Semi supervised regulatory module discovery
نویسندگان
چکیده
Regulatory modules are sets of co-regulated genes that carry out common functions. A large body of research exists about methods that aim to identify these modules, and this is the first step towards understanding the cellular responses to signals. Its well known that each of the current datasets e.g. microarrays, dna-binding and sequence datasets provide a partial picture of the regulation process and hence integration among them is required in order to obtain more complete picture of the biological processes involved.
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