Evaluating Active Learning Strategies for Automated Classification of Patient Safety Event Reports in Hospitals.

Shehnaz Islam, Myrtede Alfred, Dulaney Wilson, Eldan Cohen
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Abstract

Patient safety event (PSE) reports, which document incidents that compromise patient safety, are fundamental for improving healthcare quality. Accurate classification of these reports is crucial for analyzing trends, guiding interventions, and supporting organizational learning. However, this process is labor-intensive due to the high volume and complex taxonomy of reports. Previous work has shown that machine learning (ML) can automate PSE report classification; however, its success depends on large manually-labeled datasets. This study leverages Active Learning (AL) strategies with human expertise to streamline PSE-report labeling. We utilize pool-based AL sampling to selectively query reports for human annotation, developing a robust dataset for training ML classifiers. Our experiments demonstrate that AL significantly outperforms random sampling in accuracy across various text representations, reducing the need for labeled samples by 24% to 69%. Based on these findings, we suggest that incorporating AL strategies into PSE-report labeling can effectively reduce manual workload while maintaining high classification accuracy.

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评估医院患者安全事件报告自动分类的主动学习策略。
患者安全事件(PSE)报告记录危及患者安全的事件,是提高医疗保健质量的基础。这些报告的准确分类对于分析趋势、指导干预和支持组织学习至关重要。然而,由于报告的大量和复杂的分类,这个过程是劳动密集型的。以前的工作表明,机器学习(ML)可以自动进行PSE报告分类;然而,它的成功依赖于大量人工标记的数据集。本研究利用主动学习(AL)策略与人类的专业知识来简化pse报告标签。我们利用基于池的人工智能采样来选择性地查询人类注释报告,为训练ML分类器开发了一个健壮的数据集。我们的实验表明,人工智能在各种文本表示的准确性上明显优于随机抽样,将标记样本的需求减少了24%到69%。基于这些发现,我们认为将人工智能策略纳入pse报告标注可以有效减少人工工作量,同时保持较高的分类精度。
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