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Ensemble methods for classification of patients for personalized medicine with high-dimensional data

机译:具有高维数据的个性化医学患者分类的综合方法

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Objective: Personalized medicine is defined by the use of genomic signatures of patients in a target population for assignment of more effective therapies as well as better diagnosis and earlier interventions that might prevent or delay disease. An objective is to find a novel classification algorithm that can be used for prediction of response to therapy in order to help individualize clinical assignment of treatment. Methods and materials: Classification algorithms are required to be highly accurate for optimal treatment on each patient. Typically, there are numerous genomic and clinical variables over a relatively small number of patients, which presents challenges for most traditional classification algorithms to avoid over-fitting the data. We developed a robust classification algorithm for high-dimensional data based on ensembles of classifiers built from the optimal number of random partitions of the feature space. The software is available on request from the authors. Results: The proposed algorithm is applied to genomic data sets on lymphoma patients and lung cancer patients to distinguish disease subtypes for optimal treatment and to genomic data on breast cancer patients to identify patients most likely to benefit from adjuvant chemotherapy after surgery. The performance of the proposed algorithm is consistently ranked highly compared to the other classification algorithms. Conclusion: The statistical classification method for individualized treatment of diseases developed in this study is expected to play a critical role in developing safer and more effective therapies that replace one-size-fits-all drugs with treatments that focus on specific patient needs.
机译:目的:个性化医学的定义是通过使用目标人群中患者的基因组特征来分配更有效的疗法以及更好的诊断和可能预防或延迟疾病的早期干预措施。一个目标是找到一种新颖的分类算法,该算法可用于预测对治疗的反应,以帮助个性化治疗的临床分配。方法和材料:分类算法要求高度准确,以对每个患者进行最佳治疗。通常,相对少量的患者会有大量的基因组和临床变量,这对大多数传统分类算法提出了挑战,要避免数据过度拟合。我们基于从特征空间的随机分区的最佳数量构建的分类器集合,开发了用于高维数据的鲁棒分类算法。该软件可应作者要求提供。结果:该算法被应用于淋巴瘤患者和肺癌患者的基因组数据集,以区分疾病亚型以进行最佳治疗,并应用于乳腺癌患者的基因组数据,以确定最有可能在术后接受辅助化疗的患者。与其他分类算法相比,该算法的性能始终处于较高的排名。结论:本研究开发的用于个体化疾病治疗的统计分类方法有望在开发更安全,更有效的疗法中发挥关键作用,该疗法将以一种针对特定患者需求的疗法替代一种通用的药物。

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