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Machine learning to support decision-making for cardiac surgery during the acute phase of infective endocarditis
  1. Erwan Donal1,
  2. Erwan Flecher2,
  3. Pierre Tattevin3
  1. 1 Department of Cardiology, CHU Rennes, Rennes, France
  2. 2 Department of Cardiac Surgery, CHU Pontchaillou, Rennes, France
  3. 3 Department for infectious diseases, CHU Rennes - Hôpital pontchaillou, Rennes, France
  1. Correspondence to Dr. Erwan Donal, Department of Cardiology, CHU Rennes, CHU Pontchaillou, Rennes 35033, France; erwan.donal{at}chu-rennes.fr

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Rapid identification of patients at high risk of death may trigger additional therapeutic interventions, which in turn may change the course of the disease and improve prognosis. For infective endocarditis (IE), inhospital mortality rate remains high—from 15% to 30%—despite major achievements over the last 20 years in diagnostic tools (imaging, microbiology) and cardiac surgery.1 Prognostic factors include, in addition to the usual suspects (eg, age, comorbidities, heart failure), variables specific to the pathophysiology of IE: periannular complication, Staphylococcus aureus infection or persistence of positive blood cultures >72 hours after initiation of appropriate antibiotic treatment. The recommendation is to early transfer these patients to referral centres, where an endocarditis team will adjust their management and evaluate the indication of, and—in selected cases—the best timing for, cardiac surgery.2

The endocarditis team is a great innovation strongly supported by recent guidelines from America and Europe: The American 2015 guidelines3 stated that ‘Decisions on the indication and timing of surgical intervention should be determined by a multispecialty team with expertise in cardiology, imaging, cardiothoracic surgery, and infectious diseases’, while the European guidelines went further, with a specific ‘endocarditis team’ section, where the desirable characteristics of the endocarditis team are comprehensively elaborated, …

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Footnotes

  • Competing interests None declared.

  • Provenance and peer review Commissioned; internally peer reviewed.

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