| Literature DB >> 32149282 |
Yiqiu Shen1, Nan Wu1, Jason Phang1, Jungkyu Park1, Gene Kim2, Linda Moy2, Kyunghyun Cho1,3,4,5, Krzysztof J Geras1,2.
Abstract
Deep learning models designed for visual classification tasks on natural images have become prevalent in medical image analysis. However, medical images differ from typical natural images in many ways, such as significantly higher resolutions and smaller regions of interest. Moreover, both the global structure and local details play important roles in medical image analysis tasks. To address these unique properties of medical images, we propose a neural network that is able to classify breast cancer lesions utilizing information from both a global saliency map and multiple local patches. The proposed model outperforms the ResNet-based baseline and achieves radiologist-level performance in the interpretation of screening mammography. Although our model is trained only with image-level labels, it is able to generate pixel-level saliency maps that provide localization of possible malignant findings.Entities:
Keywords: Breast cancer screening; Deep learning; High-resolution image classification; Neural networks; Weakly supervised localization
Year: 2019 PMID: 32149282 PMCID: PMC7060084 DOI: 10.1007/978-3-030-32692-0_3
Source DB: PubMed Journal: Mach Learn Med Imaging