Neurotrauma Reports (Apr 2022)

Empowering Data Sharing and Analytics through the Open Data Commons for Traumatic Brain Injury Research

  • Austin Chou,
  • Abel Torres-Esp?n,
  • J. Russell Huie,
  • Karen Krukowski,
  • Sangmi Lee,
  • Amber Nolan,
  • Caroline Guglielmetti,
  • Bridget E. Hawkins,
  • Myriam M. Chaumeil,
  • Geoffrey T. Manley,
  • Michael S. Beattie,
  • Jacqueline C. Bresnahan,
  • Maryann E. Martone,
  • Jeffrey S. Grethe,
  • Susanna Rosi,
  • Adam R. Ferguson

DOI
https://doi.org/10.1089/NEUR.2021.0061
Journal volume & issue
Vol. 3, no. 1
pp. 139 – 157

Abstract

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Traumatic brain injury (TBI) is a major public health problem. Despite considerable research deciphering injury pathophysiology, precision therapies remain elusive. Here, we present large-scale data sharing and machine intelligence approaches to leverage TBI complexity. The Open Data Commons for TBI (ODC-TBI) is a community-centered repository emphasizing Findable, Accessible, Interoperable, and Reusable data sharing and publication with persistent identifiers. Importantly, the ODC-TBI implements data sharing of individual subject data, enabling pooling for high-sample-size, feature-rich data sets for machine learning analytics. We demonstrate pooled ODC-TBI data analyses, starting with descriptive analytics of subject-level data from 11 previously published articles (N?=?1250 subjects) representing six distinct pre-clinical TBI models. Second, we perform unsupervised machine learning on multi-cohort data to identify persistent inflammatory patterns across different studies, improving experimental sensitivity for pro- versus anti-inflammation effects. As funders and journals increasingly mandate open data practices, ODC-TBI will create new scientific opportunities for researchers and facilitate multi-data-set, multi-dimensional analytics toward effective translation.

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