Modeling Clot Formation of Shear-Injured Platelets in Flow by a Dissipative Particle Dynamics Method

  • Liwei Wang
  • , Zengsheng Chen
  • , Jiafeng Zhang
  • , Xiwen Zhang
  • , Zhongjun J. Wu*
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

The regions with high non-physiological shear stresses (NPSS) are inevitable in blood-contacting medical devices (BCMDs) used for mechanically assisted circulatory support. NPSS can cause platelet activation and receptor shedding potentially resulting in the alteration of hemostatic function. In this study, we developed a dissipative particle dynamics model to characterize clot formation (platelet–collagen and inter-platelet adhesion) of NPSS-traumatized blood at a vascular injury site. A rectangular tube of 50 × 50 × 200 µm with an 8 × 8 µm collagen-coated area was modeled as a small blood vessel and perfusion with blood. Clot formation dynamics during perfusion was simulated. NPSS-traumatized blood was modeled to have more activated platelet and fewer adhesion receptors with weakened inter-platelet binding. Computational results showed that clots grew at a faster rate while the structure of the clots was less stable and collapsed more frequently for NPSS-traumatized blood compared with normal blood. The finding that NPSS-traumatized platelets could result in quicker but more easily breakable blood clots at injury sites may explain why increased risks of thrombotic and bleeding complications occurred concurrently in patients implanted with BCMDs.

Original languageEnglish
Article number83
JournalBulletin of Mathematical Biology
Volume82
Issue number7
DOIs
StatePublished - 1 Jul 2020

Keywords

  • Blood-contacting medical devices
  • Dissipative particle dynamics
  • Hemostasis
  • Non-physiological shear stresses
  • Platelet adhesion
  • Thrombosis

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