Institute for Innovations in Medical Education, NYU Grossman School of Medicine, 550 First Avenue, MSB G109, New York, NY, 10016, USA.
Department of Applied Statistics, Social Science, and the Humanities, New York University, New York, NY, USA.
Adv Health Sci Educ Theory Pract. 2021 Aug;26(3):881-912. doi: 10.1007/s10459-021-10027-0. Epub 2021 Mar 1.
Visual diagnosis of radiographs, histology and electrocardiograms lends itself to deliberate practice, facilitated by large online banks of cases. Which cases to supply to which learners in which order is still to be worked out, with there being considerable potential for adapting the learning. Advances in statistical modeling, based on an accumulating learning curve, offer methods for more effectively pairing learners with cases of known calibrations. Using demonstration radiograph and electrocardiogram datasets, the advantages of moving from traditional regression to multilevel methods for modeling growth in ability or performance are demonstrated, with a final step of integrating case-level item-response information based on diagnostic grouping. This produces more precise individual-level estimates that can eventually support learner adaptive case selection. The progressive increase in model sophistication is not simply statistical but rather brings the models into alignment with core learning principles including the importance of taking into account individual differences in baseline skill and learning rate as well as the differential interaction with cases of varying diagnosis and difficulty. The developed approach can thus give researchers and educators a better basis on which to anticipate learners' pathways and individually adapt their future learning.
X 光片、组织学和心电图的视觉诊断适合刻意练习,大量在线病例库为此提供了便利。目前仍需要解决向哪些学习者提供哪些病例以及按什么顺序提供的问题,因为这方面有很大的调整学习的潜力。基于累积学习曲线的统计建模的进步为更有效地将学习者与具有已知校准的病例配对提供了方法。使用演示 X 光片和心电图数据集,展示了从传统回归到用于建模能力或表现增长的多层次方法的优势,最后一步是根据诊断分组整合基于病例级别的项目反应信息。这会产生更精确的个体水平估计值,最终可以支持学习者自适应病例选择。模型复杂度的逐步提高不仅是统计上的,而是使模型与核心学习原则保持一致,包括考虑到基线技能和学习速度的个体差异以及与不同诊断和难度的病例的差异交互的重要性。因此,所开发的方法可以为研究人员和教育工作者提供更好的基础,以便他们预测学习者的路径并根据学习者的个体情况调整他们未来的学习。