Issue 7, 2011

Information visualization techniques for sensing and biosensing

Abstract

The development of new methods and concepts to visualize massive amounts of data holds the promise to revolutionize the way scientific results are analyzed, especially when tasks such as classification and clustering are involved, as in the case of sensing and biosensing. In this paper we employ a suite of software tools, referred to as PEx-Sensors, through which projection techniques are used to analyze electrical impedance spectroscopy data in electronic tongues and related sensors. The possibility of treating high dimension datasets with PEx-Sensors is advantageous because the whole impedance vs. frequency curves obtained with various sensing units and for a variety of samples can be analyzed at once. It will be shown that non-linear projection techniques such as Sammon's Mapping or IDMAP provide higher distinction ability than linear methods for sensor arrays containing units capable of molecular recognition, apparently because these techniques are able to capture the cooperative response owing to specific interactions between the sensing unit material and the analyte. In addition to allowing for a higher sensitivity and selectivity, the use of PEx-Sensors permits the identification of the major contributors for the distinguishing ability of sensing units and of the optimized frequency range. The latter will be illustrated with sensing units made with layer-by-layer (LbL) films to detect phytic acid, whose capacitance data were visualized with Parallel Coordinates. Significantly, the implementation of PEx-Sensors was conceived so as to handle any type of sensor based on any type of principle of detection, representing therefore a generic platform for treating large amounts of data for sensors and biosensors.

Graphical abstract: Information visualization techniques for sensing and biosensing

Article information

Article type
Paper
Submitted
25 Oct 2010
Accepted
03 Jan 2011
First published
31 Jan 2011

Analyst, 2011,136, 1344-1350

Information visualization techniques for sensing and biosensing

F. V. Paulovich, M. L. Moraes, R. M. Maki, M. Ferreira, O. N. Oliveira Jr. and M. C. F. de Oliveira, Analyst, 2011, 136, 1344 DOI: 10.1039/C0AN00822B

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