Deep learning-based image analysis methods for brightfield-acquired multiplex immunohistochemistry images
Abstract Background Multiplex immunohistochemistry (mIHC) permits the labeling of six or more distinct cell types within a single histologic tissue section. The classification of each cell type requires detection of the unique colored chromogens localized to cells expressing biomarkers of interest....
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BMC
2020-07-01
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Series: | Diagnostic Pathology |
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Online Access: | http://link.springer.com/article/10.1186/s13000-020-01003-0 |
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record_format |
Article |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Danielle J. Fassler Shahira Abousamra Rajarsi Gupta Chao Chen Maozheng Zhao David Paredes Syeda Areeha Batool Beatrice S. Knudsen Luisa Escobar-Hoyos Kenneth R. Shroyer Dimitris Samaras Tahsin Kurc Joel Saltz |
spellingShingle |
Danielle J. Fassler Shahira Abousamra Rajarsi Gupta Chao Chen Maozheng Zhao David Paredes Syeda Areeha Batool Beatrice S. Knudsen Luisa Escobar-Hoyos Kenneth R. Shroyer Dimitris Samaras Tahsin Kurc Joel Saltz Deep learning-based image analysis methods for brightfield-acquired multiplex immunohistochemistry images Diagnostic Pathology Multiplex immunohistochemistry Digital pathology image analysis Deep learning Tumor immune microenvironment |
author_facet |
Danielle J. Fassler Shahira Abousamra Rajarsi Gupta Chao Chen Maozheng Zhao David Paredes Syeda Areeha Batool Beatrice S. Knudsen Luisa Escobar-Hoyos Kenneth R. Shroyer Dimitris Samaras Tahsin Kurc Joel Saltz |
author_sort |
Danielle J. Fassler |
title |
Deep learning-based image analysis methods for brightfield-acquired multiplex immunohistochemistry images |
title_short |
Deep learning-based image analysis methods for brightfield-acquired multiplex immunohistochemistry images |
title_full |
Deep learning-based image analysis methods for brightfield-acquired multiplex immunohistochemistry images |
title_fullStr |
Deep learning-based image analysis methods for brightfield-acquired multiplex immunohistochemistry images |
title_full_unstemmed |
Deep learning-based image analysis methods for brightfield-acquired multiplex immunohistochemistry images |
title_sort |
deep learning-based image analysis methods for brightfield-acquired multiplex immunohistochemistry images |
publisher |
BMC |
series |
Diagnostic Pathology |
issn |
1746-1596 |
publishDate |
2020-07-01 |
description |
Abstract Background Multiplex immunohistochemistry (mIHC) permits the labeling of six or more distinct cell types within a single histologic tissue section. The classification of each cell type requires detection of the unique colored chromogens localized to cells expressing biomarkers of interest. The most comprehensive and reproducible method to evaluate such slides is to employ digital pathology and image analysis pipelines to whole-slide images (WSIs). Our suite of deep learning tools quantitatively evaluates the expression of six biomarkers in mIHC WSIs. These methods address the current lack of readily available methods to evaluate more than four biomarkers and circumvent the need for specialized instrumentation to spectrally separate different colors. The use case application for our methods is a study that investigates tumor immune interactions in pancreatic ductal adenocarcinoma (PDAC) with a customized mIHC panel. Methods Six different colored chromogens were utilized to label T-cells (CD3, CD4, CD8), B-cells (CD20), macrophages (CD16), and tumor cells (K17) in formalin-fixed paraffin-embedded (FFPE) PDAC tissue sections. We leveraged pathologist annotations to develop complementary deep learning-based methods: (1) ColorAE is a deep autoencoder which segments stained objects based on color; (2) U-Net is a convolutional neural network (CNN) trained to segment cells based on color, texture and shape; and ensemble methods that employ both ColorAE and U-Net, collectively referred to as (3) ColorAE:U-Net. We assessed the performance of our methods using: structural similarity and DICE score to evaluate segmentation results of ColorAE against traditional color deconvolution; F1 score, sensitivity, positive predictive value, and DICE score to evaluate the predictions from ColorAE, U-Net, and ColorAE:U-Net ensemble methods against pathologist-generated ground truth. We then used prediction results for spatial analysis (nearest neighbor). Results We observed that (1) the performance of ColorAE is comparable to traditional color deconvolution for single-stain IHC images (note: traditional color deconvolution cannot be used for mIHC); (2) ColorAE and U-Net are complementary methods that detect 6 different classes of cells with comparable performance; (3) combinations of ColorAE and U-Net into ensemble methods outperform using either ColorAE and U-Net alone; and (4) ColorAE:U-Net ensemble methods can be employed for detailed analysis of the tumor microenvironment (TME). Summary We developed a suite of scalable deep learning methods to analyze 6 distinctly labeled cell populations in mIHC WSIs. We evaluated our methods and found that they reliably detected and classified cells in the PDAC tumor microenvironment. We also present a use case, wherein we apply the ColorAE:U-Net ensemble method across 3 mIHC WSIs and use the predictions to quantify all stained cell populations and perform nearest neighbor spatial analysis. Thus, we provide proof of concept that these methods can be employed to quantitatively describe the spatial distribution immune cells within the tumor microenvironment. These complementary deep learning methods are readily deployable for use in clinical research studies. |
topic |
Multiplex immunohistochemistry Digital pathology image analysis Deep learning Tumor immune microenvironment |
url |
http://link.springer.com/article/10.1186/s13000-020-01003-0 |
work_keys_str_mv |
AT daniellejfassler deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT shahiraabousamra deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT rajarsigupta deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT chaochen deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT maozhengzhao deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT davidparedes deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT syedaareehabatool deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT beatricesknudsen deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT luisaescobarhoyos deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT kennethrshroyer deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT dimitrissamaras deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT tahsinkurc deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages AT joelsaltz deeplearningbasedimageanalysismethodsforbrightfieldacquiredmultipleximmunohistochemistryimages |
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1724708757658664960 |
spelling |
doaj-a8dfefeb428f4e0894cb68134bf3b1c42020-11-25T02:58:04ZengBMCDiagnostic Pathology1746-15962020-07-0115111110.1186/s13000-020-01003-0Deep learning-based image analysis methods for brightfield-acquired multiplex immunohistochemistry imagesDanielle J. Fassler0Shahira Abousamra1Rajarsi Gupta2Chao Chen3Maozheng Zhao4David Paredes5Syeda Areeha Batool6Beatrice S. Knudsen7Luisa Escobar-Hoyos8Kenneth R. Shroyer9Dimitris Samaras10Tahsin Kurc11Joel Saltz12Department of Pathology, Stony Brook University Renaissance School of MedicineDepartment of Computer Science, Stony Brook UniversityDepartment of Biomedical Informatics, Stony Brook University Renaissance School of MedicineDepartment of Biomedical Informatics, Stony Brook University Renaissance School of MedicineDepartment of Computer Science, Stony Brook UniversityDepartment of Computer Science, Stony Brook UniversityDepartment of Biomedical Informatics, Stony Brook University Renaissance School of MedicineDepartment of Pathology, University of UtahDepartment of Pathology, Stony Brook University Renaissance School of MedicineDepartment of Pathology, Stony Brook University Renaissance School of MedicineDepartment of Computer Science, Stony Brook UniversityDepartment of Biomedical Informatics, Stony Brook University Renaissance School of MedicineDepartment of Biomedical Informatics, Stony Brook University Renaissance School of MedicineAbstract Background Multiplex immunohistochemistry (mIHC) permits the labeling of six or more distinct cell types within a single histologic tissue section. The classification of each cell type requires detection of the unique colored chromogens localized to cells expressing biomarkers of interest. The most comprehensive and reproducible method to evaluate such slides is to employ digital pathology and image analysis pipelines to whole-slide images (WSIs). Our suite of deep learning tools quantitatively evaluates the expression of six biomarkers in mIHC WSIs. These methods address the current lack of readily available methods to evaluate more than four biomarkers and circumvent the need for specialized instrumentation to spectrally separate different colors. The use case application for our methods is a study that investigates tumor immune interactions in pancreatic ductal adenocarcinoma (PDAC) with a customized mIHC panel. Methods Six different colored chromogens were utilized to label T-cells (CD3, CD4, CD8), B-cells (CD20), macrophages (CD16), and tumor cells (K17) in formalin-fixed paraffin-embedded (FFPE) PDAC tissue sections. We leveraged pathologist annotations to develop complementary deep learning-based methods: (1) ColorAE is a deep autoencoder which segments stained objects based on color; (2) U-Net is a convolutional neural network (CNN) trained to segment cells based on color, texture and shape; and ensemble methods that employ both ColorAE and U-Net, collectively referred to as (3) ColorAE:U-Net. We assessed the performance of our methods using: structural similarity and DICE score to evaluate segmentation results of ColorAE against traditional color deconvolution; F1 score, sensitivity, positive predictive value, and DICE score to evaluate the predictions from ColorAE, U-Net, and ColorAE:U-Net ensemble methods against pathologist-generated ground truth. We then used prediction results for spatial analysis (nearest neighbor). Results We observed that (1) the performance of ColorAE is comparable to traditional color deconvolution for single-stain IHC images (note: traditional color deconvolution cannot be used for mIHC); (2) ColorAE and U-Net are complementary methods that detect 6 different classes of cells with comparable performance; (3) combinations of ColorAE and U-Net into ensemble methods outperform using either ColorAE and U-Net alone; and (4) ColorAE:U-Net ensemble methods can be employed for detailed analysis of the tumor microenvironment (TME). Summary We developed a suite of scalable deep learning methods to analyze 6 distinctly labeled cell populations in mIHC WSIs. We evaluated our methods and found that they reliably detected and classified cells in the PDAC tumor microenvironment. We also present a use case, wherein we apply the ColorAE:U-Net ensemble method across 3 mIHC WSIs and use the predictions to quantify all stained cell populations and perform nearest neighbor spatial analysis. Thus, we provide proof of concept that these methods can be employed to quantitatively describe the spatial distribution immune cells within the tumor microenvironment. These complementary deep learning methods are readily deployable for use in clinical research studies.http://link.springer.com/article/10.1186/s13000-020-01003-0Multiplex immunohistochemistryDigital pathology image analysisDeep learningTumor immune microenvironment |