Implementing a Machine Learning Screening Tool for Malnutrition: Insights From Qualitative Research Applicable to Other Machine Learning-Based Clinical Decision Support Systems.

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES JMIR Formative Research Pub Date : 2023-07-13 DOI:10.2196/42262
Melanie Besculides, Madhu Mazumdar, Sydney Phlegar, Robert Freeman, Sara Wilson, Himanshu Joshi, Arash Kia, Ksenia Gorbenko
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Abstract

Background: Machine learning (ML)-based clinical decision support systems (CDSS) are popular in clinical practice settings but are often criticized for being limited in usability, interpretability, and effectiveness. Evaluating the implementation of ML-based CDSS is critical to ensure CDSS is acceptable and useful to clinicians and helps them deliver high-quality health care. Malnutrition is a common and underdiagnosed condition among hospital patients, which can have serious adverse impacts. Early identification and treatment of malnutrition are important.

Objective: This study aims to evaluate the implementation of an ML tool, Malnutrition Universal Screening Tool (MUST)-Plus, that predicts hospital patients at high risk for malnutrition and identify best implementation practices applicable to this and other ML-based CDSS.

Methods: We conducted a qualitative postimplementation evaluation using in-depth interviews with registered dietitians (RDs) who use MUST-Plus output in their everyday work. After coding the data, we mapped emergent themes onto select domains of the nonadoption, abandonment, scale-up, spread, and sustainability (NASSS) framework.

Results: We interviewed 17 of the 24 RDs approached (71%), representing 37% of those who use MUST-Plus output. Several themes emerged: (1) enhancements to the tool were made to improve accuracy and usability; (2) MUST-Plus helped identify patients that would not otherwise be seen; perceived usefulness was highest in the original site; (3) perceived accuracy varied by respondent and site; (4) RDs valued autonomy in prioritizing patients; (5) depth of tool understanding varied by hospital and level; (6) MUST-Plus was integrated into workflows and electronic health records; and (7) RDs expressed a desire to eventually have 1 automated screener.

Conclusions: Our findings suggest that continuous involvement of stakeholders at new sites given staff turnover is vital to ensure buy-in. Qualitative research can help identify the potential bias of ML tools and should be widely used to ensure health equity. Ongoing collaboration among CDSS developers, data scientists, and clinical providers may help refine CDSS for optimal use and improve the acceptability of CDSS in the clinical context.

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实施营养不良的机器学习筛选工具:来自定性研究的见解,适用于其他基于机器学习的临床决策支持系统。
背景:基于机器学习(ML)的临床决策支持系统(CDSS)在临床实践环境中很受欢迎,但经常被批评在可用性、可解释性和有效性方面受到限制。评估基于ml的CDSS的实施情况对于确保CDSS对临床医生是可接受和有用的,并帮助他们提供高质量的医疗保健至关重要。营养不良是医院病人中常见但未被确诊的病症,可能会产生严重的不良影响。早期发现和治疗营养不良是很重要的。目的:本研究旨在评估营养不良普遍筛查工具(MUST -Plus)的实施情况,该工具可预测医院营养不良高风险患者,并确定适用于该工具和其他基于ML的CDSS的最佳实施实践。方法:我们对在日常工作中使用MUST-Plus输出的注册营养师(rd)进行了深入访谈,进行了定性的实施后评估。在对数据进行编码后,我们将紧急主题映射到不采用、放弃、扩大、传播和可持续性(NASSS)框架的选定领域。结果:我们采访了24个rd中的17个(71%),代表了使用MUST-Plus输出的37%。出现了几个主题:(1)对工具进行了增强,以提高准确性和可用性;(2) MUST-Plus有助于识别原本不会被发现的患者;感知有用性在原址最高;(3)感知准确性因被调查者和地点而异;(4)研发人员重视患者优先排序的自主权;(5)不同医院、不同层次对工具的理解程度不同;(6)将MUST-Plus集成到工作流程和电子健康记录中;(7)研发人员表示希望最终拥有1台自动筛选器。结论:我们的研究结果表明,考虑到员工流动,利益相关者在新站点的持续参与对于确保购买至关重要。定性研究可以帮助识别机器学习工具的潜在偏见,应该广泛使用,以确保健康公平。CDSS开发人员、数据科学家和临床提供者之间的持续合作可能有助于优化CDSS的使用,并提高CDSS在临床环境中的可接受性。
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JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
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2.70
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9.10%
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579
审稿时长
12 weeks
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