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Network estimation for censored time-to-event data for multiple events based on multivariate survival analysis

机译:基于多变量生存分析的多个事件对截取的截取时间到事件时间数据的网络估计

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In general survival analysis, multiple studies have considered a single failure time corresponding to the time to the event of interest or to the occurrence of multiple events under the assumption that each event is independent. However, in real-world events, one event may impact others. Essentially, the potential structure of the occurrence of multiple events can be observed in several survival datasets. The interrelations between the times to the occurrences of events are immensely challenging to analyze because of the presence of censoring. Censoring commonly arises in longitudinal studies in which some events are often not observed for some of the subjects within the duration of research. Although this problem presents the obstacle of distortion caused by censoring, the advanced multivariate survival analysis methods that handle multiple events with censoring make it possible to measure a bivariate probability density function for a pair of events. Considering this improvement, this paper proposes a method called censored network estimation to discover partially correlated relationships and construct the corresponding network composed of edges representing non-zero partial correlations on multiple censored events. To demonstrate its superior performance compared to conventional methods, the selecting power for the partially correlated events was evaluated in two types of networks with iterative simulation experiments. Additionally, the correlation structure was investigated on the electronic health records dataset of the times to the first diagnosis for newborn babies in South Korea. The results show significantly improved performance as compared to edge measurement with competitive methods and reliability in terms of the interrelations of real-life diseases.
机译:在一般存活分析中,多项研究已经考虑了与感兴趣事件发生的时间或在每个事件是独立的假设下发生多个事件的单一失效时间。然而,在现实世界的活动中,一个事件可能会影响他人。基本上,可以在几个生存数据集中观察到多个事件发生的潜在结构。由于存在抗思,分析事件发生的时间与事件发生之间的相互关系非常具有挑战性。抗思思通常出现在纵向研究中,其中一些受试者通常没有观察到一些事件。虽然这一问题呈现了由审查引起的扭曲引起的扭曲的障碍,但是处理多个事件的抗冲求的高级多元生存分析方法使得可以测量一对事件的双变化概率密度函数。考虑到这种改进,本文提出了一种被称为截取的网络估计的方法,以发现部分相关的关系,并构造由表示多个禁用事件的非零部分相关的边缘构成的相应网络。为了展示其与传统方法相比的优异性能,在具有迭代模拟实验的两种类型的网络中评估了部分相关事件的选择功率。另外,对韩国新生婴儿的第一次诊断的电子健康记录数据集进行了相关结构。与具有竞争性方法和现实疾病的相互关系的相比,结果表明,与具有竞争性方法和可靠性相比的性能显着提高。

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