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zadetkov: 5
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  • Chest Pain in Cancer Patien... Chest Pain in Cancer Patients: Prevalence of Myocardial Infarction and Performance of High-Sensitivity Cardiac Troponins
    Bima, Paolo; Lopez-Ayala, Pedro; Koechlin, Luca ... JACC CardioOncology, 10/2023, Letnik: 5, Številka: 5
    Journal Article
    Recenzirano
    Odprti dostop

    BackgroundLittle is known about patients with cancer presenting with acute chest discomfort to the emergency department (ED).ObjectivesThe aim of this study was to assess the prevalence of acute ...
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  • Chest Pain in Cancer Patients Chest Pain in Cancer Patients
    Bima, Paolo; Lopez-Ayala, Pedro; Koechlin, Luca ... JACC CardioOncology, October 2023, 2023-10-00, Letnik: 5, Številka: 5
    Journal Article
    Recenzirano
    Odprti dostop

    Little is known about patients with cancer presenting with acute chest discomfort to the emergency department (ED). The aim of this study was to assess the prevalence of acute myocardial infarction ...
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  • External validation of the ... External validation of the 0/1h-algorithm and derivation of a 0/2h-algorithm using a new point-of-care Hs-cTnI assay
    Koechlin, Luca; Boeddinghaus, Jasper; Lopez-Ayala, Pedro ... The American heart journal 268
    Journal Article
    Recenzirano
    Odprti dostop

    The high-sensitivity cardiac troponin (hs-cTn) I point-of-care (POC) hs-cTnI-PATHFAST assay has recently become clinically available. We aimed to externally validate the hs-cTnI-PATHFAST ...
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  • Machine Learning for Myocardial Infarction Compared With Guideline-Recommended Diagnostic Pathways
    Boeddinghaus, Jasper; Doudesis, Dimitrios; Lopez-Ayala, Pedro ... Circulation (New York, N.Y.), 04/2024, Letnik: 149, Številka: 14
    Journal Article
    Recenzirano
    Odprti dostop

    Collaboration for the Diagnosis and Evaluation of Acute Coronary Syndrome (CoDE-ACS) is a validated clinical decision support tool that uses machine learning with or without serial cardiac troponin ...
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