在临床决策支持系统中使用估算:临床医生心血管风险管理试点小故事研究。

IF 3.9 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS European heart journal. Digital health Pub Date : 2024-08-10 eCollection Date: 2024-09-01 DOI:10.1093/ehjdh/ztae058
Saskia Haitjema, Steven W J Nijman, Inge Verkouter, John J L Jacobs, Folkert W Asselbergs, Karel G M Moons, Ines Beekers, Thomas P A Debray, Michiel L Bots
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引用次数: 0

摘要

目的:在临床护理中使用预测模型的一个主要挑战是数据缺失。实时估算可以缓解这一问题。然而,临床医生在多大程度上接受这一解决方案仍是未知数。我们旨在评估临床决策支持系统(CDSS)中缺失患者数据实时估算的接受程度,包括单个患者的 10 年心血管绝对风险:我们利用实时估算方法联合建模估算(JMI)对现有的 CDSS 进行了小样本研究。我们邀请了 17 位临床医生通过三个不同的小故事使用 CDSS,描述了潜在的使用案例(缺失数据,无风险估计;估算值,基于估算数据的风险估计;完整信息)。在每个小故事中,都引入了缺失数据,以模拟临床实践中可能出现的情况。最终用户的接受度根据三个不同的轴进行评估:临床真实性、舒适性和临床附加值。总体而言,估算的预测值在临床上是合理的,符合预期。然而,对于二元变量,使用概率标度来表示不确定性被认为是不方便的。推算风险预测的舒适度较低,置信区间过宽,无法做出可靠的决策。临床医生认为,在临床实践中,当用于教育、研究或信息目的时,使用 JMI 有附加价值:结论:在 CDSS 中通过 JMI 处理缺失数据是有用的,但需要更准确的推断才能让临床医生放心地将其用于常规护理。只有这样,CDSS 才能通过改善决策创造临床价值。
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The use of imputation in clinical decision support systems: a cardiovascular risk management pilot vignette study among clinicians.

Aims: A major challenge of the use of prediction models in clinical care is missing data. Real-time imputation may alleviate this. However, to what extent clinicians accept this solution remains unknown. We aimed to assess acceptance of real-time imputation for missing patient data in a clinical decision support system (CDSS) including 10-year cardiovascular absolute risk for the individual patient.

Methods and results: We performed a vignette study extending an existing CDSS with the real-time imputation method joint modelling imputation (JMI). We included 17 clinicians to use the CDSS with three different vignettes, describing potential use cases (missing data, no risk estimate; imputed values, risk estimate based on imputed data; complete information). In each vignette, missing data were introduced to mimic a situation as could occur in clinical practice. Acceptance of end-users was assessed on three different axes: clinical realism, comfortableness, and added clinical value. Overall, the imputed predictor values were found to be clinically reasonable and according to the expectations. However, for binary variables, use of a probability scale to express uncertainty was deemed inconvenient. The perceived comfortableness with imputed risk prediction was low, and confidence intervals were deemed too wide for reliable decision-making. The clinicians acknowledged added value for using JMI in clinical practice when used for educational, research, or informative purposes.

Conclusion: Handling missing data in CDSS via JMI is useful, but more accurate imputations are needed to generate comfort in clinicians for use in routine care. Only then can CDSS create clinical value by improving decision-making.

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