Literature DB >> 31915129

Computational Staining of Pathology Images to Study the Tumor Microenvironment in Lung Cancer.

Shidan Wang1, Ruichen Rong1, Donghan M Yang1, Junya Fujimoto2, Shirley Yan3, Ling Cai1, Lin Yang1, Danni Luo1, Carmen Behrens4, Edwin R Parra2, Bo Yao1, Lin Xu1, Tao Wang1, Xiaowei Zhan1, Ignacio I Wistuba2, John Minna5,6,7, Yang Xie1,7,8, Guanghua Xiao9,7,8.   

Abstract

The spatial organization of different types of cells in tumor tissues reveals important information about the tumor microenvironment (TME). To facilitate the study of cellular spatial organization and interactions, we developed Histology-based Digital-Staining, a deep learning-based computation model, to segment the nuclei of tumor, stroma, lymphocyte, macrophage, karyorrhexis, and red blood cells from standard hematoxylin and eosin-stained pathology images in lung adenocarcinoma. Using this tool, we identified and classified cell nuclei and extracted 48 cell spatial organization-related features that characterize the TME. Using these features, we developed a prognostic model from the National Lung Screening Trial dataset, and independently validated the model in The Cancer Genome Atlas lung adenocarcinoma dataset, in which the predicted high-risk group showed significantly worse survival than the low-risk group (P = 0.001), with a HR of 2.23 (1.37-3.65) after adjusting for clinical variables. Furthermore, the image-derived TME features significantly correlated with the gene expression of biological pathways. For example, transcriptional activation of both the T-cell receptor and programmed cell death protein 1 pathways positively correlated with the density of detected lymphocytes in tumor tissues, while expression of the extracellular matrix organization pathway positively correlated with the density of stromal cells. In summary, we demonstrate that the spatial organization of different cell types is predictive of patient survival and associated with the gene expression of biological pathways. SIGNIFICANCE: These findings present a deep learning-based analysis tool to study the TME in pathology images and demonstrate that the cell spatial organization is predictive of patient survival and is associated with gene expression.See related commentary by Rodriguez-Antolin, p. 1912. ©2020 American Association for Cancer Research.

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Year:  2020        PMID: 31915129      PMCID: PMC7919065          DOI: 10.1158/0008-5472.CAN-19-1629

Source DB:  PubMed          Journal:  Cancer Res        ISSN: 0008-5472            Impact factor:   12.701


  32 in total

1.  Regulation of DNA polymerase POLD4 influences genomic instability in lung cancer.

Authors:  Qin Miao Huang; Shuta Tomida; Yuji Masuda; Chinatsu Arima; Ke Cao; Taka-Aki Kasahara; Hirotaka Osada; Yasushi Yatabe; Tomohiro Akashi; Kenji Kamiya; Takashi Takahashi; Motoshi Suzuki
Journal:  Cancer Res       Date:  2010-09-22       Impact factor: 12.701

Review 2.  Fibroblasts in cancer.

Authors:  Raghu Kalluri; Michael Zeisberg
Journal:  Nat Rev Cancer       Date:  2006-05       Impact factor: 60.716

Review 3.  The role of tumor stroma in cancer progression and prognosis: emphasis on carcinoma-associated fibroblasts and non-small cell lung cancer.

Authors:  Roy M Bremnes; Tom Dønnem; Samer Al-Saad; Khalid Al-Shibli; Sigve Andersen; Rafael Sirera; Carlos Camps; Inigo Marinez; Lill-Tove Busund
Journal:  J Thorac Oncol       Date:  2011-01       Impact factor: 15.609

Review 4.  Comprehensive evaluation of published gene expression prognostic signatures for biomarker-based lung cancer clinical studies.

Authors:  H Tang; S Wang; G Xiao; J Schiller; V Papadimitrakopoulou; J Minna; I I Wistuba; Y Xie
Journal:  Ann Oncol       Date:  2017-04-01       Impact factor: 32.976

Review 5.  Targeting HIF-1 for cancer therapy.

Authors:  Gregg L Semenza
Journal:  Nat Rev Cancer       Date:  2003-10       Impact factor: 60.716

6.  An inflammation-based prognostic score (mGPS) predicts cancer survival independent of tumour site: a Glasgow Inflammation Outcome Study.

Authors:  M J Proctor; D S Morrison; D Talwar; S M Balmer; D S J O'Reilly; A K Foulis; P G Horgan; D C McMillan
Journal:  Br J Cancer       Date:  2011-01-25       Impact factor: 7.640

Review 7.  The prognostic influence of tumour-infiltrating lymphocytes in cancer: a systematic review with meta-analysis.

Authors:  M J M Gooden; G H de Bock; N Leffers; T Daemen; H W Nijman
Journal:  Br J Cancer       Date:  2011-05-31       Impact factor: 7.640

8.  Prognostic significance of tumor-infiltrating CD8+ and FOXP3+ lymphocytes in residual tumors and alterations in these parameters after neoadjuvant chemotherapy in triple-negative breast cancer: a retrospective multicenter study.

Authors:  Minoru Miyashita; Hironobu Sasano; Kentaro Tamaki; Hisashi Hirakawa; Yayoi Takahashi; Saki Nakagawa; Gou Watanabe; Hiroshi Tada; Akihiko Suzuki; Noriaki Ohuchi; Takanori Ishida
Journal:  Breast Cancer Res       Date:  2015-09-04       Impact factor: 6.466

9.  Identifying survival associated morphological features of triple negative breast cancer using multiple datasets.

Authors:  Chao Wang; Thierry Pécot; Debra L Zynger; Raghu Machiraju; Charles L Shapiro; Kun Huang
Journal:  J Am Med Inform Assoc       Date:  2013-04-12       Impact factor: 4.497

10.  The Reactome pathway Knowledgebase.

Authors:  Antonio Fabregat; Konstantinos Sidiropoulos; Phani Garapati; Marc Gillespie; Kerstin Hausmann; Robin Haw; Bijay Jassal; Steven Jupe; Florian Korninger; Sheldon McKay; Lisa Matthews; Bruce May; Marija Milacic; Karen Rothfels; Veronica Shamovsky; Marissa Webber; Joel Weiser; Mark Williams; Guanming Wu; Lincoln Stein; Henning Hermjakob; Peter D'Eustachio
Journal:  Nucleic Acids Res       Date:  2015-12-09       Impact factor: 16.971

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  14 in total

1.  Digital Pathology-based Study of Cell- and Tissue-level Morphologic Features in Serous Borderline Ovarian Tumor and High-grade Serous Ovarian Cancer.

Authors:  Jun Jiang; Burak Tekin; Ruifeng Guo; Hongfang Liu; Yajue Huang; Chen Wang
Journal:  J Pathol Inform       Date:  2021-06-05

Review 2.  Deep Learning of Histopathology Images at the Single Cell Level.

Authors:  Kyubum Lee; John H Lockhart; Mengyu Xie; Ritu Chaudhary; Robbert J C Slebos; Elsa R Flores; Christine H Chung; Aik Choon Tan
Journal:  Front Artif Intell       Date:  2021-09-10

3.  Shape decomposition algorithms for laser capture microdissection.

Authors:  Leonie Selbach; Tobias Kowalski; Klaus Gerwert; Maike Buchin; Axel Mosig
Journal:  Algorithms Mol Biol       Date:  2021-07-08       Impact factor: 1.405

Review 4.  New insights into the interaction of the immune system with non-small cell lung carcinomas.

Authors:  Paul Hofman
Journal:  Transl Lung Cancer Res       Date:  2020-10

5.  Deep learning-based six-type classifier for lung cancer and mimics from histopathological whole slide images: a retrospective study.

Authors:  Huan Yang; Lili Chen; Zhiqiang Cheng; Minglei Yang; Jianbo Wang; Chenghao Lin; Yuefeng Wang; Leilei Huang; Yangshan Chen; Sui Peng; Zunfu Ke; Weizhong Li
Journal:  BMC Med       Date:  2021-03-29       Impact factor: 8.775

Review 6.  Next-Generation Digital Histopathology of the Tumor Microenvironment.

Authors:  Felicitas Mungenast; Achala Fernando; Robert Nica; Bogdan Boghiu; Bianca Lungu; Jyotsna Batra; Rupert C Ecker
Journal:  Genes (Basel)       Date:  2021-04-07       Impact factor: 4.096

Review 7.  A narrative review of artificial intelligence-assisted histopathologic diagnosis and decision-making for non-small cell lung cancer: achievements and limitations.

Authors:  Yongzhong Li; Donglai Chen; Xuejie Wu; Wentao Yang; Yongbing Chen
Journal:  J Thorac Dis       Date:  2021-12       Impact factor: 2.895

8.  The impact of the spatial heterogeneity of resistant cells and fibroblasts on treatment response.

Authors:  Masud M A; Jae-Young Kim; Cheol-Ho Pan; Eunjung Kim
Journal:  PLoS Comput Biol       Date:  2022-03-09       Impact factor: 4.475

Review 9.  Computational pathology in ovarian cancer.

Authors:  Sandra Orsulic; Joshi John; Ann E Walts; Arkadiusz Gertych
Journal:  Front Oncol       Date:  2022-07-29       Impact factor: 5.738

10.  Spatial heterogeneity of immune infiltration predicts the prognosis of nasopharyngeal carcinoma patients.

Authors:  Ya-Qin Wang; Xu Liu; Cheng Xu; Wei Jiang; Shuo-Yu Xu; Yu Zhang; Ye Lin Liang; Jun-Yan Li; Qian Li; Yu-Pei Chen; Yin Zhao; Jing-Ping Yun; Na Liu; Ying-Qin Li; Jun Ma
Journal:  Oncoimmunology       Date:  2021-10-27       Impact factor: 8.110

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