| Literature DB >> 30679879 |
Baris Gecer1, Selim Aksoy1, Ezgi Mercan2, Linda G Shapiro2, Donald L Weaver3, Joann G Elmore4.
Abstract
Generalizability of algorithms for binary cancer vs. no cancer classification is unknown for clinically more significant multi-class scenarios where intermediate categories have different risk factors and treatment strategies. We present a system that classifies whole slide images (WSI) of breast biopsies into five diagnostic categories. First, a saliency detector that uses a pipeline of four fully convolutional networks, trained with samples from records of pathologists' screenings, performs multi-scale localization of diagnostically relevant regions of interest in WSI. Then, a convolutional network, trained from consensus-derived reference samples, classifies image patches as non-proliferative or proliferative changes, atypical ductal hyperplasia, ductal carcinoma in situ, and invasive carcinoma. Finally, the saliency and classification maps are fused for pixel-wise labeling and slide-level categorization. Experiments using 240 WSI showed that both saliency detector and classifier networks performed better than competing algorithms, and the five-class slide-level accuracy of 55% was not statistically different from the predictions of 45 pathologists. We also present example visualizations of the learned representations for breast cancer diagnosis.Entities:
Keywords: Breast histopathology; Deep learning; Digital pathology; Multi-class classification; Region of interest detection; Saliency detection; Whole slide imaging
Year: 2018 PMID: 30679879 PMCID: PMC6342566 DOI: 10.1016/j.patcog.2018.07.022
Source DB: PubMed Journal: Pattern Recognit ISSN: 0031-3203 Impact factor: 7.740