Department of Biomedical Informatics, Vanderbilt University Medical Center, Nashville, Tennessee.
Department of Medicine, Vanderbilt University Medical Center, Nashville, Tennessee.
JAMA Netw Open. 2021 Mar 1;4(3):e211428. doi: 10.1001/jamanetworkopen.2021.1428.
Numerous prognostic models of suicide risk have been published, but few have been implemented outside of integrated managed care systems.
To evaluate performance of a suicide attempt risk prediction model implemented in a vendor-supplied electronic health record to predict subsequent (1) suicidal ideation and (2) suicide attempt.
DESIGN, SETTING, AND PARTICIPANTS: This observational cohort study evaluated implementation of a suicide attempt prediction model in live clinical systems without alerting. The cohort comprised patients seen for any reason in adult inpatient, emergency department, and ambulatory surgery settings at an academic medical center in the mid-South from June 2019 to April 2020.
Primary measures assessed external, prospective, and concurrent validity. Manual medical record validation of coded suicide attempts confirmed incident behaviors with intent to die. Subgroup analyses were performed based on demographic characteristics, relevant clinical context/setting, and presence or absence of universal screening. Performance was evaluated using discrimination (number needed to screen, C statistics, positive/negative predictive values) and calibration (Spiegelhalter z statistic). Recalibration was performed with logistic calibration.
The system generated 115 905 predictions for 77 973 patients (42 490 [54%] men, 35 404 [45%] women, 60 586 [78%] White, 12 620 [16%] Black). Numbers needed to screen in highest risk quantiles were 23 and 271 for suicidal ideation and attempt, respectively. Performance was maintained across demographic subgroups. Numbers needed to screen for suicide attempt by sex were 256 for men and 323 for women; and by race: 373, 176, and 407 for White, Black, and non-White/non-Black patients, respectively. Model C statistics were, across the health system: 0.836 (95% CI, 0.836-0.837); adult hospital: 0.77 (95% CI, 0.77-0.772); emergency department: 0.778 (95% CI, 0.777-0.778); psychiatry inpatient settings: 0.634 (95% CI, 0.633-0.636). Predictions were initially miscalibrated (Spiegelhalter z = -3.1; P = .001) with improvement after recalibration (Spiegelhalter z = 1.1; P = .26).
In this study, this real-time predictive model of suicide attempt risk showed reasonable numbers needed to screen in nonpsychiatric specialty settings in a large clinical system. Assuming that research-valid models will translate without performing this type of analysis risks inaccuracy in clinical practice, misclassification of risk, wasted effort, and missed opportunity to correct and prevent such problems. The next step is careful pairing with low-cost, low-harm preventive strategies in a pragmatic trial of effectiveness in preventing future suicidality.
已经发表了许多自杀风险的预后模型,但很少有模型在综合管理式医疗系统之外实施。
评估在供应商提供的电子健康记录中实施的自杀未遂风险预测模型的性能,以预测随后的(1)自杀意念和(2)自杀未遂。
设计、地点和参与者:这项观察性队列研究评估了自杀未遂预测模型在没有警报的实时临床系统中的实施情况。该队列包括 2019 年 6 月至 2020 年 4 月期间在中南部一所学术医疗中心的成人住院、急诊和门诊手术环境中因任何原因就诊的患者。
主要评估了外部、前瞻性和同期的有效性。对编码自杀未遂的病历进行手动验证,以确认有意图自杀的事件行为。根据人口统计学特征、相关临床背景/环境以及是否进行了普遍筛查,进行了亚组分析。使用区分度(需要筛查的人数、C 统计量、阳性/阴性预测值)和校准(Spiegelhalter z 统计量)来评估性能。使用逻辑校准进行重新校准。
该系统为 77973 名患者生成了 115905 次预测(42490[54%]名男性,35404[45%]名女性,60586[78%]名白人,12620[16%]名黑人)。自杀意念和自杀未遂的最高风险定量需要筛查的人数分别为 23 和 271。在所有人口统计学亚组中,性能都保持不变。按性别划分的自杀未遂需要筛查的人数为男性 256 人,女性 323 人;按种族划分:白人患者分别为 373、176 和 407;黑人患者分别为 176、176 和 407;非白人和非黑人患者分别为 407、176 和 407。整个医疗系统的模型 C 统计量为 0.836(95%CI,0.836-0.837);成人医院:0.77(95%CI,0.77-0.772);急诊室:0.778(95%CI,0.777-0.778);精神病住院病房:0.634(95%CI,0.633-0.636)。预测最初存在校准偏差(Spiegelhalter z =-3.1;P=0.001),经过重新校准后有所改善(Spiegelhalter z =1.1;P=0.26)。
在这项研究中,这种实时自杀未遂风险预测模型在大型临床系统中的非精神病专科环境中显示出了合理的需要筛查人数。假设研究验证的模型将在不进行此类分析的情况下转换,这可能导致临床实践中的准确性降低、风险分类错误、浪费精力以及错失纠正和预防此类问题的机会。下一步是在预防未来自杀的实用性试验中,与低成本、低危害的预防策略进行仔细配对,以评估其有效性。