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Evaluation of digital image analysis as a supportive tool for the stratification of head and neck vascular anomalies

Authors :
Michael Bette
Marion Roeßler
Urban W. Geisthoff
Boris A. Stuck
Udo Bakowsky
Jovine Ehrenreich
Ansgar Schmidt
Robert Mandic
Source :
European Archives of Oto-Rhino-Laryngology
Publication Year :
2020
Publisher :
Springer Berlin Heidelberg, 2020.

Abstract

Background The histological differentiation of individual types of vascular anomalies (VA), such as lymphatic malformations (LM), hemangioma (Hem), paraganglioma (PG), venous malformations (VeM), arteriovenous malformations (AVM), pyogenic granulomas (GP), and (not otherwise classified) vascular malformations (VM n.o.c.) is frequently difficult due to the heterogeneity of these anomalies. The aim of the study was to evaluate digital image analysis as a method for VA stratification Methods A total of 40 VA tissues were examined immunohistologically using a selection of five vascular endothelial-associated markers (CD31, CD34, CLDN5, PDPN, VIM). The staining results were documented microscopically followed by digital image analyses based quantification of the candidate-marker-proteins using the open source program ImageJ/Fiji. Results Differences in the expression patterns of the candidate proteins could be detected particularly when deploying the quotient of the quantified immunohistochemical signal values. Deploying signal marker quotients, LM could be fully distinguished from all other tested tissue types. GP achieved stratification from LM, Hem, VM, PG and AVM tissues, whereas Hem, PG, VM and AVM exhibited significantly different signal marker quotients compared with LM and GP tissues. Conclusion Although stratification of different VA from each other was only achieved in part with the markers used, the results of this study strongly support the usefulness of digital image analysis for the stratification of VA. Against the background of upcoming new diagnostic techniques involving artificial intelligence and deep (machine) learning, our data serve as a paradigm of how digital evaluation methods can be deployed to support diagnostic decision making in the field of VAs.

Details

Language :
English
ISSN :
14344726 and 09374477
Volume :
277
Issue :
10
Database :
OpenAIRE
Journal :
European Archives of Oto-Rhino-Laryngology
Accession number :
edsair.doi.dedup.....bc3dd3a050e5531d052ba544b434ad49