Department of Computer Science and Engineering, The Ohio State University, Columbus, Ohio, USA.
Department of Critical Care Nursing, The Ohio State University Wexner Medical Center, Columbus, Ohio, USA.
BMC Med Inform Decis Mak. 2017 Jul 5;17(Suppl 2):65. doi: 10.1186/s12911-017-0471-z.
We develop predictive models enabling clinicians to better understand and explore patient clinical data along with risk factors for pressure ulcers in intensive care unit patients from electronic health record data. Identifying accurate risk factors of pressure ulcers is essential to determining appropriate prevention strategies; in this work we examine medication, diagnosis, and traditional Braden pressure ulcer assessment scale measurements as patient features. In order to predict pressure ulcer incidence and better understand the structure of related risk factors, we construct Bayesian networks from patient features. Bayesian network nodes (features) and edges (conditional dependencies) are simplified with statistical network techniques. Upon reviewing a network visualization of our model, our clinician collaborators were able to identify strong relationships between risk factors widely recognized as associated with pressure ulcers.
We present a three-stage framework for predictive analysis of patient clinical data: 1) Developing electronic health record feature extraction functions with assistance of clinicians, 2) simplifying features, and 3) building Bayesian network predictive models. We evaluate all combinations of Bayesian network models from different search algorithms, scoring functions, prior structure initializations, and sets of features.
From the EHRs of 7,717 ICU patients, we construct Bayesian network predictive models from 86 medication, diagnosis, and Braden scale features. Our model not only identifies known and suspected high PU risk factors, but also substantially increases sensitivity of the prediction - nearly three times higher comparing to logistical regression models - without sacrificing the overall accuracy. We visualize a representative model with which our clinician collaborators identify strong relationships between risk factors widely recognized as associated with pressure ulcers.
Given the strong adverse effect of pressure ulcers on patients and the high cost for treating pressure ulcers, our Bayesian network based model provides a novel framework for significantly improving the sensitivity of the prediction model. Thus, when the model is deployed in a clinical setting, the caregivers can suitably respond to conditions likely associated with pressure ulcer incidence.
我们开发了预测模型,使临床医生能够更好地理解和探索重症监护病房患者的临床数据以及压疮的风险因素,这些数据来自电子健康记录。确定压疮的准确风险因素对于确定适当的预防策略至关重要;在这项工作中,我们检查了药物、诊断和传统的布雷登压疮评估量表测量值作为患者特征。为了预测压疮的发生率并更好地理解相关风险因素的结构,我们根据患者特征构建了贝叶斯网络。贝叶斯网络节点(特征)和边(条件依赖性)通过统计网络技术进行简化。在审查我们模型的网络可视化后,我们的临床医生合作者能够识别出与压疮广泛相关的风险因素之间的强关系。
我们提出了一个用于患者临床数据分析的三阶段框架:1)在临床医生的协助下开发电子健康记录特征提取功能,2)简化特征,3)构建贝叶斯网络预测模型。我们评估了来自不同搜索算法、评分函数、先验结构初始化和特征集的所有贝叶斯网络模型组合。
从 7717 名 ICU 患者的 EHR 中,我们从 86 种药物、诊断和布雷登量表特征中构建了贝叶斯网络预测模型。我们的模型不仅识别了已知和可疑的高 PU 风险因素,而且还大大提高了预测的灵敏度——与逻辑回归模型相比几乎提高了三倍——而不会牺牲整体准确性。我们可视化了一个代表性模型,我们的临床医生合作者可以通过该模型识别出与压疮相关的广泛公认的风险因素之间的强关系。
鉴于压疮对患者的不良影响以及治疗压疮的高昂成本,我们基于贝叶斯网络的模型为显著提高预测模型的灵敏度提供了一个新的框架。因此,当模型部署在临床环境中时,护理人员可以适当地对可能与压疮发生率相关的情况做出反应。