Psychologists simplifying brain-imaging data analysis

brain
White matter fiber architecture of the brain. Credit: Human Connectome Project.

Neuroscience research has made incredible strides toward revealing the inner workings of our brains – how we make decisions, plan for the future or experience emotions – thanks in part to technological advances, but barriers in sharing and accessing that data stymie progress in the field.

Stanford psychologists are addressing those barriers through a new way of organizing brain-imaging that simplifies and helps researchers collaborate more effectively – they call it BIDS (Brain Imaging Data Structure).

The easier it becomes to analyze and organize data, said Russell Poldrack, a professor of psychology, the more easily that data can be shared among researchers, leading to more transparency and more progress in understanding the brain.

"We've been interested for a long time in finding ways to share data between groups," said Poldrack, director of the Stanford Center for Reproducible Neuroscience. "Sharing data is a good thing because it allows different research groups to reuse data and maximizes its potential."

MRI analysis today

Thousands of research MRI studies are performed every year generating substantial amounts of data. However, there's no consensus on how that data should be organized.

Conceivably, you could have two neuroscience researchers working side-by-side in the same lab analyzing the same MRI scans and recording the data differently. These labs also experience significant turnover with doctoral students and postdoctoral scholars leaving for teaching and other research positions. New researchers entering the lab may need to decipher data in a format they're not accustomed to. The dilemma gets further complicated as new data analysis methods are being developed, providing even more ways to organize the data.

For example, Poldrack's group is currently working on a project where participants undergo MRI scans to study their brain activity related to self-control. The data the team collects are images – up to 40 or 50 files – of the brain in various stages. But transferring these files from the MRI scanner to a format the lab's software program can read requires transforming the files – a process that has traditionally been idiosyncratic among different researchers.

Without a common standard, it becomes increasingly difficult for researchers to maximize these valuable data sets. It would be like if thousands of U.S. Census takers gathering demographic information on Americans all over the country sent their survey results back in different languages.

BIDS, the researchers say, solves that problem by providing a uniform standard.

"Basically, we constructed this language where all people collecting brain data understand each other," said Chris Gorgolewski, co-director of the Stanford Center for Reproducible Neuroscience.

How BIDS works

BIDS is essentially a collection of related apps that help handle different aspects of data analysis and storage. Once a new app is tested and deployed it resides in a cloud-based service, where other scientists can download the apps directly for their own use.

The group originally developed BIDS with support from the International Neuroinformatics Coordinating Facility, a global organization dedicated to promoting data sharing among neuroscientists. The Stanford Center for Reproducible Neuroscience has taken the lead in championing BIDS as the standard language for MRI data.

In addition to publishing research about BIDS, the center has also hosted two annual workshops, each bringing together about 30 researchers and developers from around the world to learn about and build these apps. The lab also received a $1.4 million grant last month from the National Institutes of Health BRAIN Initiative to further the development of BIDS.

The center's researchers, including Gorgolewski and postdoctoral research fellow Oscar Esteban, have either built or facilitated the building of 22 BIDS apps. Their most recent innovation is the MRIQC tool (MRI Quality Control), which performs quality assessments and large-scale analysis of MRI data, which they discussed in a Sept. 25 article in PLOS ONE.

MRI image analysis takes time and involves numerous steps, and often requires external software. The BIDS apps, conversely, are compatible with major operating systems with minimal extra work for users. They are meant to be "plug and play," Esteban said.

Transparency and reproducibility

Poldrack readily admits that apps that help organize data sound "pretty boring." He said he and his researchers sometimes see themselves as "plumbers" fixing infrastructure.

But offering a setting of openness where scholars around the world have access to critical data is worth the work.

"The bigger picture for us is transparency and reproducibility," Poldrack said. "There are interesting scientific questions we want people to get at, questions about how our different psychological functions are related to each other. Part of what we want to do is to convince people to share their data when they run a study to do interesting science or reproduce the results."

More information: Oscar Esteban et al. MRIQC: Advancing the automatic prediction of image quality in MRI from unseen sites, PLOS ONE (2017). DOI: 10.1371/journal.pone.0184661

Journal information: PLoS ONE
Citation: Psychologists simplifying brain-imaging data analysis (2017, October 2) retrieved 28 March 2024 from https://medicalxpress.com/news/2017-10-psychologists-brain-imaging-analysis.html
This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no part may be reproduced without the written permission. The content is provided for information purposes only.

Explore further

Data sharing can offer help in science's reproducibility crisis

175 shares

Feedback to editors