利用英国生物银行的血液代谢物和社会特征数据,基于机器学习的焦虑症预测

IF 3.5 Q2 IMMUNOLOGY
Annabel Smith , Jack J. Miller , Daniel C. Anthony , Daniel E. Radford-Smith
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引用次数: 0

摘要

焦虑症是最普遍的精神健康障碍类型,其特征是过度恐惧和担忧。尽管影响了四分之一的人在他们的一生中,我们对焦虑症的潜在病理生理的理解仍然存在差距,这限制了新的治疗选择的发展。探索基于血液的焦虑障碍生物标志物提供了预测普通人群临床显著焦虑风险的潜力,增加了我们对焦虑病理生理学的理解,并揭示了预防性治疗的选择。在这里,我们使用社会心理变量结合血液和尿液生物标志物,在英国生物银行报道,我们试图预测未来的焦虑发作。机器学习准确预测(ROC AUC: ~ 0.83) icd -10编码的焦虑诊断,在血液采样后长达5年(平均3.5年),与终生无焦虑对照。对血液生化指标的分析表明,焦虑的个体比对照组更贫血,表现出更高水平的全身炎症标志物。然而,在严格匹配广泛的社会心理协变量的个体子集中,单独的血液生物标志物并不能预测对焦虑症的恢复力或易感性(ROC AUC: ~ 0.50)。总的来说,我们证明了生物和社会心理风险因素的整合是筛查和预测普通人群中焦虑障碍发病的有效工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-based prediction of anxiety disorders using blood metabolite and social trait data from the UK Biobank
Anxiety disorders are the most prevalent type of mental health disorders and are characterised by excessive fear and worry. Despite affecting one in four individuals within their lifetime, there remains a gap in our understanding regarding the underlying pathophysiology of anxiety disorders, which limits the development of novel treatment options. Exploring blood-based biomarkers of anxiety disorder offers the potential to predict the risk of clinically significant anxiety in the general population, increase our understanding of anxiety pathophysiology, and to reveal options for preventative treatment. Here, using psychosocial variables in combination with blood and urine biomarkers, reported in the UK Biobank, we sought to predict future anxiety onset. Machine learning accurately predicted (ROC AUC: ∼0.83) ICD-10-coded anxiety diagnoses up to 5 years (mean 3.5 years) after blood sampling, against lifetime anxiety-free controls. Analysis of the blood biochemistry measures indicated that anxious individuals were more anaemic and exhibited higher levels of markers of systemic inflammation than controls. However, blood biomarkers alone were not predictive of resilience or susceptibility to anxiety disorders in a subset of individuals rigorously matched for a wide range of psychosocial covariates (ROC AUC: ∼0.50). Overall, we demonstrate that the integration of biological and psychosocial risk factors is an effective tool to screen for and predict anxiety disorder onset in the general population.
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来源期刊
Brain, behavior, & immunity - health
Brain, behavior, & immunity - health Biological Psychiatry, Behavioral Neuroscience
CiteScore
8.50
自引率
0.00%
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0
审稿时长
97 days
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