What Can We Learn about Fall Risk Factors from EHR Nursing Notes? A Text Mining Study.

Ragnhildur I Bjarnadottir, Robert J Lucero
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引用次数: 22

Abstract

Introduction: Hospital falls are a continuing clinical concern, with over one million falls occurring each year in the United States. Annually, hospital-acquired falls result in an estimated $34 billion in direct medical costs. Falls are considered largely preventable and, as a result, the Centers for Medicare and Medicaid Services have announced that fall-related injuries are no longer a reimbursable hospital cost. While policies and practices have been implemented to reduce falls, little sustained reduction has been achieved. Little empirical evidence supports the validity of published fall risk factors. While chart abstraction has been used to operationalize risk factors, few studies have examined registered nurses' (RNs') narrative notes as a source of actionable data. Therefore, the purpose of our study was to explore whether there is meaningful fall risk and prevention information in RNs' electronic narrative notes.

Methods: This study utilized a natural language processing design. Data for this study were extracted from the publicly available Medical Information Mart for Intensive Care (MIMIC-III) database. The date comprises deidentified EHR data associated with patients who stayed in critical care units between 2001 and 2012. Text mining procedures were performed on RN's narrative notes following the traditional steps of knowledge discovery.

Results: The corpus of data extracted from MIMIC-III database was comprised of 1,046,053 RNs' notes from 36,583 unique patients. We identified 3,972 notes (0.4 percent) representing 1,789 (5 percent) patients with explicit documentation related to fall risk/prevention. Around 10 percent of the notes (103,685) from 23,025 patients mentioned intrinsic (patient-related) factors that have been theoretically associated with risk of falling. An additional 1,322 notes (0.1 percent) from 692 patients (2 percent) mentioned extrinsic risk factors, related to organizational design and environment. Moreover, 7672 notes (0.7 percent) from 2,571 patients (7 percent) included information on interventions that could theoretically impact patient falls.

Conclusions: This exploratory study using a NLP approach revealed that meaningful information related to fall risk and prevention may be found in RNs' narrative notes. In particular, RNs' notes can contain information about clinical as well as environmental and organizational factors that could affect fall risk but are not explicitly recorded by the provider as a fall risk factors. In our study, potential fall risk factors were documented for more than half of the sample. Further research is needed to determine the predictive value of these factors.

Implications for policy or practice: This study highlights a potentially rich but understudied source of actionable fall risk data. Furthermore, the application of novel methods to identify quality and safety measures in RNs' notes can facilitate inclusion of RNs' voices in patient outcomes and health services research.

Abstract Image

从EHR护理笔记中我们可以了解哪些跌倒风险因素?文本挖掘研究。
引言:医院跌倒是一个持续的临床问题,美国每年有超过100万人跌倒。每年,医院收购的下降导致估计340亿美元的直接医疗成本。跌倒在很大程度上被认为是可以预防的,因此,医疗保险和医疗补助服务中心宣布,与跌倒有关的伤害不再是可报销的医院费用。虽然已经实施了减少跌倒的政策和做法,但几乎没有实现持续的减少。几乎没有实证证据支持已公布的秋季风险因素的有效性。虽然图表抽象已被用于操作风险因素,但很少有研究将注册护士的叙述性笔记作为可操作数据的来源。因此,我们研究的目的是探索RN的电子叙述笔记中是否存在有意义的跌倒风险和预防信息。方法:本研究采用自然语言处理设计。本研究的数据取自可公开获得的重症监护医疗信息集市(MIMIC-III)数据库。该日期包括与2001年至2012年间入住重症监护室的患者相关的未识别EHR数据。按照传统的知识发现步骤,对RN的叙述性笔记进行文本挖掘。结果:从MIMIC-III数据库中提取的数据语料库由来自36583名独特患者的1046053份RN笔记组成。我们确定了3972份笔记(0.4%),代表1789名(5%)患者,他们有与跌倒风险/预防相关的明确文件。来自23025名患者的约10%的笔记(103685)提到了理论上与跌倒风险相关的内在(患者相关)因素。692名患者(2%)中另有1322份笔记(0.1%)提到了与组织设计和环境有关的外部风险因素。此外,来自2571名患者(7%)的7672份笔记(0.7%)包含了理论上可能影响患者跌倒的干预措施信息。结论:这项使用NLP方法的探索性研究表明,在RN的叙述性笔记中可以找到与跌倒风险和预防相关的有意义的信息。特别是,RN的笔记可以包含可能影响跌倒风险的临床、环境和组织因素的信息,但提供者没有明确记录为跌倒风险因素。在我们的研究中,超过一半的样本记录了潜在的跌倒风险因素。需要进一步的研究来确定这些因素的预测价值。对政策或实践的影响:这项研究强调了可操作的跌倒风险数据的潜在丰富但研究不足的来源。此外,应用新方法来确定RN笔记中的质量和安全措施,可以促进将RN的声音纳入患者结果和卫生服务研究。
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