Machine learning model to predict mortality after discharge in hospitalized oncologic patients (pts) under active systemic therapy in the advanced setting: A multicenter cross-validation study.
Abstract:12121 Background: Prognostic factors for oncologic pts after surgery or curative systemic treatment have been described, including ECOG performance status, tumor staging and malnutrition. However, there is no solid evidence on which combination of variables best predicts mortality after hospitalization of metastatic cancer pts under active systemic treatment. Methods: Prospective multicentric study of pts hospitalized between 2020 and 2022 at the Oncology wards of Vall d’Hebron, Sant Pau and Mar Hospitals [PL… Show more
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