Mobile Application for Mental Health Using Machine Learning

E.S Mendis, L.W Kasthuriarachchi, H.P.K.L Samarasinha, Sanvitha Kasthuriarachchi, Samantha Rajapaksa
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Abstract

In present era, mental health has become one of the most neglected, yet critically important, factors of our overall well-being. A large number of people are affected by various types of mental illnesses and mental health disorders. Stress, anxiety, and depression are the most common disorders among children and adolescents in Sri Lanka, and their prevalence has increased over the years, likely to require immediate medical attention. In today’s world, mobile phones and applications play an important role in everyone’s life. With the rapid growth of mental illness, mental health-focused apps and websites have gradually increased globally in recent years. This study aims to develop a mobile application that will primarily serve Sri Lankans with mental health problems, helping them identify their levels of stress, anxiety, and depression (ADS) and receiving advice on how to deal with them. This app’s main objective is to support those who are dealing with mental illnesses and raise awareness of them locally using machine learning and image processing techniques. It does this by serving as a constant reminder of how crucial mental health is and how much of an impact it has on daily life. The GSE Scale, DASS 21 scale has been used to find the users’ mental health illness and the severity of each mental health illness such and Anxiety depression and stress. These methods are put to our mobile application using machine learning techniques such as Decision tree and Random Forest classifiers and uses image processing technologies, CNN machine learning algorithm to offer a variety of activities for reliving stress, depression, and anxiety,
使用机器学习的心理健康移动应用程序
在当今时代,心理健康已经成为我们整体福祉中最被忽视但又至关重要的因素之一。许多人受到各种精神疾病和精神健康障碍的影响。压力、焦虑和抑郁是斯里兰卡儿童和青少年中最常见的疾病,这些疾病的发病率多年来有所上升,可能需要立即就医。在当今世界,手机和应用程序在每个人的生活中都扮演着重要的角色。随着精神疾病的快速增长,近年来,以精神健康为重点的应用程序和网站在全球范围内逐渐增多。本研究旨在开发一款移动应用程序,主要服务于有心理健康问题的斯里兰卡人,帮助他们识别自己的压力、焦虑和抑郁(ADS)水平,并获得如何处理这些问题的建议。该应用程序的主要目的是支持那些正在处理精神疾病的人,并使用机器学习和图像处理技术提高当地对他们的认识。它通过不断提醒人们心理健康是多么重要,以及它对日常生活的影响有多大来做到这一点。使用GSE量表、DASS 21量表来了解用户的心理健康疾病情况以及各种心理健康疾病的严重程度,如焦虑、抑郁和压力。这些方法使用机器学习技术,如决策树和随机森林分类器,并使用图像处理技术,CNN机器学习算法,提供各种活动来缓解压力,抑郁和焦虑,
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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