| Literature DB >> 30518691 |
Sabine Ivison1,2, Mehrnoush Malek3, Rosa V Garcia1,2, Raewyn Broady4, Anne Halpin5, Manon Richaud6, Rollin F Brant2, Szu-I Wang5, Mathieu Goupil6, Qingdong Guan7, Peter Ashton8, Jason Warren9, Amr Rajab10, Simon Urschel5, Deepali Kumar8, Mathias Streitz11, Birgit Sawitzki11, Stephan Schlickeiser11, Janetta J Bijl6, Donna A Wall7, Jean-Sebastien Delisle6, Lori J West5, Ryan R Brinkman3,12, Megan K Levings1,2.
Abstract
The analysis and validation of flow cytometry-based biomarkers in clinical studies are limited by the lack of standardized protocols that are reproducible across multiple centers and suitable for use with either unfractionated blood or cryopreserved PBMCs. Here we report the development of a platform that standardizes a set of flow cytometry panels across multiple centers, with high reproducibility in blood or PBMCs from either healthy subjects or patients 100 days after hematopoietic stem cell transplantation. Inter-center comparisons of replicate samples showed low variation, with interindividual variation exceeding inter-center variation for most populations (coefficients of variability <20% and interclass correlation coefficients >0.75). Exceptions included low-abundance populations defined by markers with indistinct expression boundaries (e.g., plasmablasts, monocyte subsets) or populations defined by markers sensitive to cryopreservation, such as CD62L and CD45RA. Automated gating pipelines were developed and validated on an independent data set, revealing high Spearman's correlations (rs >0.9) with manual analyses. This workflow, which includes pre-formatted antibody cocktails, standardized protocols for acquisition, and validated automated analysis pipelines, can be readily implemented in multicenter clinical trials. This approach facilitates the collection of robust immune phenotyping data and comparison of data from independent studies.Entities:
Keywords: Adaptive immunity; Immunology; Innate immunity; Stem cell transplantation; Transplantation
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Year: 2018 PMID: 30518691 PMCID: PMC6328091 DOI: 10.1172/jci.insight.121867
Source DB: PubMed Journal: JCI Insight ISSN: 2379-3708