Accelerometry as a tool for measuring the effects of Transcranial Magnetic Stimulation

Gautier Hamoline, Elise E Van Caenegem, Baptiste M Waltzing,Pierre Vassiliadis,Gerard Derosiere,Julie Duque,Robert M Hardwick

Journal of Neuroscience Methods(2024)

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摘要
Objective We predicted that accelerometry would be a viable alternative to electromyography (EMG) for assessing fundamental Transcranial Magnetic Stimulation (TMS) measurements (e.g. Resting Motor Threshold (RMT), recruitment curves, latencies). New Method 21 participants were tested. TMS evoked responses were recorded with EMG on the First Dorsal Interosseus muscle and an accelerometer on the index fingertip. TMS was used to determine the (EMG-defined) RMT, then delivered at a range of intensities allowing determination of both the accelerometry-defined RMT and measurement of recruitment curves. Results RMT assessed by EMG was significantly lower than for accelerometry (t(19)=-3.84, p<.001, mean±SD EMG = 41.1±5.28% MSO (maximum stimulator output), Jerk = 44.55±5.82% MSO), though RMTs calculated for each technique were highly correlated (r(18)=.72, p<.001). EMG/Accelerometery recruitment curves were strongly correlated (r(14)=.98, p<.001), and Bayesian model comparison indicated they were equivalent (BF01>9). Latencies measured with EMG were lower and more consistent than those identified using accelerometry (χ2(1)=80.38, p<.001, mean±SD EMG=27.01±4.58ms, Jerk=48.4±15.33ms). Comparison with existing methods EMG is used as standard by research groups that study motor control and neurophysiology. But accelerometry has not yet been considered as a potential tool to assess measurements such as the overall magnitude and latency of the evoked response. Conclusions While EMG provides more sensitive and reliable measurements of RMT and latency, accelerometry provides a reliable alternative to measure of the overall magnitude of TMS evoked responses.
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关键词
transcranial magnetic stimulation,electromyography,accelerometry
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