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Prediction of transition from ultra-high risk to first-episode psychosis using a probabilistic model combining history clinical assessment and fatty-acid biomarkers

机译:结合历史临床评估和脂肪酸生物标志物的概率模型预测从超高风险到首发性精神病的转变

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摘要

Current criteria identifying patients with ultra-high risk of psychosis (UHR) have low specificity, and less than one-third of UHR cases experience transition to psychosis within 3 years of initial assessment. We explored whether a Bayesian probabilistic multimodal model, combining baseline historical and clinical risk factors with biomarkers (oxidative stress, cell membrane fatty acids, resting quantitative electroencephalography (qEEG)), could improve this specificity. We analyzed data of a UHR cohort (n=40) with a 1-year transition rate of 28%. Positive and negative likelihood ratios were calculated for predictor variables with statistically significant receiver operating characteristic curves (ROCs), which excluded oxidative stress markers and qEEG parameters as significant predictors of transition. We clustered significant variables into historical (history of drug use), clinical (Positive and Negative Symptoms Scale positive, negative and general scores and Global Assessment of Function) and biomarker (total omega-3, nervonic acid) groups, and calculated the post-test probability of transition for each group and for group combinations using the odds ratio form of Bayes' rule. Combination of the three variable groups vastly improved the specificity of prediction (area under ROC=0.919, sensitivity=72.73%, specificity=96.43%). In this sample, our model identified over 70% of UHR patients who transitioned within 1 year, compared with 28% identified by standard UHR criteria. The model classified 77% of cases as very high or low risk (P>0.9, <0.1) based on history and clinical assessment, suggesting that a staged approach could be most efficient, reserving fatty-acid markers for 23% of cases remaining at intermediate probability following bedside interview.
机译:当前确定患有精神病超高风险(UHR)的患者的标准具有较低的特异性,并且只有不到三分之一的UHR病例在初步评估后的3年内经历了向精神病的过渡。我们探讨了将基线历史和临床危险因素与生物标志物(氧化应激,细胞膜脂肪酸,静息定量脑电图(qEEG))相结合的贝叶斯概率多峰模型是否可以提高这种特异性。我们分析了UHR队列(n = 40)的数据,其1年过渡率为28%。计算具有统计上显着的接收器工作特征曲线(ROC)的预测变量的正似然率和负似然比,其中不包括氧化应激标记和qEEG参数作为过渡的重要预测因子。我们将重要变量分为历史(药物使用史),临床(阳性和阴性症状量表阳性,阴性和一般评分以及功能总体评估)和生物标记物(总omega-3,神经酸)组,并计算了使用贝叶斯法则的比值比形式测试每个组和组组合的过渡概率。三个变量组的组合极大地提高了预测的特异性(ROC下的面积= 0.919,灵敏度= 72.73%,特异性= 96.43%)。在此样本中,我们的模型确定了70%以上的UHR患者在1年内过渡,而标准UHR标准确定的这一比例为28%。该模型根据病史和临床评估将77%的病例分为高危或低危(P> 0.9,<0.1),这表明分阶段进行的方法可能是最有效的,为23%的患者保留脂肪酸标记床边访谈后的中等概率。

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