v1v2 (latest)
Efficient, high-performance pancreatic segmentation using multi-scale
feature extraction
PLoS ONE (PLOS ONE), 2020
Georgios Kaissis
- MedIm
Abstract
For artificial intelligence-based image analysis methods to reach clinical applicability, the development of high-performance algorithms is crucial. For example, existent segmentation algorithms based on natural images are neither efficient in their parameter use nor optimized for medical imaging. Here we present MoNet, a highly optimized neural-network-based pancreatic segmentation algorithm focused on achieving high performance by efficient multi-scale image feature utilization.
View on arXivComments on this paper
