论文标题

大型临床数据集中的轨迹,分叉和伪赛:心肌梗塞和糖尿病数据的应用

Trajectories, bifurcations and pseudotime in large clinical datasets: applications to myocardial infarction and diabetes data

论文作者

Golovenkin, Sergey E., Bac, Jonathan, Chervov, Alexander, Mirkes, Evgeny M., Orlova, Yuliya V., Barillot, Emmanuel, Gorban, Alexander N., Zinovyev, Andrei

论文摘要

大量的观察性临床数据集越来越多地用于各种疾病特征和管理治疗之间的采矿关联。这些数据集可以被视为所有可能疾病状况的景观的表示,在这种情况下,具体病理学通过多种陈规定型途径发展,其特征在于“无回报点”和“最终状态”(例如致命或恢复状态)。直接从数据中提取此信息仍然具有挑战性,尤其是在同步(短期随访)的情况下。在这里,我们建议一种半监督的方法,用于分析大型临床数据集,其特征在于混合数据类型和缺失值,通过将几何数据结构建模为叉状临床轨迹的一束。该方法基于弹性主图的应用,可以同时解决降低,数据可视化,聚类,特征选择的任务,并以部分有序的观测值序列量化地质距离(伪战)。该方法允许将患者定位在特定的临床轨迹(病理方案)上,并以对预后不确定性的定性估计来表征沿其进展程度。总体而言,我们的基于伪时间量化的方法可以应用用于动态疾病表型和疾病轨迹分析(简介数据分析)开发的方法中的方法。我们开发了一种工具$ Clintrajan $,用于以Python编程语言实施的临床轨迹分析。我们在两个大型公开数据集中测试了该方法:心肌梗死并发症和糖尿病患者数据的再入院。

Large observational clinical datasets become increasingly available for mining associations between various disease traits and administered therapy. These datasets can be considered as representations of the landscape of all possible disease conditions, in which a concrete pathology develops through a number of stereotypical routes, characterized by `points of no return' and `final states' (such as lethal or recovery states). Extracting this information directly from the data remains challenging, especially in the case of synchronic (with a short-term follow up) observations. Here we suggest a semi-supervised methodology for the analysis of large clinical datasets, characterized by mixed data types and missing values, through modeling the geometrical data structure as a bouquet of bifurcating clinical trajectories. The methodology is based on application of elastic principal graphs which can address simultaneously the tasks of dimensionality reduction, data visualization, clustering, feature selection and quantifying the geodesic distances (pseudotime) in partially ordered sequences of observations. The methodology allows positioning a patient on a particular clinical trajectory (pathological scenario) and characterizing the degree of progression along it with a qualitative estimate of the uncertainty of the prognosis. Overall, our pseudo-time quantification-based approach gives a possibility to apply the methods developed for dynamical disease phenotyping and illness trajectory analysis (diachronic data analysis) to synchronic observational data. We developed a tool $ClinTrajan$ for clinical trajectory analysis implemented in Python programming language. We test the methodology in two large publicly available datasets: myocardial infarction complications and readmission of diabetic patients data.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源