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一种混合式学习课程在检测和避免医学数据偏倚中的可行性和有效性:一项试点研究。

The feasibility and effectiveness of a blended-learning course for detecting and avoiding bias in medical data: a pilot study.

机构信息

Clinic of Neurology and Neurophysiology, Medical Center - University of Freiburg, Faculty of Medicine, University of Freiburg, Breisacher Str. 64, 79106, Freiburg, Germany.

出版信息

BMC Med Educ. 2020 Nov 7;20(1):408. doi: 10.1186/s12909-020-02332-w.

Abstract

BACKGROUND

Conflicts of interest (COIs), including those arising from interactions with pharmaceutical companies, may lead to bias in medical data. Although medical students are now requesting more education on COIs and bias, they are still not adequately taught during medical school, and few published courses on this topic exist. The objective of our study was therefore to evaluate the feasibility and effectiveness of a blended-learning course for detecting and avoiding bias in medical data, with a special focus on COIs.

METHODS

We developed a blended learning course on bias detection, COIs, and risk communication. It was piloted in the Fall Semester of 2019/2020 using a pre/post-test design. The primary outcome was a gain in bias detection skills, tested by a novel key feature test. Secondary outcomes were (i) skepticism (tested using an attitude questionnaire), (ii) the intention to manage COIs in a professional way so as to avoid bias (tested using a situational judgment test) and (iii) the course evaluation by the students.

RESULTS

Seventeen students participated in the study. The key feature test showed a significant improvement in bias detection skills at post-testing, with a difference in means of 3.1 points (95%-CI: 1.7-4.4, p-value: < 0.001; highest possible score: 16 points). The mean score after the course was 6.21 (SD: 2.62). The attitude questionnaire and situational judgment test also showed an improvement in skepticism and intentions to manage COIs, respectively. Students evaluated the course as having been worthwhile (Median: 5, IQR: 0.75, Likert-Scale 1-6, 6 = fully applicable).

CONCLUSIONS

The blended learning format of the course was feasible and effective. The results suggest a relevant learning gain; however, the low mean score on the key feature test after the course reflects the difficulty of the subject matter. Although a single course has the potential to induce significant short-term improvements in bias detection skills, the complexity of this important subject necessitates its longitudinal integration into medical curricula. This concept should include specific courses such as that presented here as well as an integration of the topic into clinical courses to improve context-related understanding of COIs and medical data bias.

摘要

背景

利益冲突(COI),包括与制药公司互动产生的利益冲突,可能导致医学数据出现偏差。尽管医学生现在要求更多关于 COI 和偏差的教育,但在医学院期间仍未得到充分教授,而且关于这个主题的课程很少。因此,我们的研究目的是评估检测和避免医学数据偏差的混合学习课程的可行性和有效性,特别关注 COI。

方法

我们开发了一个关于偏差检测、COI 和风险沟通的混合学习课程。它于 2019/2020 年秋季学期使用预/后测试设计进行了试点。主要结果是通过新的关键特征测试检测到的偏差检测技能的提高。次要结果是(i)怀疑态度(通过态度问卷测试),(ii)以专业方式管理 COI 以避免偏差的意图(通过情境判断测试测试),以及(iii)学生对课程的评价。

结果

共有 17 名学生参加了这项研究。关键特征测试显示,在测试后,偏差检测技能有显著提高,平均值相差 3.1 分(95%CI:1.7-4.4,p 值:<0.001;最高可能得分为 16 分)。课程结束后的平均得分为 6.21(SD:2.62)。态度问卷和情境判断测试也显示出对怀疑态度和管理 COI 的意图的改善。学生对课程的评价是值得的(中位数:5,IQR:0.75,Likert 量表 1-6,6=完全适用)。

结论

课程的混合学习模式是可行和有效的。结果表明存在相关的学习收益;然而,课程结束后关键特征测试的平均得分较低反映了主题的难度。虽然单一课程有可能在短期内显著提高偏差检测技能,但由于这一重要主题的复杂性,需要将其纳入医学课程的长期整合中。这一概念应包括特定的课程,如本文所呈现的课程,以及将该主题纳入临床课程,以提高对 COI 和医学数据偏差的背景相关理解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e7e8/7648418/a0f7b6f63049/12909_2020_2332_Fig1_HTML.jpg

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