Morales-Rodríguez Francisco Manuel, Martínez-Ramón Juan Pedro, Giménez-Lozano José Miguel, Morales Rodríguez Ana María
Department of Educational and Developmental Psychology, Faculty of Psychology, University of Granada, 18011 Granada, Spain.
Department of Evolutionary and Educational Psychology, Faculty of Psychology and Speech Therapy, Campus Regional Excellence Mare Nostrum, University of Murcia, 30100 Murcia, Spain.
Healthcare (Basel). 2023 Aug 18;11(16):2337. doi: 10.3390/healthcare11162337.
Suicidal behavior among young people has become an increasingly relevant topic after the COVID-19 pandemic and constitutes a public health problem. This study aimed to examine the variables associated with suicide risk and determine their predictive capacity. The specific objectives were: (1) to analyze the relationship between suicide risk and model variables and (2) to design an artificial neural network (ANN) with predictive capacity for suicide risk. The sample comprised 337 youths aged 18-33 years. An ex post facto design was used. The results showed that emotional attention, followed by problem solving and perfectionism, were variables that contributed the most to the ANN's predictive capacity. The ANN achieved a hit rate of 85.7%, which is much higher than chance, and with only 14.3% of incorrect cases. This study extracted relevant information on suicide risk and the related risk and protective factors via artificial intelligence. These data will be useful for diagnosis as well as for psycho-educational guidance and prevention. This study was one of the first to apply this innovative methodology based on an ANN design to study these variables.
在新冠疫情之后,年轻人的自杀行为已成为一个愈发重要的话题,并构成了一个公共卫生问题。本研究旨在探究与自杀风险相关的变量,并确定它们的预测能力。具体目标如下:(1)分析自杀风险与模型变量之间的关系;(2)设计一个具有自杀风险预测能力的人工神经网络(ANN)。样本包括337名年龄在18至33岁之间的年轻人。采用事后回溯设计。结果表明,情感关注度,其次是解决问题的能力和完美主义,是对人工神经网络预测能力贡献最大的变量。该人工神经网络的命中率为85.7%,远高于随机概率,错误案例仅占14.3%。本研究通过人工智能提取了有关自杀风险以及相关风险和保护因素的相关信息。这些数据将有助于诊断以及心理教育指导和预防。本研究是首批应用基于人工神经网络设计的创新方法来研究这些变量的研究之一。