A natural language processing approach to categorise contributing factors from patient safety event reports.

IF 4.1 Q1 HEALTH CARE SCIENCES & SERVICES BMJ Health & Care Informatics Pub Date : 2023-05-01 DOI:10.1136/bmjhci-2022-100731
Azade Tabaie, Srijan Sengupta, Zoe M Pruitt, Allan Fong
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Abstract

Objectives: The objective of this study was to explore the use of natural language processing (NLP) algorithm to categorise contributing factors from patient safety event (PSE). Contributing factors are elements in the healthcare process (eg, communication failures) that instigate an event or allow an event to occur. Contributing factors can be used to further investigate why safety events occurred.

Methods: We used 10 years of self-reported PSE reports from a multihospital healthcare system in the USA. Reports were first selected by event date. We calculated χ2 values for each ngram in the bag-of-words then selected N ngrams with the highest χ2 values. Then, PSE reports were filtered to only include the sentences containing the selected ngrams. Such sentences were called information-rich sentences. We compared two feature extraction techniques from free-text data: (1) baseline bag-of-words features and (2) features from information-rich sentences. Three machine learning algorithms were used to categorise five contributing factors representing sociotechnical errors: communication/hand-off failure, technology issue, policy/procedure issue, distractions/interruptions and lapse/slip. We trained 15 binary classifiers (five contributing factors * three machine learning models). The models' performances were evaluated according to the area under the precision-recall curve (AUPRC), precision, recall, and F1-score.

Results: Applying the information-rich sentence selection algorithm boosted the contributing factor categorisation performance. Comparing the AUPRCs, the proposed NLP approach improved the categorisation performance of two and achieved comparable results with baseline in categorising three contributing factors.

Conclusions: Information-rich sentence selection can be incorporated to extract the sentences in free-text event narratives in which the contributing factor information is embedded.

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一种自然语言处理方法,从患者安全事件报告中对贡献因素进行分类。
目的:本研究的目的是探索使用自然语言处理(NLP)算法对患者安全事件(PSE)的影响因素进行分类。促成因素是医疗保健过程中引发事件或允许事件发生的元素(例如,通信故障)。影响因素可用于进一步调查安全事件发生的原因。方法:我们使用来自美国一家多医院医疗保健系统的10年自我报告PSE报告。首先根据事件日期选择报告。我们计算词袋中每个ngram的χ2值,然后选择N个具有最高χ2值的ngram。然后,PSE报告被过滤,只包含包含所选图形的句子。这样的句子被称为信息丰富的句子。我们比较了自由文本数据的两种特征提取技术:(1)基线词袋特征和(2)信息丰富的句子特征。三种机器学习算法被用来对代表社会技术错误的五个因素进行分类:沟通/移交失败、技术问题、政策/程序问题、分心/中断和失误/失误。我们训练了15个二元分类器(五个贡献因子*三个机器学习模型)。根据精确度召回率曲线下面积(AUPRC)、精度、召回率和f1分数来评价模型的性能。结果:应用富信息的句子选择算法提高了因子分类性能。通过比较auprc,所提出的NLP方法提高了其中两个的分类性能,并在分类三个贡献因素方面取得了与基线相当的结果。结论:在自由文本事件叙事中,可以采用信息丰富的句子选择方法提取包含促成因素信息的句子。
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来源期刊
CiteScore
6.10
自引率
4.90%
发文量
40
审稿时长
18 weeks
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