The salivary metatranscriptome as an accurate diagnostic indicator of oral cancer.
Guruduth BanavarOyetunji OgundijoRyan TomaSathyapriya RajagopalYen Kai LimKai TangFrancine R CamachoPedro J TorresStephanie GlineMatthew M ParksLiz KennyAlly PerlinaHal TilyNevenka DimitrovaSalomon AmarMomchilo VuyisichChamindie PunyadeeraPublished in: NPJ genomic medicine (2021)
Despite advances in cancer treatment, the 5-year mortality rate for oral cancers (OC) is 40%, mainly due to the lack of early diagnostics. To advance early diagnostics for high-risk and average-risk populations, we developed and evaluated machine-learning (ML) classifiers using metatranscriptomic data from saliva samples (n = 433) collected from oral premalignant disorders (OPMD), OC patients (n = 71) and normal controls (n = 171). Our diagnostic classifiers yielded a receiver operating characteristics (ROC) area under the curve (AUC) up to 0.9, sensitivity up to 83% (92.3% for stage 1 cancer) and specificity up to 97.9%. Our metatranscriptomic signature incorporates both taxonomic and functional microbiome features, and reveals a number of taxa and functional pathways associated with OC. We demonstrate the potential clinical utility of an AI/ML model for diagnosing OC early, opening a new era of non-invasive diagnostics, enabling early intervention and improved patient outcomes.