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Numerical Framework for Simulating Bio-species Transport in Microfluidic Channels with Application to Antibody Biosensors

Overview
Journal MethodsX
Specialty Pathology
Date 2020 Nov 30
PMID 33251124
Citations 1
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Abstract

Diagnosis is a fundamental stage in health care and medical treatment. Microfluidic biosensors and lab-on-a-chip devices are amongst the few practical tools for achieving this goal. A new computational code, specifically for designing microfluidic-integrated biosensors is developed, the details of which is presented in this work. This new approach is developed using control-volume based finite-element (CVFEM) method and solves bio-recognition chemical reactions and full Navier-Stokes equations. The results of the proposed platform are validated against the experimental data for a microfluidic based biosensor, where excellent agreement is achieved. The properties of the biosensor, sample, buffer fluid and even the microfluidic channel can easily be modified in this platform. This feature provides the scientific community with the ability to design a specific biosensor for requested point-of-care applications.•A new approach is developed using control-volume based finite-element (CVFEM) method for investigating flow inside a microfluidic-integrated biosensor. It is also used to study the influence of surface functionalization on binding cycle.•The proposed model solves bio-recognition chemical reactions as well as full Navier-Stokes and energy equations. Experimental-based or personalized equations of the chemical reactions and flow behaviour are adoptable to this code.•The developed model is Fortran-based and has the potential to be used in both industry and academia for biosensing technology.

Citing Articles

Computational Fluid-Structure Interaction in Microfluidics.

Musharaf H, Roshan U, Mudugamuwa A, Trinh Q, Zhang J, Nguyen N Micromachines (Basel). 2024; 15(7).

PMID: 39064408 PMC: 11278627. DOI: 10.3390/mi15070897.

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