Democratizing Artificial Intelligence in Healthcare: A Study of Model Development Across Two Institutions Incorporating Transfer Learning (2009.12437v1)
Abstract: The training of deep learning models typically requires extensive data, which are not readily available as large well-curated medical-image datasets for development of AI models applied in Radiology. Recognizing the potential for transfer learning (TL) to allow a fully trained model from one institution to be fine-tuned by another institution using a much small local dataset, this report describes the challenges, methodology, and benefits of TL within the context of developing an AI model for a basic use-case, segmentation of Left Ventricular Myocardium (LVM) on images from 4-dimensional coronary computed tomography angiography. Ultimately, our results from comparisons of LVM segmentation predicted by a model locally trained using random initialization, versus one training-enhanced by TL, showed that a use-case model initiated by TL can be developed with sparse labels with acceptable performance. This process reduces the time required to build a new model in the clinical environment at a different institution.
- Vikash Gupta1 (1 paper)
- Holger Roth (34 papers)
- Varun Buch3 (1 paper)
- Marcio A. B. C. Rockenbach (1 paper)
- Richard D White (13 papers)
- Dong Yang (163 papers)
- Olga Laur (1 paper)
- Brian Ghoshhajra (2 papers)
- Ittai Dayan (4 papers)
- Daguang Xu (91 papers)
- Barbaros Selnur Erdal (8 papers)
- Mona G. Flores (2 papers)