PLoS Computational Biology (Mar 2022)

Personalized pathology test for Cardio-vascular disease: Approximate Bayesian computation with discriminative summary statistics learning.

  • Ritabrata Dutta,
  • Karim Zouaoui Boudjeltia,
  • Christos Kotsalos,
  • Alexandre Rousseau,
  • Daniel Ribeiro de Sousa,
  • Jean-Marc Desmet,
  • Alain Van Meerhaeghe,
  • Antonietta Mira,
  • Bastien Chopard

DOI
https://doi.org/10.1371/journal.pcbi.1009910
Journal volume & issue
Vol. 18, no. 3
p. e1009910

Abstract

Read online

Cardio/cerebrovascular diseases (CVD) have become one of the major health issue in our societies. But recent studies show that the present pathology tests to detect CVD are ineffectual as they do not consider different stages of platelet activation or the molecular dynamics involved in platelet interactions and are incapable to consider inter-individual variability. Here we propose a stochastic platelet deposition model and an inferential scheme to estimate the biologically meaningful model parameters using approximate Bayesian computation with a summary statistic that maximally discriminates between different types of patients. Inferred parameters from data collected on healthy volunteers and different patient types help us to identify specific biological parameters and hence biological reasoning behind the dysfunction for each type of patients. This work opens up an unprecedented opportunity of personalized pathology test for CVD detection and medical treatment.