Department of Biomedical Engineering, Faculty of Engineering, TOBB University of Economics and Technology, Sogutozu, 06510, Ankara, Türkiye.
Rev Neurosci. 2024 Feb 5;35(4):421-449. doi: 10.1515/revneuro-2023-0117. Print 2024 Jun 25.
Functional near-infrared spectroscopy (fNIRS) and its interaction with machine learning (ML) is a popular research topic for the diagnostic classification of clinical disorders due to the lack of robust and objective biomarkers. This review provides an overview of research on psychiatric diseases by using fNIRS and ML. Article search was carried out and 45 studies were evaluated by considering their sample sizes, used features, ML methodology, and reported accuracy. To our best knowledge, this is the first review that reports diagnostic ML applications using fNIRS. We found that there has been an increasing trend to perform ML applications on fNIRS-based biomarker research since 2010. The most studied populations are schizophrenia ( = 12), attention deficit and hyperactivity disorder ( = 7), and autism spectrum disorder ( = 6) are the most studied populations. There is a significant negative correlation between sample size (>21) and accuracy values. Support vector machine (SVM) and deep learning (DL) approaches were the most popular classifier approaches (SVM = 20) (DL = 10). Eight of these studies recruited a number of participants more than 100 for classification. Concentration changes in oxy-hemoglobin (ΔHbO) based features were used more than concentration changes in deoxy-hemoglobin (ΔHb) based ones and the most popular ΔHbO-based features were mean ΔHbO ( = 11) and ΔHbO-based functional connections ( = 11). Using ML on fNIRS data might be a promising approach to reveal specific biomarkers for diagnostic classification.
功能近红外光谱(fNIRS)及其与机器学习(ML)的相互作用是诊断临床疾病分类的热门研究课题,因为缺乏稳健和客观的生物标志物。本综述提供了使用 fNIRS 和 ML 进行精神疾病研究的概述。通过考虑样本量、使用的特征、ML 方法和报告的准确性,对 45 项研究进行了文章搜索和评估。据我们所知,这是第一篇报告使用 fNIRS 进行诊断 ML 应用的综述。我们发现,自 2010 年以来,使用 fNIRS 进行基于生物标志物的 ML 应用的研究呈上升趋势。研究最多的人群是精神分裂症(=12)、注意力缺陷多动障碍(=7)和自闭症谱系障碍(=6)。样本量(>21)和准确性值之间存在显著的负相关。支持向量机(SVM)和深度学习(DL)方法是最受欢迎的分类器方法(SVM=20)(DL=10)。其中 8 项研究的分类参与者人数超过 100。基于氧合血红蛋白(ΔHbO)浓度变化的特征比基于去氧血红蛋白(ΔHb)浓度变化的特征使用得更多,基于ΔHbO 的最受欢迎特征是平均ΔHbO(=11)和基于ΔHbO 的功能连接(=11)。使用 ML 对 fNIRS 数据进行分析可能是揭示诊断分类特定生物标志物的有前途的方法。