BDNF-related mutations in major depressive disorder: a systematic review

重性抑郁障碍 脑源性神经营养因子 神经营养因子 背景(考古学) 心理学 纳入和排除标准 临床心理学 神经可塑性 肿瘤科 生物信息学 神经科学 精神科 医学 内科学 心情 生物 替代医学 受体 古生物学 病理
作者
Johannes Hartig,B. Nemeş
出处
期刊:Acta Neuropsychiatrica [Cambridge University Press]
卷期号:35 (1): 5-26 被引量:8
标识
DOI:10.1017/neu.2022.22
摘要

Abstract Objective: A better understanding of the genetic, molecular and cellular mechanisms of brain-derived neurotrophic factor (BDNF) and its association with neuroplasticity could play a pivotal role in finding future therapeutic targets for novel drugs in major depressive disorder (MDD). Because there are conflicting results regarding the exact role of BDNF polymorphisms in MDD still, we set out to systematically review the current evidence regarding BDNF-related mutations in MDD. Methods: We conducted a keyword-guided search of the PubMed and Embase databases, using ‘BDNF’ or ‘brain-derived neurotrophic factor’ and ‘major depressive disorder’ and ’single-nucleotide polymorphism’. We included all publications in line with our exclusion and inclusion criteria that focused on BDNF-related mutations in the context of MDD. Results: Our search yielded 427 records in total. After screening and application of our eligibility criteria, 71 studies were included in final analysis. According to present overall scientific data, there is a possibly major pathophysiological role for BDNF neurotrophic systems to play in MDD. However, on the one hand, the synthesis of evidence makes clear that likely no overall association of BDNF-related mutations with MDD exists. On the other hand, it can be appreciated that solidifying evidence emerged on specific significant sub-conditions and stratifications based on various demographic, clinico-phenotypical and neuromorphological variables. Conclusions: Further research should elucidate specific BDNF-MDD associations based on demographic, clinico-phenotypical and neuromorphological variables. Furthermore, biomarker approaches, specifically combinatory ones, involving BDNF should be further investigated.
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