de Lacy Nina, Ramshaw Michael J
Huntsman Mental Health Institute, Salt Lake City, UT 84103.
Department of Psychiatry, University of Utah, Salt Lake City, UT 84103.
medRxiv. 2023 Oct 24:2023.10.23.23297438. doi: 10.1101/2023.10.23.23297438.
Thought disorder (TD) is a sensitive and specific marker of risk for schizophrenia onset. Specifying factors that predict TD onset in adolescence is important to early identification of youth at risk. However, there is a paucity of studies prospectively predicting TD onset in unstratified youth populations.
We used deep learning optimized with artificial intelligence (AI) to analyze 5,777 multimodal features obtained at 9-10 years from youth and their parents in the ABCD study, including 5,014 neural metrics, to prospectively predict new onset TD cases at 11-12 years. The design was replicated for all prevailing TD cases at 11-12 years.
Optimizing performance with AI, we were able to achieve 92% accuracy and F1 and 0.96 AUROC in prospectively predicting the onset of TD in early adolescence. Structural differences in the left putamen, sleep disturbances and the level of parental externalizing behaviors were specific predictors of new onset TD at 11-12 yrs, interacting with low youth prosociality, the total parental behavioral problems and parent-child conflict and whether the youth had already come to clinical attention. More important predictors showed greater inter-individual variability.
This study provides robust person-level, multivariable signatures of early adolescent TD which suggest that structural differences in the left putamen in late childhood are a candidate biomarker that interacts with psychosocial stressors to increase risk for TD onset. Our work also suggests that interventions to promote improved sleep and lessen parent-child psychosocial stressors are worthy of further exploration to modulate risk for TD onset.
思维障碍(TD)是精神分裂症发病风险的一个敏感且特异的标志物。明确预测青少年期TD发病的因素对于早期识别高危青年很重要。然而,前瞻性预测未分层青年人群中TD发病的研究较少。
我们使用经过人工智能(AI)优化的深度学习来分析在ABCD研究中9至10岁的青少年及其父母身上获取的5777个多模态特征,包括5014个神经指标,以前瞻性预测11至12岁时新发病的TD病例。对11至12岁时所有现患TD病例重复该设计。
通过AI优化性能,我们在前瞻性预测青春期早期TD发病方面能够达到92%的准确率和F1值以及0.96的曲线下面积(AUROC)。左侧壳核的结构差异、睡眠障碍以及父母外化行为水平是11至12岁时新发病TD的特异性预测因素,与青少年亲社会行为低、父母行为问题总数、亲子冲突以及青少年是否已引起临床关注相互作用。更重要的预测因素显示出更大的个体间变异性。
本研究提供了青春期早期TD强有力的个体水平多变量特征,表明儿童晚期左侧壳核的结构差异是一种候选生物标志物,它与心理社会应激源相互作用以增加TD发病风险。我们的工作还表明,促进改善睡眠和减轻亲子心理社会应激源的干预措施值得进一步探索,以调节TD发病风险。