机器学习方法在心理健康研究中的应用综述

Veerpal Kaur, K. Gupta
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引用次数: 0

摘要

机器学习(ML)是人工智能的一个子领域,它侧重于分析数据的统计方法。对数据的分析有助于理解隐藏的模式。随着互联网的发展,人们可以预期会产生大量的数据。几乎每个领域,无论是医药、教育、世界各地的商业、股票交易、农业等,都在为这种数据生成做出贡献。为了获得有用的见解而收集的数据正在进行前所未有的研究。心理健康是ML被用于理解患者行为、症状、治疗效果并帮助医生决策的领域之一。本研究旨在展示医疗保健中使用的机器学习技术的概述,主要涉及心理健康和抑郁症,以及它们的缺陷和未来方向。所提出的分析为使用机器学习技术进行心理健康和抑郁症分析领域的未来工作奠定了基础。本研究的重点是分析创新与健康之间的相互关系。挑战在于找到这样的技术,使机器学习模型的错误结果最小化,并帮助医疗从业者及时做出决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Brief Review of Machine Learning Methods used in Mental Health Research
Machine Learning (ML) is a sub-domain of Artificial Intelligence, and it focuses on the statistical methods to analyse data. Analysis of data can help in understanding the hidden patterns. As the internet is growing, one can expect a plethora of data getting generated. Almost every field, be it medicine, education, businesses across the world, stock exchange, agriculture etc., all are contributing to this data generation. Research is going on unprecedentedly on data collected for useful insights. Mental Health is one of the fields where ML is being used for understanding the patients’ behavior, symptoms, effectiveness of the treatments used and helps the medical practitioners in decision making. The presented study aims to showcase the overview of the machine learning technologies used in health care majorly concerned to mental health and depression along with their pitfalls and future directions. The presented analysis laid a foundation for future work in the domain of mental health and depression analysis using machine learning techniques. The study focuses mainly on analyzing how innovation and health could be inter-related. The challenge is to find such techniques that minimize the incorrect outcomes by the machine learning models and help the medical practitioners to take timely decisions.
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