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Published in: Diagnostic Pathology 1/2020

01-12-2020 | Pathology | Research

Deep learning-based image analysis methods for brightfield-acquired multiplex immunohistochemistry images

Authors: 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

Published in: Diagnostic Pathology | Issue 1/2020

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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 uniquely 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 (3) ensemble methods that employ both ColorAE and U-Net, collectively referred to as 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 six different classes of cells with comparable performance; (3) combinations of ColorAE and U-Net in ensemble methods outperform 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 utilized the ColorAE:U-Net ensemble method to analyze 3 mIHC WSIs with nearest neighbor spatial analysis. We demonstrate a proof of concept that these methods can be employed to quantitatively describe the spatial distribution of immune cells within the tumor microenvironment. These complementary deep learning methods are readily deployable for use in clinical research studies.
Appendix
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Literature
1.
go back to reference Sahin IH, et al. Immunotherapy in pancreatic ductal adenocarcinoma: an emerging entity? Ann Oncol. 2017;28(12):2950–61.PubMedPubMedCentral Sahin IH, et al. Immunotherapy in pancreatic ductal adenocarcinoma: an emerging entity? Ann Oncol. 2017;28(12):2950–61.PubMedPubMedCentral
2.
go back to reference Blando J, et al. Comparison of immune infiltrates in melanoma and pancreatic cancer highlights VISTA as a potential target in pancreatic cancer. Proc Natl Acad Sci U S A. 2019;116(5):1692–7.PubMedPubMedCentral Blando J, et al. Comparison of immune infiltrates in melanoma and pancreatic cancer highlights VISTA as a potential target in pancreatic cancer. Proc Natl Acad Sci U S A. 2019;116(5):1692–7.PubMedPubMedCentral
3.
go back to reference Burugu S, Asleh-Aburaya K, Nielsen TO. Immune infiltrates in the breast cancer microenvironment: detection, characterization and clinical implication. Breast Cancer. 2017;24(1):3–15.PubMed Burugu S, Asleh-Aburaya K, Nielsen TO. Immune infiltrates in the breast cancer microenvironment: detection, characterization and clinical implication. Breast Cancer. 2017;24(1):3–15.PubMed
4.
go back to reference Lee SS, et al. Nondestructive, multiplex three-dimensional mapping of immune infiltrates in core needle biopsy. Lab Investig. 2019;99(9):1400–13.PubMed Lee SS, et al. Nondestructive, multiplex three-dimensional mapping of immune infiltrates in core needle biopsy. Lab Investig. 2019;99(9):1400–13.PubMed
5.
go back to reference Ma Z, et al. Data integration from pathology slides for quantitative imaging of multiple cell types within the tumor immune cell infiltrate. Diagn Pathol. 2017;12(1):69.PubMedPubMedCentral Ma Z, et al. Data integration from pathology slides for quantitative imaging of multiple cell types within the tumor immune cell infiltrate. Diagn Pathol. 2017;12(1):69.PubMedPubMedCentral
6.
go back to reference Barua S, et al. Spatial interaction of tumor cells and regulatory T cells correlates with survival in non-small cell lung cancer. Lung Cancer. 2018;117:73–9.PubMed Barua S, et al. Spatial interaction of tumor cells and regulatory T cells correlates with survival in non-small cell lung cancer. Lung Cancer. 2018;117:73–9.PubMed
7.
go back to reference Blom S, et al. Systems pathology by multiplexed immunohistochemistry and whole-slide digital image analysis. Sci Rep. 2017;7(1):15580.PubMedPubMedCentral Blom S, et al. Systems pathology by multiplexed immunohistochemistry and whole-slide digital image analysis. Sci Rep. 2017;7(1):15580.PubMedPubMedCentral
8.
go back to reference Gibney GT, Weiner LM, Atkins MB. Predictive biomarkers for checkpoint inhibitor-based immunotherapy. Lancet Oncol. 2016;17(12):e542–51.PubMedPubMedCentral Gibney GT, Weiner LM, Atkins MB. Predictive biomarkers for checkpoint inhibitor-based immunotherapy. Lancet Oncol. 2016;17(12):e542–51.PubMedPubMedCentral
9.
go back to reference Gorris MAJ, et al. Eight-color multiplex immunohistochemistry for simultaneous detection of multiple immune checkpoint molecules within the tumor microenvironment. J Immunol. 2018;200(1):347–54.PubMed Gorris MAJ, et al. Eight-color multiplex immunohistochemistry for simultaneous detection of multiple immune checkpoint molecules within the tumor microenvironment. J Immunol. 2018;200(1):347–54.PubMed
10.
go back to reference Halse H, et al. Multiplex immunohistochemistry accurately defines the immune context of metastatic melanoma. Sci Rep. 2018;8(1):11158.PubMedPubMedCentral Halse H, et al. Multiplex immunohistochemistry accurately defines the immune context of metastatic melanoma. Sci Rep. 2018;8(1):11158.PubMedPubMedCentral
11.
go back to reference Hofman P, et al. Multiplexed immunohistochemistry for molecular and immune profiling in lung Cancer-just about ready for prime-time? Cancers. 2019;11(3):283.PubMedCentral Hofman P, et al. Multiplexed immunohistochemistry for molecular and immune profiling in lung Cancer-just about ready for prime-time? Cancers. 2019;11(3):283.PubMedCentral
12.
go back to reference Huang W, Hennrick K, Drew S. A colorful future of quantitative pathology: validation of Vectra technology using chromogenic multiplexed immunohistochemistry and prostate tissue microarrays. Hum Pathol. 2013;44(1):29–38.PubMed Huang W, Hennrick K, Drew S. A colorful future of quantitative pathology: validation of Vectra technology using chromogenic multiplexed immunohistochemistry and prostate tissue microarrays. Hum Pathol. 2013;44(1):29–38.PubMed
13.
go back to reference Ilie M, et al. Automated chromogenic multiplexed immunohistochemistry assay for diagnosis and predictive biomarker testing in non-small cell lung cancer. Lung Cancer. 2018;124:90–4.PubMed Ilie M, et al. Automated chromogenic multiplexed immunohistochemistry assay for diagnosis and predictive biomarker testing in non-small cell lung cancer. Lung Cancer. 2018;124:90–4.PubMed
14.
go back to reference Kalra J, Baker J. Multiplex Immunohistochemistry for Mapping the Tumor Microenvironment. In: Kalyuzhny AE, editor. Signal Transduction Immunohistochemistry: Methods and Protocols. New York: Springer New York; 2017. p. 237–51. Kalra J, Baker J. Multiplex Immunohistochemistry for Mapping the Tumor Microenvironment. In: Kalyuzhny AE, editor. Signal Transduction Immunohistochemistry: Methods and Protocols. New York: Springer New York; 2017. p. 237–51.
15.
go back to reference Koh J, et al. High-throughput multiplex Immunohistochemical imaging of the tumor and its microenvironment. J Korean Cancer Assoc. 2019;0(0):0–0. Koh J, et al. High-throughput multiplex Immunohistochemical imaging of the tumor and its microenvironment. J Korean Cancer Assoc. 2019;0(0):0–0.
16.
go back to reference Parra ER, Francisco-Cruz A, Wistuba II. State-of-the-Art of Profiling Immune Contexture in the Era of Multiplexed Staining and Digital Analysis to Study Paraffin Tumor Tissues. Cancers (Basel). 2019;11(2). Parra ER, Francisco-Cruz A, Wistuba II. State-of-the-Art of Profiling Immune Contexture in the Era of Multiplexed Staining and Digital Analysis to Study Paraffin Tumor Tissues. Cancers (Basel). 2019;11(2).
17.
go back to reference Remark R, et al. In-depth tissue profiling using multiplexed immunohistochemical consecutive staining on single slide. Sci Immunol. 2016;1(1):aaf6925.PubMed Remark R, et al. In-depth tissue profiling using multiplexed immunohistochemical consecutive staining on single slide. Sci Immunol. 2016;1(1):aaf6925.PubMed
18.
go back to reference Salgado R, et al. The evaluation of tumor-infiltrating lymphocytes (TILs) in breast cancer: recommendations by an international TILs working group 2014. Ann Oncol. 2015;26(2):259–71.PubMed Salgado R, et al. The evaluation of tumor-infiltrating lymphocytes (TILs) in breast cancer: recommendations by an international TILs working group 2014. Ann Oncol. 2015;26(2):259–71.PubMed
19.
go back to reference Stack EC, et al. Multiplexed immunohistochemistry, imaging, and quantitation: a review, with an assessment of Tyramide signal amplification, multispectral imaging and multiplex analysis. Methods. 2014;70(1):46–58.PubMed Stack EC, et al. Multiplexed immunohistochemistry, imaging, and quantitation: a review, with an assessment of Tyramide signal amplification, multispectral imaging and multiplex analysis. Methods. 2014;70(1):46–58.PubMed
20.
go back to reference Tsujikawa T, et al. Quantitative multiplex immunohistochemistry reveals myeloid-inflamed tumor-immune complexity associated with poor prognosis. Cell Rep. 2017;19(1):203–17.PubMedPubMedCentral Tsujikawa T, et al. Quantitative multiplex immunohistochemistry reveals myeloid-inflamed tumor-immune complexity associated with poor prognosis. Cell Rep. 2017;19(1):203–17.PubMedPubMedCentral
22.
go back to reference Parish CR. Cancer immunotherapy: the past, the present and the future. Immunol Cell Biol. 2003;81(2):106–13.PubMed Parish CR. Cancer immunotherapy: the past, the present and the future. Immunol Cell Biol. 2003;81(2):106–13.PubMed
23.
go back to reference Patel SP, Kurzrock R. PD-L1 expression as a predictive biomarker in Cancer immunotherapy. Mol Cancer Ther. 2015;14(4):847–56.PubMed Patel SP, Kurzrock R. PD-L1 expression as a predictive biomarker in Cancer immunotherapy. Mol Cancer Ther. 2015;14(4):847–56.PubMed
24.
go back to reference Roma-Rodrigues C, et al. Targeting tumor microenvironment for Cancer therapy. Int J Mol Sci. 2019;20(4):840.PubMedCentral Roma-Rodrigues C, et al. Targeting tumor microenvironment for Cancer therapy. Int J Mol Sci. 2019;20(4):840.PubMedCentral
25.
go back to reference Seager RJ, et al. Dynamic interplay between tumour, stroma and immune system can drive or prevent tumour progression. Convergent Sci Phys Oncol. 2017;3:034002. Seager RJ, et al. Dynamic interplay between tumour, stroma and immune system can drive or prevent tumour progression. Convergent Sci Phys Oncol. 2017;3:034002.
26.
go back to reference Sharma P, Allison JP. Immune checkpoint targeting in cancer therapy: toward combination strategies with curative potential. Cell. 2015;161(2):205–14.PubMedPubMedCentral Sharma P, Allison JP. Immune checkpoint targeting in cancer therapy: toward combination strategies with curative potential. Cell. 2015;161(2):205–14.PubMedPubMedCentral
27.
go back to reference Sharma P, et al. Novel cancer immunotherapy agents with survival benefit: recent successes and next steps. Nat Rev Cancer. 2011;11(11):805–12.PubMedPubMedCentral Sharma P, et al. Novel cancer immunotherapy agents with survival benefit: recent successes and next steps. Nat Rev Cancer. 2011;11(11):805–12.PubMedPubMedCentral
28.
go back to reference Smyth MJ, Dunn GP, Schreiber RD. Cancer immunosurveillance and immunoediting: the roles of immunity in suppressing tumor development and shaping tumor immunogenicity. Adv Immunol. 2006;90:1–50.PubMed Smyth MJ, Dunn GP, Schreiber RD. Cancer immunosurveillance and immunoediting: the roles of immunity in suppressing tumor development and shaping tumor immunogenicity. Adv Immunol. 2006;90:1–50.PubMed
29.
go back to reference Smyth MJ, et al. Combination cancer immunotherapies tailored to the tumour microenvironment. Nat Rev Clin Oncol. 2016;13(3):143–58.PubMed Smyth MJ, et al. Combination cancer immunotherapies tailored to the tumour microenvironment. Nat Rev Clin Oncol. 2016;13(3):143–58.PubMed
31.
go back to reference Amgad, M., et al., Structured crowdsourcing enables convolutional segmentation of histology images. 2019. Amgad, M., et al., Structured crowdsourcing enables convolutional segmentation of histology images. 2019.
32.
go back to reference Amgad M, et al. Joint region and nucleus segmentation for characterization of tumor infiltrating lymphocytes in breast cancer. In: Medical Imaging 2019: Digital Pathology; 2019. International Society for Optics and Photonics. Amgad M, et al. Joint region and nucleus segmentation for characterization of tumor infiltrating lymphocytes in breast cancer. In: Medical Imaging 2019: Digital Pathology; 2019. International Society for Optics and Photonics.
33.
go back to reference Cooper L, et al. Feature-based registration of histopathology images with different stains: an application for computerized follicular lymphoma prognosis. Comput Methods Prog Biomed. 2009;96(3):182–92. Cooper L, et al. Feature-based registration of histopathology images with different stains: an application for computerized follicular lymphoma prognosis. Comput Methods Prog Biomed. 2009;96(3):182–92.
34.
go back to reference Cooper LA, et al. PanCancer insights from the Cancer genome atlas: the pathologist’s perspective. J Pathol. 2018;244(5):512–24.PubMedPubMedCentral Cooper LA, et al. PanCancer insights from the Cancer genome atlas: the pathologist’s perspective. J Pathol. 2018;244(5):512–24.PubMedPubMedCentral
35.
go back to reference Cooper LA, et al. The tumor microenvironment strongly impacts master transcriptional regulators and gene expression class of glioblastoma. Am J Pathol. 2012;180(5):2108–19.PubMedPubMedCentral Cooper LA, et al. The tumor microenvironment strongly impacts master transcriptional regulators and gene expression class of glioblastoma. Am J Pathol. 2012;180(5):2108–19.PubMedPubMedCentral
36.
go back to reference Cooper LA, et al. Integrated morphologic analysis for the identification and characterization of disease subtypes. J Am Med Inform Assoc. 2012;19(2):317–23.PubMedPubMedCentral Cooper LA, et al. Integrated morphologic analysis for the identification and characterization of disease subtypes. J Am Med Inform Assoc. 2012;19(2):317–23.PubMedPubMedCentral
37.
go back to reference Cooper LA, et al. Proc IEEE Int Symp Biomed Imaging; 2011. p. 1624–7. Cooper LA, et al. Proc IEEE Int Symp Biomed Imaging; 2011. p. 1624–7.
38.
go back to reference Gajewski TF, Schreiber H, Fu YX. Innate and adaptive immune cells in the tumor microenvironment. Nat Immunol. 2013;14(10):1014–22.PubMedPubMedCentral Gajewski TF, Schreiber H, Fu YX. Innate and adaptive immune cells in the tumor microenvironment. Nat Immunol. 2013;14(10):1014–22.PubMedPubMedCentral
39.
go back to reference Gurcan MN, et al. Histopathological image analysis: A review, vol. 2; 2009. p. 147. Gurcan MN, et al. Histopathological image analysis: A review, vol. 2; 2009. p. 147.
40.
go back to reference Gurcan MN, et al. Developing the quantitative histopathology image ontology (QHIO): a case study using the hot spot detection problem. J Biomed Inform. 2017;66:129–35.PubMed Gurcan MN, et al. Developing the quantitative histopathology image ontology (QHIO): a case study using the hot spot detection problem. J Biomed Inform. 2017;66:129–35.PubMed
41.
go back to reference Irshad H, et al. Methods for nuclei detection, segmentation, and classification in digital histopathology: a review—current status and future potential. IEEE Rev Biomed Eng. 2014;7. Irshad H, et al. Methods for nuclei detection, segmentation, and classification in digital histopathology: a review—current status and future potential. IEEE Rev Biomed Eng. 2014;7.
42.
go back to reference Janowczyk A, et al. High-throughput biomarker segmentation on ovarian cancer tissue microarrays via hierarchical normalized cuts. IEEE Trans Biomed Eng. 2012;59(5):1240–52.PubMed Janowczyk A, et al. High-throughput biomarker segmentation on ovarian cancer tissue microarrays via hierarchical normalized cuts. IEEE Trans Biomed Eng. 2012;59(5):1240–52.PubMed
43.
go back to reference Janowczyk A, et al. A resolution adaptive deep hierarchical (RADHicaL) learning scheme applied to nuclear segmentation of digital pathology images. Comput Methods Biomech Biomed Eng Imaging Vis. 2018;6(3):270–6.PubMed Janowczyk A, et al. A resolution adaptive deep hierarchical (RADHicaL) learning scheme applied to nuclear segmentation of digital pathology images. Comput Methods Biomech Biomed Eng Imaging Vis. 2018;6(3):270–6.PubMed
44.
go back to reference Janowczyk A, A.J.J.o.p.i. Madabhushi. Deep learning for digital pathology image analysis: A comprehensive tutorial with selected use cases; 2016. p. 7. Janowczyk A, A.J.J.o.p.i. Madabhushi. Deep learning for digital pathology image analysis: A comprehensive tutorial with selected use cases; 2016. p. 7.
45.
go back to reference Kothari S, et al. Pathology imaging informatics for quantitative analysis of whole-slide images. J Am Med Inform Assoc. 2013;20(6):1099–108.PubMedPubMedCentral Kothari S, et al. Pathology imaging informatics for quantitative analysis of whole-slide images. J Am Med Inform Assoc. 2013;20(6):1099–108.PubMedPubMedCentral
46.
go back to reference Kumar A, et al. Automated analysis of immunohistochemistry images identifies candidate location biomarkers for cancers. Proc Natl Acad Sci. 2014;111(51):18249–54.PubMedPubMedCentral Kumar A, et al. Automated analysis of immunohistochemistry images identifies candidate location biomarkers for cancers. Proc Natl Acad Sci. 2014;111(51):18249–54.PubMedPubMedCentral
47.
go back to reference Kumar H, Kawai T, Akira S. Pathogen recognition by the innate immune system. Int Rev Immunol. 2011;30(1):16–34.PubMed Kumar H, Kawai T, Akira S. Pathogen recognition by the innate immune system. Int Rev Immunol. 2011;30(1):16–34.PubMed
48.
go back to reference Madabhushi A, et al. Computer-aided prognosis: predicting patient and disease outcome via quantitative fusion of multi-scale, multi-modal data. Comput Med Imaging Graph. 2011;35(7–8):506–14.PubMed Madabhushi A, et al. Computer-aided prognosis: predicting patient and disease outcome via quantitative fusion of multi-scale, multi-modal data. Comput Med Imaging Graph. 2011;35(7–8):506–14.PubMed
49.
go back to reference Madabhushi A, Lee G. Image analysis and machine learning in digital pathology: challenges and opportunities. Med Image Anal. 2016;33:170–5.PubMedPubMedCentral Madabhushi A, Lee G. Image analysis and machine learning in digital pathology: challenges and opportunities. Med Image Anal. 2016;33:170–5.PubMedPubMedCentral
50.
go back to reference Netea MG, et al. Trained immunity: A program of innate immune memory in health and disease. Science. 2016;352(6284):aaf1098.PubMedPubMedCentral Netea MG, et al. Trained immunity: A program of innate immune memory in health and disease. Science. 2016;352(6284):aaf1098.PubMedPubMedCentral
52.
go back to reference Norton K-A, et al. Multiscale Agent-Based and Hybrid Modeling of the Tumor Immune Microenvironment. Processes (Basel, Switzerland). 2019;7(1):37. Norton K-A, et al. Multiscale Agent-Based and Hybrid Modeling of the Tumor Immune Microenvironment. Processes (Basel, Switzerland). 2019;7(1):37.
53.
go back to reference Bindea G, et al. Natural immunity to cancer in humans. Curr Opin Immunol. 2010;22(2):215–22.PubMed Bindea G, et al. Natural immunity to cancer in humans. Curr Opin Immunol. 2010;22(2):215–22.PubMed
54.
go back to reference Bindea G, et al. Spatiotemporal dynamics of intratumoral immune cells reveal the immune landscape in human cancer. Immunity. 2013;39(4):782–95.PubMed Bindea G, et al. Spatiotemporal dynamics of intratumoral immune cells reveal the immune landscape in human cancer. Immunity. 2013;39(4):782–95.PubMed
55.
56.
go back to reference Fridman WH, et al. The immune contexture in human tumours: impact on clinical outcome. Nat Rev Cancer. 2012;12(4):298–306.PubMed Fridman WH, et al. The immune contexture in human tumours: impact on clinical outcome. Nat Rev Cancer. 2012;12(4):298–306.PubMed
57.
go back to reference Galon J, et al. The continuum of cancer immunosurveillance: prognostic, predictive, and mechanistic signatures. Immunity. 2013;39(1):11–26.PubMed Galon J, et al. The continuum of cancer immunosurveillance: prognostic, predictive, and mechanistic signatures. Immunity. 2013;39(1):11–26.PubMed
58.
go back to reference Galon J, et al. Type, density, and location of immune cells within human colorectal tumors predict clinical outcome. Science. 2006;313(5795):1960–4.PubMed Galon J, et al. Type, density, and location of immune cells within human colorectal tumors predict clinical outcome. Science. 2006;313(5795):1960–4.PubMed
59.
go back to reference Galon J, et al. Towards the introduction of the ‘Immunoscore’ in the classification of malignant tumours. J Pathol. 2014;232(2):199–209.PubMed Galon J, et al. Towards the introduction of the ‘Immunoscore’ in the classification of malignant tumours. J Pathol. 2014;232(2):199–209.PubMed
60.
62.
go back to reference Saltz J, et al. Towards generation, management, and exploration of combined Radiomics and Pathomics datasets for Cancer research. AMIA Jt Summits Transl Sci Proc. 2017;2017:85–94.PubMedPubMedCentral Saltz J, et al. Towards generation, management, and exploration of combined Radiomics and Pathomics datasets for Cancer research. AMIA Jt Summits Transl Sci Proc. 2017;2017:85–94.PubMedPubMedCentral
63.
go back to reference Saltz J, et al. Spatial organization and molecular correlation of tumor-infiltrating lymphocytes using deep learning on pathology images. Cell Rep. 2018;23(1):181.PubMedPubMedCentral Saltz J, et al. Spatial organization and molecular correlation of tumor-infiltrating lymphocytes using deep learning on pathology images. Cell Rep. 2018;23(1):181.PubMedPubMedCentral
64.
go back to reference Levenson RM, Borowsky AD, Angelo M. Immunohistochemistry and mass spectrometry for highly multiplexed cellular molecular imaging. Lab Investig. 2015;95(4):397–405.PubMed Levenson RM, Borowsky AD, Angelo M. Immunohistochemistry and mass spectrometry for highly multiplexed cellular molecular imaging. Lab Investig. 2015;95(4):397–405.PubMed
65.
go back to reference Koelzer VH, et al. Precision immunoprofiling by image analysis and artificial intelligence. Virchows Arch. 2019;474(4):511–22.PubMed Koelzer VH, et al. Precision immunoprofiling by image analysis and artificial intelligence. Virchows Arch. 2019;474(4):511–22.PubMed
66.
go back to reference Krueger R, et al. Combining Unsupervised and Supervised Learning for Hierarchical Phenotype Analysis in Multi-Channel Image Data. Facetto: IEEE Trans Vis Comput Graph; 2019. Krueger R, et al. Combining Unsupervised and Supervised Learning for Hierarchical Phenotype Analysis in Multi-Channel Image Data. Facetto: IEEE Trans Vis Comput Graph; 2019.
67.
go back to reference Saylor J, et al. Spatial mapping of myeloid cells and macrophages by multiplexed tissue staining. Front Immunol. 2018;9:2925.PubMedPubMedCentral Saylor J, et al. Spatial mapping of myeloid cells and macrophages by multiplexed tissue staining. Front Immunol. 2018;9:2925.PubMedPubMedCentral
68.
go back to reference Roa-Pena L, et al. Keratin 17 identifies the most lethal molecular subtype of pancreatic cancer. Sci Rep. 2019;9(1):11239.PubMedPubMedCentral Roa-Pena L, et al. Keratin 17 identifies the most lethal molecular subtype of pancreatic cancer. Sci Rep. 2019;9(1):11239.PubMedPubMedCentral
69.
go back to reference Babu S, et al. Keratin 17 is a sensitive and specific biomarker of urothelial neoplasia. Mod Pathol. 2019;32(5):717–24.PubMed Babu S, et al. Keratin 17 is a sensitive and specific biomarker of urothelial neoplasia. Mod Pathol. 2019;32(5):717–24.PubMed
70.
go back to reference Escobar-Hoyos LF, et al. Keratin-17 promotes p27KIP1 nuclear export and degradation and offers potential prognostic utility. Cancer Res. 2015;75(17):3650–62.PubMed Escobar-Hoyos LF, et al. Keratin-17 promotes p27KIP1 nuclear export and degradation and offers potential prognostic utility. Cancer Res. 2015;75(17):3650–62.PubMed
71.
go back to reference Escobar-Hoyos LF, et al. Keratin 17 in premalignant and malignant squamous lesions of the cervix: proteomic discovery and immunohistochemical validation as a diagnostic and prognostic biomarker. Mod Pathol. 2014;27(4):621–30.PubMed Escobar-Hoyos LF, et al. Keratin 17 in premalignant and malignant squamous lesions of the cervix: proteomic discovery and immunohistochemical validation as a diagnostic and prognostic biomarker. Mod Pathol. 2014;27(4):621–30.PubMed
72.
go back to reference Zhang W, et al. Fully automated 5-plex fluorescent immunohistochemistry with tyramide signal amplification and same species antibodies. Lab Investig. 2017;97(7):873–85.PubMed Zhang W, et al. Fully automated 5-plex fluorescent immunohistochemistry with tyramide signal amplification and same species antibodies. Lab Investig. 2017;97(7):873–85.PubMed
73.
go back to reference Zhou W, et al. Image quality assessment: from error visibility to structural similarity. IEEE Trans Image Process. 2004;13(4):600–12. Zhou W, et al. Image quality assessment: from error visibility to structural similarity. IEEE Trans Image Process. 2004;13(4):600–12.
74.
go back to reference Lambert JH. Photometria, sive, De mensura et gradibus luminis, colorum et umbrae; 1760. Lambert JH. Photometria, sive, De mensura et gradibus luminis, colorum et umbrae; 1760.
75.
go back to reference Abousamra, S., et al., Weakly-Supervised Deep Stain Decomposition for Multiplex IHC Images, in IEEE International Symposium on Biomedical Imaging (ISBI), 2020. 2020. Abousamra, S., et al., Weakly-Supervised Deep Stain Decomposition for Multiplex IHC Images, in IEEE International Symposium on Biomedical Imaging (ISBI), 2020. 2020.
76.
go back to reference Chen T, Chefd’hotel C. Deep Learning Based Automatic Immune Cell Detection for Immunohistochemistry Images. In: Machine Learning in Medical Imaging. Cham: Springer International Publishing; 2014. Chen T, Chefd’hotel C. Deep Learning Based Automatic Immune Cell Detection for Immunohistochemistry Images. In: Machine Learning in Medical Imaging. Cham: Springer International Publishing; 2014.
77.
go back to reference Chen T, Srinivas C. Group sparsity model for stain unmixing in brightfield multiplex immunohistochemistry images. Comput Med Imaging Graph. 2015;46(Pt 1):30–9.PubMed Chen T, Srinivas C. Group sparsity model for stain unmixing in brightfield multiplex immunohistochemistry images. Comput Med Imaging Graph. 2015;46(Pt 1):30–9.PubMed
78.
go back to reference Duggal R, et al. SD-layer: stain Deconvolutional layer for CNNs in medical microscopic imaging. Cham: Springer International Publishing; 2017. Duggal R, et al. SD-layer: stain Deconvolutional layer for CNNs in medical microscopic imaging. Cham: Springer International Publishing; 2017.
79.
go back to reference Macenko M, et al. A method for normalizing histology slides for quantitative analysis. In: Proceedings of the Sixth IEEE international conference on Symposium on Biomedical Imaging: From Nano to Macro. Boston: IEEE press; 2009. p. 1107–10. Macenko M, et al. A method for normalizing histology slides for quantitative analysis. In: Proceedings of the Sixth IEEE international conference on Symposium on Biomedical Imaging: From Nano to Macro. Boston: IEEE press; 2009. p. 1107–10.
80.
go back to reference Vahadane A, et al. Structure-preserving color normalization and sparse stain separation for histological images. IEEE Trans Med Imaging. 2016;35(8):1962–71.PubMed Vahadane A, et al. Structure-preserving color normalization and sparse stain separation for histological images. IEEE Trans Med Imaging. 2016;35(8):1962–71.PubMed
81.
go back to reference Ronneberger O, Fischer P, Brox T. U-Net: Convolutional Networks for Biomedical Image Segmentation; 2015. p. 234–41. Ronneberger O, Fischer P, Brox T. U-Net: Convolutional Networks for Biomedical Image Segmentation; 2015. p. 234–41.
Metadata
Title
Deep learning-based image analysis methods for brightfield-acquired multiplex immunohistochemistry images
Authors
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
Publication date
01-12-2020
Publisher
BioMed Central
Keyword
Pathology
Published in
Diagnostic Pathology / Issue 1/2020
Electronic ISSN: 1746-1596
DOI
https://doi.org/10.1186/s13000-020-01003-0

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