Predicting generalized anxiety disorder among women using Shapley value

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 t...

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Veröffentlicht in:Journal of infection and public health 2021-01, Vol.14 (1), p.103-108
Hauptverfasser: Jothi, Neesha, Husain, Wahidah, Rashid, Nur’Aini Abdul
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creator Jothi, Neesha
Husain, Wahidah
Rashid, Nur’Aini Abdul
description 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.
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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. 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subjects Anxiety
Anxiety Disorders - diagnosis
Anxiety Disorders - epidemiology
Data mining
Data mining in healthcare
Fear
Feature selection
Female
Generalized anxiety disorder
Humans
Infectious Diseases
Life Sciences & Biomedicine
Mental Health
Public, Environmental & Occupational Health
Science & Technology
Shapley value
Surveys and Questionnaires
title Predicting generalized anxiety disorder among women using Shapley value
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