Department of Data Analysis BSD/MIT-Style Open Source License Yes Ghent University NITRC Resting State Hemodynamic Response Function Retrieval and Deconvolution (RS-HRF) Yes Python, MATLAB Sofie Van Den Bossche This toolbox is aimed to retrieve the onsets of pseudo-events triggering an hemodynamic response from resting state fMRI BOLD signal. It is based on point process theory, and fits a model to retrieve the optimal lag between the events and the HRF onset, as well as the HRF shape, using different shape parameters or combinations of basis functions. Once that the HRF has been retrieved for each voxel/vertex, it can be deconvolved from the time series (for example to improve lag-based connectivity estimates), or one can map the shape parameters everywhere in the brain (including white matter), and use it as a pathophysiological indicator. Input can be 2D GIfTI, 3D or 4D NIfTI images, but also on time series matrices/vectors. The output are three HRF shape parameters for each voxel/vertex, plus the deconvolved time series, and the number of retrieved pseudo-events. All can be written back to GIfTI or NIfTI images. Please refer to the links on the left for the different versions and relative documentation. 2021-6-25 rsHRF v2.4.0 (MATLAB) 2021-1-21 rsHRF demo results 2020-3-02 Demo data (surface, .gii) 2019-1-23 Demo data (volumetric, .nii) Resting State Hemodynamic Response Function Retrieval and Deconvolution (RS-HRF) Time Domain Analysis, Statistical Operation, MR, Computational Neuroscience, BSD/MIT-Style Open Source License, Python, MATLAB http://www.nitrc.org/projects/rshrf/, http://https://github.com/compneuro-da/rsHRF sofie.vandenbossche@ugent.be