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How to interpret the results of medical time series data analysis&58; Classical statistical approaches versus dynamic Bayesian network modeling

机译:如何解释医学时间序列数据分析的结果&58;经典统计方法与动态贝叶斯网络建模

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Background&58; Classical statistics is a well-established approach in the analysis of medical data. While the medical community seems to be familiar with the concept of a statistical analysis and its interpretation, the Bayesian approach, argued by many of its proponents to be superior to the classical frequentist approach, is still not well-recognized in the analysis of medical data. Aim&58; The goal of this study is to encourage data analysts to use the Bayesian approach, such as modeling with graphical probabilistic networks, as an insightful alternative to classical statistical analysis of medical data. Materials and Methods&58; This paper offers a comparison of two approaches to analysis of medical time series data&58; (1) classical statistical approach, such as the Kaplan-Meier estimator and the Cox proportional hazards regression model, and (2) dynamic Bayesian network modeling. Our comparison is based on time series cervical cancer screening data collected at Magee-Womens Hospital, University of Pittsburgh Medical Center over 10 years. Results&58; The main outcomes of our comparison are cervical cancer risk assessments produced by the three approaches. However, our analysis discusses also several aspects of the comparison, such as modeling assumptions, model building, dealing with incomplete data, individualized risk assessment, results interpretation, and model validation. Conclusion &58; Our study shows that the Bayesian approach is (1) much more flexible in terms of modeling effort, and (2) it offers an individualized risk assessment, which is more cumbersome for classical statistical approaches.
机译:背景&58;古典统计学是医学数据分析中公认的方法。尽管医学界似乎熟悉统计分析及其解释的概念,但许多支持者认为贝叶斯方法优于经典的常客主义方法,但在医学数据分析中仍未得到公认。目标&58;这项研究的目的是鼓励数据分析人员使用贝叶斯方法(例如使用图形概率网络进行建模)作为医学数据经典统计分析的有见识的替代方法。材料与方法&58;本文比较了两种分析医疗时间序列数据的方法[58]。 (1)经典统计方法,例如Kaplan-Meier估计器和Cox比例风险回归模型,以及(2)动态贝叶斯网络建模。我们的比较是基于在匹兹堡大学医学中心Magee-Womens医院收集的10年以上宫颈癌的时间序列数据。结果&58;我们比较的主要结果是三种方法产生的宫颈癌风险评估。但是,我们的分析还讨论了比较的几个方面,例如建模假设,模型构建,处理不完整数据,个性化风险评估,结果解释和模型验证。结论&58;我们的研究表明,贝叶斯方法(1)在建模工作方面更加灵活,并且(2)它提供了个性化的风险评估,这对于传统的统计方法而言比较麻烦。

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