Computational Models for Optimizing Particle Separation in Spiral Inertial Microfluidics: A Step Toward Enhanced Biosensing and Cell Sorting

Abstract: Inertial microfluidics is essential for separating particles and cells, enabling numerous biomedical applications. Despite the simplicity of spiral microchannels, the lack of predictive models hampers real‐world applications, highlighting the need for cost‐effective computational tools. In this study, four novel data fitting models are developed using linear and power regression analyses to investigate how flow conditions influence particle behaviors within spiral microchannels. These models are rigorously tested under two different flow rates, focusing on a smaller particle representing Salmonella Typhimurium and a larger particle representing bacterial aggregates, aiming for effective separation and detection. A critical parameter, the sheath‐to‐sample flow rate ratio, is either interpolated or extrapolated using the microchannel's aspect ratios to predict particle separation. The models show strong agreement with experimental data, underscoring their predictability and efficiency. These insights suggest that further refinement of these models can significantly reduce research and development costs for advanced inertial microfluidic devices in biomedical applications. This work represents a crucial step towards establishing a robust computational framework, advancing inertial microfluidics towards practical biomedical applications.

Location
Deutsche Nationalbibliothek Frankfurt am Main
Extent
Online-Ressource
Language
Englisch

Bibliographic citation
Computational Models for Optimizing Particle Separation in Spiral Inertial Microfluidics: A Step Toward Enhanced Biosensing and Cell Sorting ; day:27 ; month:07 ; year:2024 ; extent:13
Advanced theory and simulations ; (27.07.2024) (gesamt 13)

Creator
Boland, Julian Tristan Joshua
Yang, Zhenxu
Yin, Qiankun
Liu, Xiaochen
Xu, Zhejun
Kong, Kien‐Voon
Vigolo, Daniele
Yong, Ken‐Tye

DOI
10.1002/adts.202301075
URN
urn:nbn:de:101:1-2407281404157.472725171165
Rights
Open Access; Der Zugriff auf das Objekt ist unbeschränkt möglich.
Last update
2025-08-14T10:50:44+0200

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Associated

  • Boland, Julian Tristan Joshua
  • Yang, Zhenxu
  • Yin, Qiankun
  • Liu, Xiaochen
  • Xu, Zhejun
  • Kong, Kien‐Voon
  • Vigolo, Daniele
  • Yong, Ken‐Tye

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