Eastmond Condell, Subedi Aseem, De Suvranu, Intes Xavier
Center for Modeling, Simulation and Imaging for Medicine, Rensselaer Polytechnic, Department of Biomedical Engineering, Troy, New York, United States.
Neurophotonics. 2022 Oct;9(4):041411. doi: 10.1117/1.NPh.9.4.041411. Epub 2022 Jul 20.
Optical neuroimaging has become a well-established clinical and research tool to monitor cortical activations in the human brain. It is notable that outcomes of functional near-infrared spectroscopy (fNIRS) studies depend heavily on the data processing pipeline and classification model employed. Recently, deep learning (DL) methodologies have demonstrated fast and accurate performances in data processing and classification tasks across many biomedical fields. We aim to review the emerging DL applications in fNIRS studies. We first introduce some of the commonly used DL techniques. Then, the review summarizes current DL work in some of the most active areas of this field, including brain-computer interface, neuro-impairment diagnosis, and neuroscience discovery. Of the 63 papers considered in this review, 32 report a comparative study of DL techniques to traditional machine learning techniques where 26 have been shown outperforming the latter in terms of the classification accuracy. In addition, eight studies also utilize DL to reduce the amount of preprocessing typically done with fNIRS data or increase the amount of data via data augmentation. The application of DL techniques to fNIRS studies has shown to mitigate many of the hurdles present in fNIRS studies such as lengthy data preprocessing or small sample sizes while achieving comparable or improved classification accuracy.
光学神经成像已成为一种成熟的临床和研究工具,用于监测人类大脑中的皮层激活。值得注意的是,功能近红外光谱(fNIRS)研究的结果在很大程度上取决于所采用的数据处理流程和分类模型。最近,深度学习(DL)方法在许多生物医学领域的数据处理和分类任务中展现出快速且准确的性能。我们旨在综述fNIRS研究中新兴的DL应用。我们首先介绍一些常用的DL技术。然后,本综述总结了该领域一些最活跃领域中当前的DL研究工作,包括脑机接口、神经损伤诊断和神经科学发现。在本综述所考虑的63篇论文中,32篇报告了DL技术与传统机器学习技术的比较研究,其中26篇在分类准确性方面表现优于后者。此外,八项研究还利用DL来减少通常对fNIRS数据进行的预处理量或通过数据增强增加数据量。DL技术在fNIRS研究中的应用已表明,它能够克服fNIRS研究中存在的许多障碍,如冗长的数据预处理或小样本量,同时实现相当或更高的分类准确性。