School of Computer Sciences, Universiti Sains Malaysia, 11800 Penang, Malaysia.
J Infect Public Health. 2021 Jan;14(1):103-108. doi: 10.1016/j.jiph.2020.02.042. Epub 2020 Apr 6.
Mental illness is a set of health problems that affect the way individuals perceive themselves, relate to others, and interact with the world around them. Due to the myriad of underlying causes and subsequent effects of mental illness, these conditions often trigger fear and misunderstanding among the general population. Common mental illnesses such as depression and anxiety disorders often affect an individual's thoughts, feelings, abilities, and behaviours. Anxiety disorder is characterized by an irrational fear of certain things or events. It is often attributed as the feeling of worry about anticipated events and fear in response to current events. This work has identified several related research efforts on the general well-being and psychological distress using data mining. However, there is inadequate research done using a similar method on specific mental health issues, especially related to generalized anxiety disorder (GAD). In view of this gap, this study focuses on implementing a novel feature selection and data mining classifier system. Under the proposed method, Shapley value will be implemented as the feature selection of the data mining classifier on the mental health data. The approach is used to predict GAD among women. The methodology for this research is adapted from the process of Knowledge Discovery in Databases (KDD). This methodology consists of 5 main phases; namely data acquisition, data pre-processing, feature selection, classification prediction, and evaluation. Using this enhanced prediction algorithm, any women can get help if they are perceived to be suffering from GAD. By designing an effective way of identifying individuals who may be suffering from mental illnesses, we hope that our work would improve the awareness surrounding mental health issues especially among women and enable them to undertake autonomous decision in seeking mental health services.
精神疾病是一组影响个人对自己的看法、与他人互动以及与周围世界互动方式的健康问题。由于精神疾病的潜在原因和后续影响众多,这些疾病往往会在普通人群中引发恐惧和误解。常见的精神疾病,如抑郁症和焦虑症,通常会影响个人的思维、情感、能力和行为。焦虑症的特点是对某些事物或事件的不合理恐惧。它通常被归因于对预期事件的担忧和对当前事件的恐惧。这项工作已经确定了使用数据挖掘对一般健康和心理困扰进行的几项相关研究工作。然而,使用类似方法对特定心理健康问题进行的研究不足,特别是与广泛性焦虑症(GAD)相关的研究不足。鉴于这一差距,本研究专注于实施一种新的特征选择和数据挖掘分类器系统。在提出的方法下,Shapley 值将作为数据挖掘分类器的特征选择在心理健康数据上实现。该方法用于预测女性中的 GAD。这项研究的方法学是从数据库中的知识发现(KDD)过程中改编而来的。该方法学由 5 个主要阶段组成;即数据获取、数据预处理、特征选择、分类预测和评估。使用这种增强的预测算法,如果女性被认为患有 GAD,她们可以获得帮助。通过设计一种有效识别可能患有精神疾病的个体的方法,我们希望我们的工作能够提高人们对精神健康问题的认识,特别是在女性中,并使她们能够自主决定寻求精神健康服务。