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Individual prediction of long‐term outcome in adolescents at ultra‐high risk for psychosis: Applying machine learning techniques to brain imaging data

机译:超高患精神病风险的青少年的长期预后的个体预测:将机器学习技术应用于脑成像数据

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摘要

An important focus of studies of individuals at ultra‐high risk (UHR) for psychosis has been to identify biomarkers to predict which individuals will transition to psychosis. However, the majority of individuals will prove to be resilient and go on to experience remission of their symptoms and function well. The aim of this study was to investigate the possibility of using structural MRI measures collected in UHR adolescents at baseline to quantitatively predict their long‐term clinical outcome and level of functioning. We included 64 UHR individuals and 62 typically developing adolescents (12–18 years old at recruitment). At six‐year follow‐up, we determined resilience for 43 UHR individuals. Support Vector Regression analyses were performed to predict long‐term functional and clinical outcome from baseline MRI measures on a continuous scale, instead of the more typical binary classification. This led to predictive correlations of baseline MR measures with level of functioning, and negative and disorganization symptoms. The highest correlation (  = 0.42) was found between baseline subcortical volumes and long‐term level of functioning. In conclusion, our results show that structural MRI data can be used to quantitatively predict long‐term functional and clinical outcome in UHR individuals with medium effect size, suggesting that there may be scope for predicting outcome at the individual level. Moreover, we recommend classifying individual outcome on a continuous scale, enabling the assessment of different functional and clinical scales separately without the need to set a threshold. . ©
机译:对精神病处于超高风险(UHR)的个人进行研究的一个重要重点是确定生物标记物,以预测哪些人将过渡为精神病。但是,大多数人将被证明具有韧性,并且会继续缓解其症状并发挥良好的功能。这项研究的目的是调查在基线时使用在UHR青少年中收集的结构性MRI测量来定量预测其长期临床结果和功能水平的可能性。我们纳入了64名UHR个人和62名典型的发育中的青少年(招募时为12-18岁)。在六年的随访中,我们确定了43名UHR个人的应变能力。进行支持向量回归分析以连续基线而不是更典型的二分类来预测基线MRI测量的长期功能和临床结果。这导致基线MR测量与功能水平以及阴性和无组织症状之间的预测相关性。在基线皮层下体积和长期功能水平之间发现最高的相关性(= 0.42)。总之,我们的结果表明,MRI结构数据可用于定量预测具有中等效应水平的UHR个体的长期功能和临床结局,这表明在个体水平上可能存在预测结局的空间。此外,我们建议以连续量表对个体结局进行分类,从而无需设置阈值即可分别评估不同的功能和临床量表。 。 ©

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