Iorfino Frank, Oliveira Rafael, Cripps Sally, Marchant Roman, Varidel Mathew, Capon William, Crouse Jacob J, Prodan Ante, Scott Elizabeth M, Scott Jan, Hickie Ian B
Brain and Mind Centre, The University of Sydney, Camperdown, NSWAustralia.
Data61, CSIRO, Sydney, NSWAustralia.
Eur Psychiatry. 2024 Dec 19;67(1):e87. doi: 10.1192/j.eurpsy.2024.1787.
Functional impairment is a major concern among those presenting to youth mental health services and can have a profound impact on long-term outcomes. Early recognition and prevention for those at risk of functional impairment is essential to guide effective youth mental health care. Yet, identifying those at risk is challenging and impacts the appropriate allocation of indicated prevention and early intervention strategies.
We developed a prognostic model to predict a young person's social and occupational functional impairment trajectory over 3 months. The sample included 718 young people (12-25 years) engaged in youth mental health care. A Bayesian random effects model was designed using demographic and clinical factors and model performance was evaluated on held-out test data via 5-fold cross-validation.
Eight factors were identified as the optimal set for prediction: employment, education, or training status; self-harm; psychotic-like experiences; physical health comorbidity; childhood-onset syndrome; illness type; clinical stage; and circadian disturbances. The model had an acceptable area under the curve (AUC) of 0.70 (95% CI, 0.56-0.81) overall, indicating its utility for predicting functional impairment over 3 months. For those with good baseline functioning, it showed excellent performance (AUC = 0.80, 0.67-0.79) for identifying individuals at risk of deterioration.
We developed and validated a prognostic model for youth mental health services to predict functional impairment trajectories over a 3-month period. This model serves as a foundation for further tool development and demonstrates its potential to guide indicated prevention and early intervention for enhancing functional outcomes or preventing functional decline.
功能损害是寻求青少年心理健康服务的人群中的一个主要问题,并且会对长期结果产生深远影响。对有功能损害风险的人群进行早期识别和预防对于指导有效的青少年心理健康护理至关重要。然而,识别有风险的人群具有挑战性,并且会影响针对性预防和早期干预策略的合理分配。
我们开发了一个预后模型,以预测年轻人在3个月内的社会和职业功能损害轨迹。样本包括718名接受青少年心理健康护理的年轻人(12 - 25岁)。使用人口统计学和临床因素设计了一个贝叶斯随机效应模型,并通过5折交叉验证在留出的测试数据上评估模型性能。
确定了八个因素作为最佳预测集:就业、教育或培训状况;自我伤害;类精神病体验;身体健康合并症;儿童期起病综合征;疾病类型;临床阶段;以及昼夜节律紊乱。该模型总体上具有可接受的曲线下面积(AUC),为0.70(95%CI,0.56 - 0.81),表明其在预测3个月内功能损害方面的效用。对于基线功能良好的人群,它在识别有恶化风险的个体方面表现出色(AUC = 0.80,0.67 - 0.79)。
我们开发并验证了一个用于青少年心理健康服务的预后模型,以预测3个月内的功能损害轨迹。该模型为进一步的工具开发奠定了基础,并展示了其指导针对性预防和早期干预以改善功能结果或预防功能衰退的潜力。