Institute for Social Science Research, University of Queensland, Brisbane, Indooroopilly, Australia.
Centre for Social Data Analytics, Auckland University of Technology, Auckland, New Zealand.
Suicide Life Threat Behav. 2023 Oct;53(5):853-869. doi: 10.1111/sltb.12988. Epub 2023 Aug 14.
Identifying young people who are at risk of self-harm or suicidal ideation (SHoSI) is a priority for mental health clinicians. We explore the utility of routinely collected data in developing a tool to aid early identification of those at risk.
We used electronic health records of 4610 young people aged 5-19 years who were treated by Child and Youth Mental Health Services (CYMHS) in greater Brisbane, Australia. Two Lasso models were trained to predict the risk of future SHoSI in young people currently rated SHoSI; and those who were not.
For currently non-SHoSI children, an Area Under the Receiver Operating Characteristics (AUC) of 0.78 was achieved. Those with the highest risk were 4.97 (CI 4.35-5.66) times more likely to be categorized as SHoSI in the future. For current SHoSI children, the AUC was 0.62.
A prediction model with fair overall predictive power for currently non-SHoSI children was generated. Predicting persistence for SHoSI was more difficult. The electronic health records alone were not sufficient to discriminate at acceptable levels and may require adding unstructured data such as clinical notes. To optimally predict SHoSI models need to be tested and validated separately for those young people with varying degrees of risk.
识别有自伤或自杀意念风险的年轻人(SHoSI)是精神健康临床医生的首要任务。我们探讨了常规收集数据在开发工具以帮助早期识别风险方面的作用。
我们使用了澳大利亚布里斯班地区儿童和青年心理健康服务(CYMHS)治疗的 4610 名 5-19 岁年轻人的电子健康记录。训练了两个套索模型,以预测目前被评为 SHoSI 的年轻人和目前未被评为 SHoSI 的年轻人未来发生 SHoSI 的风险。
对于目前非 SHoSI 的儿童,接收器操作特征曲线(AUC)的面积为 0.78。那些风险最高的儿童,未来被归类为 SHoSI 的可能性是其他儿童的 4.97 倍(95%CI 4.35-5.66)。对于目前的 SHoSI 儿童,AUC 为 0.62。
为目前非 SHoSI 的儿童生成了一个具有良好整体预测能力的预测模型。预测 SHoSI 的持续存在更为困难。仅电子健康记录不足以达到可接受的区分水平,可能需要添加非结构化数据,如临床记录。为了优化预测,模型需要针对不同风险程度的年轻人进行单独测试和验证。