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Objective evaluation of depressive state of the youth by self-report scale combined with eye movement data |
WANG Renjie1, JIA Zhilong2, ZHU Yaqin3, ZHANG Tiantian3, ZHAN Liyan3 |
1. Department of Research,2. Department of Medical Research, Characteristics Medical Center of Chinese People's Armed Police Force, Tianjin 300162,China; 3. Yantai Special Service Recuperation Center of Chinese People's Armed Police Force, Yantai 264000,China |
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Abstract Objective To explore the objective evaluation of depressive state of the youth in a certain unit with self-report scale combined with eye movement data, and to provide reference for the implementation of psychological intervention measures. Methods The Symptom Checklist 90 (SCL-90), Self-Rating Depression Scale (SDS) and Patient Health Questionnaire-9 (PHQ-9) were used to conduct psychological assessment on 200 young people from a certain unit from April 2023 to April 2024. According to the scores, depressive states were grouped, and the youth were divided into a depression group and a normal group. The eye movement data of subjects were collected, and the eye movement features were extracted. A depression classification model was established by using machine learning algorithm tools, and the classification accuracy of the model for a certain young people's depressive state screening was verified. Results A total of 200 questionnaires were distributed, and 169 were valid, with an effective rate of 84.5%.. By comparing the test results of SCL-90 with those of soldiers and local norms, the results showed that the scores of SCL-90 were lower than those of soldiers and local norms, and the difference was statistically significant (P<0.01) . A population classification model was established by using eye movement data, and the classification accuracy of the youth depression was 79.29%. Conclusions The machine learning algorithm classification model based on the eye movement data of the subjects can initially realize the objective identification of high-risk groups of depressive states, and assist the traditional psychological assessment scale to identify depressive states.
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Received: 10 June 2024
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[1] |
闻 娟,刘晓燕,朱 熙,等.我国长远航心理主题相关文献的可视化分析 [J].海军医学杂志,2024,45(2):109-115.
|
[2] |
张月娟,戴卫民,周 喻,等.武警新兵精神障碍筛查结果分析 [J].武警医学,2013,24(7):561-563.
|
[3] |
冯正直,甘丽英,孙 辉,等.中国军人抑郁流行病学特征的研究 [J].第三军医大学学报,2013,35(20):2138-2142.
|
[4] |
黄晨玮,冯琪云,朱 睿,等. 海军某部官兵抑郁症状的潜在类别及其影响因素分析[J].海军医学杂志,2023,44(6):556-561.
|
[5] |
乔 治,姚 旻,黄燕琳,等. 中医干预军队人员阈下抑郁的研究进展 [J].武警医学,2024,35 (06):542-545.
|
[6] |
Dang J, King K M, Inzlicht M. Why are self-report and behavioral measures weakly correlated? [J].Trends Cognit Sci, 2020,24(4):267-269.
|
[7] |
Zung W W. A self-rating depression scale[J]. Arch Gen Psychiatry, 1965,12:63-70.
|
[8] |
张明园,何燕玲.精神科评定量表手册[M].湖南科学技术出版社,2016:456.
|
[9] |
Alaa A A,Rawan A,Sarah A,et al. Wearable artificial intelligenece for anxiety and depression:scoping review[J].J Med Internet Res, 2023, 19(25):e42672.
|
[10] |
柳 俊,祝 松.军队离职休养干部SCL-90调查结果分析 [J].华南国防医学杂志,2019,33(11):775-778.
|
[11] |
胡 冰,洪 素,杨天宇,等.基于SCL-90的青少年和成人抑郁症状对比分析 [J].重庆医学,2024,53(3):754-759.
|
[12] |
梁学军,甘景梨,刘立志,等.驻岛官兵睡眠质量与心理健康状况的相关研究 [J].重庆医学,2012,41(34):3632-3633.
|
[13] |
李津强,刘大鹏,李萍妹,等.某部驻岛军人心理应激状况调查研究 [J].中国健康心理学杂志,2014,22(3):371-373.
|
[14] |
王焕林,孙 剑,余海鹰,等.我国军人症状自评量表常模的建立及其结果分析 [J].中华精神科杂志,1999(1):3-5.
|
[15] |
王春花.海军不同类型官兵心理健康比较[J].社会心理科学,2015,30(7):43-47
|
[16] |
魏艳萍,崔宝今,薛 将, 等. 病人健康问卷抑郁量表在青少年中的应用 [J]. 四川精神卫生, 2023, 36: 149-155.
|
[17] |
冯 钰,任慧莲,龚 烨,等. GAD-7和PHQ-9量表在血液透析患者抑郁焦虑评估中的应用 [J]. 西南军医, 2021, 23: 343-346.
|
[18] |
成思哲,冯 博,王胤丞,等.焦虑障碍高危人群自陈式问卷作答的眼动特征分析 [J].空军军医大学学报,2022,43(2):136-140.
|
[19] |
王一澎,朱达仁,李 娜,等.眼动追踪技术在抑郁症中的诊断应用 [J].神经疾病与精神卫生,2023,23(4):258-263.
|
[20] |
黄志强,钟士江. 机器学习在抑郁症辅助诊断中的应用研究进展[J].武警医学,2024,35(9):806-812.
|
[1] |
. [J]. Med. J. Chin. Peop. Armed Poli. Forc., 2023, 34(10): 901-905. |
|
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