Detecting Gene Regulation Relations from Microarray Time Series Data

نویسندگان

  • Nawar Malhis
  • Arden Ruttan
چکیده

Microarrays are important tools in the quest to map the gene regulation networks of cells. A common use of microarrays result in time series pairs that indicates how the output of one gene affects another. Substantial efforts have been made towards identifying pairs of microarray time series that indicate that one gene is a regulator for another. However, most approaches make assumptions about the behavior of the regulation relation time series pairs and then attempt to identify microarray time series pairs with similar profiles. Such approaches are only partially successful and frequently cannot identity microarray times series pairs that are known to be regulation pairs. In this work, we present a new machine learning approach utilizing a set of Hidden Markov Model, HMMs, for scoring temporal relationships between gene expressions that uses a training set of known regulation relation that avoids the need to assume a specific regulation profile.

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تاریخ انتشار 2006