Development of a multivariable risk model integrating urinary cell DNA methylation and cell-free RNA data for the detection of significant prostate cancer.
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D. Brewer | S. Connell | R. Mills | R. Hurst | A. Perry | M. Webb | Alexandra V. Tuzova | F. Zhao | Bharati Bapat | Eve O’Reilly | Jeremy Clark | Colin S. Cooper | Daniel S Brewer
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