A computer-driven approach to PCR-based differential screening, alternative to differential display.

Bioinformatics

Department of Biological and Technological Research (DIBIT), San Raffaele Scientific Institute (HSR), Via Olgettina 58, 20132 Milano, Italy.

Published: February 1999

AI Article Synopsis

  • PCR-based RNA fingerprinting is a powerful method for identifying differentially expressed genes in research related to cancer, development, and differentiation.
  • The study developed a set of highly efficient oligonucleotides that target coding regions of genes, using computer simulations and specialized nucleotide databases to enhance the accuracy of RNA fingerprinting.
  • The proposed method enables effective isolation of coding cDNA fragments, and the resources are available upon request from the authors.

Article Abstract

Motivation: Polymerase chain reaction (PCR)-based RNA fingerprinting is a powerful tool for the isolation of differentially expressed genes in studies of neoplasia, differentiation or development. Arbitrarily primed RNA fingerprinting is capable of targeting coding regions of genes, as opposed to differential display techniques, which target 3' non-coding cDNA. In order to be of general use and to permit a systematic survey of differential gene expression, RNA fingerprinting has to be standardized and a number of highly efficient and selective arbitrary primers must be identified.

Results: We have applied a rational approach to generate a representative panel of high-efficiency oligonucleotides for RNA fingerprinting studies, which display marked affinity for coding portions of known genes and, as shown by preliminary results, of novel ones. The choice of oligonucleotides was driven by computer simulations of RNA fingerprinting reverse transcriptase (RT)-PCR experiments, performed on two custom-generated, non-redundant nucleotide databases, each containing the complete collection of deposited human or murine cDNAs. The simulation approach and experimental protocol proposed here permit the efficient isolation of coding cDNA fragments from differentially expressed genes.

Availability: Freely available on request from the authors.

Contact: fesce.riccardo@hsr.it

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Source
http://dx.doi.org/10.1093/bioinformatics/15.2.93DOI Listing

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