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Two machine learning methods identify a metastasis-related prognostic model that predicts overall survival in medulloblastoma patients

机译:两种机器学习方法鉴定了一种相关的相关预后模型预测Medulloblastoma患者的整体存活

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摘要

Approximately 30% of medulloblastoma (MB) patients exhibit metastasis at initial diagnosis, which often leads to a poor prognosis. Here, by using univariate Cox regression analysis, two machine learning methods (Lasso-penalized Cox regression and random survival forest-variable hunting (RSF-VH)), and multivariate Cox regression analysis, we established two metastasis-related prognostic models, including the 47-mRNA-based model based on the Lasso method and the 21-mRNA-based model based on the RSF-VH method. In terms of the results of the receiver operating characteristic (ROC) curve analyses, we selected the 47-mRNA metastasis-associated model with the higher area under the curve (AUC). The 47-mRNA-based prognostic model could classify MB patients into two subgroups with different prognoses. The ROC analyses also suggested that the 47-mRNA metastasis-associated model may have a better predictive ability than MB subgroup. Multivariable Cox regression analysis demonstrated that the 47-mRNA-based model was independent of other clinical characteristics. In addition, a nomogram comprising the 47-mRNA-based model was built. The results of ROC analyses suggested that the nomogram had good discrimination ability. Our 47-mRNA metastasis-related prognostic model and nomogram might be an efficient and valuable tool for overall survival (OS) prediction and provide information for individualized treatment decisions in patients with MB.
机译:大约30%的Medulloblastoma(MB)患者在初步诊断下表现出转移,这往往导致预后差。在这里,通过使用单变量COX回归分析,两种机器学习方法(途机抵抗COX回归和随机存活森林 - 变量狩猎(RSF-VH))和多元COX回归分析,我们建立了两种转移相关的预后模型,包括基于RSF-VH法的套索方法和基于21-mRNA的模型的基于47-mRNA的模型。就接收器操作特征(ROC)曲线分析的结果,我们选择了47-mRNA转移相关模型,曲线下的较高区域(AUC)。基于47-mRNA的预后模型可以将MB患者分为两种具有不同预测的亚组。 ROC分析还表明,47-mRNA转移相关模型可能具有比MB子组更好的预测能力。多变量Cox回归分析表明,基于47-mRNA的模型与其他临床特征无关。此外,建立了包含47-mRNA的模型的铭文。 ROC分析结果表明,墨顶图具有良好的歧视能力。我们的47-mRNA转移相关的预后模型和载体图可能是整体生存(OS)预测的有效和有价值的工具,并为MB患者提供个性化治疗决策的信息。

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