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The ANTsX ecosystem for quantitative biological and medical imaging
369
Zitationen
14
Autoren
2021
Jahr
Abstract
The Advanced Normalizations Tools ecosystem, known as ANTsX, consists of multiple open-source software libraries which house top-performing algorithms used worldwide by scientific and research communities for processing and analyzing biological and medical imaging data. The base software library, ANTs, is built upon, and contributes to, the NIH-sponsored Insight Toolkit. Founded in 2008 with the highly regarded Symmetric Normalization image registration framework, the ANTs library has since grown to include additional functionality. Recent enhancements include statistical, visualization, and deep learning capabilities through interfacing with both the R statistical project (ANTsR) and Python (ANTsPy). Additionally, the corresponding deep learning extensions ANTsRNet and ANTsPyNet (built on the popular TensorFlow/Keras libraries) contain several popular network architectures and trained models for specific applications. One such comprehensive application is a deep learning analog for generating cortical thickness data from structural T1-weighted brain MRI, both cross-sectionally and longitudinally. These pipelines significantly improve computational efficiency and provide comparable-to-superior accuracy over multiple criteria relative to the existing ANTs workflows and simultaneously illustrate the importance of the comprehensive ANTsX approach as a framework for medical image analysis.
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Autoren
Institutionen
- University of Virginia(US)
- University of Pennsylvania(US)
- University of California, Los Angeles(US)
- Philadelphia University(US)
- University of Iowa(US)
- Johns Hopkins University(US)
- McGill University(CA)
- Douglas Mental Health University Institute(CA)
- Lund University(SE)
- Scania (Sweden)(SE)
- University of California, Irvine(US)