Department of CS & IT, Cotton University, Guwahati, India.
Curr Med Res Opin. 2022 May;38(5):749-771. doi: 10.1080/03007995.2022.2038487. Epub 2022 Feb 17.
In this modern era, depression is one of the most prevalent mental disorders from which millions of individuals are affected today. The symptoms of depression are heterogeneous and often coincide with other disorders such as bipolar disorder, Parkinson's, schizophrenia, etc. It is a serious mental illness that may lead to other health problems if left untreated. Currently, identifying individuals with depression is totally based on the expertise of the clinician's experience. In order to assist clinicians in identifying the characteristics and classifying depressed people, different types of data modalities and machine learning techniques have been incorporated by researchers in this field. This study aims to find the answers to some important questions related to the trend of publications, data modality, machine learning models, dataset usage, pre-processing techniques and feature extraction and selection techniques that are prevalent and guide the direction of future research on depression diagnosis.
This systematic review was conducted using a broad range of articles from two major databases: IEEE Xplore and PubMed. Studies ranging from the years 2011 to April 2021 were retrieved from the databases resulting in a total of 590 articles (53 articles from the IEEE Xplore database and 537 articles from the PubMed database). Out of those, the articles which satisfied the defined inclusion criteria were investigated for further analysis.
A total of 135 articles were identified and analysed for this review. High growth in the number of publications has been observed in recent years. Furthermore, significant diversity in the use of data modalities and machine learning classifiers has also been noted in this study. fMRI data with an SVM classifier was found to be the most popular choice among researchers. In most of the studies, data scarcity and small sample size, particularly for neuroimaging data are major concerns. The use of identical data pre-processing tools for similar data modalities can be seen. This study also provides statistical analysis of the current framework with respect to the modality, machine learning classifier, sample size and accuracy by applying one-way ANOVA and the Tukey - Kramer test.
The results indicate that an effective fusion of machine learning techniques with a potential data modality has a promising future for assisting clinicians in automatic depression diagnosis.
在当今这个现代时代,抑郁症是最常见的精神障碍之一,如今有数百万人受到其影响。抑郁症的症状具有异质性,并且常常与其他疾病同时发生,如双相情感障碍、帕金森病、精神分裂症等。如果不加以治疗,这是一种严重的精神疾病,可能会导致其他健康问题。目前,识别抑郁症患者完全基于临床医生经验的专业知识。为了帮助临床医生识别特征并对抑郁人群进行分类,该领域的研究人员已经将不同类型的数据模式和机器学习技术结合起来。本研究旨在找到一些与出版物趋势、数据模式、机器学习模型、数据集使用、预处理技术和特征提取与选择技术相关的重要问题的答案,这些问题在抑郁症诊断的研究中具有普遍性,并指导未来研究的方向。
本系统评价使用来自两个主要数据库 IEEE Xplore 和 PubMed 的广泛文章进行。从数据库中检索了 2011 年至 2021 年 4 月的研究,共获得 590 篇文章(IEEE Xplore 数据库 53 篇,PubMed 数据库 537 篇)。在这些文章中,选择符合定义的纳入标准的文章进行进一步分析。
共确定并分析了 135 篇文章。近年来,出版物数量呈显著增长。此外,本研究还注意到数据模式和机器学习分类器的使用存在显著差异。研究人员发现,fMRI 数据与 SVM 分类器的结合是最受欢迎的选择。在大多数研究中,数据稀缺和样本量小,特别是神经影像学数据,是主要关注点。可以看到,对于类似的数据模式,使用相同的数据预处理工具。本研究还通过应用单因素方差分析和 Tukey-Kramer 检验,对当前框架的模态、机器学习分类器、样本量和准确率进行了统计分析。
结果表明,机器学习技术与潜在数据模式的有效融合,有望为临床医生自动诊断抑郁症提供帮助。