Department of Surgery, University of California, 505 Parnassus Avenue, San Francisco, CA 94143, USA.
Crit Care. 2010;14(1):R10. doi: 10.1186/cc8864. Epub 2010 Feb 2.
Advances in technology have made extensive monitoring of patient physiology the standard of care in intensive care units (ICUs). While many systems exist to compile these data, there has been no systematic multivariate analysis and categorization across patient physiological data. The sheer volume and complexity of these data make pattern recognition or identification of patient state difficult. Hierarchical cluster analysis allows visualization of high dimensional data and enables pattern recognition and identification of physiologic patient states. We hypothesized that processing of multivariate data using hierarchical clustering techniques would allow identification of otherwise hidden patient physiologic patterns that would be predictive of outcome.
Multivariate physiologic and ventilator data were collected continuously using a multimodal bioinformatics system in the surgical ICU at San Francisco General Hospital. These data were incorporated with non-continuous data and stored on a server in the ICU. A hierarchical clustering algorithm grouped each minute of data into 1 of 10 clusters. Clusters were correlated with outcome measures including incidence of infection, multiple organ failure (MOF), and mortality.
We identified 10 clusters, which we defined as distinct patient states. While patients transitioned between states, they spent significant amounts of time in each. Clusters were enriched for our outcome measures: 2 of the 10 states were enriched for infection, 6 of 10 were enriched for MOF, and 3 of 10 were enriched for death. Further analysis of correlations between pairs of variables within each cluster reveals significant differences in physiology between clusters.
Here we show for the first time the feasibility of clustering physiological measurements to identify clinically relevant patient states after trauma. These results demonstrate that hierarchical clustering techniques can be useful for visualizing complex multivariate data and may provide new insights for the care of critically injured patients.
技术的进步使得对重症监护病房(ICU)患者生理状况的广泛监测成为常规护理。虽然有许多系统可以用来编译这些数据,但在患者生理数据方面,还没有进行系统的多变量分析和分类。这些数据的数量庞大且复杂,使得模式识别或患者状态的识别变得困难。层次聚类分析允许对高维数据进行可视化,并能够识别生理患者状态的模式和识别。我们假设,使用层次聚类技术处理多变量数据可以识别出其他隐藏的患者生理模式,这些模式可以预测结果。
使用旧金山总医院外科 ICU 的多模式生物信息学系统连续收集多变量生理和呼吸机数据。这些数据与非连续数据结合并存储在 ICU 的服务器上。层次聚类算法将每分钟的数据分为 10 个簇中的 1 个。将聚类与包括感染发生率、多器官功能衰竭(MOF)和死亡率在内的结果测量相关联。
我们确定了 10 个聚类,我们将其定义为不同的患者状态。虽然患者在状态之间转换,但他们在每个状态中花费了大量时间。聚类与我们的结果测量相关:10 个状态中有 2 个富集感染,10 个中有 6 个富集 MOF,10 个中有 3 个富集死亡。对每个聚类中变量之间的相关性进行进一步分析揭示了聚类之间生理学的显著差异。
这里我们首次展示了对创伤后识别临床相关患者状态进行聚类生理测量的可行性。这些结果表明,层次聚类技术可用于可视化复杂的多变量数据,并可为危重伤患者的护理提供新的见解。