| Literature DB >> 36260951 |
Andrew Moyes1, Richard Gault2, Kun Zhang3, Ji Ming4, Danny Crookes5, Jing Wang6.
Abstract
Domain shift is a problem commonly encountered when developing automated histopathology pipelines. The performance of machine learning models such as convolutional neural networks within automated histopathology pipelines is often diminished when applying them to novel data domains due to factors arising from differing staining and scanning protocols. The Dual-Channel Auto-Encoder (DCAE) model was previously shown to produce feature representations that are less sensitive to appearance variation introduced by different digital slide scanners. In this work, the Multi-Channel Auto-Encoder (MCAE) model is presented as an extension to DCAE which learns from more than two domains of data. Experimental results show that the MCAE model produces feature representations that are less sensitive to inter-domain variations than the comparative StaNoSA method when tested on a novel synthetic dataset. This was apparent when applying the MCAE, DCAE, and StaNoSA models to three different classification tasks from unseen domains. The results of this experiment show the MCAE model out performs the other models. These results show that the MCAE model is able to generalise better to novel data, including data from unseen domains, than existing approaches by actively learning normalised feature representations.Entities:
Keywords: Deep Learning; Histopathology; Representation Learning; Stain Invariance
Year: 2022 PMID: 36260951 DOI: 10.1016/j.media.2022.102640
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 13.828