Difference between revisions of "2017 Winter Project Week/DeepInfer"
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* Alireza Mehrtash (BWH, UBC) | * Alireza Mehrtash (BWH, UBC) | ||
* Mehran Pesteie (UBC) | * Mehran Pesteie (UBC) | ||
− | * Silvia (Tianjin University) | + | * Yang (Silvia) Yixin (Tianjin University) |
* Tina Kapur (BWH) | * Tina Kapur (BWH) | ||
* Sandy Wells (BWH) | * Sandy Wells (BWH) | ||
* Purang Abolmaesumi (UBC) | * Purang Abolmaesumi (UBC) | ||
* Andriy Fedorov (BWH) | * Andriy Fedorov (BWH) | ||
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==Background and References== | ==Background and References== | ||
Deep learning models have outperformed some of the previous state-of-the-art approaches in medical image analysis. However, utilizing deep models during image-guided therapy procedures requires integration of several software components which is often a tedious taskfor clinical researchers. Hence, there is a gap between the state-of-the-art machine learning research and itsapplication in clinical setup. DeepInfer enables 3D Slicer to connect to a powerful processing back-end either on the local machine or a remote processing server. Utilizing a repository of pre-trained, task-specific models, DeepInfer allows clinical researchers and biomedical engineers to choose and deploy a model on new data without the need for software development or configuration. | Deep learning models have outperformed some of the previous state-of-the-art approaches in medical image analysis. However, utilizing deep models during image-guided therapy procedures requires integration of several software components which is often a tedious taskfor clinical researchers. Hence, there is a gap between the state-of-the-art machine learning research and itsapplication in clinical setup. DeepInfer enables 3D Slicer to connect to a powerful processing back-end either on the local machine or a remote processing server. Utilizing a repository of pre-trained, task-specific models, DeepInfer allows clinical researchers and biomedical engineers to choose and deploy a model on new data without the need for software development or configuration. |
Revision as of 00:55, 5 January 2017
Home < 2017 Winter Project Week < DeepInferKey Investigators
- Alireza Mehrtash (BWH, UBC)
- Mehran Pesteie (UBC)
- Yang (Silvia) Yixin (Tianjin University)
- Tina Kapur (BWH)
- Sandy Wells (BWH)
- Purang Abolmaesumi (UBC)
- Andriy Fedorov (BWH)
Background and References
Deep learning models have outperformed some of the previous state-of-the-art approaches in medical image analysis. However, utilizing deep models during image-guided therapy procedures requires integration of several software components which is often a tedious taskfor clinical researchers. Hence, there is a gap between the state-of-the-art machine learning research and itsapplication in clinical setup. DeepInfer enables 3D Slicer to connect to a powerful processing back-end either on the local machine or a remote processing server. Utilizing a repository of pre-trained, task-specific models, DeepInfer allows clinical researchers and biomedical engineers to choose and deploy a model on new data without the need for software development or configuration.
Project Description
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