Publication: High-Dimensional Analysis of Single-Cell Flow Cytometry Data Predicts Relapse in Childhood Acute Lymphoblastic Leukaemia.
Loading...
Identifiers
Date
2020-12-23
Authors
Chulian, Salvador
Martinez-Rubio, Alvaro
Perez-Garcia, Victor M
Rosa, Maria
Blazquez Goñi, Cristina
Rodriguez Gutierrez, Juan Francisco
Hermosin-Ramos, Lourdes
Molinos Quintana, Agueda
Caballero-Velazquez, Teresa
Ramirez-Orellana, Manuel
Advisors
Journal Title
Journal ISSN
Volume Title
Publisher
MDPI
Abstract
Artificial intelligence methods may help in unveiling information that is hidden in high-dimensional oncological data. Flow cytometry studies of haematological malignancies provide quantitative data with the potential to be used for the construction of response biomarkers. Many computational methods from the bioinformatics toolbox can be applied to these data, but they have not been exploited in their full potential in leukaemias, specifically for the case of childhood B-cell Acute Lymphoblastic Leukaemia. In this paper, we analysed flow cytometry data that were obtained at diagnosis from 56 paediatric B-cell Acute Lymphoblastic Leukaemia patients from two local institutions. Our aim was to assess the prognostic potential of immunophenotypical marker expression intensity. We constructed classifiers that are based on the Fisher's Ratio to quantify differences between patients with relapsing and non-relapsing disease. We also correlated this with genetic information. The main result that arises from the data was the association between subexpression of marker CD38 and the probability of relapse.
Description
MeSH Terms
Flow cytometry
Artificial intelligence
Precursor celllLymphoblastic leukemia-lymphoma
Recurrence
Hematologic neoplasms
Computational biology
Probability
Biomarkers
Artificial intelligence
Precursor celllLymphoblastic leukemia-lymphoma
Recurrence
Hematologic neoplasms
Computational biology
Probability
Biomarkers
DeCS Terms
Biología computacional
Biomarcadores
Citometría de flujo
Inteligencia artificial
Leucemia-linfoma linfoblástico de células precursoras
Neoplasias hematológicas
Probabilidad
Recurrencia
Biomarcadores
Citometría de flujo
Inteligencia artificial
Leucemia-linfoma linfoblástico de células precursoras
Neoplasias hematológicas
Probabilidad
Recurrencia
CIE Terms
Keywords
Acute lymphoblastic leukaemia, CD38, Fisher’s ratio, Flow cytometry data, Mathematical oncology, Personalised medicine, Response biomarkers
Citation
Chulián S, Martínez-Rubio Á, Pérez-García VM, Rosa M, Blázquez Goñi C, Rodríguez Gutiérrez JF, et al. High-Dimensional Analysis of Single-Cell Flow Cytometry Data Predicts Relapse in Childhood Acute Lymphoblastic Leukaemia. Cancers (Basel). 2020 Dec 23;13(1):17