| Literature DB >> 32601619 |
Li Tong1, Ryan Hoffman1, Shriprasad R Deshpande2, May D Wang1.
Abstract
Cardiac allograft rejection is one major limitation for long-term survival for patients with heart transplants. The endomyocardial biopsy is one gold standard to screen heart rejection for patients that have heart transplantation. However, manual identification of heart rejection is expensive and time-consuming. With the development of imaging processing techniques and machine learning tools, automatic prediction of heart rejection using whole-slide images is one promising approach to improve the care of patients with heart transplants. In this paper, we first develop a histopathological whole-slide image processing pipeline to extract features automatically. Then, we construct deep neural networks with and without regularization and dropout to classify the patients into nonrejection and rejection respectively. Our results show that neural networks with regularization and dropout can significantly reduce overfitting and achieve more stable accuracies.Entities:
Year: 2017 PMID: 32601619 PMCID: PMC7324296 DOI: 10.1109/bhi.2017.7897190
Source DB: PubMed Journal: IEEE EMBS Int Conf Biomed Health Inform ISSN: 2641-3590