Journal of Capital Medical University
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Ren Yanping1,2, Wu Han1,2, Wang Wen1,2, Jin Wenqing1,2, Li Rena1,2*
Received:
2023-11-09
Online:
2024-03-22
Published:
2024-03-22
Supported by:
CLC Number:
Ren Yanping, Wu Han, Wang Wen, Jin Wenqing, Li Rena. Research progress in the mechanism and prediction of suicide attempt in patients with depression[J]. Journal of Capital Medical University, doi: 10. 3969/ j. issn. 1006-7795. 2024. 01. 015.
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