Litcius/Paper detail

Multiplex Cellular Communities in Multi-Gigapixel Colorectal Cancer Histology Images for Tissue Phenotyping

Sajid Javed, Arif Mahmood, Naoufel Werghi, Ksenija Benes, Nasir Rajpoot

2020IEEE Transactions on Image Processing48 citationsDOI

Abstract

In computational pathology, automated tissue phenotyping in cancer histology images is a fundamental tool for profiling tumor microenvironments. Current tissue phenotyping methods use features derived from image patches which may not carry biological significance. In this work, we propose a novel multiplex cellular community-based algorithm for tissue phenotyping integrating cell-level features within a graph-based hierarchical framework. We demonstrate that such integration offers better performance compared to prior deep learning and texture-based methods as well as to cellular community based methods using uniplex networks. To this end, we construct celllevel graphs using texture, alpha diversity and multi-resolution deep features. Using these graphs, we compute cellular connectivity features which are then employed for the construction of a patch-level multiplex network. Over this network, we compute multiplex cellular communities using a novel objective function. The proposed objective function computes a low-dimensional subspace from each cellular network and subsequently seeks a common low-dimensional subspace using the Grassmann manifold. We evaluate our proposed algorithm on three publicly available datasets for tissue phenotyping, demonstrating a significant improvement over existing state-of-the-art methods.

Topics & Concepts

Computer scienceSubspace topologyMultiplexArtificial intelligencePattern recognition (psychology)Deep learningCellular networkBioinformaticsBiologyComputer networkAI in cancer detectionAdvanced Image and Video Retrieval TechniquesCell Image Analysis Techniques