Prediction of the Clinical Course of Immune Thrombocytopenia in Children by Platelet Kinetics

Author:

Lejeune Julien12,Raoult Violette1,Dubrasquet Mathilde1,Chauvin Romane1,Mallebranche Coralie3,Pellier Isabelle3,Monceaux Françoise4,Bayart Sophie5,Grain Audrey6,Gyan Emmanuel12,Ravalet Noémie27,Herault Olivier27,Ternant David8

Affiliation:

1. Pediatric Onco-Hematology Unit, CHU de Tours, France

2. CNRS ERL7001, EA 7501 GICC, University of Tours, France

3. Pediatric Immuno-Hemato-Oncology Unit, CHU Angers, France

4. Pediatric Unit, CH Orléans, France

5. Pediatric and Adolescent Unit, CHRU de Rennes, France

6. Pediatric Immuno-Hemato-Oncology Unit, CHU Nantes, France

7. Department of Biological Hematology, Tours University Hospital, Tours, France

8. EA 7501 « Transplantation, Immunology, Inflammation », University of Tours, France

Abstract

Childhood immune thrombocytopenia (ITP) is a rare autoimmune disorder characterized by isolated thrombocytopenia. Prolonged ITP (persistent and chronic) leads to a reduced quality of life for children in many domains. To provide optimal support for children, with ITP, it is important to be able to predict those who will develop prolonged ITP. This study aimed to develop a mathematical model based on platelet recovery that allows the early prediction of prolonged ITP. In this retrospective study, we used platelet counts from the 6 months following the diagnosis of ITP to model the kinetics of change in platelet count using a pharmacokinetic–pharmacodynamic model. In a learning set (n = 103), platelet counts were satisfactorily described by our kinetic model. The Kheal parameter, which describes spontaneous platelet recovery, allowed a distinction between acute and prolonged ITP with an area under the curve (AUC) of 0.74. In a validation set (n = 58), spontaneous platelet recovery was robustly predicted using platelet counts from 15 (AUC = 0.76) or 30 (AUC = 0.82) days after ITP diagnosis. In our model, platelet recovery quantified using the kheal parameter allowed prediction of the clinical course of ITP. Future prospective studies are needed to improve the predictivity of this model, in particular, by combining it with the predictive scores previously reported in the literature.

Publisher

Wiley

Subject

Hematology

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