Department of Hematology, First Affiliated Hospital of Nanchang University, Nanchang 330006, Jiangxi, China.
Department of Emergency, First Affiliated Hospital of Nanchang University, Nanchang 330006, Jiangxi, China.
Aging (Albany NY). 2022 Dec 18;14(24):9951-9968. doi: 10.18632/aging.204432.
Multiple myeloma (MM) is a malignant hematopoietic disease that is usually incurable. However, the ubiquitin-proteasome system (UPS) genes have not yet been established as a prognostic predictor for MM, despite their potential applications in other cancers.
RNA sequencing data and corresponding clinical information were acquired from Multiple Myeloma Research Foundation (MMRF)-COMMPASS and served as a training set (n=787). Validation of the prediction signature were conducted by the Gene Expression Omnibus (GEO) databases (n=1040). To develop a prognostic signature for overall survival (OS), least absolute shrinkage and selection operator regressions, along with Cox regressions, were used.
A six-gene signature, including KCTD12, SIAH1, TRIM58, TRIM47, UBE2S, and UBE2T, was established. Kaplan-Meier survival analysis of the training and validation cohorts revealed that patients with high-risk conditions had a significantly worse prognosis than those with low-risk conditions. Furthermore, UPS-related signature is associated with a positive immune response. For predicting survival, a simple to use nomogram and the corresponding web-based calculator (https://jiangyanxiamm.shinyapps.io/MMprognosis/) were built based on the UPS signature and its clinical features. Analyses of calibration plots and decision curves showed clinical utility for both training and validation datasets.
As a result of these results, we established a genetic signature for MM based on UPS. This genetic signature could contribute to improving individualized survival prediction, thereby facilitating clinical decisions in patients with MM.
多发性骨髓瘤(MM)是一种恶性造血疾病,通常无法治愈。然而,尽管泛素-蛋白酶体系统(UPS)基因在其他癌症中有潜在的应用,但尚未将其确立为 MM 的预后预测因子。
从多发性骨髓瘤研究基金会(MMRF)-COMMPASS 获得 RNA 测序数据和相应的临床信息,并将其作为训练集(n=787)。通过基因表达综合数据库(GEO)数据库(n=1040)验证预测特征。为了开发总体生存(OS)的预后特征,使用最小绝对收缩和选择算子回归以及 Cox 回归。
建立了一个由六个基因组成的特征,包括 KCTD12、SIAH1、TRIM58、TRIM47、UBE2S 和 UBE2T。对训练和验证队列的 Kaplan-Meier 生存分析表明,高风险条件下的患者预后明显比低风险条件下的患者差。此外,UPS 相关特征与积极的免疫反应有关。为了预测生存,基于 UPS 特征及其临床特征,构建了一个简单易用的诺模图和相应的在线计算器(https://jiangyanxiamm.shinyapps.io/MMprognosis/)。校准图和决策曲线的分析表明,无论是在训练数据集还是验证数据集,该模型都具有临床实用性。
基于 UPS,我们建立了一个用于 MM 的遗传特征。该遗传特征可以有助于改善个体化生存预测,从而为 MM 患者的临床决策提供帮助。