Mining significant high utility gene regulation sequential patterns

Citation:

Zihayat, M. , Davoudi, H. , & An, A. . (2017). Mining significant high utility gene regulation sequential patterns. BMC Systems Biology, 11, 109. Dec. doi:10.1186/s12918-017-0475-4

Date Published:

Dec

Abstract:

Mining frequent gene regulation sequential patterns in time course microarray datasets is an important mining task in bioinformatics. Although finding such patterns are of paramount important for studying a disease, most existing work do not consider gene-disease association during gene regulation sequential pattern discovery. Moreover, they consider more absent/existence effects of genes during the mining process than taking the degrees of genes expression into account. Consequently, such techniques discover too many patterns which may not represent important information to biologists to investigate the relationships between the disease and underlying reasons hidden in gene regulation sequences.

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