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*Hands-on Reproducible Analysis of Neuroimaging Data*
*A ReproNim Pre-SFN 2018 Training Workshop*
*Register here: https://tinyurl.com/repronim-sfn18
<https://tinyurl.com/repronim-sfn18>*
Purpose:

An increasing body of evidence point to some issues in reproducibility in
biomedical or life sciences, raising concerns in the scientific community.
ReproNim has developed a curriculum
<http://www.reproducibleimaging.org/#training> that will give the students
the information, tools and practices to perform repeatable and efficient
research and a map of where to find the resources for deeper practical
training.

This training workshop will introduce material on the key aspects of
reproducible brain imaging and will orient attendees using a hands on and
practical experience to conduct neuroimaging analyses, using the next
generation of tools.  By the end of this course, the student will be aware
of training materials and concepts necessary to perform reproducible
research in neuroimaging. The student will be able to reuse these materials
to conduct local workshops and training and be able to customize the
training for their specific scenario.
Prerequisites:

If you are a student, postdoc or researcher in life science who directly
works with neuroimaging data - or wish to work with these data, and you
have some basic computational background, *this training workshop is for
you*. You should have already done either some R, or Python, or Matlab or
Shell scripting, or have used standard neuroimaging tools (SPM, FSL, Afni,
FreeSurfer, etc) and be engaged in a neuroimaging research project. You
should have already completed a neuroimaging analysis or know how to do one.
Modules:Module Reproducibility Basics: Friday Nov. 2. 9am-10:45am.

This module guides through three topics, which are in the heart of
establishing and efficiently using common generic resources: command line
shell, version control systems (for code and data), and distribution
package managers. Gaining additional skills in any of those topics will
help you to not only become more efficient in your day-to-day research
activities, but also would lay foundation in establishing habits to make
your work more reproducible.
Module FAIR Data: Friday Nov. 2. 11am-12:45.

This module provides an overview of strategies for making research outputs
available through the web, with an emphasis on data. It introduces concepts
such persistent identifiers, linked data, the semantic web and the FAIR
principles. It is designed for those with little to no familiarity with
these concepts. More technical discussions can be found in the reference
materials.
Module Data Processing: Friday Nov. 2. 2pm-3:45pm.

This module teaches you to perform reproducible analysis, how to preserve
the information, and how to share data and code with others. We will show
an example framework for reproducible analysis, how to annotate, harmonize,
clean, and version brain imaging data, how to create and maintain
reproducible computational environments for analysis and use dataflow tools
to capture provenance and perform efficient analyses (docker) and other
tools.
Module Statistics: Friday 4pm-5:15pm

The goal of this module is to teach brain imagers about the statistical
aspects of reproducibility.  This module should give you a critical eye on
the current literature and the knowledge to do solid statistical analysis,
understand the limitations of p-values, the notion of power and of positive
predictive values and how to represent evidence for results.
Reproducible publication project - Saturday 9am-12:00

This is an hands on session: small groups will work with the instructors on
the steps to deliver a fully reproducible publication.
Logistics:

*Location*: University of California San Diego (detail of location will be
given by email)
*Dates*: November 02-03, 2018.
*How to register*: *https://tinyurl.com/repronim-sfn18
<https://tinyurl.com/repronim-sfn18>*
*Costs*:  25$.
*Schedule*:
*            Friday November 2nd:*
                        8:30-9am: Introduction to the course and
participants “setup”
                        9am-10:45: Reproducibility Basics
                        10:45-11am : Coffee break
                        11am-12:45: FAIR data
                        12:45-2pm : Lunch+coffee
                        2pm-3:45: Data Processing
                        3:45-4pm: coffee break
                        4pm-5:15pm: Statistics for reproducible analyses
*            Saturday November 3rd:*
                        9am-9:30: Questions and answers and feedback session
                        9:30-12pm:  The Re-executable Micro Publication
Challenge
                                  During this time, we will propose a small
challenge around producing an entirely re-executable
                                  neuroimaging analysis from fetching data
to producing statistical results. This will also be a
                                  time with close interactions with
neuroimaging experts in data handling and analysis.
                        12pm-12:30: Closing session: feedback and future:
“become a trainer”.
*Online office hours will be held prior to the workshop. Registered
attendees will receive information via email.*

*Instructors: *J. Bates, S. Ghosh, J. Grethe, Y. Halchenko, M. Hanke, C.
Haselgrove, S. Hodge, D. Jarecka, D. Keator, D. Kennedy, M. Martone, N.
Nichols, S. A. Abraham, J.-B. Poline, N. Preuss, M. Travers, and others

*This workshop is brought to you by ReproNim: A Center for Reproducible
Neuroimaging Computation NIH-NIBIB P41 EB019936*
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