| Literature DB >> 32601618 |
Hang Wu1, Li Tong1, May D Wang1.
Abstract
Optical Endomicroscopy (OE) is a newly-emerged biomedical imaging modality that can help physicians make real-time clinical decisions about patients' grade of dysplasia. However, the performance of applying medical imaging classification for computer-aided diagnosis is primarily limited by the lack of labeled images. To improve the classification performance, we propose a semi-supervised learning algorithm that can incorporate large sets of unlabeled images. Our real-world endo-microscopic imaging datasets consist of 425 labeled images and 2,826 unlabeled ones. With semi-supervised learning algorithms, we improved multi-class classification performance over supervised learning algorithms by around 10% in all evaluation metrics, namely precision, recall, F1 score and Cohen-Kappa statistics.Entities:
Year: 2017 PMID: 32601618 PMCID: PMC7324292 DOI: 10.1109/bhi.2017.7897191
Source DB: PubMed Journal: IEEE EMBS Int Conf Biomed Health Inform ISSN: 2641-3590