Proteins routinely interface with RNA molecules as a way to control the processing and transporting of gene transcripts--and when these interactions go awry, information flow inside the cell is disrupted and disorders can arise, including cancer and neurodegenerative disease.
To better understand which parts of an RNA molecule tend to bind on different surface points of a protein, Lam and his colleagues turned to deep learning, a type of AI.
Working in the laboratory of KAUST Professor Xin Gao in the Computational Bioscience Research Center, Lam and Ph.D. student Yu Li, taught NucleicNet to automatically learn the structural features that underpin interactions between proteins and RNA.
They trained the algorithm using three-dimensional structural data from 158 different protein-RNA complexes available on a public database. Pitting NucleicNet against other predictive models - all of which rely on sequence inputs rather than structural information - the KAUST team showed that the tool could most accurately detect which sites on a protein surface bound to RNA molecules or not.
What's more, unlike any other model, NucleicNet could predict which aspects of the RNA molecule were doing the binding, be it part of the sugar-phosphate backbone or one of the four letters of the genetic alphabet.
In collaboration with researchers in China and the United States, Lam, Li and Gao validated their algorithm on a diverse set of RNA-binding proteins, including proteins implicated in gum cancer and amyotrophic lateral sclerosis, to show that the interactions deduced by NucleicNet closely matched those revealed by experimental techniques. They reported the findings in Nature Communications.
"Structure-based features were little considered by other computational frameworks," says Lam. "We have harnessed the power of deep learning to infer those subtle interactions."
MEDICA-tradefair.com; Source: KAUST