Department of Biochemistry and Molecular Biology, School of Basic Medical Sciences, Henan University, Kaifeng 475004, China.
Henan Provincial Engineering Center for Tumor Molecular Medicine, Kaifeng Key Laboratory of Cell Signal Transduction, Henan University, Kaifeng 475004, China.
Int J Mol Sci. 2024 Jul 16;25(14):7792. doi: 10.3390/ijms25147792.
As a common soft tissue sarcoma, liposarcoma (LPS) is a heterogeneous malignant tumor derived from adipose tissue. Due to the high risk of metastasis and recurrence, the prognosis of LPS remains unfavorable. To improve clinical treatment, a robust risk prediction model is essential to evaluate the prognosis of LPS patients.
By comprehensive analysis of data derived from GEO datasets, differentially expressed genes (DEGs) were obtained. Univariate and Lasso Cox regressions were subsequently employed to reveal distant recurrence-free survival (DRFS)-associated DEGs and develop a prognostic gene signature, which was assessed by Kaplan-Meier survival and ROC curve. GSEA and immune infiltration analyses were conducted to illuminate molecular mechanisms and immune correlations of this model in LPS progression. Furthermore, a correlation analysis was involved to decipher the therapeutic significance of this model for LPS.
A six-gene signature was developed to predict DRFS of LPS patients and showed higher precision performance in more aggressive LPS subtypes. Then, a nomogram was further established for clinical application based on this risk model. Via GSEA, the high-risk group was significantly enriched in cell cycle-related pathways. In the LPS microenvironment, neutrophils, memory B cells and resting mast cells exhibited significant differences in cell abundance between high-risk and low-risk patients. Moreover, this model was significantly correlated with therapeutic targets.
A prognostic six-gene signature was developed and significantly associated with cell cycle pathways and therapeutic target genes, which could provide new insights into risk assessment of LPS progression and therapeutic strategies for LPS patients to improve their prognosis.
脂肪肉瘤(LPS)作为一种常见的软组织肉瘤,是一种源自脂肪组织的异质性恶性肿瘤。由于转移和复发的风险高,LPS 的预后仍然不佳。为了改善临床治疗效果,建立一个稳健的风险预测模型对于评估 LPS 患者的预后至关重要。
通过对 GEO 数据集的数据进行综合分析,获得差异表达基因(DEGs)。随后采用单变量和 Lasso Cox 回归分析揭示与远处无复发生存(DRFS)相关的 DEGs,并建立一个预测基因特征,通过 Kaplan-Meier 生存和 ROC 曲线进行评估。进行 GSEA 和免疫浸润分析以阐明该模型在 LPS 进展中的分子机制和免疫相关性。此外,还进行了相关性分析以揭示该模型对 LPS 的治疗意义。
建立了一个预测 LPS 患者 DRFS 的六基因签名,并且在侵袭性更强的 LPS 亚型中表现出更高的预测精度。然后,基于该风险模型进一步建立了一个列线图,用于临床应用。通过 GSEA,高风险组在细胞周期相关途径中显著富集。在 LPS 微环境中,高风险和低风险患者之间的中性粒细胞、记忆 B 细胞和静止肥大细胞的细胞丰度存在显著差异。此外,该模型与治疗靶点显著相关。
构建了一个预测性的六基因签名,与细胞周期途径和治疗靶点基因显著相关,这为 LPS 进展的风险评估和 LPS 患者的治疗策略提供了新的思路,以改善其预后。