Machine learning based analysis of stroke lesions on mouse tissue sections.
Gerasimos DamigosEvangelia I ZacharakiNefeli ZervaAngelos PavlopoulosKonstantina ChatzikyrkouArgyro KoumentiKonstantinos MoustakasConstantinos PantosIordanis MourouzisAthanasios LourbopoulosPublished in: Journal of cerebral blood flow and metabolism : official journal of the International Society of Cerebral Blood Flow and Metabolism (2022)
An unbiased, automated and reliable method for analysis of brain lesions in tissue after ischemic stroke is missing. Manual infarct volumetry or by threshold-based semi-automated approaches is laborious, and biased to human error or biased by many false -positive and -negative data, respectively. Thereby, we developed a novel machine learning, atlas-based method for fully automated stroke analysis in mouse brain slices stained with 2% Triphenyltetrazolium-chloride (2% TTC), named "StrokeAnalyst", which runs on a user-friendly graphical interface. StrokeAnalyst registers subject images on a common spatial domain (a novel mouse TTC- brain atlas of 80 average mathematical images), calculates pixel-based, tissue-intensity statistics (z-scores), applies outlier-detection and machine learning (Random-Forest) models to increase accuracy of lesion detection, and produces volumetry data and detailed neuroanatomical information per lesion. We validated StrokeAnalyst in two separate experimental sets using the filament stroke model. StrokeAnalyst detects stroke lesions in a rater-independent and reproducible way, correctly detects hemispheric volumes even in presence of post-stroke edema and significantly minimizes false-positive errors compared to threshold-based approaches (false-positive rate 1.2-2.3%, p < 0.05). It can process scanner-acquired, and even smartphone-captured or pdf-retrieved images. Overall, StrokeAnalyst surpasses all previous TTC-volumetry approaches and increases quality, reproducibility and reliability of stroke detection in relevant preclinical models.
Keyphrases
- machine learning
- deep learning
- atrial fibrillation
- big data
- artificial intelligence
- cerebral ischemia
- convolutional neural network
- high throughput
- label free
- healthcare
- loop mediated isothermal amplification
- single cell
- optical coherence tomography
- resting state
- electronic health record
- multiple sclerosis
- acute myocardial infarction
- left ventricular
- magnetic resonance imaging
- stem cells
- subarachnoid hemorrhage
- functional connectivity
- magnetic resonance
- brain injury
- acute coronary syndrome
- contrast enhanced