Prognostic Impact of Advanced Lung Cancer Inflammation Index (ALI) on Immunotherapy Outcomes in Recurrent or Metastatic Nasopharyngeal Carcinoma: A Multicenter Post Hoc Analysis

晚期肺癌炎症指数(ALI)对复发或转移性鼻咽癌免疫治疗疗效的预后影响:一项多中心事后分析

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Abstract

PURPOSE: The Advanced Lung Cancer Inflammation Index (ALI) is a newly introduced index that integrates inflammatory and nutritional statuses to assess malignancies. This study investigates the association between pre-immunotherapy ALI levels and clinical outcomes in recurrent or metastatic nasopharyngeal carcinoma (R/M NPC) patients receiving immune checkpoint inhibitors (ICIs) therapy. PATIENTS AND METHODS: We conducted an exploratory post hoc analysis of a multicenter, single-arm Phase 2 trial enrolling 153 patients with R/M NPC. This study evaluated the prognostic utility of the pretreatment ALI for overall survival (OS) and progression-free survival (PFS), along with its association with treatment response to ICIs. The optimal ALI cutoff was empirically derived from this cohort. Propensity score matching (PSM) was also applied to assess the independent association between pretreatment ALI and clinical outcomes. RESULTS: Patients with low ALI scores demonstrated shorter OS and PFS compared to the high ALI group (OS: HR=4.07, p<0.001; PFS: HR=2.17, p<0.001). Low ALI was also associated with a lower disease control rate (DCR) (25.0% vs 58.7%, p=0.002), but showed no significant correlation with objective response rate (ORR) (15.6% vs 23.1%, p=0.361). In multivariate analysis incorporating propensity score-matched cohorts (n=62), ALI retained prognostic value for OS (HR=3.74, p=0.001) and PFS (HR=1.84, p=0.049). CONCLUSION: Our findings suggest that pretreatment ALI as a promising prognostic biomarker for R/M NPC patients treated with ICIs. Given the exploratory post hoc nature of this analysis, the use of an empirically derived cutoff without external validation and the modest sample size of the matched cohort, these results warrant validation in future prospective studies.

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