Prognostic value of depression and anxiety on breast cancer recurrence and mortality: a systematic review and meta-analysis of 282,203 patients

Xuan Wang(Guangzhou University of Chinese Medicine), Neng Wang(Guangzhou University of Chinese Medicine), Linda L. D. Zhong(Hong Kong Baptist University), Shengqi Wang(Guangzhou University of Chinese Medicine), Yifeng Zheng(Guangzhou University of Chinese Medicine), Bowen Yang(Guangzhou University of Chinese Medicine), Juping Zhang(Guangzhou University of Chinese Medicine), Yi Lin(Guangzhou University of Chinese Medicine), Zhiyu Wang(Guangzhou University of Chinese Medicine)
Molecular Psychiatry
August 20, 2020
Cited by 487Open Access
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Abstract

Depression and anxiety are common comorbidities in breast cancer patients. Whether depression and anxiety are associated with breast cancer progression or mortality is unclear. Herein, based on a systematic literature search, 17 eligible studies involving 282,203 breast cancer patients were included. The results showed that depression was associated with cancer recurrence [1.24 (1.07, 1.43)], all-cause mortality [1.30 (1.23, 1.36)], and cancer-specific mortality [1.29 (1.11, 1.49)]. However, anxiety was associated with recurrence [1.17 (1.02, 1.34)] and all-cause mortality [1.13 (1.07, 1.19)] but not with cancer-specific mortality [1.05 (0.82, 1.35)]. Comorbidity of depression and anxiety is associated with all-cause mortality [1.34 (1.24, 1.45)] and cancer-specific mortality [1.45 (1.11, 1.90)]. Subgroup analyses demonstrated that clinically diagnosed depression and anxiety, being female and of younger age (<60 years), and shorter follow-up duration (≤5 years) were related to a poorer prognosis. Our study highlights the critical role of depression/anxiety as an independent factor in predicting breast cancer recurrence and survival. Further research should focus on a favorable strategy that works best to improve outcomes among breast cancer patients with mental disorders.


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