학술논문

Fully automated whole brain segmentation from rat MRI scans with a convolutional neural network
Document Type
article
Source
Subject
Biomedical and Clinical Sciences
Neurosciences
Dementia
Alzheimer's Disease
Machine Learning and Artificial Intelligence
Networking and Information Technology R&D (NITRD)
Neurodegenerative
Aging
Bioengineering
Acquired Cognitive Impairment
Alzheimer's Disease including Alzheimer's Disease Related Dementias (AD/ADRD)
Biomedical Imaging
Brain Disorders
Neurological
Rats
Animals
Image Processing
Computer-Assisted
Neural Networks
Computer
Brain
Magnetic Resonance Imaging
Neuroimaging
Alzheimer Disease
Automated Segmentation
Machine Learning
Preclinical Neuroimaging
Rodent Brain Imaging
MRI
Skull Stripping
Psychology
Cognitive Sciences
Neurology & Neurosurgery
Language
Abstract
BackgroundWhole brain delineation (WBD) is utilized in neuroimaging analysis for data preprocessing and deriving whole brain image metrics. Current automated WBD techniques for analysis of preclinical brain MRI data show limited accuracy when images present with significant neuropathology and anatomical deformations, such as that resulting from organophosphate intoxication (OPI) and Alzheimer's Disease (AD), and inadequate generalizability.MethodsA modified 2D U-Net framework was employed for WBD of MRI rodent brains, consisting of 27 convolutional layers, batch normalization, two dropout layers and data augmentation, after training parameter optimization. A total of 265 T2-weighted 7.0 T MRI scans were utilized for the study, including 125 scans of an OPI rat model for neural network training. For testing and validation, 20 OPI rat scans and 120 scans of an AD rat model were utilized. U-Net performance was evaluated using Dice coefficients (DC) and Hausdorff distances (HD) between the U-Net-generated and manually segmented WBDs.ResultsThe U-Net achieved a DC (median[range]) of 0.984[0.936-0.990] and HD of 1.69[1.01-6.78] mm for OPI rat model scans, and a DC (mean[range]) of 0.975[0.898-0.991] and HD of 1.49[0.86-3.89] for the AD rat model scans.Comparison with existing methodsThe proposed approach is fully automated and robust across two rat strains and longitudinal brain changes with a computational speed of 8 seconds/scan, overcoming limitations of manual segmentation.ConclusionsThe modified 2D U-Net provided a fully automated, efficient, and generalizable segmentation approach that achieved high accuracy across two disparate rat models of neurological diseases.