Cross Attention Squeeze Excitation Network (CASE-Net) for Whole Body Fetal MRI Segmentation.
Justin LoSaiee NithiyananthamJillian CardinellDylan YoungSherwin ChoAbirami KirubarajanMatthias W WagnerRoxana AzmaSteven MillerMike SeedBirgit Ertl-WagnerStephen D WaldmanPublished in: Sensors (Basel, Switzerland) (2021)
Segmentation of the fetus from 2-dimensional (2D) magnetic resonance imaging (MRI) can aid radiologists with clinical decision making for disease diagnosis. Machine learning can facilitate this process of automatic segmentation, making diagnosis more accurate and user independent. We propose a deep learning (DL) framework for 2D fetal MRI segmentation using a Cross Attention Squeeze Excitation Network (CASE-Net) for research and clinical applications. CASE-Net is an end-to-end segmentation architecture with relevant modules that are evidence based. The goal of CASE-Net is to emphasize localization of contextual information that is relevant in biomedical segmentation, by combining attention mechanisms with squeeze-and-excitation (SE) blocks. This is a retrospective study with 34 patients. Our experiments have shown that our proposed CASE-Net achieved the highest segmentation Dice score of 87.36%, outperforming other competitive segmentation architectures.
Keyphrases
- deep learning
- convolutional neural network
- artificial intelligence
- magnetic resonance imaging
- machine learning
- contrast enhanced
- end stage renal disease
- working memory
- newly diagnosed
- chronic kidney disease
- decision making
- healthcare
- ejection fraction
- computed tomography
- high resolution
- peritoneal dialysis
- prognostic factors
- quantum dots
- energy transfer