Mapping microstructural features of pathological tissues by pixel clustering of Mueller matrix images

Author:

Ma Hui1,Wan Jiachen1,Dong Yang1,Yao Yue1,Xiao Weijin2,Huang Ruqi3ORCID,Xue Jing-Hao4,Peng Ran5,Pei Haojie1,Tian Xuewu6,Liao Ran1,He Honghui1ORCID,Zeng Nan1,Li Chao2

Affiliation:

1. Tsinghua University

2. Fujian Cancer Hospital

3. Tsinghua-Berkeley Shenzhen Institute

4. University College London

5. Fujian Medical University

6. University of Chinese Academy of Sciences Shenzhen Hospital

Abstract

Abstract In histopathology, doctors identify diseases by characterizing abnormal cells and their spatial organization within tissues. Polarization microscopy and supervised learning have been proved as an effective tool for extracting polarization parameters to highlight pathological features. Here we present an alternative approach based on unsupervised learning to group polarization-pixels into clusters, which correspond to distinct pathological structures. For pathological samples from different patients, it is confirmed that such unsupervised learning technique can decompose the histological structures into a stable basis of characteristic microstructural clusters, some of which correspond to distinctive pathological features for clinical diagnosis. Using hepatocellular carcinoma (HCC) and intrahepatic cholangiocarcinoma (ICC) samples, we demonstrate how the proposed framework can be utilized for segmentation of histological image, visualization of microstructure composition associated with lesion, and identification of polarization-based microstructure markers that correlates with specific pathology variation. This technique is capable of unraveling invisible microstructures in non-polarization images, and turn them into visible polarization features to pathologists and researchers.

Publisher

Research Square Platform LLC

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