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首页> 外文期刊>Bioinformatics >Dealing with sparse data in predicting outcomes of HIV combination therapies.
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Dealing with sparse data in predicting outcomes of HIV combination therapies.

机译:处理稀疏数据以预测HIV联合疗法的结果。

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MOTIVATION: As there exists no cure or vaccine for the infection with human immunodeficiency virus (HIV), the standard approach to treating HIV patients is to repeatedly administer different combinations of several antiretroviral drugs. Because of the large number of possible drug combinations, manually finding a successful regimen becomes practically impossible. This presents a major challenge for HIV treatment. The application of machine learning methods for predicting virological responses to potential therapies is a possible approach to solving this problem. However, due to evolving trends in treating HIV patients the available clinical datasets have a highly unbalanced representation, which might negatively affect the usefulness of derived statistical models. RESULTS: This article presents an approach that tackles the problem of predicting virological response to combination therapies by learning a separate logistic regression model for each therapy. The models are fitted by using not only the data from the target therapy but also the information from similar therapies. For this purpose, we introduce and evaluate two different measures of therapy similarity. The models are also able to incorporate phenotypic knowledge on the therapy outcomes through a Gaussian prior. With our approach we balance the uneven therapy representation in the datasets and produce higher quality models for therapies with very few training samples. According to the results from the computational experiments our therapy similarity model performs significantly better than training separate models for each therapy by using solely their examples. Furthermore, the model's performance is as good as an approach that encodes therapy information in the input feature space with the advantage of delivering better results for therapies with very few training samples. AVAILABILITY: Code of the efficient logistic regression is available from http://www.mpi-inf.mpg.de/%7Ejasmina/fastLogistic.zip.
机译:动机:由于尚无针对人类免疫缺陷病毒(HIV)感染的治疗方法或疫苗,因此治疗HIV患者的标准方法是反复服用几种抗逆转录病毒药物的不同组合。由于存在大量可能的药物组合,因此几乎不可能手动找到成功的治疗方案。这对HIV治疗提出了重大挑战。机器学习方法在预测对潜在疗法的病毒学应答中的应用是解决该问题的一种可能方法。但是,由于治疗HIV患者的趋势不断发展,可用的临床数据集具有高度不平衡的表示形式,这可能会对派生的统计模型的有效性产生负面影响。结果:本文介绍了一种方法,该方法通过学习每种疗法的单独逻辑回归模型来解决预测对联合疗法的病毒学应答的问题。通过不仅使用目标疗法的数据,而且还使用相似疗法的信息来拟合模型。为此,我们介绍和评估两种不同的治疗相似性测量方法。该模型还能够通过高斯先验将表型知识纳入治疗结果。通过我们的方法,我们可以平衡数据集中不均衡的治疗表示形式,并以很少的训练样本为治疗产生更高质量的模型。根据计算实验的结果,我们的疗法相似性模型的效果明显优于仅使用其示例为每种疗法训练单独模型的效果。此外,该模型的性能与在输入特征空间中对治疗信息进行编码的方法一样好,其优点是只需很少的训练样本即可为治疗提供更好的结果。可用性:有效的逻辑回归代码可从http://www.mpi-inf.mpg.de/%7Ejasmina/fastLogistic.zip获得。

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