Adaptive thresholds to detect differentially expressed genes in microarray data.

Yutaka Fukuoka, Hidenori Inaoka, Makoto Noshiro
Author Information

Abstract

To detect changes in gene expression data from microarrays, a fixed threshold for fold difference is used widely. However, it is not always guaranteed that a threshold value which is appropriate for highly expressed genes is suitable for lowly expressed genes. In this study, aiming at detecting truly differentially expressed genes from a wide expression range, we proposed an adaptive threshold method (AT). The adaptive thresholds, which have different values for different expression levels, are calculated based on two measurements under the same condition. The sensitivity, specificity and false discovery rate (FDR) of AT were investigated by simulations. The sensitivity and specificity under various noise conditions were greater than 89.7% and 99.32%, respectively. The FDR was smaller than 0.27. These results demonstrated the reliability of the method.

Keywords

References

  1. Drug Discov Today. 2002 Jun 1;7(11):S55-63 [PMID: 12047881]
  2. Physiol Genomics. 2007 Feb 12;28(3):311-22 [PMID: 17077275]
  3. BMC Genomics. 2009 Jun 01;10:254 [PMID: 19486520]
  4. BMC Bioinformatics. 2006 Jun 16;7:307 [PMID: 16780584]
  5. Bioinformatics. 2002 Nov;18(11):1540-1 [PMID: 12424128]
  6. Cancer Lett. 2009 Sep 28;283(1):84-91 [PMID: 19375852]
  7. Proc AMIA Symp. 2002;:810-4 [PMID: 12463937]
  8. J Comput Biol. 2001;8(6):557-69 [PMID: 11747612]
  9. J Comput Biol. 2000;7(6):819-37 [PMID: 11382364]

Word Cloud

Created with Highcharts 10.0.0expressedgenesthresholdexpressiondifferentiallyFDRdetectdatafolddifferenceadaptivemethodATthresholdsdifferentsensitivityspecificityfalsediscoveryratemicroarraychangesgenemicroarraysfixedusedwidelyHoweveralwaysguaranteedvalueappropriatehighlysuitablelowlystudyaimingdetectingtrulywiderangeproposedvalueslevelscalculatedbasedtwomeasurementsconditioninvestigatedsimulationsvariousnoiseconditionsgreater897%9932%respectivelysmaller027resultsdemonstratedreliabilityAdaptive

Similar Articles

Cited By

No available data.