Improved Statistical Methods are Needed to Advance Personalized Medicine.

Farrokh Alemi, Harold Erdman, Igor Griva, Charles H Evans
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引用次数: 33

Abstract

Common methods of statistical analysis, e.g. Analysis of Variance and Discriminant Analysis, are not necessarily optimal in selecting therapy for an individual patient. These methods rely on group differences to identify markers for disease or successful interventions and ignore sub-group differences when the number of sub-groups is large. In these circumstances, they provide the same advice to an individual as the average patient. Personalized medicine needs new statistical methods that allow treatment efficacy to be tailored to a specific patient, based on a large number of patient characteristics. One such approach is the sequential k-nearest neighbor analysis (patients-like-me algorithm). In this approach, the k most similar patients are examined sequentially until a statistically significant conclusion about the efficacy of treatment for the patient-at-hand can be arrived at. For some patients, the algorithm stops before the entire set of data is examined and provides beneficial advice that may contradict recommendations made to the average patient. Many problems remain in creating statistical tools that can help individual patients but this is an important area in which progress in statistical thinking is helpful.

需要改进的统计方法来推进个性化医疗。
常用的统计分析方法,如方差分析和判别分析,在为个体患者选择治疗方法时不一定是最佳的。这些方法依赖于群体差异来识别疾病或成功干预的标记,当亚组数量很大时忽略了亚组差异。在这种情况下,他们给病人提供的建议和一般病人一样。个性化医疗需要新的统计方法,以便根据大量患者特征,为特定患者量身定制治疗效果。其中一种方法是顺序k近邻分析(patient -like-me算法)。在这种方法中,对k个最相似的患者进行顺序检查,直到可以得出关于治疗对患者疗效的统计上显着的结论。对于一些病人来说,算法在检查完整的数据集之前就停止了,并提供了可能与普通病人的建议相矛盾的有益建议。在创建能够帮助个体患者的统计工具方面仍然存在许多问题,但这是统计思维进步的一个重要领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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