Distinguishing Clinical and Genetic Risk of Suicidal Ideation from Attempts to Inform Prevention

区分自杀意念的临床和遗传风险与告知预防的尝试

基本信息

  • 批准号:
    10516039
  • 负责人:
  • 金额:
    $ 54.37万
  • 依托单位:
  • 依托单位国家:
    美国
  • 项目类别:
  • 财政年份:
    2019
  • 资助国家:
    美国
  • 起止时间:
    2019-12-01 至 2024-10-31
  • 项目状态:
    已结题

项目摘要

One hundred and twenty-three Americans die by suicide every day, and 800,000 individuals die from suicide globally every year. Five times as many people attempt suicide and 10-25 times as many contemplate suicide every year. Rates of suicidal thoughts or ideation and suicidal behaviors are increasing. Suicidal ideation alone causes mental and physical harm and is associated with worsened statuses of other illnesses. Suicidal ideation is often documented by clinical providers in their notes but has been shown to only be included in diagnostic or billing codes 3% of the time. Historical suicide attempts are also under- captured by billing codes alone. Improving identification of those with suicidal ideation and attempts might enhance prevention through earlier contact with those at risk. A growing literature shows that clinical predictive models with longitudinal electronic health records (EHR) can predict suicide attempts with good performance. These models have also been used by groups like ours to improve power of large-scale genetic analyses of suicide attempt risk. The investigators used their validated models to identify the signal for suicide attempt, a “phenotype”, to run genetic analyses showing suicide attempt risk is 4% heritable. This team also showed that suicide attempt risk was significantly genetically correlated with depressive symptoms, neurotic symptoms, and schizophrenia. The investigators propose to validate a phenotype of suicidal ideation and to improve their existing phenotypes of attempt risk to power large-scale genetic analyses across two major biobanks, Vanderbilt’s BioVU and the UK Biobank. They will use natural language processing (NLP) and analytics on Vanderbilt’s EHR to develop and test a phenotype of suicidal ideation. They will use NLP to improve capture of cases of suicide attempt to refine existing algorithms. They will apply these phenotypes at scale to BioVU. Their Stanford team members will use patient-reported suicidal ideation histories in another major biobank, UK Biobank, to independently run genetic analyses of suicidal ideation risk in a different population. They will further analyze clinical and genetic risk factors to better understand who will transition from suicidal ideation to suicide attempt. The project combines expertise in clinical informatics, machine learning, and large-scale genomics, as well as domain-specific expertise in suicide risk research. Spanning two major biobanks across two countries, the algorithms and methods developed have maximal portability, facilitating next-step investigations. Successful identification of suicidal ideation and attempt risk might inform clinical prevention. Better understanding of risk factors that predict who will proceed from suicidal ideation to suicidal behaviors would help allocate prevention resources to those who need them most.
每天有123名美国人死于自杀,80万人死于 全球每年自杀。自杀未遂的人数是自杀未遂人数的5倍, 每年都在考虑自杀。自杀想法或自杀行为的发生率正在上升。 自杀意念本身会造成精神和身体伤害,并与其他疾病的恶化有关。 疾病。自杀意念经常被临床提供者记录在他们的笔记中,但已被证明, 仅在3%的情况下包含在诊断或计费代码中。历史上的自杀企图也在- 单凭账单代码就能捕捉到改善对那些有自杀意念和企图的人的识别, 通过尽早接触高危人群加强预防。 越来越多的文献表明,具有纵向电子健康记录的临床预测模型 (EHR)可以很好地预测自杀企图。这些模型也被一些团体使用 就像我们的研究一样,来提高对自杀企图风险进行大规模基因分析的能力。研究人员使用 他们验证的模型,以确定自杀企图的信号,一种“表型”, 显示自杀未遂的风险有4%是遗传的该研究小组还表明,自杀企图的风险是 与抑郁症状、神经症症状和精神分裂症有显著的遗传相关性。 研究人员建议验证自杀意念的表型,并改善他们现有的 在两个主要的生物库中,范德比尔特的 BioVU和英国生物银行。他们将在范德比尔特的 EHR开发和测试自杀意念的表型。他们将使用NLP来改善对以下情况的捕获: 试图完善现有算法自杀。他们将把这些表型大规模应用于BioVU。他们的 斯坦福大学的研究小组成员将在英国另一个主要的生物样本库中使用患者报告的自杀意念史 生物银行,独立运行不同人群自杀意念风险的遗传分析。他们将 进一步分析临床和遗传风险因素,以更好地了解谁将从自杀意念转变为 自杀未遂 该项目结合了临床信息学、机器学习和大规模基因组学方面的专业知识, 以及自杀风险研究领域的专业知识。横跨两个主要的生物库 国家,开发的算法和方法具有最大的可移植性,便于下一步 调查事务所成功识别自杀意念和企图风险可能为临床预防提供信息。 更好地了解预测谁将从自杀意念发展到自杀行为的风险因素 将有助于将预防资源分配给最需要的人。

项目成果

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Douglas Ruderfer其他文献

Douglas Ruderfer的其他文献

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{{ truncateString('Douglas Ruderfer', 18)}}的其他基金

Distinguishing Clinical and Genetic Risk of Suicidal Ideation from Attempts to Inform Prevention
区分自杀意念的临床和遗传风险与告知预防的尝试
  • 批准号:
    10061648
  • 财政年份:
    2019
  • 资助金额:
    $ 54.37万
  • 项目类别:
Distinguishing Clinical and Genetic Risk of Suicidal Ideation from Attempts to Inform Prevention
区分自杀意念的临床和遗传风险与告知预防的尝试
  • 批准号:
    10292968
  • 财政年份:
    2019
  • 资助金额:
    $ 54.37万
  • 项目类别:
2/2 Leveraging electronic health records for pharmacogenomics of psychiatric diorders
2/2 利用电子健康记录进行精神疾病的药物基因组学研究
  • 批准号:
    10326355
  • 财政年份:
    2019
  • 资助金额:
    $ 54.37万
  • 项目类别:
Transcriptional consequences of structural variation in brains of schizophrenia patients
精神分裂症患者大脑结构变异的转录后果
  • 批准号:
    9217266
  • 财政年份:
    2016
  • 资助金额:
    $ 54.37万
  • 项目类别:

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