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Wagner, M. ; Hansel, R. ; Reinke, S. ; Richter, J. ; Altenbuchinger, Michael ; Braumann, U. D. ; Spang, Rainer ; Loffler, M. ; Klapper, W.

Automated macrophage counting in DLBCL tissue samples: a ROF filter based approach

Wagner, M., Hansel, R., Reinke, S., Richter, J., Altenbuchinger, Michael, Braumann, U. D., Spang, Rainer, Loffler, M. and Klapper, W. (2019) Automated macrophage counting in DLBCL tissue samples: a ROF filter based approach. Biol Proced Online 21, p. 13.

Date of publication of this fulltext: 21 Oct 2019 07:27
Article
DOI to cite this document: 10.5283/epub.40851


Abstract

BackgroundFor analysis of the tumor microenvironment in diffuse large B-cell lymphoma (DLBCL) tissue samples, it is desirable to obtain information about counts and distribution of different macrophage subtypes. Until now, macrophage counts are mostly inferred from gene expression analysis of whole tissue sections, providing only indirect information. Direct analysis of immunohistochemically ...

BackgroundFor analysis of the tumor microenvironment in diffuse large B-cell lymphoma (DLBCL) tissue samples, it is desirable to obtain information about counts and distribution of different macrophage subtypes. Until now, macrophage counts are mostly inferred from gene expression analysis of whole tissue sections, providing only indirect information. Direct analysis of immunohistochemically (IHC) fluorescence stained tissue samples is confronted with several difficulties, e.g. high variability of shape and size of target macrophages and strongly inhomogeneous intensity of staining. Consequently, application of commercial software is largely restricted to very rough analysis modes, and most macrophage counts are still obtained by manual counting in microarrays or high power fields, thus failing to represent the heterogeneity of tumor microenvironment adequately.MethodsWe describe a Rudin-Osher-Fatemi (ROF) filter based segmentation approach for whole tissue samples, combining floating intensity thresholding and rule-based feature detection. Method is validated against manual counts and compared with two commercial software kits (Tissue Studio 64, Definiens AG, and Halo, Indica Labs) and a straightforward machine-learning approach in a set of 50 test images. Further, the novel method and both commercial packages are applied to a set of 44 whole tissue sections. Outputs are compared with gene expression data available for the same tissue samples. Finally, the ROF based method is applied to 44 expert-specified tumor subregions for testing selection and subsampling strategies.ResultsAmong all tested methods, the novel approach is best correlated with manual count (0.9297). Automated detection of evaluation subregions proved to be fully reliable. Comparison with gene expression data obtained for the same tissue samples reveals only moderate to low correlation levels. Subsampling within tumor subregions is possible with results almost identical to full sampling. Mean macrophage size in tumor subregions is 152.5111.3 m(2).ConclusionsROF based approach is successfully applied to detection of IHC stained macrophages in DLBCL tissue samples. The method competes well with existing commercial software kits. In difference to them, it is fully automated, externally repeatable, independent on training data and completely documented. Comparison with gene expression data indicates that image morphometry constitutes an independent source of information about antibody-polarized macrophage occurence and distribution.



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Details

Item typeArticle
Journal or Publication TitleBiol Proced Online
Publisher:BMC
Place of Publication:LONDON
Volume:21
Page Range:p. 13
DateJuly 2019
InstitutionsMedicine > Institut für Funktionelle Genomik > Lehrstuhl für Statistische Bioinformatik (Prof. Spang)
Informatics and Data Science > Department Computational Life Science > Lehrstuhl für Statistische Bioinformatik (Prof. Spang)
Identification Number
ValueType
31303867PubMed ID
10.1186/s12575-019-0098-9DOI
KeywordsB-CELL LYMPHOMA; GENE-EXPRESSION; TUMOR MICROENVIRONMENT; IMAGE-ANALYSIS; SURVIVAL; Macrophage; Immunohistochemical staining; CD14; CD163; Automated cell counting; ROF filtering; Floating threshold; Rule-based detection
Dewey Decimal Classification600 Technology > 610 Medical sciences Medicine
StatusPublished
RefereedYes, this version has been refereed
Created at the University of RegensburgPartially
URN of the UB Regensburgurn:nbn:de:bvb:355-epub-408514
Item ID40851

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