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Clinical-learning versus machine-learning for transdiagnostic prediction of psychosis onset in individuals at-risk

机译:临床学习与机器学习在高危人群中对精神病发作的转诊预测

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摘要

Predicting the onset of psychosis in individuals at-risk is based on robust prognostic model building methods including a priori clinical knowledge (also termed clinical-learning) to preselect predictors or machine-learning methods to select predictors automatically. To date, there is no empirical research comparing the prognostic accuracy of these two methods for the prediction of psychosis onset. In a first experiment, no improved performance was observed when machine-learning methods (LASSO and RIDGE) were applied—using the same predictors—to an individualised, transdiagnostic, clinically based, risk calculator previously developed on the basis of clinical-learning (predictors: age, gender, age by gender, ethnicity, ICD-10 diagnostic spectrum), and externally validated twice. In a second experiment, two refined versions of the published model which expanded the granularity of the ICD-10 diagnosis were introduced: ICD-10 diagnostic categories and ICD-10 diagnostic subdivisions. Although these refined versions showed an increase in apparent performance, their external performance was similar to the original model. In a third experiment, the three refined models were analysed under machine-learning and clinical-learning with a variable event per variable ratio (EPV). The best performing model under low EPVs was obtained through machine-learning approaches. The development of prognostic models on the basis of a priori clinical knowledge, large samples and adequate events per variable is a robust clinical prediction method to forecast psychosis onset in patients at-risk, and is comparable to machine-learning methods, which are more difficult to interpret and implement. Machine-learning methods should be preferred for high dimensional data when no a priori knowledge is available.
机译:预测高危个体的精神病发作是基于强大的预后模型构建方法,包括先验临床知识(也称为临床学习)以预先选择预测因子,或机器学习方法以自动选择预测因子。迄今为止,尚无经验研究将这两种方法预测精神病发作的预后准确性进行比较。在第一个实验中,将机器学习方法(LASSO和RIDGE)(使用相同的预测变量)应用于先前基于临床学习而开发的个性化,经诊断,基于临床的风险计算器时,未观察到性能改善(预测变量:年龄,性别,按性别,种族划分的年龄,ICD-10诊断范围),并进行两次外部验证。在第二个实验中,引入了已发布模型的两个改进版本,这些版本扩展了ICD-10诊断的粒度:ICD-10诊断类别和ICD-10诊断细分。尽管这些改进的版本显示出明显的性能提高,但它们的外部性能与原始模型相似。在第三个实验中,在机器学习和临床学习下以可变事件每变量比率(EPV)分析了三个精炼模型。通过机器学习方法获得了在低EPV下性能最佳的模型。基于先验的临床知识,大量样本和每个变量足够的事件来建立预后模型,是一种可靠的临床预测方法,可以预测高危患者的精神病发作,并且与机器学习方法相当,后者难度更大。解释和实施。当没有先验知识可用时,机器学习方法应优先用于高维数据。

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