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RHEUMATOID ARTHRITIS

RNA sequencing and machine learning as molecular scalpels

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The application of new technologies including RNA sequencing and machine learning to the analysis of synovial tissue is yielding new insights into the pathology of rheumatoid arthritis, with potential implications for the clinical management of the disease.

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Fig. 1: Omics approaches needed to gain translational insight into RA pathology.

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Correspondence to Michael R. Barnes.

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Lewis, M.J., Barnes, M.R. RNA sequencing and machine learning as molecular scalpels. Nat Rev Rheumatol 14, 388–390 (2018). https://doi.org/10.1038/s41584-018-0012-x

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