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Random forest and variable importance rankings for correlated survival data, with applications to tooth loss

机译:相关生存数据的随机森林和变量重要性排名,以及对牙齿脱落的应用

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Oral health is a significant issue for adults because of its relationship to quality of life, as well as systematic health and well being. Impaired oral health can lead to significant health problems, such as pain and infection. This article considers a tree-based method to assess tooth loss. In particular, a variable importance measure based on extremely randomized trees (Geurts et al., 2006) is proposed for correlated survival data, and is applied to the VA Dental Longitudinal Study. This new variable importance method aims to remove the bias of the traditional random forest variable selection, which may favour input variables with more categories, as shown by Strobl et al. (2007). The multivariate exponential tree algorithm of Fan et al. (2009) is used to build trees, as it has superior prediction accuracy and computational efficiency compared to marginal and semiparametric frailty model-based trees (Nunn et al., 2011). Simulation studies for assessing various variable importance methods are presented. To limit the final number of meaningful prognostic groups, an amalgamation procedure is used to develop tooth prognostic groups from a forest of trees. The resulting prognosis rules and variable importance rankings may be used in clinical practice to increase tooth retention and establish rational treatment plans. By ranking the relative importance of various clinical and genetic factors for tooth loss, we are able to provide clinicians with critical information so that they can develop and implement an effective treatment plan.
机译:对于成年人来说,口腔健康是一个重要的问题,因为它与生活质量,系统健康和福祉有关。口腔健康受损会导致严重的健康问题,例如疼痛和感染。本文考虑了一种基于树的方法来评估牙齿脱落。尤其是,针对相关的生存数据,提出了一种基于极度随机树的可变重要性度量(Geurts等,2006),并将其应用于VA牙科纵向研究。这种新的变量重要性方法旨在消除传统随机森林变量选择的偏见,如Strobl等人所示,该偏爱可能会偏爱具有更多类别的输入变量。 (2007)。 Fan等人的多元指数树算法。 (2009年)用于构建树木,因为与基于边际和半参数脆弱模型的树木相比,它具有出色的预测准确性和计算效率(Nunn等,2011)。提出了评估各种可变重要性方法的仿真研究。为了限制有意义的预后组的最终数量,采用了融合程序来从树木丛中发展牙齿预后组。所得的预后规则和重要性重要性分级可在临床实践中用于增加牙齿固位并建立合理的治疗计划。通过评估各种临床和遗传因素对牙齿脱落的相对重要性,我们能够为临床医生提供重要信息,以便他们制定和实施有效的治疗计划。

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