Weakly Supervised Classification of Vital Sign Alerts as Real or Artifact.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2023-04-29 eCollection Date: 2022-01-01
Arnab Dey, Mononito Goswami, Joo Heung Yoon, Gilles Clermont, Michael Pinsky, Marilyn Hravnak, Artur Dubrawski
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Abstract

A significant proportion of clinical physiologic monitoring alarms are false. This often leads to alarm fatigue in clinical personnel, inevitably compromising patient safety. To combat this issue, researchers have attempted to build Machine Learning (ML) models capable of accurately adjudicating Vital Sign (VS) alerts raised at the bedside of hemodynamically monitored patients as real or artifact. Previous studies have utilized supervised ML techniques that require substantial amounts of hand-labeled data. However, manually harvesting such data can be costly, time-consuming, and mundane, and is a key factor limiting the widespread adoption of ML in healthcare (HC). Instead, we explore the use of multiple, individually imperfect heuristics to automatically assign probabilistic labels to unlabeled training data using weak supervision. Our weakly supervised models perform competitively with traditional supervised techniques and require less involvement from domain experts, demonstrating their use as efficient and practical alternatives to supervised learning in HC applications of ML.

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生命体征警报的弱监督分类是真实的还是虚假的。
很大一部分临床生理监测警报是错误的。这通常会导致临床人员出现警报疲劳,不可避免地会危及患者安全。为了解决这个问题,研究人员试图建立机器学习(ML)模型,能够准确地将血液动力学监测患者床边发出的生命体征(VS)警报判断为真实警报或伪警报。先前的研究已经使用了监督ML技术,该技术需要大量的手工标记数据。然而,手动获取此类数据可能成本高昂、耗时且平凡,是限制ML在医疗保健(HC)中广泛采用的关键因素。相反,我们探索使用多个单独不完美的启发式方法,使用弱监督将概率标签自动分配给未标记的训练数据。我们的弱监督模型与传统的监督技术相比具有竞争力,并且需要较少的领域专家参与,这表明它们在ML的HC应用中是监督学习的有效和实用的替代方案。
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