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Royal Society of Chemistry, Lab on a Chip, 4(9), p. 536-544

DOI: 10.1039/b810896j

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Parallel multi-time point cell stimulation and lysis on-chip for studying early signaling events in T-cell activation

Journal article published in 2008 by Alison M. Hirsch, Catherine A. Rivet, Boyang Zhang, Melissa L. Kemp, Hang Lu ORCID
This paper is available in a repository.
This paper is available in a repository.

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Abstract

Dynamics of complex signaling networks are important to many biological problems. Quantitative data at early time points after cellular stimulation are necessary for accurate model generation. However, the large amount of data needed is often extremely time-consuming and expensive to acquire with conventional methods. We present a two-module microfluidic platform for simultaneous multi-time point stimulation and lysis of T cells for early time point signaling activation with a resolution down to 20 s using only small amounts of cells and reagents. The key design features are rapid mixing of reagents and uniform splitting into eight channels for simultaneous collection of multi-time point data. Chaotic mixing was investigated via computational fluid dynamic modeling, and was used to achieve rapid and complete mixing. This modular device is flexible-with easy adjustment of the setup, a wide range of time points can be achieved. We show that treatment in the device does not elicit adverse cellular stress in Jurkat cells. The activation of six important proteins in the signaling cascade was quantified upon stimulation with a soluble form of alpha-CD3. The dynamics from device and conventional methods are similar, but the microdevice exhibits significantly less error between experiments. We envision this high-throughput format to enable simple and fast generation of large sets of quantitative data, with consistent sample handling, for many complex biological systems.