利用基因表达数据库预测胶质母细胞瘤的生存期:神经网络分析

IF 1.5 Q3 MEDICINE, RESEARCH & EXPERIMENTAL International Journal of Molecular and Cellular Medicine Pub Date : 2024-01-01 DOI:10.22088/IJMCM.BUMS.13.1.79
Parisa Azimi, Taravat Yazdanian, Amirhosein Zohrevand, Abolhassan Ahmadiani
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引用次数: 0

摘要

胶质母细胞瘤(GBM)是侵袭性最强、致死率最高的脑肿瘤。人工神经网络(ANN)具有准确预测和改善决策的潜力。本研究的目的是根据基因表达数据库创建一个 ANN 模型,预测 GBM 患者 15 个月的生存率。我们从 CGGA、TCGA、MYO 和 CPTAC 下载了 GBM 的基因组数据。采用逻辑回归(LR)和ANN模型。年龄、性别、IDH野生型/突变型以及我们之前研究中最重要的31个基因被确定为已建立的ANN模型的输入因子。评估结果采用了 15 个月的存活时间。使用选定的 ANN 模型计算了每个协变量的归一化重要性得分。测量了接收者操作特征曲线(ROC)下面积(AUC)、Hosmer-Lemeshow(H-L)统计量和预测准确性,以评估两个模型。使用的是 SPSS 26。总共 551 名患者(61% 为男性,平均年龄为 55.5 ± 13.3 岁)被分为训练数据集、测试数据集和验证数据集,其中训练数据集为 441 人,测试数据集为 55 人,验证数据集为 55 人。发现的主要候选基因有在 ANN 模型中,候选基因包括 FN1、ICAM1、MYD88、IL10 和 CCL2;在 LR 模型中,候选基因包括 MMP9、MYD88 和 CDK4。LR 分析的 AUC 为 0.71,ANN 分析的 AUC 为 0.81。与 LR 模型相比,ANN 模型显示出更好的结果:准确率为 83.3%;H-L 统计量为 6.5%;AUC 为 0.81%。研究结果表明,ANN 可以准确预测 GBM 患者的 15 个月生存率,有助于精确的医疗治疗。
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Predicting Survival in Glioblastoma Using Gene Expression Databases: A Neural Network Analysis.

Glioblastoma (GBM) is the most aggressive and lethal brain tumor. Artificial neural networks (ANNs) have the potential to make accurate predictions and improve decision making. The aim of this study was to create an ANN model to predict 15-month survival in GBM patients according to gene expression databases. Genomic data of GBM were downloaded from the CGGA, TCGA, MYO, and CPTAC. Logistic regression (LR) and ANN model were used. Age, gender, IDH wild-type/mutant and the 31 most important genes from our previous study, were determined as input factors for the established ANN model. 15-month survival time was used to evaluate the results. The normalized importance scores of each covariate were calculated using the selected ANN model. The area under a receiver operating characteristic (ROC) curve (AUC), Hosmer-Lemeshow (H-L) statistic and accuracy of prediction were measured to evaluate the two models. SPSS 26 was utilized. A total of 551 patients (61% male, mean age 55.5 ± 13.3 years) patients were divided into training, testing, and validation datasets of 441, 55 and 55 patients, respectively. The main candidate genes found were: FN1, ICAM1, MYD88, IL10, and CCL2 with the ANN model; and MMP9, MYD88, and CDK4 with LR model. The AUCs were 0.71 for the LR and 0.81 for the ANN analysis. Compared to the LR model, the ANN model showed better results: Accuracy rate, 83.3 %; H-L statistic, 6.5 %; and AUC, 0.81 % of patients. The findings show that ANNs can accurately predict the 15-month survival in GBM patients and contribute to precise medical treatment.

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期刊介绍: The International Journal of Molecular and Cellular Medicine (IJMCM) is a peer-reviewed, quarterly publication of Cellular and Molecular Biology Research Center (CMBRC), Babol University of Medical Sciences, Babol, Iran. The journal covers all cellular & molecular biology and medicine disciplines such as the genetic basis of disease, biomarker discovery in diagnosis and treatment, genomics and proteomics, bioinformatics, computer applications in human biology, stem cells and tissue engineering, medical biotechnology, nanomedicine, cellular processes related to growth, death and survival, clinical biochemistry, molecular & cellular immunology, molecular and cellular aspects of infectious disease and cancer research. IJMCM is a free access journal. All open access articles published in IJMCM are distributed under the terms of the Creative Commons Attribution CC BY. The journal doesn''t have any submission and article processing charges (APCs).
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