| Literature DB >> 35432688 |
Iain Carmichael1, Benjamin C Calhoun2, Katherine A Hoadley2, Melissa A Troester2, Joseph Geradts3, Heather D Couture4, Linnea Olsson2, Charles M Perou2, Marc Niethammer2, Jan Hannig2, J S Marron2.
Abstract
The two main approaches in the study of breast cancer are histopathology (analyzing visual characteristics of tumors) and genomics. While both histopathology and genomics are fundamental to cancer research, the connections between these fields have been relatively superficial. We bridge this gap by investigating the Carolina Breast Cancer Study through the development of an integrative, exploratory analysis framework. Our analysis gives insights - some known, some novel - that are engaging to both pathologists and geneticists. Our analysis framework is based on Angle-based Joint and Individual Variation Explained (AJIVE) for statistical data integration and exploits Convolutional Neural Networks (CNNs) as a powerful, automatic method for image feature extraction. CNNs raise interpretability issues that we address by developing novel methods to explore visual modes of variation captured by statistical algorithms (e.g. PCA or AJIVE) applied to CNN features.Entities:
Keywords: Multi-view data; breast cancer histopathology; deep learning; dimensionality reduction; gene expression; image analysis; interpretability
Year: 2021 PMID: 35432688 PMCID: PMC9007558 DOI: 10.1214/20-aoas1433
Source DB: PubMed Journal: Ann Appl Stat ISSN: 1932-6157 Impact factor: 1.959