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Investigation of Super Learner Methodology on HIV-1 Small Sample: Application on Jaguar Trial Data

机译:HIV-1小样本超级学习者方法研究:在捷豹试验数据中的应用

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摘要

Background. Many statistical models have been tested to predict phenotypic or virological response from genotypic data. A statistical framework called Super Learner has been introduced either to compare different methods/learners (discrete Super Learner) or to combine them in a Super Learner prediction method. Methods. The Jaguar trial is used to apply the Super Learner framework. The Jaguar study is an “add-on” trial comparing the efficacy of adding didanosine to an on-going failing regimen. Our aim was also to investigate the impact on the use of different cross-validation strategies and different loss functions. Four different repartitions between training set and validations set were tested through two loss functions. Six statistical methods were compared. We assess performance by evaluating R 2 values and accuracy by calculating the rates of patients being correctly classified. Results. Our results indicated that the more recent Super Learner methodology of building a new predictor based on a weighted combination of different methods/learners provided good performance. A simple linear model provided similar results to those of this new predictor. Slight discrepancy arises between the two loss functions investigated, and slight difference arises also between results based on cross-validated risks and results from full dataset. The Super Learner methodology and linear model provided around 80% of patients correctly classified. The difference between the lower and higher rates is around 10 percent. The number of mutations retained in different learners also varys from one to 41. Conclusions. The more recent Super Learner methodology combining the prediction of many learners provided good performance on our small dataset.
机译:背景。已经测试了许多统计模型来预测来自基因型数据的表型或病毒学应答。引入了一个称为“超级学习者”的统计框架,以比较不同的方法/学习者(离散的“超级学习者”)或将其组合为“超级学习者”预测方法。方法。 Jaguar试用版用于应用Super Learner框架。 Jaguar研究是一项“附加”试验,比较了在持续失败的治疗方案中添加去羟肌苷的疗效。我们的目的还在于调查对使用不同交叉验证策略和不同损失函数的影响。通过两个损失函数测试了训练集和验证集之间的四个不同分区。比较了六种统计方法。我们通过评估R 2 值来评估表现,并通过计算正确分类的患者比率来评估准确性。结果。我们的结果表明,基于不同方法/学习者的加权组合构建新预测变量的最新Super Learner方法提供了良好的性能。一个简单的线性模型提供了与该新预测变量相似的结果。所研究的两个损失函数之间存在细微差异,基于交叉验证的风险的结果与完整数据集的结果之间也存在细微差异。超级学习者方法和线性模型提供了大约80%正确分类的患者。较低和较高利率之间的差异约为10%。在不同学习者中保留的突变数量也从1到41不等。结论。最新的超级学习者方法结合了许多学习者的预测,在我们的小型数据集上提供了良好的性能。

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