Learning to represent healthcare providers knowledge of neonatal emergency care: findings from a smartphone-based learning intervention targeting clinicians from LMICs

T. Tuti, C. Paton, N. Winters
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引用次数: 5

Abstract

Modelling healthcare providers' knowledge while they are gaining new concepts is an important step towards supporting self-regulated personalised learning at scale. This is especially important if we are to address health workforce skills development and enhance the subsequent quality of care patients receive in the Global South, where a huge skills gap exists. Rich data about healthcare providers' learning can be captured by their responses to close-ended problems within conjunctive solution space -such as clinical training scenarios for emergency care delivery- on smartphone-based learning interventions which are being proposed as a solution for reducing the healthcare skills gap in this context. Together with sequential data detailing a learner's progress while they are solving a learning task, this provides useful insights into their learning behaviour. Predicting learning or forgetting curves from representations of healthcare providers knowledge is a difficult task, but recent promising machine learning advances have produced techniques capable of learning knowledge representations and overcoming this challenge. In this study, we train a Long Short-Term Memory neural network for predicting learners' future performance and forgetting curves by feeding it sequence embeddings of learning task attempts from healthcare providers from Global South. From this training, the model captures nuanced representations of a healthcare provider's clinical knowledge and their patterns of learning behaviours, predicting their future performance with high accuracy. More significantly, by differentiating reduced performance based on spaced learning, the model can help provide timely warning that helps support healthcare providers to reinforce their self-regulated learning while providing a basis for personalised instructional support to aid improved clinical outcomes from their professional practices.
学习代表医疗保健提供者对新生儿急诊护理的知识:针对低收入和中等收入国家临床医生的基于智能手机的学习干预的研究结果
在医疗保健提供者获得新概念的同时,对他们的知识进行建模,是支持大规模自我调节的个性化学习的重要一步。如果我们要在存在巨大技能差距的全球南方解决卫生人力技能发展问题并提高患者随后获得的护理质量,这一点尤为重要。关于医疗保健提供者学习的丰富数据可以通过他们对联合解决方案空间(例如紧急护理提供的临床培训场景)中封闭式问题的反应来捕获,这些问题是基于智能手机的学习干预措施,正在被提议作为减少这种情况下医疗保健技能差距的解决方案。在学习者解决学习任务时,与详细描述学习者进度的连续数据一起,这为他们的学习行为提供了有用的见解。从医疗保健提供者的知识表示中预测学习或遗忘曲线是一项艰巨的任务,但最近有前途的机器学习进展已经产生了能够学习知识表示并克服这一挑战的技术。在这项研究中,我们训练了一个长短期记忆神经网络,通过输入来自全球南方医疗保健提供者的学习任务尝试的序列嵌入来预测学习者的未来表现和遗忘曲线。通过这种训练,该模型捕获了医疗保健提供者的临床知识及其学习行为模式的细微表示,从而高精度地预测了他们未来的表现。更重要的是,通过区分基于间隔学习的绩效下降,该模型可以帮助提供及时的警告,帮助支持医疗保健提供者加强他们的自我调节学习,同时为个性化教学支持提供基础,以帮助他们从专业实践中改善临床结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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