A Reproducible Workflow for Structural and Functional Connectome Ensemble Learning
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Updated
Feb 1, 2024 - Python
A Reproducible Workflow for Structural and Functional Connectome Ensemble Learning
Easy and comprehensive assessment of predictive power, with support for neuroimaging features
fMRI Imaging Analysis
Repository for the Brainhack School 2020 team working with fMRI and ABIDE data to train machine learning models.
Python extension backed by a multi-threaded Rust implementation of Dynamic Time Warping (DTW).
Introduction to neuroimaging machine learning tool Nilearn
group sequential tests for neuroimaging
plot fMRI ROIs with different colors
Methods for estimating time-varying functional connectivity (TVFC)
Kurs zu fMRT-Datenanalyse mit Python (Sommersemester 2019). Eigenständige Erstellung von MRT-Viewern und DIY-Analyse von fMRT-Zeitverläufen und Aktivierungskarten mit Python.
Applying CNNs, Decoders, and Transfer Learning to distinguish the MRIs of heavy cannabis users vs. controls
Atlas methods and classes for neuroimaging
Seed-based resting-state functional connectivity with Nilearn.
This repository explores functional brain connectivity using fMRI data and methods for constructing and visualizing functional connectomes. This work was developed by Ana Silva, Catarina Finuras, João Mata (me) and Tomás Serra from Técnico Lisboa.
Sex Classification based on Functional Connectivity using fMRI
Drop-in extra features for Nilearn
Predicting risky behavior in structural brain volume using the UK Biobank
Materials for the MRICN module, University of Birmingham (2024)
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