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  4. Discrimination of head and neck squamous cell carcinoma patients and healthy adults by 10-color flow cytometry: Development of a score based on leukocyte subsets
 
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2019
Journal Article
Titel

Discrimination of head and neck squamous cell carcinoma patients and healthy adults by 10-color flow cytometry: Development of a score based on leukocyte subsets

Abstract
Background: Leukocytes in peripheral blood (PB) are prognostic biomarkers in head and neck squamous cell carcinoma cancer patients (HNSCC-CPs), but differences between HNSCC-CPs and healthy adults (HAs) are insufficiently described. Methods: 10-color flow cytometry (FCM) was used for in-depth immunophenotyping of PB samples of 963 HAs and 101 therapy-naïve HNSCC-CPs. Absolute (AbsCC) and relative cell counts (RelCC) of leukocyte subsets were determined. A training cohort (TC) of 43 HNSCC-CPs and 43 HAs, propensity score (PS)-matched according to age, sex, alcohol, and smoking, was used to develop a score consecutively approved in a validation cohort (VC). Results: Differences in AbsCC were detected in leukocyte subsets (p < 0.001), but had low power in discriminating HNSCC-CPs and HAs. Consequently, RelCC of nine leukocyte subsets in the TC were used to calculate 36 ratios; receiver operating characteristic (ROC) curves defined optimum cut-off values. Binary classified data were combined in a score based on four ratios: monocytes-to-granulocytes (MGR), classical monocytes-to-monocytes (clMMR), monocytes-to-lymphocytes (MLR), and monocytes-to-T-lymphocytes (MTLR); >3 points accurately discriminate HNSCC-CPs and HAs in the PS-matched TC (p = 2.97 × 10&#8722;17), the VC (p = 4.404 × 10&#8722;178), and both combined (p = 7.74 × 10&#8722;199). Conclusions: RelCC of leukocyte subsets in PB of HNSCC-CPs differ significantly from those of HAs. A score based on MGR, clMMR, MLR, and MTLR allows for accurate discrimination.
Author(s)
Wichmann, Gunnar
Universitätsklinikum Leipzig
Gaede, Clara
Universitätsklinikum Leipzig
Melzer, Susanne
Universität Leipzig
Bocsi, József
Universität Leipzig
Henger, Sylvia
Universität Leipzig
Engel, Christoph
Universität Leipzig
Wirkner, Kerstin
Universität Leipzig
Wenning, John R.
Universitätsklinikum Leipzig
Wald, Theresa
Universitätsklinikum Leipzig
Freitag, Josefine
Universitätsklinikum Leipzig
Willner, Maria
Universitätsklinikum Leipzig
Kolb, Marlen
Universitätsklinikum Leipzig
Wiegand, Susanne
Universitätsklinikum Leipzig
Loeffler, Markus
Universität Leipzig
Dietz, Andreas
Universitätsklinikum Leipzig
Tárnok, Attila
Fraunhofer-Institut für Zelltherapie und Immunologie IZI
Zeitschrift
Cancers
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DOI
10.3390/cancers11060814
Externer Link
Externer Link
Language
English
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Fraunhofer-Institut für Zelltherapie und Immunologie IZI
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