TY - JOUR
T1 - fNIRS is sensitive to leg activity in the primary motor cortex after systemic artifact correction
AU - Cockx, Helena
AU - Oostenveld, Robert
AU - Tabor, Merel
AU - Savenco, Ecaterina
AU - van Setten, Arne
AU - Cameron, Ian
AU - van Wezel, Richard
N1 - Funding Information:
We are grateful to all participants for their time and effort. We specifically would like to thank Liucija Svinkunaite, from Artinis Medical Systems, for her assistance with the experimental set-up, and help with methodological questions. We are graetful to Janne Heijs, Bert Neyrinck, and Eefke Lemmen for their helpful discussions on the content of the manuscript. This work was supported by the Operational Program European Regional Development Fund (OP ERDF) of the European Union under the “PROMPT” project (PROJ-00872). The PROMPT project is a collaborative grant between two universities (Radboud University and the University of Twente), and three companies (Artinis Medical Systems, ANT Neuro, and Orikami).
Funding Information:
This work was supported by the Operational Program European Regional Development Fund (OP ERDF) of the European Union under the “PROMPT” project ( PROJ-00872 ). The PROMPT project is a collaborative grant between two universities (Radboud University and the University of Twente), and three companies (Artinis Medical Systems, ANT Neuro, and Orikami).
Publisher Copyright:
© 2023
PY - 2023/4/1
Y1 - 2023/4/1
N2 - Background: functional near-infrared spectroscopy (fNIRS) is an increasingly popular tool to study cortical activity during movement and gait that requires further validation. This study aimed to assess (1) whether fNIRS can detect the difficult-to-measure leg area of the primary motor cortex (M1) and distinguish it from the hand area; and (2) whether fNIRS can differentiate between automatic (i.e., not requiring one's attention) and non-automatic movement processes. Special attention was attributed to systemic artifacts (i.e., changes in blood pressure, heart rate, breathing) which were assessed and corrected by short channels, i.e., fNIRS channels which are mainly sensitive to superficial scalp hemodynamics.Methods: Twenty-three seated, healthy participants tapped four fingers on a keyboard or tapped the right foot on four squares on the floor in a specific order given by a 12-digit sequence (e.g., 434141243212). Two different sequences were executed: a beforehand learned (i.e., automatic) version and a newly learned (i.e., non-automatic) version. A 36-channel fNIRS device including 12 short channels covered multiple motor-related cortical areas including M1. The fNIRS data were analyzed with a general linear model (GLM). Correlation between the expected functional hemodynamic responses (i.e. task regressor) and the short channels (i.e. nuisance regressors), necessitated performing a separate short channel regression instead of integrating them in the GLM.Results: Consistent with the M1 somatotopy, we found significant HbO increases of very large effect size in the lateral M1 channels during finger tapping (Cohen's d = 1.35, p<0.001) and significant HbO increases of moderate effect size in the medial M1 channels during foot tapping (Cohen's d = 0.8, p<0.05). The cortical activity differences between automatic and non-automatic tasks were not significantly different. Importantly, leg movements produced large systemic fluctuations, which were adequately removed by the use of all available short channels.Discussion: Our results indicate that fNIRS is sensitive to leg activity in M1, though the sensitivity is lower than for finger activity and requires rigorous correction for systemic fluctuations. We furthermore highlight that systemic artifacts may result in an unreliable GLM analysis when short channels show signals that are similar to the expected hemodynamic responses.
AB - Background: functional near-infrared spectroscopy (fNIRS) is an increasingly popular tool to study cortical activity during movement and gait that requires further validation. This study aimed to assess (1) whether fNIRS can detect the difficult-to-measure leg area of the primary motor cortex (M1) and distinguish it from the hand area; and (2) whether fNIRS can differentiate between automatic (i.e., not requiring one's attention) and non-automatic movement processes. Special attention was attributed to systemic artifacts (i.e., changes in blood pressure, heart rate, breathing) which were assessed and corrected by short channels, i.e., fNIRS channels which are mainly sensitive to superficial scalp hemodynamics.Methods: Twenty-three seated, healthy participants tapped four fingers on a keyboard or tapped the right foot on four squares on the floor in a specific order given by a 12-digit sequence (e.g., 434141243212). Two different sequences were executed: a beforehand learned (i.e., automatic) version and a newly learned (i.e., non-automatic) version. A 36-channel fNIRS device including 12 short channels covered multiple motor-related cortical areas including M1. The fNIRS data were analyzed with a general linear model (GLM). Correlation between the expected functional hemodynamic responses (i.e. task regressor) and the short channels (i.e. nuisance regressors), necessitated performing a separate short channel regression instead of integrating them in the GLM.Results: Consistent with the M1 somatotopy, we found significant HbO increases of very large effect size in the lateral M1 channels during finger tapping (Cohen's d = 1.35, p<0.001) and significant HbO increases of moderate effect size in the medial M1 channels during foot tapping (Cohen's d = 0.8, p<0.05). The cortical activity differences between automatic and non-automatic tasks were not significantly different. Importantly, leg movements produced large systemic fluctuations, which were adequately removed by the use of all available short channels.Discussion: Our results indicate that fNIRS is sensitive to leg activity in M1, though the sensitivity is lower than for finger activity and requires rigorous correction for systemic fluctuations. We furthermore highlight that systemic artifacts may result in an unreliable GLM analysis when short channels show signals that are similar to the expected hemodynamic responses.
KW - Functional near-infrared spectroscopy (fNIRS)
KW - Movement automaticity
KW - Primary motor cortex
KW - Short channels
KW - Somatotopy
KW - System physiology
UR - https://www.scopus.com/pages/publications/85149170607
U2 - 10.1016/j.neuroimage.2023.119880
DO - 10.1016/j.neuroimage.2023.119880
M3 - Article
C2 - 36693595
AN - SCOPUS:85149170607
SN - 1053-8119
VL - 269
JO - NeuroImage
JF - NeuroImage
M1 - 119880
ER -