학술논문

Topological data analysis for discovery in preclinical spinal cord injury and traumatic brain injury.
Document Type
article
Source
Nature communications. 6(1)
Subject
Animals
Rats
Brain Injuries
Spinal Cord Injuries
Disease Models
Animal
Data Interpretation
Statistical
Computational Biology
Injury - Trauma - (Head and Spine)
Neurodegenerative
Injury - Traumatic brain injury
Neurosciences
Spinal Cord Injury
Brain Disorders
Injury (total) Accidents/Adverse Effects
Injuries and accidents
Neurological
Good Health and Well Being
Language
Abstract
Data-driven discovery in complex neurological disorders has potential to extract meaningful syndromic knowledge from large, heterogeneous data sets to enhance potential for precision medicine. Here we describe the application of topological data analysis (TDA) for data-driven discovery in preclinical traumatic brain injury (TBI) and spinal cord injury (SCI) data sets mined from the Visualized Syndromic Information and Outcomes for Neurotrauma-SCI (VISION-SCI) repository. Through direct visualization of inter-related histopathological, functional and health outcomes, TDA detected novel patterns across the syndromic network, uncovering interactions between SCI and co-occurring TBI, as well as detrimental drug effects in unpublished multicentre preclinical drug trial data in SCI. TDA also revealed that perioperative hypertension predicted long-term recovery better than any tested drug after thoracic SCI in rats. TDA-based data-driven discovery has great potential application for decision-support for basic research and clinical problems such as outcome assessment, neurocritical care, treatment planning and rapid, precision-diagnosis.