The stroke outcome optimization project: Acute ischemic strokes from a comprehensive stroke center.
John AbsherSarah GoncherRoger Newman-NorlundNicholas PerkinsGrigori YourganovJan VargasSanjeev SivakumarNaveen PartiShannon SternbergAlex TeghipcoMakayla GibsonSarah C WilsonLeonardo BonilhaChris RordenPublished in: Scientific data (2024)
Stroke is a leading cause of disability, and Magnetic Resonance Imaging (MRI) is routinely acquired for acute stroke management. Publicly sharing these datasets can aid in the development of machine learning algorithms, particularly for lesion identification, brain health quantification, and prognosis. These algorithms thrive on large amounts of information, but require diverse datasets to avoid overfitting to specific populations or acquisitions. While there are many large public MRI datasets, few of these include acute stroke. We describe clinical MRI using diffusion-weighted, fluid-attenuated and T1-weighted modalities for 1715 individuals admitted in the upstate of South Carolina, of whom 1461 have acute ischemic stroke. Demographic and impairment data are provided for 1106 of the stroke survivors from this cohort. Our validation demonstrates that machine learning can leverage the imaging data to predict stroke severity as measured by the NIH Stroke Scale/Score (NIHSS). We share not only the raw data, but also the scripts for replicating our findings. These tools can aid in education, and provide a benchmark for validating improved methods.
Keyphrases
- machine learning
- contrast enhanced
- magnetic resonance imaging
- atrial fibrillation
- diffusion weighted
- big data
- healthcare
- acute ischemic stroke
- cerebral ischemia
- electronic health record
- computed tomography
- artificial intelligence
- diffusion weighted imaging
- mental health
- magnetic resonance
- public health
- health information
- rna seq
- deep learning
- social media
- quality improvement
- high resolution
- emergency department
- oxidative stress