Leveraging Medical Visual Question Answering with Supporting Facts
Kornuta, Tomasz, Rajan, Deepta, Shivade, Chaitanya, Asseman, Alexis, Ozcan, Ahmet S.
–arXiv.org Artificial Intelligence
In this working notes paper, we describe IBM Research AI (Almaden) team's participation in the ImageCLEF 2019 VQA-Med competition. The challenge consists of four question-answering tasks based on radiology images. The diversity of imaging modalities, organs and disease types combined with a small imbalanced training set made this a highly complex problem. To overcome these difficulties, we implemented a modular pipeline architecture that utilized transfer learning and multi-task learning. Our findings led to the development of a novel model called Supporting Facts Network (SFN). The main idea behind SFN is to cross-utilize information from upstream tasks to improve the accuracy on harder downstream ones. This approach significantly improved the scores achieved in the validation set (18 point improvement in F-1 score). Finally, we submitted four runs to the competition and were ranked seventh.
arXiv.org Artificial Intelligence
May-28-2019
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