Bio & Medical Health Division, Korea Testing Laboratory, Seoul, 08389, Republic of Korea.
Hurvitz Brain Sciences Research Program, Biological Sciences, Sunnybrook Research Institute, Toronto, ON, M4N 3M5, Canada; Department of Laboratory Medicine and Pathobiology, University of Toronto, Toronto, ON, M5S 1A8, Canada; Department of Neurosurgery, Brain Research Institute, Yonsei University College of Medicine, Seoul, 03722, Republic of Korea.
Biosens Bioelectron. 2022 Feb 1;197:113782. doi: 10.1016/j.bios.2021.113782. Epub 2021 Nov 12.
Rodents have a well-developed sense of smell and are used to detect explosives, mines, illegal substances, hidden currency, and contraband, but it is impossible to keep their concentration constantly. Therefore, there is an ongoing effort to infer odors detected by animals without behavioral readings with brain-computer interface (BCI) technology. However, the invasive BCI technique has the disadvantage that long-term studies are limited by the immune response and electrode movement. On the other hand, near-infrared spectroscopy (NIRS)-based BCI technology is a non-invasive method that can measure neuronal activity without worrying about the immune response or electrode movement. This study confirmed that the NIRS-based BCI technology can be used as an odor detection and identification from the rat olfactory system. In addition, we tried to present features optimized for machine learning models by extracting six features, such as slopes, peak, variance, mean, kurtosis, and skewness, from the hemodynamic response, and analyzing the importance of individuals or combinations. As a result, the feature with the highest F1-Score was indicated as slopes, and it was investigated that the combination of the features including slopes and mean was the most important for odor inference. On the other hand, the inclusion of other features with a low correlation with slopes had a positive effect on the odor inference, but most of them resulted in insignificant or rather poor performance. The results presented in this paper are expected to serve as a basis for suggesting the development direction of the hemodynamic response-based bionic nose in the future.
啮齿动物嗅觉发达,常用于探测爆炸物、地雷、非法物质、隐藏货币和违禁品,但它们的注意力很难长时间保持集中。因此,人们一直在努力利用脑机接口(BCI)技术,从动物的行为读数推断出它们所检测到的气味。然而,这种有创的 BCI 技术有一个缺点,即长期研究受到免疫反应和电极运动的限制。另一方面,基于近红外光谱(NIRS)的 BCI 技术是一种非侵入性的方法,它可以在不担心免疫反应或电极运动的情况下测量神经元活动。本研究证实,基于 NIRS 的 BCI 技术可用于从大鼠嗅觉系统中检测和识别气味。此外,我们尝试通过从血液动力学响应中提取斜率、峰值、方差、均值、峰度和偏度等六个特征,并分析个体或组合的重要性,为机器学习模型优化特征。结果表明,具有最高 F1-Score 的特征是斜率,并研究了包括斜率和均值的特征组合对于气味推断是最重要的。另一方面,包含与斜率相关性较低的其他特征对气味推断有积极影响,但其中大多数特征的性能并不显著或较差。本文提出的结果有望为未来基于血液动力学响应的仿生鼻的发展方向提供依据。