Information Visualisation for Antibiotic Detection Biochip Design and Testing

Paul Craig*, Ruben Ng, Boris Tefsen, Sam Linsen, Yu Liu, Joshua Hendel

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Biochips are engineered substrates that have different spots that change colour according to biochemical reactions. These spots can be read together to detect different analytes (such as different types of antibiotic, pathogens, or biological agents). While some chips are designed so that each spot on its own can detect a particular analyte, chip designs that use a combination of spots to detect different analytes can be more efficient and detect a larger number of analytes with a smaller number of spots. These types of chip can, however, be more difficult to design, as an efficient and effective combination of biosensors needs to be selected for the chip. These need to be able to differentiate between a range of different analytes so the values can be combined in a way that demonstrates the confidence that a particular analyte is present or not. The study described in this paper examines the potential for information visualisation to support the process of designing and reading biochips by developing and evaluating applications that allow biologists to analyse the results of experiments aimed at detecting candidate bio-sensors (to be used as biochip spots) and examining how biosensors can combine to identify different analytes. Our results demonstrate the potential of information visualisation and machine learning techniques to improve the design of biochips.
Original languageEnglish
Number of pages18
JournalProcesses
Volume10
Issue number12
DOIs
Publication statusPublished - 13 Dec 2022

Keywords

  • information visualisation
  • machine learning
  • bioinformatics

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