Litcius/Paper detail

Multi-Class Cell Detection Using Spatial Context Representation

Shahira Abousamra, David Belinsky, John Van Arnam, Felicia D. Allard, Eric U. Yee, Rajarsi Gupta, Tahsin Kurç, Dimitris Samaras, Joel Saltz, Chao Chen

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)40 citationsDOIOpen Access PDF

Abstract

In digital pathology, both detection and classification of cells are important for automatic diagnostic and prognostic tasks. Classifying cells into subtypes, such as tumor cells, lymphocytes or stromal cells is particularly challenging. Existing methods focus on morphological appearance of individual cells, whereas in practice pathologists often infer cell classes through their spatial context. In this paper, we propose a novel method for both detection and classification that explicitly incorporates spatial contextual information. We use the spatial statistical function to describe local density in both a multi-class and a multi-scale manner. Through representation learning and deep clustering techniques, we learn advanced cell representation with both appearance and spatial context. On various benchmarks, our method achieves better performance than state-of-the-arts, especially on the classification task. We also create a new dataset for multi-class cell detection and classification in breast cancer and we make both our code and data publicly available.

Topics & Concepts

Computer scienceSpatial contextual awarenessArtificial intelligenceClass (philosophy)Focus (optics)Context (archaeology)Representation (politics)Cluster analysisTask (project management)Pattern recognition (psychology)Machine learningSpatial analysisFeature learningGeographyOpticsEconomicsManagementPoliticsPolitical sciencePhysicsLawArchaeologyRemote sensingDigital Imaging for Blood DiseasesAI in cancer detectionImage Processing Techniques and Applications