TY - JOUR
T1 - Graph Neural Networks Ameliorate Potential Impacts of Imprecise Large-Scale Autonomous Immunofluorescence Labeling of Immune Cells on Whole Slide Images
AU - Reddy, Ramya
AU - Reddy, Ram
AU - Sharma, Cyril
AU - Jackson, Christopher
AU - Palisoul, Scott
AU - Barney, Rachael
AU - Kolling, Fred
AU - Salas, Lucas
AU - Christensen, Brock
AU - Brooks, Gabriel
AU - Tsongalis, Gregory
AU - Vaickus, Louis
AU - Levy, Joshua
N1 - Publisher Copyright:
© 2022 Proceedings of Machine Learning Research. All rights reserved.
PY - 2022
Y1 - 2022
N2 - The characteristics of tumor-infiltrating lymphocytes (TILs) are essential for cancer prognostication and treatment through the ability to indicate the tumor's capacity to evade the immune system (e.g., as evidenced by nodal involvement). In general, presence of TILs indicates a favorable prognosis. Machine learning technologies have demonstrated remarkable success for localizing TILs, though these methods require extensive curation of manual annotations or restaining procedures that can degrade tissue quality, resulting in imprecise annotation. In this study, we co-registered tissue slides stained for both hematoxylin and eosin (H&E) and immunofluorescence (IF) as means to rapidly perform large-scale annotation of nuclei. We integrated the following approaches to improve the prediction of TILs: 1) minimized tissue degradation on same-section tissue restaining, 2) developed a scoring algorithm to improve the selection of patches for machine learning modeling and 3) utilized a graph neural network deep learning approach to identify relevant contextual features for lymphocyte prediction. Our graph neural network approach accounts for surrounding contextual micro/macro-Architecture tissue features to facilitate interpretation of registered IF. The graph neural network compares favorably (F1-score=0.9235, AUROC=0.9462) to two alternative modeling approaches. This study brings insight to the importance of contextual information leveraged from within and around neighboring cells in a nuclei classification workflow, as well as elucidate approaches which enable the rapid generation of large-scale annotations of lymphocytes for machine learning approaches for immune phenotyping. Such approaches can help further interrogate the spatial biology of colorectal cancer tumors and tumor metastasis.
AB - The characteristics of tumor-infiltrating lymphocytes (TILs) are essential for cancer prognostication and treatment through the ability to indicate the tumor's capacity to evade the immune system (e.g., as evidenced by nodal involvement). In general, presence of TILs indicates a favorable prognosis. Machine learning technologies have demonstrated remarkable success for localizing TILs, though these methods require extensive curation of manual annotations or restaining procedures that can degrade tissue quality, resulting in imprecise annotation. In this study, we co-registered tissue slides stained for both hematoxylin and eosin (H&E) and immunofluorescence (IF) as means to rapidly perform large-scale annotation of nuclei. We integrated the following approaches to improve the prediction of TILs: 1) minimized tissue degradation on same-section tissue restaining, 2) developed a scoring algorithm to improve the selection of patches for machine learning modeling and 3) utilized a graph neural network deep learning approach to identify relevant contextual features for lymphocyte prediction. Our graph neural network approach accounts for surrounding contextual micro/macro-Architecture tissue features to facilitate interpretation of registered IF. The graph neural network compares favorably (F1-score=0.9235, AUROC=0.9462) to two alternative modeling approaches. This study brings insight to the importance of contextual information leveraged from within and around neighboring cells in a nuclei classification workflow, as well as elucidate approaches which enable the rapid generation of large-scale annotations of lymphocytes for machine learning approaches for immune phenotyping. Such approaches can help further interrogate the spatial biology of colorectal cancer tumors and tumor metastasis.
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M3 - Conference article
AN - SCOPUS:85171557923
SN - 2640-3498
VL - 194
SP - 15
EP - 33
JO - Proceedings of Machine Learning Research
JF - Proceedings of Machine Learning Research
T2 - 1st International Workshop on Geometric Deep Learning in Medical Image Analysis, GeoMedIA 2022
Y2 - 18 November 2022
ER -