| Literature DB >> 33942494 |
Carolien Duetz1, Sofie Van Gassen2,3, Theresia M Westers1, Margot F van Spronsen1, Costa Bachas1, Yvan Saeys2,3, Arjan A van de Loosdrecht1.
Abstract
The diagnostic work-up of patients suspected for myelodysplastic syndromes is challenging and mainly relies on bone marrow morphology and cytogenetics. In this study, we developed and prospectively validated a fully computational tool for flow cytometry diagnostics in suspected-MDS. The computational diagnostic workflow consists of methods for pre-processing flow cytometry data, followed by a cell population detection method (FlowSOM) and a machine learning classifier (Random Forest). Based on a six tubes FC panel, the workflow obtained a 90% sensitivity and 93% specificity in an independent validation cohort. For practical advantages (e.g. reduced processing time and costs), a second computational diagnostic workflow was trained, solely based on the best performing single tube of the training cohort. This workflow obtained 97% sensitivity and 95% specificity in the prospective validation cohort. Both workflows outperformed the conventional, expert analyzed flow cytometry scores for diagnosis with respect to accuracy, objectivity and time investment (less than three minutes per patient). This article is protected by copyright. All rights reserved. This article is protected by copyright. All rights reserved.Entities:
Keywords: Diagnostic test; Flow Cytometry; Hematological malignancies; Machine learning; Myelodysplastic syndromes (MDS)
Year: 2021 PMID: 33942494 DOI: 10.1002/cyto.a.24360
Source DB: PubMed Journal: Cytometry A ISSN: 1552-4922 Impact factor: 4.355