2024
DOI: 10.1007/s00277-024-05625-y
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Prediction of severe infections in chronic lymphocytic leukemia: a simple risk score to stratify patients at diagnosis

Roberta Murru,
Andrea Galitzia,
Luca Barabino
et al.

Abstract: Chronic Lymphocytic Leukemia (CLL) is well-known for increasing susceptibility to infections. Factors such as immune dysregulation, IGHV status, hypogammaglobulinemia, and patient comorbidity and treatment, contribute to higher infection rates and mortality. However, the impact of hypogammaglobulinemia on infection rates is controversial. We aimed to identify clinical and biological parameters linked to the risk of severe infectious events. Additionally, we set up a straightforward risk infection score to stra… Show more

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Cited by 3 publications
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“…However, current guidelines do not provide clear indications on patient stratification, either at diagnosis or before treatment initiation [ 12 , 195 ]. We proposed an easy-to-use scoring system to identify diagnosis patients at high risk of developing severe infections, based on disease stage, age, IGHV (immunoglobulin heavy chain variable region) mutational status, and hypogammaglobulinemia [ 196 ]. The CLL-TIM is a machine-learning model designed to identify patients at risk of infection within two years of a CLL diagnosis [ 197 ].…”
Section: Infectionsmentioning
confidence: 99%
“…However, current guidelines do not provide clear indications on patient stratification, either at diagnosis or before treatment initiation [ 12 , 195 ]. We proposed an easy-to-use scoring system to identify diagnosis patients at high risk of developing severe infections, based on disease stage, age, IGHV (immunoglobulin heavy chain variable region) mutational status, and hypogammaglobulinemia [ 196 ]. The CLL-TIM is a machine-learning model designed to identify patients at risk of infection within two years of a CLL diagnosis [ 197 ].…”
Section: Infectionsmentioning
confidence: 99%