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Comparison of machine learning methods for predicting viral failure: a case study using electronic health record data.

Allan KimainaJonathan DickAllison DeLongStavroula A ChrysanthopoulouRami KantorJoseph W Hogan
Published in: Statistical communications in infectious diseases (2020)
Evidence from this study suggests that machine learning techniques have potential to identify patients at risk for viral failure prior to their scheduled measurements. Ultimately, prognostic virologic assessment can help guide the administration of earlier targeted intervention such as enhanced drug resistance monitoring, rigorous adherence counseling, or appropriate next-line therapy switching. External validation studies should be used to confirm the results found here.
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