Using machine learning to improve the diagnostic accuracy of the modified Duke/ESC 2015 criteria in patients with suspected prosthetic valve endocarditis – a proof of concept study

D. ten Hove*, R. H.J.A. Slart, A. W.J.M. Glaudemans, D. F. Postma, A. Gomes, L. E. Swart, W. Tanis, P. P.van Geel, G. Mecozzi, R. P.J. Budde, K. Mouridsen, B. Sinha

*Corresponding author for this work

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Medicine and Dentistry

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Neuroscience

Chemical Engineering

Agricultural and Biological Sciences