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基于机器学习的急性髓系白血病中与药物敏感性相关的枢纽基因及潜在分子机制的鉴定

Identification of hub genes and potential molecular mechanisms related to drug sensitivity in acute myeloid leukemia based on machine learning.

作者信息

Zhang Boyu, Liu Haiyan, Wu Fengxia, Ding Yuhong, Wu Jiarun, Lu Lu, Bajpai Akhilesh K, Sang Mengmeng, Wang Xinfeng

机构信息

Department of Hematology, Affiliated Hospital of Nantong University, Medical School of Nantong University, Nantong, Jiangsu, China.

Department of Genetics, Genomics, and Informatics, University of Tennessee Health Science Center, Memphis, TN, United States.

出版信息

Front Pharmacol. 2024 Apr 8;15:1359832. doi: 10.3389/fphar.2024.1359832. eCollection 2024.

Abstract

Acute myeloid leukemia (AML) is the most common form of leukemia among adults and is characterized by uncontrolled proliferation and clonal expansion of hematopoietic cells. There has been a significant improvement in the treatment of younger patients, however, prognosis in the elderly AML patients remains poor. We used computational methods and machine learning (ML) techniques to identify and explore the differential high-risk genes (DHRGs) in AML. The DHRGs were explored through multiple approaches including genomic and functional analysis, survival analysis, immune infiltration, miRNA co-expression and stemness features analyses to reveal their prognostic importance in AML. Furthermore, using different ML algorithms, prognostic models were constructed and validated using the DHRGs. At the end molecular docking studies were performed to identify potential drug candidates targeting the selected DHRGs. We identified a total of 80 DHRGs by comparing the differentially expressed genes derived between AML patients and normal controls and high-risk AML genes identified by Cox regression. Genetic and epigenetic alteration analyses of the DHRGs revealed a significant association of their copy number variations and methylation status with overall survival (OS) of AML patients. Out of the 137 models constructed using different ML algorithms, the combination of Ridge and plsRcox maintained the highest mean C-index and was used to build the final model. When AML patients were classified into low- and high-risk groups based on DHRGs, the low-risk group had significantly longer OS in the AML training and validation cohorts. Furthermore, immune infiltration, miRNA coexpression, stemness feature and hallmark pathway analyses revealed significant differences in the prognosis of the low- and high-risk AML groups. Drug sensitivity and molecular docking studies revealed top 5 drugs, including carboplatin and austocystin-D that may significantly affect the DHRGs in AML. The findings from the current study identified a set of high-risk genes that may be used as prognostic and therapeutic markers for AML patients. In addition, significant use of the ML algorithms in constructing and validating the prognostic models in AML was demonstrated. Although our study used extensive bioinformatics and machine learning methods to identify the hub genes in AML, their experimental validations using knock-out/-in methods would strengthen our findings.

摘要

急性髓系白血病(AML)是成人中最常见的白血病形式,其特征是造血细胞不受控制的增殖和克隆性扩增。年轻患者的治疗有了显著改善,然而,老年AML患者的预后仍然很差。我们使用计算方法和机器学习(ML)技术来识别和探索AML中的差异高危基因(DHRG)。通过多种方法探索DHRG,包括基因组和功能分析、生存分析、免疫浸润、miRNA共表达和干性特征分析,以揭示它们在AML中的预后重要性。此外,使用不同的ML算法,构建了预后模型并使用DHRG进行验证。最后进行分子对接研究,以识别靶向所选DHRG的潜在药物候选物。通过比较AML患者与正常对照之间的差异表达基因以及通过Cox回归确定的高危AML基因,我们共鉴定出80个DHRG。对DHRG的遗传和表观遗传改变分析显示,它们的拷贝数变异和甲基化状态与AML患者的总生存期(OS)显著相关。在使用不同ML算法构建的137个模型中,岭回归和偏最小二乘回归Cox模型的组合保持了最高的平均C指数,并被用于构建最终模型。当根据DHRG将AML患者分为低风险和高风险组时,低风险组在AML训练和验证队列中的OS明显更长。此外,免疫浸润、miRNA共表达、干性特征和标志性通路分析显示,低风险和高风险AML组的预后存在显著差异。药物敏感性和分子对接研究揭示了前5种药物,包括卡铂和澳洲杯伞素-D,它们可能会显著影响AML中的DHRG。本研究的结果确定了一组高危基因,可作为AML患者的预后和治疗标志物。此外,还展示了ML算法在构建和验证AML预后模型中的重要应用。虽然我们的研究使用了广泛的生物信息学和机器学习方法来识别AML中的核心基因,但使用敲除/敲入方法进行实验验证将加强我们的发现。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c397/11033397/891601b2f59e/fphar-15-1359832-g001.jpg

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