Division of Psychiatry, Centre for Clinical Brain Sciences, University of Edinburgh, Kennedy Tower, Royal Edinburgh Hospital, Morningside Park, Edinburgh EH10 5HF, UK.
Institute for Adaptive and Neural Computation, School of Informatics, University of Edinburgh, 10 Crichton Street, Edinburgh EH8 9AB, UK.
Psychol Med. 2022 Jul;52(9):1784-1792. doi: 10.1017/S0033291720003608. Epub 2020 Nov 9.
Depression is a challenge to diagnose reliably and the current gold standard for trials of DSM-5 has been in agreement between two or more medical specialists. Research studies aiming to objectively predict depression have typically used brain scanning. Less expensive methods from cognitive neuroscience may allow quicker and more reliable diagnoses, and contribute to reducing the costs of managing the condition. In the current study we aimed to develop a novel inexpensive system for detecting elevated symptoms of depression based on tracking face and eye movements during the performance of cognitive tasks.
In total, 75 participants performed two novel cognitive tasks with verbal affective distraction elements while their face and eye movements were recorded using inexpensive cameras. Data from 48 participants (mean age 25.5 years, standard deviation of 6.1 years, 25 with elevated symptoms of depression) passed quality control and were included in a case-control classification analysis with machine learning.
Classification accuracy using cross-validation (within-study replication) reached 79% (sensitivity 76%, specificity 82%), when face and eye movement measures were combined. Symptomatic participants were characterised by less intense mouth and eyelid movements during different stages of the two tasks, and by differences in frequencies and durations of fixations on affectively salient distraction words.
Elevated symptoms of depression can be detected with face and eye movement tracking during the cognitive performance, with a close to clinically-relevant accuracy (~80%). Future studies should validate these results in larger samples and in clinical populations.
抑郁症的可靠诊断颇具挑战,目前 DSM-5 试验的金标准是两位或更多医学专家之间的一致意见。旨在客观预测抑郁症的研究通常使用脑部扫描。认知神经科学中的成本较低的方法可能会允许更快、更可靠的诊断,并有助于降低管理该病症的成本。在当前研究中,我们旨在开发一种新颖的、廉价的系统,基于在执行认知任务期间跟踪面部和眼部运动,以检测抑郁症状升高。
共有 75 名参与者在进行具有言语情感分心元素的两项新颖认知任务的同时,使用廉价摄像机记录他们的面部和眼部运动。48 名参与者(平均年龄 25.5 岁,标准差为 6.1 岁,25 名参与者有抑郁症状升高)的数据通过质量控制,纳入具有机器学习的病例对照分类分析。
使用交叉验证(内部研究复制)的分类准确性达到 79%(敏感性 76%,特异性 82%),当面部和眼部运动测量值结合使用时。症状参与者在两项任务的不同阶段,口部和眼部运动的强度较小,在对情感显著干扰词的注视频率和持续时间上存在差异。
在认知表现期间,通过面部和眼部运动跟踪,可以以接近临床相关的准确性(约 80%)检测到抑郁症状升高。未来的研究应该在更大的样本和临床人群中验证这些结果。