Uncovering the heterogeneous effects of depression on suicide risk conditioned by linguistic features: A double machine learning approach

Depression has been identified as a risk factor for suicide, yet limited evidence has elucidated the underlying pathways linking depression to subsequent suicide risk. Therefore, we aimed to examine the psychological mechanisms that connect depression to suicide risk via linguistic characteristics o...

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Published in:Computers in Human Behavior
Main Authors: Li, Sijia, Pan, Wei, Yip, Paul Siu Fai, Wang, Jing, Zhou, Wenwei, Zhu, Tingshao
Format: Report
Language:English
Published: 2023
Subjects:
DML
Online Access:http://ir.psych.ac.cn/handle/311026/46599
https://doi.org/10.1016/j.chb.2023.108080
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spelling ftchacscienpsych:oai:ir.psych.ac.cn:311026/46599 2024-02-04T10:00:02+01:00 Uncovering the heterogeneous effects of depression on suicide risk conditioned by linguistic features: A double machine learning approach Li, Sijia Pan, Wei Yip, Paul Siu Fai Wang, Jing Zhou, Wenwei Zhu, Tingshao 2023 http://ir.psych.ac.cn/handle/311026/46599 https://doi.org/10.1016/j.chb.2023.108080 英语 eng 10.1016/j.chb.2023.108080 http://ir.psych.ac.cn/handle/311026/46599 doi:10.1016/j.chb.2023.108080 Depression Suicide risk Linguistic features Double machine learning Weibo 期刊论文 2023 ftchacscienpsych https://doi.org/10.1016/j.chb.2023.108080 2024-01-05T01:15:39Z Depression has been identified as a risk factor for suicide, yet limited evidence has elucidated the underlying pathways linking depression to subsequent suicide risk. Therefore, we aimed to examine the psychological mechanisms that connect depression to suicide risk via linguistic characteristics on Weibo. We sampled 487,251 posts from 3196 users who belong to the depression super-topic community (DSTC) on Sina Weibo as the depression group, and 357,939 posts from 5167 active users as the control group. We employed the double machine learning method (DML) to estimate the impact of depression on suicide risk, and interpreted the pathways from depression to suicide risk using SHapley Additive exPlanations (SHAP) values and tree interpreters. The results indicated an 18% higher likelihood of suicide risk in the depression group compared to people without depression. The SHAP values further revealed that Exclusive (M = 0.029) was the most critical linguistic feature. Meanwhile, the three-depth tree interpreter illustrated that the high suicide risk subgroup of the depression group (N = 1196, CATE = 0.32 ± 0.04, 95%CI [0.20, 0.43]) was predicted by higher usage of Exclusive (>0.59) and Health (>-0.10). DML revealed pathways linking depression to suicide risk. The visualized tree interpreter showed cognitive complexity and physical distress might be positively associated with suicide risk in depressed populations. These findings have invigorated further investigation to elucidate the relationship between depression and suicide risk. Understanding the underlying mechanisms serves as a basis for future research on suicide prevention and treatment for individuals with depression. Report DML Institute of Psychology: PSYCH OpenIR (Chinese Academy Sciences) Computers in Human Behavior 152 108080
institution Open Polar
collection Institute of Psychology: PSYCH OpenIR (Chinese Academy Sciences)
op_collection_id ftchacscienpsych
language English
topic Depression
Suicide risk
Linguistic features
Double machine learning
Weibo
spellingShingle Depression
Suicide risk
Linguistic features
Double machine learning
Weibo
Li, Sijia
Pan, Wei
Yip, Paul Siu Fai
Wang, Jing
Zhou, Wenwei
Zhu, Tingshao
Uncovering the heterogeneous effects of depression on suicide risk conditioned by linguistic features: A double machine learning approach
topic_facet Depression
Suicide risk
Linguistic features
Double machine learning
Weibo
description Depression has been identified as a risk factor for suicide, yet limited evidence has elucidated the underlying pathways linking depression to subsequent suicide risk. Therefore, we aimed to examine the psychological mechanisms that connect depression to suicide risk via linguistic characteristics on Weibo. We sampled 487,251 posts from 3196 users who belong to the depression super-topic community (DSTC) on Sina Weibo as the depression group, and 357,939 posts from 5167 active users as the control group. We employed the double machine learning method (DML) to estimate the impact of depression on suicide risk, and interpreted the pathways from depression to suicide risk using SHapley Additive exPlanations (SHAP) values and tree interpreters. The results indicated an 18% higher likelihood of suicide risk in the depression group compared to people without depression. The SHAP values further revealed that Exclusive (M = 0.029) was the most critical linguistic feature. Meanwhile, the three-depth tree interpreter illustrated that the high suicide risk subgroup of the depression group (N = 1196, CATE = 0.32 ± 0.04, 95%CI [0.20, 0.43]) was predicted by higher usage of Exclusive (>0.59) and Health (>-0.10). DML revealed pathways linking depression to suicide risk. The visualized tree interpreter showed cognitive complexity and physical distress might be positively associated with suicide risk in depressed populations. These findings have invigorated further investigation to elucidate the relationship between depression and suicide risk. Understanding the underlying mechanisms serves as a basis for future research on suicide prevention and treatment for individuals with depression.
format Report
author Li, Sijia
Pan, Wei
Yip, Paul Siu Fai
Wang, Jing
Zhou, Wenwei
Zhu, Tingshao
author_facet Li, Sijia
Pan, Wei
Yip, Paul Siu Fai
Wang, Jing
Zhou, Wenwei
Zhu, Tingshao
author_sort Li, Sijia
title Uncovering the heterogeneous effects of depression on suicide risk conditioned by linguistic features: A double machine learning approach
title_short Uncovering the heterogeneous effects of depression on suicide risk conditioned by linguistic features: A double machine learning approach
title_full Uncovering the heterogeneous effects of depression on suicide risk conditioned by linguistic features: A double machine learning approach
title_fullStr Uncovering the heterogeneous effects of depression on suicide risk conditioned by linguistic features: A double machine learning approach
title_full_unstemmed Uncovering the heterogeneous effects of depression on suicide risk conditioned by linguistic features: A double machine learning approach
title_sort uncovering the heterogeneous effects of depression on suicide risk conditioned by linguistic features: a double machine learning approach
publishDate 2023
url http://ir.psych.ac.cn/handle/311026/46599
https://doi.org/10.1016/j.chb.2023.108080
genre DML
genre_facet DML
op_relation 10.1016/j.chb.2023.108080
http://ir.psych.ac.cn/handle/311026/46599
doi:10.1016/j.chb.2023.108080
op_doi https://doi.org/10.1016/j.chb.2023.108080
container_title Computers in Human Behavior
container_volume 152
container_start_page 108080
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