Bacterial sensors: synthetic design and application principles

Details

Serval ID
serval:BIB_B2F2FE9B85C9
Type
Book:A book with an explicit publisher.
Collection
Publications
Institution
Title
Bacterial sensors: synthetic design and application principles
Author(s)
van der Meer J.R.
Publisher
Morgan & Claypool Publ.
Address of publication
San Rafael, CA
ISBN
9781598299113
Publication state
Published
Issued date
2010
Series
Synthesis Lectures on Synthetic Biology
Language
english
Number of pages
167
Abstract
Bacterial reporters are live, genetically engineered cells with promising application in bioanalytics. They contain genetic circuitry to produce a cellular sensing element, which detects the target compound and relays the detection to specific synthesis of so-called reporter proteins (the presence or activity of which is easy to quantify). Bioassays with bacterial reporters are a useful complement to chemical analytics because they measure biological responses rather than total chemical concentrations. Simple bacterial reporter assays may also replace more costly chemical methods as a first line sample analysis technique. Recent promising developments integrate bacterial reporter cells with microsystems to produce bacterial biosensors.
This lecture presents an in-depth treatment of the synthetic biological design principles of bacterial reporters, the engineering of which started as simple recombinant DNA puzzles, but has now become a more rational approach of choosing and combining sensing, controlling and reporting DNA 'parts'. Several examples of existing bacterial reporter designs and their genetic circuitry will be illustrated. Besides the design principles, the lecture also focuses on the application principles of bacterial reporter assays. A variety of assay formats will be illustrated, and principles of quantification will be dealt with. In addition to this discussion, substantial reference material is supplied in various Annexes.
Create date
21/01/2011 9:49
Last modification date
20/08/2019 16:21
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