Department of Pediatric, Suzhou Hospital of AnHui Medical University, Suzhou City, People's Republic of China.
Department of Pediatrics, the First Affiliated Hospital of AnHui Medical University, Hefei City, People's Republic of China.
Hematology. 2024 Dec;29(1):2412952. doi: 10.1080/16078454.2024.2412952. Epub 2024 Oct 17.
Relapsed/refractory acute lymphoblastic leukemia (R/R ALL) continues to be a major cause of mortality in children worldwide, with around 15% of ALL patients experiencing relapse and approximately 10% eventually dying from the disease. Early identification of R/R ALL in children has posed a longstanding clinical challenge.
Genetic analysis of survival outcomes in pediatric patients with ALL from the TARGET-ALL dataset revealed five risk score factors identified through the intersection of differential genes (relapse/non-relapse) from the GSE17703 and GSE6092 databases. A risk score equation was formulated using these factors and validated against prognostic data from 46 ALL cases at our institution. Patients from multiple datasets were stratified into high and low-score groups based on this equation. Protein-protein interaction networks (PPI) were then constructed using the intersecting differential genes from all three datasets to identify hub nodes and predict interacting transcription factors. Additionally, genes related to cell pyroptosis with varying expression across these datasets were screened, and a multifactorial ROC curve (incorporating risk score and differential expression of pyroptosis-related genes) was generated. Furthermore, relationships among variables in the predictive model were depicted using a nomogram, and model efficacy was assessed through decision curve analysis (DCA).
By analyzing the TARGET-ALL, GSE17703, and GSE6092 databases, we developed a prognostic risk assessment model for pediatric ALL incorporating BAG2, EPHA4, FBXO9, SNX10, and WNK1. Validation of this model was conducted using data from 46 pediatric ALL cases obtained from our institution. Following the identification of 27 differentially expressed genes, we constructed a PPI and identified the top 10 hub genes (PTPRC, BTK, LCK, PRKCQ, CD3D, CD27, CD3G, BLNK, RASGRP1, VPREB1). Using this network, we predicted the top 5 transcription factors (HOXB4, MYC, SOX2, E2F1, NANOG). ROC and DCA were conducted on pyroptosis-related genes exhibiting differential expression and risk scores. Subsequently, a nomogram was generated, demonstrating the effectiveness of the risk score in predicting prognosis for pediatric ALL patients.
We have developed a risk prediction model for pediatric R/R ALL utilizing the genes BAG2, EPHA4, FBXO9, SNX10, and WNK1. This model provides a scientific foundation for early identification of R/R ALL in children.
复发/难治性急性淋巴细胞白血病(R/R ALL)仍然是全球儿童死亡的主要原因,约 15%的 ALL 患者会复发,约 10%最终死于该疾病。早期识别儿童 R/R ALL 一直是临床面临的挑战。
通过对 TARGET-ALL 数据集中的 ALL 患儿生存结果进行基因分析,从 GSE17703 和 GSE6092 数据库中的差异基因(复发/未复发)中发现了 5 个风险评分因素。利用这些因素制定了风险评分方程,并对我们机构的 46 例 ALL 病例的预后数据进行了验证。根据该方程,将来自多个数据集的患者分为高分组和低分组。然后,使用来自所有三个数据集的相交差异基因构建蛋白质-蛋白质相互作用网络(PPI),以识别枢纽节点和预测相互作用的转录因子。此外,筛选了这些数据集之间表达不同的与细胞焦亡相关的基因,并生成了多因素 ROC 曲线(包含风险评分和与焦亡相关基因的差异表达)。此外,使用列线图描绘预测模型中变量之间的关系,并通过决策曲线分析(DCA)评估模型效能。
通过对 TARGET-ALL、GSE17703 和 GSE6092 数据库进行分析,我们开发了一个包含 BAG2、EPHA4、FBXO9、SNX10 和 WNK1 的儿童 ALL 预后风险评估模型。使用我们机构的 46 例儿童 ALL 病例的数据对该模型进行了验证。在鉴定出 27 个差异表达基因后,我们构建了一个 PPI,并确定了前 10 个枢纽基因(PTPRC、BTK、LCK、PRKCQ、CD3D、CD27、CD3G、BLNK、RASGRP1、VPREB1)。利用该网络,我们预测了前 5 个转录因子(HOXB4、MYC、SOX2、E2F1、NANOG)。对差异表达和风险评分的焦亡相关基因进行了 ROC 和 DCA。随后,生成了一个列线图,展示了风险评分在预测儿童 ALL 患者预后方面的有效性。
我们利用 BAG2、EPHA4、FBXO9、SNX10 和 WNK1 基因为儿童 R/R ALL 开发了一种风险预测模型。该模型为儿童 R/R ALL 的早期识别提供了科学依据。