Nucleus classification in histology images using message passing network

计算机科学 人工智能 图形 质心 模式识别(心理学) 鉴定(生物学) 机器学习 理论计算机科学 植物 生物
作者
Taimur Hassan,Sajid Javed,Arif Mahmood,Talha Qaiser,Naoufel Werghi,Nasir Rajpoot
出处
期刊:Medical Image Analysis [Elsevier BV]
卷期号:79: 102480-102480 被引量:20
标识
DOI:10.1016/j.media.2022.102480
摘要

Identification of nuclear components in the histology landscape is an important step towards developing computational pathology tools for the profiling of tumor micro-environment. Most existing methods for the identification of such components are limited in scope due to heterogeneous nature of the nuclei. Graph-based methods offer a natural way to formulate the nucleus classification problem to incorporate both appearance and geometric locations of the nuclei. The main challenge is to define models that can handle such an unstructured domain. Current approaches focus on learning better features and then employ well-known classifiers for identifying distinct nuclear phenotypes. In contrast, we propose a message passing network that is a fully learnable framework build on classical network flow formulation. Based on physical interaction of the nuclei, a nearest neighbor graph is constructed such that the nodes represent the nuclei centroids. For each edge and node, appearance and geometric features are computed which are then used for the construction of messages utilized for diffusing contextual information to the neighboring nodes. Such an algorithm can infer global information over an entire network and predict biologically meaningful nuclear communities. We show that learning such communities improves the performance of nucleus classification task in histology images. The proposed algorithm can be used as a component in existing state-of-the-art methods resulting in improved nucleus classification performance across four different publicly available datasets.
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