scholarly journals Prediction of depression symptoms in individual subjects with face and eye movement tracking

2020 ◽  
pp. 1-9
Author(s):  
Aleks Stolicyn ◽  
J. Douglas Steele ◽  
Peggy Seriès

Abstract Background 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. Methods 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. Results 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. Conclusions 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.

2016 ◽  
Vol 12 (1) ◽  
pp. 24-34 ◽  
Author(s):  
I.Yu. Vladimirov ◽  
A.V. Chistopolskaya

TThe paper focuses on the issue of research methods in studying insight. Since the process of insight is quite difficult to verbalize, researchers are presented with the methodological challenge of its objectifica- tion. One of the possible methods is the analysis of gnostic actions as components of a single integrated system of perceptive and thinking activity aimed at problem solving. The paper analyzes past and present periods in the explorations of insight with this method and suggests that eye tracking in problem solving is the most perspective technology. It reviews the studies of G. Knoblich, J. Ellis, E, Grant and M. Spivey, L. Thomas and A. Lleras, D. Kahneman, J.T. Wang and others. The paper compares various characteristics of eye movements and their content and discusses perspectives for the study on insight using the method of eye movement tracking, that is, testing the theoretical assumptions concerning the mechanisms of insight in problem solving and revealing the processes underlying insight.


2021 ◽  
Vol 1802 (4) ◽  
pp. 042066
Author(s):  
Zhaowei Li ◽  
Peiyuan Guo ◽  
Chen Song

2003 ◽  
Vol 56 (6) ◽  
pp. 1053-1077 ◽  
Author(s):  
Linden J. Ball ◽  
Erica J. Lucas ◽  
Jeremy N. V. Miles ◽  
Alastair G. Gale

Three experiments are reported that used eye-movement tracking to investigate the inspection-time effect predicted by Evans’ (1996) heuristic-analytic account of the Wason selection task. Evans’ account proposes that card selections are based on the operation of relevance-determining heuristics, whilst analytic processing only rationalizes selections. As such, longer inspection times should be associated with selected cards (which are subjected to rationalization) than with rejected cards. Evidence for this effect has been provided by Evans (1996) using computer- presented selection tasks and instructions for participants to indicate (with a mouse pointer) cards under consideration. Roberts (1998b) has argued that mouse pointing gives rise to artefactual support for Evans’ predictions because of biases associated with the task format and the use of mouse pointing. We eradicated all sources of artefact by combining careful task constructions with eye-movement tracking to measure directly on-line attentional processing. All three experiments produced good evidence for the robustness of the inspection-time effect, supporting the predictions of the heuristic-analytic account.


2018 ◽  
Vol 18 (6) ◽  
pp. 2592-2598 ◽  
Author(s):  
Zheng-Nan Zhao ◽  
Ju Lin ◽  
Jie Zhang ◽  
Yang Yu ◽  
Bo Yuan ◽  
...  

Author(s):  
Umair Akram ◽  
Jason G. Ellis ◽  
Glhenda Cau ◽  
Frayer Hershaw ◽  
Ashlieen Rajenthran ◽  
...  

AbstractPrevious research highlights the potential benefits of engaging with depressive internet memes for those experiencing symptoms of depression. This study aimed to determine whether: compared to non-depressed controls, individuals experiencing depressive symptoms were quicker to orient and maintain overall attention for internet memes depicting depressive content relative to neutral memes. N = 21 individuals were grouped based on the severity of reported depression symptoms using the PhQ-9. Specifically, a score of:  ≤ 4 denoted the control group; and  ≥ 15 the depressive symptoms group. Participants viewed a series of meme pairs depicting depressive and neutral memes for periods of 4000 ms. Data for the first fixation onset and duration, total fixation count and total fixation and gaze duration of eye-movements were recorded. A significant group x meme-type interaction indicated that participants with depressive symptoms displayed significantly more fixations on depressive rather than neutral memes. These outcomes provide suggestive evidence for the notion that depressive symptoms are associated with an attentional bias towards socio-emotionally salient stimuli.


Sign in / Sign up

Export Citation Format

Share Document