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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,用于危险的个人心理症心理疾病预测

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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:预测个人在个人环境中的精神病发作是基于强大的预后模型建筑方法,包括先验临床知识(也称为临床学习),以预先选择预测器或机器学习方法,以自动选择预测器。迄今为止,没有经验研究比较这两种方法预测精神病发作的预测准确性。在第一次实验中,当使用相同的预测因子 - 以先前在临床学习的基础上开发的个性化,转型通知,临床基础,临床基础,临床基础,风险计算器时,没有观察到改进的性能。在临床学习(预测器:年龄,性别,性别,性别,种族,ICD-10诊断谱),并在外部验证两次。在第二个实验中,介绍了扩大ICD-10诊断粒度的发布模型的两种精细版版本:ICD-10诊断类别和ICD-10诊断细分。虽然这些精致的型号表现出明显性能的增加,但它们的外部性能与原始模型类似。在第三个实验中,通过每个可变比率(EPV)的可变事件进行三种精细模型,并在机器学习和临床学习中进行分析。通过机器学习方法获得低EPV下的最佳表现模型。每变量的先验临床知识,大型样品和足够事件的基于先前临床知识的开发是一种稳健的临床预测方法,可预测风险患者的精神病发作,并且与机器学习方法相当,这更困难解释和实施。当没有先验的知识时,对于高维数据应该优选机器学习方法。

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