Graph Neural Network With Hessian-Based Locally Linear Embedding for Cancer Metastasis Analysis in Lymph Nodes Using DeepLab Segmentation

Breast cancer patients could benefit greatly from an automatic diagnosis of metastases in lymph nodes. In clinical settings, where whole-slide images of histological lymph nodes are involved, it is crucial to identify and detect breast cancer metastases. Patient survival rates increase significantly...

Full description

Saved in:
Bibliographic Details
Main Authors: Senthil Jayapal, R. Annamalai
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10908385/
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849393583697690624
author Senthil Jayapal
R. Annamalai
author_facet Senthil Jayapal
R. Annamalai
author_sort Senthil Jayapal
collection DOAJ
description Breast cancer patients could benefit greatly from an automatic diagnosis of metastases in lymph nodes. In clinical settings, where whole-slide images of histological lymph nodes are involved, it is crucial to identify and detect breast cancer metastases. Patient survival rates increase significantly with early detection. In order to identify metastases, pathologists are depending more and more on microscopic research. However, the diagnostic process is time-consuming and sometimes results in missed diagnoses. Automated, reliable patient-level classification has the potential to minimize pathologists’ effort while improving diagnosis accuracy. The objective of this work is to propose and standardize a new framework that combines a Graph Neural Network (GNN) with Hessian-based Locally Linear Embedding (HLLE) to better understand cancer metastasis in lymph nodes, while DeepLab is used to effectively segment each location. The proposed framework integrates DeepLab, a highly advanced convolutional neural network for image segmentation, to segment the lymph node regions from high-resolution MRI and PET scans. These segmented regions are then modeled as graphs, where the nodes signify the segmented areas and the edges reflect spatial and functional coupling. To accomplish better preservation of the geometry of high-dimensional data and more effective feature extraction, the HLLE algorithm is applied. These features are then inputted into a GNN, which utilizes the graph structure to identify and analyze metastatic patterns. The method was tested on the CAMELYON17 dataset, which contains of imaging data from patients with dissimilar stages of cancer. Precisely, DeepLab was utilized to segment the lymph nodes, and the segmented regions were then converted into graphs. The meaningful features were obtained utilizing the proposed HLLE, after which the GNN conducted the classification and metastasis analysis. Overall, the precision and reliability of the established segmentation method, DeepLab, followed by HLLE and GNN, proved to be precise in classifying metastatic lymph nodes and their classification.
format Article
id doaj-art-3bded2c4792d4e349a8b2673d1b7f567
institution Kabale University
issn 2169-3536
language English
publishDate 2025-01-01
publisher IEEE
record_format Article
series IEEE Access
spelling doaj-art-3bded2c4792d4e349a8b2673d1b7f5672025-08-20T03:40:22ZengIEEEIEEE Access2169-35362025-01-0113464484645810.1109/ACCESS.2025.354671610908385Graph Neural Network With Hessian-Based Locally Linear Embedding for Cancer Metastasis Analysis in Lymph Nodes Using DeepLab SegmentationSenthil Jayapal0https://orcid.org/0009-0000-7624-8502R. Annamalai1Department of Computer Science and Engineering, Amrita School of Computing, Amrita Vishwa Vidyapeetham, Chennai, IndiaDepartment of Computer Science and Engineering, Amrita School of Computing, Amrita Vishwa Vidyapeetham, Chennai, IndiaBreast cancer patients could benefit greatly from an automatic diagnosis of metastases in lymph nodes. In clinical settings, where whole-slide images of histological lymph nodes are involved, it is crucial to identify and detect breast cancer metastases. Patient survival rates increase significantly with early detection. In order to identify metastases, pathologists are depending more and more on microscopic research. However, the diagnostic process is time-consuming and sometimes results in missed diagnoses. Automated, reliable patient-level classification has the potential to minimize pathologists’ effort while improving diagnosis accuracy. The objective of this work is to propose and standardize a new framework that combines a Graph Neural Network (GNN) with Hessian-based Locally Linear Embedding (HLLE) to better understand cancer metastasis in lymph nodes, while DeepLab is used to effectively segment each location. The proposed framework integrates DeepLab, a highly advanced convolutional neural network for image segmentation, to segment the lymph node regions from high-resolution MRI and PET scans. These segmented regions are then modeled as graphs, where the nodes signify the segmented areas and the edges reflect spatial and functional coupling. To accomplish better preservation of the geometry of high-dimensional data and more effective feature extraction, the HLLE algorithm is applied. These features are then inputted into a GNN, which utilizes the graph structure to identify and analyze metastatic patterns. The method was tested on the CAMELYON17 dataset, which contains of imaging data from patients with dissimilar stages of cancer. Precisely, DeepLab was utilized to segment the lymph nodes, and the segmented regions were then converted into graphs. The meaningful features were obtained utilizing the proposed HLLE, after which the GNN conducted the classification and metastasis analysis. Overall, the precision and reliability of the established segmentation method, DeepLab, followed by HLLE and GNN, proved to be precise in classifying metastatic lymph nodes and their classification.https://ieeexplore.ieee.org/document/10908385/DeepLabgraph neural network (GNN)Hessian-based locally linear embedding (HLLE)lymph nodesmetastasis analysissegmentation
spellingShingle Senthil Jayapal
R. Annamalai
Graph Neural Network With Hessian-Based Locally Linear Embedding for Cancer Metastasis Analysis in Lymph Nodes Using DeepLab Segmentation
IEEE Access
DeepLab
graph neural network (GNN)
Hessian-based locally linear embedding (HLLE)
lymph nodes
metastasis analysis
segmentation
title Graph Neural Network With Hessian-Based Locally Linear Embedding for Cancer Metastasis Analysis in Lymph Nodes Using DeepLab Segmentation
title_full Graph Neural Network With Hessian-Based Locally Linear Embedding for Cancer Metastasis Analysis in Lymph Nodes Using DeepLab Segmentation
title_fullStr Graph Neural Network With Hessian-Based Locally Linear Embedding for Cancer Metastasis Analysis in Lymph Nodes Using DeepLab Segmentation
title_full_unstemmed Graph Neural Network With Hessian-Based Locally Linear Embedding for Cancer Metastasis Analysis in Lymph Nodes Using DeepLab Segmentation
title_short Graph Neural Network With Hessian-Based Locally Linear Embedding for Cancer Metastasis Analysis in Lymph Nodes Using DeepLab Segmentation
title_sort graph neural network with hessian based locally linear embedding for cancer metastasis analysis in lymph nodes using deeplab segmentation
topic DeepLab
graph neural network (GNN)
Hessian-based locally linear embedding (HLLE)
lymph nodes
metastasis analysis
segmentation
url https://ieeexplore.ieee.org/document/10908385/
work_keys_str_mv AT senthiljayapal graphneuralnetworkwithhessianbasedlocallylinearembeddingforcancermetastasisanalysisinlymphnodesusingdeeplabsegmentation
AT rannamalai graphneuralnetworkwithhessianbasedlocallylinearembeddingforcancermetastasisanalysisinlymphnodesusingdeeplabsegmentation