measures. However, we demonstrated high internal robustness (91.6%) of findings between two clustering methods with fundamentally different assumptions, which is a critical pre-condition for independent replication.

Conclusions: We identified a subgroup of autistic individuals with expression recognition difficulties and showed that this related to clinical and neurobiological characteristics. If replicated, expression recognition may serve as bio-behavioural stratification biomarker and aid in the development of targeted interventions for a subgroup of autistic individuals.

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面部表情识别与自闭症患者的临床和神经功能差异有关。
背景:社会沟通困难是自闭症的典型临床特征。然而,潜在的神经生物学异质性阻碍了靶向治疗,需要新的方法来确定临床相关的生物行为亚群。在迄今为止最大的自闭症队列中,我们全面检查了面部表情识别的困难,这是社会交流的关键过程,作为生物行为分层生物标志物,并根据临床特征和神经功能反应验证了它们。方法:255 ~ 488名年龄在6-30岁之间的自闭症、典型发育和/或轻度智力障碍的参与者完成了卡罗林斯卡定向情绪面孔任务、通过眼睛读心任务和/或电影表达任务。我们首先检查了每个测试的平均组差异。然后,我们使用了一种新颖的交叉点方法,该方法比较了两种基于质心和基于连通性的聚类方法,从而基于三个任务的综合性能派生出子组。然后,测量和亚组与临床特征和神经功能差异相关,这些差异是在恐惧面孔匹配任务中使用功能磁共振成像测量的。结果:各表情识别测试结果组间均值差异显著。然而,聚类分析表明,这些是由低表现的自闭症亚组(约30%的自闭症个体在至少一项测试中表现低于神经典型平均值的2sd)驱动的,而更大的亚组(约70%)在至少两项测试中表现在1SD内。表现不佳的小组也比表现出色的小组平均有更多的社会沟通困难,杏仁核和梭状回的激活也较低。局限性:自闭症表达识别亚群的发现及其特征需要独立的复制。这目前是不可能的,因为没有其他现有的数据集包括所有相关的措施。然而,我们证明了具有根本不同假设的两种聚类方法之间的结果具有很高的内部稳健性(91.6%),这是独立复制的关键先决条件。结论:我们确定了一个有表情识别困难的自闭症个体亚组,并表明这与临床和神经生物学特征有关。如果复制,表达识别可以作为生物行为分层生物标志物,并有助于开发针对自闭症个体亚群的有针对性的干预措施。
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来源期刊
Molecular Autism
Molecular Autism GENETICS & HEREDITY-NEUROSCIENCES
CiteScore
12.10
自引率
1.60%
发文量
44
审稿时长
17 weeks
期刊介绍: Molecular Autism is a peer-reviewed, open access journal that publishes high-quality basic, translational and clinical research that has relevance to the etiology, pathobiology, or treatment of autism and related neurodevelopmental conditions. Research that includes integration across levels is encouraged. Molecular Autism publishes empirical studies, reviews, and brief communications.
期刊最新文献
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