Inflammaging score as a potential prognostic tool for cancer: A population-based cohort study

比例危险模型 危险系数 医学 队列 全身炎症 肿瘤科 炎症 队列研究 肺癌 癌症 内科学 生存分析 置信区间
作者
Hailun Xie,Lishuang Wei,Guo‐Tian Ruan,Heyang Zhang,Hanping Shi
出处
期刊:Mechanisms of Ageing and Development [Elsevier]
卷期号:219: 111939-111939 被引量:2
标识
DOI:10.1016/j.mad.2024.111939
摘要

This study aimed to develop a clinically applicable inflammaging score by combining the inflammatory status and age of patients. Kaplan-Meier analysis was used to compare survival differences among patients with different grades of inflammation scores. Cox proportional hazard regression analysis was used to explore the relationship between the inflammaging score and survival. As the age of patients increased, their levels of systemic inflammation gradually increased. A unique inverse relationship was found between the level of inflammation and cancer prognosis during the ageing process. Mediation analysis indicated that systemic inflammation mediates 10.1%–17.8% of the association between ageing and poor prognosis. With an increase in the inflammaging score from grades I to V, the survival rate showed a gradient decline. The inflammation score could effectively stratify the prognosis of patients with lung, bronchial, gastrointestinal, and other types of cancers. Compared with grade I, the hazard ratios for grades II-V were 1.239, 1.604, 1.724, and 2.348, respectively. In the external validation cohort, the inflammaging score remained an independent factor affecting the prognosis of patients with cancer. The inflammaging score, which combines ageing and inflammation, is a robust prognostic assessment tool for cancer patients.
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