Recent technologies have made it cost-effective to collect diverse types of genome-wide data. Computational methods are needed to combine these data to create a comprehensive view of a given disease or a biological process. Similarity network fusion (SNF) solves this problem by constructing networks of samples (e.g., patients) for each available data type and then efficiently fusing these into one network that represents the full spectrum of underlying data. I will also introduce the method about SNF with rfmri FC networks for clinical diagnosis.
[1] Wang, B., Mezlini, A.M., Demir, et al.: Similarity network fusion for aggregating data types on a genomic scale. Nature methods 11 (2014) 333-337 (IF= 32.072)
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