TY - JOUR
T1 - Detecting chemical hazards with temperature-programmed microsensors
T2 - Overcoming complex analytical problems with multidimensional databases?
AU - Meier, Douglas C.
AU - Raman, Baranidharan
AU - Semancik, Steve
PY - 2009
Y1 - 2009
N2 - Complex analytical problems, such asdetecting trace quantities ofhazardous chemicals in challenging environments, require solutions that most effectively extract relevant information about a sample's composition. This review presents a chemiresistive microarray-based approach to identifying targets that combines temperature-programmed elements capable of rapidly generating analytically rich data sets with statistical pattern recognition algorithms for extracting multivariate chemical fingerprints. We describe the chemical-microsensor platform and discuss its ability to generate orthogonal data through materials selection and temperature programming. Visual inspection of data sets reveals device selectivity, but statistical analyses are required to perform more complex identification tasks. Finally, we discuss recent advances in both devices and algorithms necessary to deal with practical issues involved in long-term deployment. These issues include identification and correction of signal drift, challenges surrounding real-time unsupervised operation, repeatable device manufacturability, and hierarchical classification schemes designed to deduce the chemical composition of untrained analyte species.
AB - Complex analytical problems, such asdetecting trace quantities ofhazardous chemicals in challenging environments, require solutions that most effectively extract relevant information about a sample's composition. This review presents a chemiresistive microarray-based approach to identifying targets that combines temperature-programmed elements capable of rapidly generating analytically rich data sets with statistical pattern recognition algorithms for extracting multivariate chemical fingerprints. We describe the chemical-microsensor platform and discuss its ability to generate orthogonal data through materials selection and temperature programming. Visual inspection of data sets reveals device selectivity, but statistical analyses are required to perform more complex identification tasks. Finally, we discuss recent advances in both devices and algorithms necessary to deal with practical issues involved in long-term deployment. These issues include identification and correction of signal drift, challenges surrounding real-time unsupervised operation, repeatable device manufacturability, and hierarchical classification schemes designed to deduce the chemical composition of untrained analyte species.
KW - Chemiresistive
KW - Gas sensor
KW - Microarray
KW - Pattern recognition
KW - Temperature dependence
KW - Toxic industrial chemicals
UR - http://www.scopus.com/inward/record.url?scp=70349779645&partnerID=8YFLogxK
U2 - 10.1146/annurev-anchem-060908-155127
DO - 10.1146/annurev-anchem-060908-155127
M3 - Article
AN - SCOPUS:70349779645
SN - 1936-1327
VL - 2
SP - 463
EP - 484
JO - Annual Review of Analytical Chemistry
JF - Annual Review of Analytical Chemistry
ER -