1. Convolutional Neural Net Learning Can Achieve Production-Level Brain Segmentation in Structural Magnetic Resonance Imaging
- Author
-
Evan Fletcher, Charles DeCarli, Audrey P. Fan, and Alexander Knaack
- Subjects
Computer science ,convolutional neural network ,Neurosciences. Biological psychiatry. Neuropsychiatry ,Convolutional neural network ,medical image processing ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Medical imaging ,Psychology ,Brain segmentation ,magnetic resonance imaging ,Segmentation ,Original Research ,Ground truth ,Artificial neural network ,business.industry ,General Neuroscience ,Deep learning ,Neurosciences ,deep learning ,Pattern recognition ,brain segmentation ,Neurological ,Metric (mathematics) ,Biomedical Imaging ,Cognitive Sciences ,Artificial intelligence ,business ,medical imaging data ground truth ,030217 neurology & neurosurgery ,Neuroscience ,RC321-571 - Abstract
Deep learning implementations using convolutional neural nets have recently demonstrated promise in many areas of medical imaging. In this article we lay out the methods by which we have achieved consistently high quality, high throughput computation of intra-cranial segmentation from whole head magnetic resonance images, an essential but typically time-consuming bottleneck for brain image analysis. We refer to this output as “production-level” because it is suitable for routine use in processing pipelines. Training and testing with an extremely large archive of structural images, our segmentation algorithm performs uniformly well over a wide variety of separate national imaging cohorts, giving Dice metric scores exceeding those of other recent deep learning brain extractions. We describe the components involved to achieve this performance, including size, variety and quality of ground truth, and appropriate neural net architecture. We demonstrate the crucial role of appropriately large and varied datasets, suggesting a less prominent role for algorithm development beyond a threshold of capability.
- Published
- 2021