2016 AIChE Annual Meeting
(500f) Development of a Quantitative Framework for Tuning the Performance of Cell-Based Device
Authors
Here, we report the development of a systematic framework for evaluating MESA implementation to facilitate tuning biosensor performance in new contexts and for new applications. We first evaluate the effect of genetic context by utilizing Cas9 to stably integrate MESA constructs at specific genomic locations known to be safe harbor loci, comparing biosensor performance between integration sites. Beyond enabling an examination of the effects of integration location on biosensor function, this approach also enables us to systematically examine biosensor performance characteristics within a genetically identical population of cells. We next investigate how relative expression of MESA chains influences biosensor performance. Utilizing synthetic upstream open reading frames to systematically vary translation rates, we evaluate how variations in protein expression influence receptor function. Collection of this quantitative data could in turn enable dynamic modeling of the MESA system, facilitating future analysis and design of MESA systems. Overall, this study addresses the general goal of predictably linking implementation methodologies to the performance of engineered cell-based devices, ultimately enabling the development of safer and more robust therapies.