Single Molecule Fluorescence Microscopy and Machine Learning for Rhesus D Antigen Classification

In transfusion medicine, the identification of the Rhesus D type is important to prevent anti-D immunisation in Rhesus D negative recipients. In particular, the detection of the very low expressed DEL phenotype is crucial and hence constitutes the bottleneck of standard immunohaematology. The curren...

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Veröffentlicht in:Scientific reports 2016-09, Vol.6 (1), p.32317-32317, Article 32317
Hauptverfasser: Borgmann, Daniela M., Mayr, Sandra, Polin, Helene, Schaller, Susanne, Dorfer, Viktoria, Obritzberger, Lisa, Endmayr, Tanja, Gabriel, Christian, Winkler, Stephan M., Jacak, Jaroslaw
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Sprache:eng
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Zusammenfassung:In transfusion medicine, the identification of the Rhesus D type is important to prevent anti-D immunisation in Rhesus D negative recipients. In particular, the detection of the very low expressed DEL phenotype is crucial and hence constitutes the bottleneck of standard immunohaematology. The current method of choice, adsorption-elution, does not provide unambiguous results. We have developed a complementary method of high sensitivity that allows reliable identification of D antigen expression. Here, we present a workflow composed of high-resolution fluorescence microscopy, image processing, and machine learning that - for the first time - enables the identification of even small amounts of D antigen on the cellular level. The high sensitivity of our technique captures the full range of D antigen expression (including D+, weak D, DEL, D−), allows automated population analyses, and results in classification test accuracies of up to 96%, even for very low expressed phenotypes.
ISSN:2045-2322
2045-2322
DOI:10.1038/srep32317