Tutorial: Medical Image Analysis
Brandon
Whitcher, GlaxoSmithKline Clinical Imaging Centre,
United Kingdom.
Jörg
Polzehl, Weierstrass Institute for Applied
Analysis and Stochastics, Germany.
Karsten
Tabelow, Weierstrass Institute for Applied
Analysis and Stochastics, Germany.
Abstract
The field of medical imaging covers a vast range of disciplines
and applications. There is a growing collection of open-source
software (OSS) solutions for all aspects of data management,
processing, analysis and visualization. This tutorial will
introduce packages from the Medical Imaging task view and apply
them to structural and functional MRI data. A step-by-step
introduction will be given using medical imaging data that will
be made available for the tutorial.
Goals
By the end of the tutorial attendees will be able to:
-
Read and write medical imaging data in standard formats.
-
Manipulate and visualize medical imaging data.
-
Apply summary statistics and statistical models to medical
imaging data.
-
Know where to find medical imaging resources in the R
community.
Outline
-
Data Import/Export using oro.dicom and
oro.nifti
-
Functional MRI using fmri
-
Diffusion weighted imaging (DTI and beyond) using
dti
-
Dynamic Contrast-Enhanced MRI using dcemriS4
Intended Audience
R users (statisticians, medical physicists or researchers) with
an interest in the quantitative analysis of neuroscience and/or
oncology imaging data.
Prerequisites
Attendees will require a basic understanding of an
interpreted programming language; such as R (preferred) or
Matlab. Attendees will also require a basic understanding of
statistical methodology; such as summary statistics,
hypothesis tests, linear regression, non-linear regression,
etc. Basic knowledge of medical imaging (specifically MRI) is
an advantage but not necessary.
The tutorial will be interactive and involve the analysis of
medical imaging data in real time. In order to participate
attendees are required to bring their own laptop with R
installed and the packages: oro.dicom,
oro.nifti, fmri, dti,
dcemriS4 and their dependencies. The data will be
made accessible before the conference.
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