Dotzer Maria, Kachel Ulrike, Huhsmann Jan, Huscher Hendrik, Raveling Nils, Kugelmann Klaus, Blank Stefanie, Neitzel Isabel, Buschermöhle Michael, von Polier Georg G, Radeloff Daniel
Department of Child and Adolescent Psychiatry, Psychotherapy and Psychosomatics, University Hospital Leipzig, Leipzig, Germany.
KIZMO GmbH - Clinical Innovation Center for Medical Technology, Oldenburg, Germany.
Front Psychiatry. 2025 May 1;16:1497583. doi: 10.3389/fpsyt.2025.1497583. eCollection 2025.
The diagnosis of autism spectrum disorder (ASD) is resource-intensive and associated with long waiting times. Digital screenings using facial expression recognition (FER) are a promising approach to accelerate the diagnostic process while increasing its sensitivity and specificity. The aim of this study is to examine whether the identification of smile events using FER in an autism diagnosis utilisation population is reliable.
From video recordings of children undergoing the Autism Diagnostic Observation Schedule (ADOS-2) due to suspected ASD, sequences showing smile and non-smile events were identified. It is being investigated whether the FER reliably recognizes smile events and corresponds to a human rating.
The FER based on the facial action unit mouthSmile accurately identifies smile events with a sensitivity of 96.43% and a specificity of 96.08%. A very high agreement with human raters (κ = 0.918) was achieved.
This study demonstrates that smile events can in principle be identified using FER in a clinical utilisation population of children with suspected autism. Further studies are required to generalise the results.
自闭症谱系障碍(ASD)的诊断资源消耗大且等待时间长。使用面部表情识别(FER)的数字筛查是一种有前景的方法,可加快诊断过程,同时提高其敏感性和特异性。本研究的目的是检验在自闭症诊断应用人群中使用FER识别微笑事件是否可靠。
从因疑似ASD而接受自闭症诊断观察量表(ADOS-2)检查的儿童的视频记录中,识别出显示微笑和非微笑事件的序列。正在研究FER是否能可靠地识别微笑事件并与人工评分相符。
基于面部动作单元嘴角上扬的FER能准确识别微笑事件,敏感性为96.43%,特异性为96.08%。与人工评分者的一致性非常高(κ = 0.918)。
本研究表明,原则上在疑似自闭症儿童的临床应用人群中可使用FER识别微笑事件。需要进一步研究以推广这些结果。