在精神科急诊环境中利用多基因评分加强自杀风险预测:前瞻性研究。

Younga Heather Lee, Yingzhe Zhang, Chris J Kennedy, Travis T Mallard, Zhaowen Liu, Phuong Linh Vu, Yen-Chen Anne Feng, Tian Ge, Maria V Petukhova, Ronald C Kessler, Matthew K Nock, Jordan W Smoller
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引用次数: 0

摘要

背景:尽管人们对多基因风险评分(PRSs)的临床转化越来越感兴趣,但基因组信息能在多大程度上增强对精神疾病结果的预测,而不仅仅局限于临床就诊时收集的数据,这一点仍不确定:本研究旨在评估将多基因风险评分纳入根据电子健康记录(EHR)和患者报告调查对急诊科住院患者进行培训的自杀风险预测模型的临床实用性:研究参与者来自马萨诸塞州总医院的精神科急诊室。共有 333 名欧洲血统的成年患者,他们通过参与麻省总医院布里格姆生物库(Mass General Brigham Biobank)获得了高质量的基因型数据。在 2015 年 2 月 4 日至 2017 年 3 月 13 日期间入组的前瞻性队列中,多个神经精神疾病 PRS 被添加到先前验证的自杀预测模型中。数据分析于 2022 年 7 月 11 日至 2023 年 8 月 31 日进行。自杀未遂的定义使用了纵向电子病历中的诊断代码,并结合了 6 个月的随访调查。自杀未遂的临床风险评分是通过使用基于电子病历的自杀风险评分和简短调查训练的集合模型计算得出的,随后用于定义基线模型。我们使用贝叶斯多基因评分法为欧洲血统的参与者生成了抑郁症、双相情感障碍、精神分裂症、自杀未遂和外化特征的 PRS。使用接收者运算曲线下面积(AUC)、精确度-召回曲线下面积和阳性预测值对模型性能进行评估:在 333 名患者(178 人,53.5% 为男性;平均年龄 36.8 岁,标准差 13.6 岁;333 人,100% 为非西班牙裔;324 人,97.3% 自称白人)中,有 28 人(8.4%)在 6 个月内尝试过自杀。与基线模型(AUC 0.84,95% Cl 0.70-0.98)相比,在基线模型中加入精神分裂症 PRS 或所有 PRS 可获得最高的区分度(AUC 0.86,95% CI 0.73-0.99)。然而,模型性能的提高在统计学上并不显著:在这项研究中,将基因组信息纳入自杀未遂的临床预测模型并没有改善患者的风险分层。要验证将精神疾病 PRS 纳入临床预测模型是否能提高自杀未遂风险患者的分层能力,还需要包括更多参与者的更大规模的研究。
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Enhancing Suicide Risk Prediction With Polygenic Scores in Psychiatric Emergency Settings: Prospective Study.

Background: Despite growing interest in the clinical translation of polygenic risk scores (PRSs), it remains uncertain to what extent genomic information can enhance the prediction of psychiatric outcomes beyond the data collected during clinical visits alone.

Objective: This study aimed to assess the clinical utility of incorporating PRSs into a suicide risk prediction model trained on electronic health records (EHRs) and patient-reported surveys among patients admitted to the emergency department.

Methods: Study participants were recruited from the psychiatric emergency department at Massachusetts General Hospital. There were 333 adult patients of European ancestry who had high-quality genotype data available through their participation in the Mass General Brigham Biobank. Multiple neuropsychiatric PRSs were added to a previously validated suicide prediction model in a prospective cohort enrolled between February 4, 2015, and March 13, 2017. Data analysis was performed from July 11, 2022, to August 31, 2023. Suicide attempt was defined using diagnostic codes from longitudinal EHRs combined with 6-month follow-up surveys. The clinical risk score for suicide attempt was calculated from an ensemble model trained using an EHR-based suicide risk score and a brief survey, and it was subsequently used to define the baseline model. We generated PRSs for depression, bipolar disorder, schizophrenia, suicide attempt, and externalizing traits using a Bayesian polygenic scoring method for European ancestry participants. Model performance was evaluated using area under the receiver operator curve (AUC), area under the precision-recall curve, and positive predictive values.

Results: Of the 333 patients (n=178, 53.5% male; mean age 36.8, SD 13.6 years; n=333, 100% non-Hispanic and n=324, 97.3% self-reported White), 28 (8.4%) had a suicide attempt within 6 months. Adding either the schizophrenia PRS or all PRSs to the baseline model resulted in the numerically highest discrimination (AUC 0.86, 95% CI 0.73-0.99) compared to the baseline model (AUC 0.84, 95% Cl 0.70-0.98). However, the improvement in model performance was not statistically significant.

Conclusions: In this study, incorporating genomic information into clinical prediction models for suicide attempt did not improve patient risk stratification. Larger studies that include more diverse participants are required to validate whether the inclusion of psychiatric PRSs in clinical prediction models can enhance the stratification of patients at risk of suicide attempts.

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