Frontiers in Oncology (Sep 2024)

The application of lung immune prognostic index in predicting the prognosis of 302 STS patients

  • Yong Jiang,
  • Yong Jiang,
  • Chang Zou,
  • Chang Zou,
  • Xuanhong He,
  • Xuanhong He,
  • Longqing Li,
  • Longqing Li,
  • Yi Luo,
  • Yi Luo,
  • Minxun Lu,
  • Minxun Lu,
  • Zhuangzhuang Li,
  • Zhuangzhuang Li,
  • Taojun Gong,
  • Taojun Gong,
  • Yitian Wang,
  • Yitian Wang,
  • Li Min,
  • Li Min,
  • Yong Zhou,
  • Yong Zhou,
  • Chongqi Tu,
  • Chongqi Tu

DOI
https://doi.org/10.3389/fonc.2024.1460600
Journal volume & issue
Vol. 14

Abstract

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BackgroundSoft tissue sarcoma (STS) are heterogeneous and rare tumors, and few studies have explored predicting the prognosis of patients with STS. The Lung Immune Prognostic Index (LIPI), calculated based on baseline serum lactate dehydrogenase (LDH) and the derived neutrophils/(leukocytes minus neutrophils) ratio (dNLR), was considered effective in predicting the prognosis of patients with pulmonary cancer and other malignancies. However, the efficacy of the LIPI in predicting the prognosis of patients with STS remains unclear.MethodsThis study retrospectively reviewed patients with STS admitted to our center from January 2016 to January 2021. Their hematological and clinical characteristics were collected and analyzed to construct the LIPI specific to STS. The correlations between various predictive factors and overall survival (OS) were examined using Kaplan–Meier and Cox regression analyses. Independent risk factors for OS were identified using univariate and multivariate analyses. Finally, a LIPI nomogram model for STS was established.ResultsThis study enrolled 302 patients with STS, of which 87 (28.9%), 162 (53.6%), and 53 (17.5%) were classified into three LIPI-based categories: good, moderate, and poor, respectively (P < 0.0001). The time-dependent operator curve showed that the LIPI had better prognostic predictive ability than other hematological and clinical characteristics. Univariate and multivariate analyses identified the Fédération Nationale des Centres de Lutte Contre le Cancer grade (FNCLCC/G), tumor size, and LIPI as independent risk factors. Finally, a nomogram was constructed by integrating the significant prognostic factors. Its C-index was 0.72, and the calibration curve indicated that it could accurately predict the three- and five-year OS of patients with STS. The decision and clinical impact curves also indicated that implementing this LIPI-nomogram could significantly benefit patients with STS.ConclusionThis study explored the efficacy of the LIPI in predicting the prognosis of 302 patients with STS, classifying them into three categories to evaluate the prognosis. It also reconstructed a LIPI-based nomogram to assist clinicians in predicting the three- and five-year OS of patients with STS, potentially enabling timely intervention and customized management.

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