Robustification of Deep Learning for Medical Imaging (Audio Described Version)

Описание к видео Robustification of Deep Learning for Medical Imaging (Audio Described Version)

Alan McMillan from the University of Wisconsin-Madison and his team are examining how image interpretation can improve noisy data in a project called Can Machines be Trusted? Robustification of Deep Learning for Medical Imaging. Noisy data is information that cannot be understood and interpreted correctly by machines (such as unstructured text). While deep learning approaches (methods that automatically extract high-level features from input data to discern relationships) to image interpretation is gaining acceptance, these algorithms can fail when the images themselves include small errors arising from problems with the image capture or slight movements (e.g., chest excursion in the breathing of the patient). The project team will probe the limits of deep learning when presented with noisy data with the ultimate goal of making the deep learning algorithms more robust for clinical use.

Non-AD version:    • NLM Funding Spotlight | Robustificati...  

https://nlmdirector.nlm.nih.gov/2021/...

#artificial-intelligence #deeplearning #medical-imaging #ai #audiodescription #audiodescriptions

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