Medical imaging

Courses about medical imaging
Related tags:

Courses tagged with "Medical imaging"

Learn how to model the neural network in the brain using Python.
Teacher: Camh Team
Start date: 4 Aug 2020
End date: 7 Aug 2020
Get familiar with how one can manipulate and transform neuroimaging data using Python s neuroimaging packages (nibabel, nilearn). Develop an understanding how MRI data is represented in Python and perform some hands-on tasks such as basic manipulation on both structural MR and functional MR. Then we will discuss the steps required to take minimally pre-processed MR data (fmriprep), to clean and workable data through the process of motion cleaning and dimensionality reduction. Finally, we will cover how to perform functional connectivity (FC) analysis to build a resting state connectivity matrix. All analyses will be performed using Jupyter notebooks in the spirit of reproducible and open science.
Teacher: Camh Team
Start date: 21 Jul 2020
End date: 23 Jul 2020
Introduction to the neuroimaging data and best practices for the analysis of neuroimaging data using High Performance Clusters (HPC). We will introduce types of neuroimaging scanning modalities with instructions for how to organize these data using the Brain Imaging Data Structure (BIDS). We will then introduce Singularity container software (BIDS-apps) for the preprocessing of neuroimaging data (including mriqc and fmriprep) and demonstrate how to run them on the HPC. We will discuss general information about running Singularity containerized software on the HPC and how to construct custom containers for your own analysis using NeuroDocker.
Teacher: Camh Team
Start date: 14 Jul 2020
End date: 16 Jul 2020
This course will teach about analyzing MRI data with R using traditional and bayesian methods. We will demonstrate general techniques using ROI level neuroanatomical analyses including structure volume and cortical thickness, and give you hands on practice with hierarchical modelling using the Stan probabilistic programming language.
Teacher: SciNet Team
Date: Thu, 27 Jun 2019 - 1:30 pm
Practical Introduction to machine learning for neuroimaging: classifiers, dimensionality reduction, cross-validation and neuropredict. How to apply machine learning to your data, even if you do not know how to program. Learn what is machine learning and get a high-level overview of few popular types of classification and dimensionality reduction methods. Learn (without any math) how support vector machines work. Learn how to plan a predictive analysis study on your own data? What are the key steps of the workflow? What are the best practices, and which cross-validation scheme to choose? How to evaluate and report classification accuracy? Learn which toolboxes to use when, with a practical categorization of few toolboxes. This is followed by detailed demo of neuropredict, for automatic estimation of predictive power of different features or classifiers without needing to code at all.
Teacher: SciNet Team
Date: Thu, 27 Jun 2019 - 9:30 am
Python is increasingly becoming common-place in the analysis of neuroimaging data. This course will familiarize attendees with how one can manipulate and transform neuroimaging data using Python s neuroimaging packages (nibabel, nilearn). We will begin with first developing an understanding how MRI data is represented in Python and perform some hands-on tasks such as basic manipulation on both structural MR and functional MR. Then we will discuss the steps required to take minimally pre-processed MR data (fmriprep), to clean and workable data through the process of motion cleaning and dimensionality reduction. The final component of the course will involve performing functional connectivity (FC) analysis to build a resting state connectivity matrix. All analyses will be performed using Jupyter notebooks in the spirit of reproducible and open science.
Teacher: SciNet Team
Date: Wed, 26 Jun 2019 - 1:30 pm
The course will introduce participants to the neuroimaging data and best practices for the analysis of neuroimaging data using High Performance Clusters (HPC). We will introduce types of neuroimaging scanning modalities with instructions for how to organize these data using the Brain Imaging Data Structure (BIDS). We will then introduce Singularity container software (BIDS-apps) for the preprocessing of neuroimaging data (including mriqc and fmriprep) and demonstrate how to run them on the HPC. We will discuss general information about running Singularity containerized software on the HPC and how to construct custom containers for your own analysis using NeuroDocker. -- Prerequisites: basic Linux command line skills
Teacher: SciNet Team
Date: Wed, 26 Jun 2019 - 9:30 am
This 1/2 day course will focus of cortical surface based neuroimaging analysis. We will talk use SciNet to run freesurfer's recon-all pipeline to define the cortical surfaces in our datasets. We will then use Connectome-Workbench (tools from the Human Connectome Project, or HCP) to analyse and visualize our data.
Date: Tue, 12 Jun 2018 - 1:30 pm
How to find and use public datasets for neuroscience research with a focus on transcriptomics and neuroimaging. Introduction and guides to some of the largest datasets will be provided (Allen human brain atlases, BrainEAC, ADNI, and the Human Connectome Project).
Teacher: Leon French
Date: Fri, 15 Jun 2018 - 9:30 am
This course will teach about analyzing MRI data with R. We will focus on volumes/cortical thickness, etc., and teach both classic massively univariate as well as (to us!) more interesting hierarchical bayesian approaches.
Date: Thu, 14 Jun 2018 - 1:30 pm
Approaches to parallelization (utilizing SciNet systems) for image analysis.
Teacher: Camh Team
Date: Tue, 12 Jun 2018 - 9:30 am
This 1 day course will introduce python packages and approaches for medical imaging applications (MRI specifically). We will give an overview of specific command line based tools (freesurfer/FSL) for image analysis introduce how to interface with them using python. Specific python packages will be for nibabel (for MR image i/o), nilearn (for plotting/visualization) and nipype (for pipeline development/parallelization).
Teacher: Camh Team
Date: Mon, 11 Jun 2018 - 1:30 pm
Part of the 2017 Ontario Summer School.
Teacher: SciNet Team
Date: Thu, 27 Jul 2017 - 1:30 pm
Part of the 2017 Ontario Summer School.
Teacher: SciNet Team
Date: Wed, 26 Jul 2017 - 1:30 pm
Part of the 2017 Ontario Summer School.
Teacher: SciNet Team
Date: Wed, 26 Jul 2017 - 9:30 am