A Prediction Modelling and Pattern Detection Approach for the First-Episode Psychosis Associated to Cannabis Use

W. Alghamdi, D. Stamate, K. Vang, D. Ståhl, M. Colizzi, G. Tripoli, D. Quattrone, O. Ajnakina, R. Murray, M. Forti
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引用次数: 9

Abstract

Over the last two decades, a significant body of research has established a link between cannabis use and psychotic outcomes. In this study, we aim to propose a novel symbiotic machine learning and statistical approach to pattern detection and to developing predictive models for the onset of first-episode psychosis. The data used has been gathered from real cases in cooperation with a medical research institution, and comprises a wide set of variables including demographic, drug-related, as well as several variables specifically related to the cannabis use. Our approach is built upon several machine learning techniques whose predictive models have been optimised in a computationally intensive framework. The ability of these models to predict first-episode psychosis has been extensively tested through large scale Monte Carlo simulations. Our results show that Boosted Classification Trees outperform other models in this context, and have significant predictive ability despite a large number of missing values in the data. Furthermore, we extended our approach by further investigating how different patterns of cannabis use relate to new cases of psychosis, via association analysis and bayesian techniques.
与大麻使用相关的首发精神病的预测建模和模式检测方法
在过去的二十年里,大量的研究已经建立了大麻使用和精神病结果之间的联系。在这项研究中,我们的目标是提出一种新的共生机器学习和统计方法来检测模式并开发首发精神病发作的预测模型。所使用的数据是与一个医学研究机构合作从真实案例中收集的,包括一系列广泛的变量,包括人口统计、与毒品有关的变量以及与大麻使用具体相关的几个变量。我们的方法建立在几种机器学习技术的基础上,这些技术的预测模型已经在计算密集型框架中进行了优化。这些模型预测首发精神病的能力已经通过大规模的蒙特卡罗模拟进行了广泛的测试。我们的研究结果表明,在这种情况下,提升分类树优于其他模型,并且尽管数据中存在大量缺失值,但仍具有显著的预测能力。此外,我们通过关联分析和贝叶斯技术进一步调查大麻使用的不同模式与精神病新病例的关系,扩展了我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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