On decoding of rapid motor imagery in a diverse population using a high-density NIRS device

Christian Kothe, Grant Hanada, Sean Mullen, Tim Mullen
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Abstract

Functional near-infrared spectroscopy (fNIRS) aims to infer cognitive states such as the type of movement imagined by a study participant in a given trial using an optical method that can differentiate between oxygenation states of blood in the brain and thereby indirectly between neuronal activity levels. We present findings from an fNIRS study that aimed to test the applicability of a high-density (>3000 channels) NIRS device for use in short-duration (2 s) left/right hand motor imagery decoding in a diverse, but not explicitly balanced, subject population. A side aim was to assess relationships between data quality, self-reported demographic characteristics, and brain-computer interface (BCI) performance, with no subjects rejected from recruitment or analysis.BCI performance was quantified using several published methods, including subject-specific and subject-independent approaches, along with a high-density fNIRS decoder previously validated in a separate study.We found that decoding of motor imagery on this population proved extremely challenging across all tested methods. Overall accuracy of the best-performing method (the high-density decoder) was 59.1 +/– 6.7% after excluding subjects where almost no optode-scalp contact was made over motor cortex and 54.7 +/– 7.6% when all recorded sessions were included. Deeper investigation revealed that signal quality, hemodynamic responses, and BCI performance were all strongly impacted by the hair phenotypical and demographic factors under investigation, with over half of variance in signal quality explained by demographic factors alone.Our results contribute to the literature reporting on challenges in using current-generation NIRS devices on subjects with long, dense, dark, and less pliable hair types along with the resulting potential for bias. Our findings confirm the need for increased focus on these populations, accurate reporting of data rejection choices across subject intake, curation, and final analysis in general, and signal a need for NIRS optode designs better optimized for the general population to facilitate more robust and inclusive research outcomes.
使用高密度近红外成像设备解码不同人群的快速运动图像
功能性近红外光谱(fNIRS)旨在利用一种光学方法推断认知状态,例如研究对象在给定试验中想象的运动类型,该方法可以区分大脑中血液的氧合状态,从而间接区分神经元的活动水平。我们介绍了一项 fNIRS 研究的结果,该研究旨在测试高密度(大于 3000 个通道)NIRS 设备在短时(2 秒)左/右手运动想象解码中的适用性,研究对象是多样化的,但并不明确均衡。我们使用几种已发表的方法对 BCI 性能进行了量化,包括特定受试者和独立于受试者的方法,以及之前在另一项研究中验证过的高密度 fNIRS 解码器。在排除运动皮层上几乎没有光标-头皮接触的受试者后,表现最好的方法(高密度解码器)的总体准确率为 59.1 +/- 6.7%,而在包括所有记录会话时,准确率为 54.7 +/- 7.6%。深入研究发现,信号质量、血液动力学反应和 BCI 性能都受到所研究的毛发表型和人口学因素的强烈影响,仅人口学因素就能解释一半以上的信号质量变异。我们的研究结果为文献报告提供了新的信息,这些文献报告了在长发、浓密、黑发和柔韧性较差的受试者身上使用当前一代 NIRS 设备所面临的挑战,以及由此可能产生的偏差。我们的研究结果证实,有必要加强对这些人群的关注,准确报告在受试者摄入、整理和最终分析过程中的数据剔除选择,并表明有必要针对普通人群更好地优化近红外光谱光节点设计,以促进更稳健、更具包容性的研究成果。
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