Skinner Adam, Li Isabel, Varidel Mathew, Iorfino Frank, Occhipinti Jo-An, Song Yun Ju Christine, Chong Min K, Hickie Ian B
Brain and Mind Centre, Faculty of Medicine and Health, University of Sydney, Camperdown, NSW 2006, Australia.
Computer Simulation and Advanced Research Technologies (CSART), Paddington, NSW 2021, Australia.
PNAS Nexus. 2025 Jul 22;4(7):pgaf209. doi: 10.1093/pnasnexus/pgaf209. eCollection 2025 Jul.
Mental disorders contribute substantially to the global burden of disease, accounting for up to 16.5% of all years of healthy life lost due to disability and premature mortality. Epidemiological evidence indicates that mental health problems are associated with a diverse range of demographic, social, and economic factors, referred to collectively as social determinants; however, the causal mechanisms underlying these associations are widely recognized to be complex and are only incompletely understood. Here, we use recently developed structure learning methods for Bayesian networks and high-quality panel data from Australia to construct a provisional dynamic network model of the causal dependencies connecting a broad selection of social determinants and mental health. This provisional causal model identifies a heterogeneous set of proximate risk-modifying factors (direct causes), including subjective financial well-being, community connectedness, loneliness, and general health, that mediate the individual-level mental health effects of all remaining variables included in our analyses. Simulation analyses indicate that ideal preventive interventions targeting people's sense of financial security, local community engagement, and loneliness have the greatest capacity to improve population mental health outcomes, while significant reductions in the prevalence of mental health problems may also be achieved by promoting physical well-being and participation in volunteer or charity work and paid employment. We conclude that policies such as a Job Guarantee that are capable of simultaneously altering multiple adverse (or protective) social and economic exposures are likely to be critical in effectively addressing the substantial personal and societal costs of mental health-related disability.
精神障碍在全球疾病负担中占相当大的比例,因残疾和过早死亡而损失的健康生命年数中,精神障碍占比高达16.5%。流行病学证据表明,心理健康问题与各种各样的人口、社会和经济因素相关,这些因素统称为社会决定因素;然而,人们普遍认为这些关联背后的因果机制很复杂,目前仅得到部分理解。在此,我们运用最近为贝叶斯网络开发的结构学习方法以及来自澳大利亚的高质量面板数据,构建一个临时动态网络模型,以呈现连接广泛选择的社会决定因素和心理健康的因果依存关系。这个临时因果模型识别出一组异质性的直接风险调节因素(直接原因),包括主观财务状况、社区联系、孤独感和总体健康状况,这些因素介导了我们分析中纳入的所有其余变量对个体心理健康的影响。模拟分析表明,针对人们的财务安全感、当地社区参与度和孤独感进行理想的预防性干预,最有能力改善人群心理健康结果,同时,通过促进身体健康以及参与志愿或慈善工作和有偿就业,也可能大幅降低心理健康问题的患病率。我们得出结论,诸如就业保障之类的政策,能够同时改变多种不利(或保护性)社会和经济因素,这对于有效应对与心理健康相关残疾所带来的巨大个人和社会成本可能至关重要。