Alsharif Walaa, Davis Michaela, Rainford Louise, Cradock Andrea, McGee Allison
Radiography and Diagnostic Imaging, School of Medicine, University College Dublin, Dublin, Ireland.
Faculty of Applied Medical Sciences, Taibah University, Madinah, Kingdom of Saudi Arabia.
Insights Imaging. 2018 Oct;9(5):721-730. doi: 10.1007/s13244-018-0635-0. Epub 2018 Jun 14.
The aim was to design an app-based eLearning tool to provide radiographers with information about the physical basis of MR artefacts and practical elimination or/and minimisation strategies to optimise image quality, and to evaluate the impact of a smartphone app on radiographers' knowledge.
The study used the comparison-experimental approach (pre- and post-test). Thirty-five MR radiographers independently reviewed a prepared series of MR images (n = 25). The participants were requested to identify image quality related errors, to specify error-correction strategies and to score how confident they were in their responses. Participants were then divided into experimental (n = 19) and control cohorts (n = 16). The app was provided to the experimental cohort for 3 months; after this period both cohorts re-reviewed the MR image datasets and repeated their identification of image quality errors.
The results showed a statistically significant difference between control and experimental cohorts relative to participants' pre- to post-test knowledge level. For the experimental cohort, years of experience, qualification and type of hospital were not associated with radiographer knowledge level and confidence in recognising the presence of an image quality error, naming the error and specifying appropriate correction strategies (p > 0.05).
The study identified the potential of the smartphone app as an effective educational tool to support MR radiographers' knowledge in recognising and characterising MR image quality errors.
• A high level of knowledge to optimise MR image quality is crucial. • Ongoing education in image quality optimisation is required. • The potential role of app as an effective educational tool is identified.
旨在设计一款基于应用程序的电子学习工具,为放射技师提供有关磁共振成像(MR)伪影物理基础的信息以及优化图像质量的实际消除或/和最小化策略,并评估智能手机应用程序对放射技师知识的影响。
本研究采用比较实验法(前后测试)。35名MR放射技师独立审查了一系列准备好的MR图像(n = 25)。要求参与者识别与图像质量相关的错误,指定纠错策略,并对他们回答的信心进行评分。然后将参与者分为实验组(n = 19)和对照组(n = 16)。该应用程序提供给实验组使用3个月;在此期间过后,两个组都重新审查了MR图像数据集,并再次识别图像质量错误。
结果显示,相对于参与者测试前和测试后的知识水平,对照组和实验组之间存在统计学上的显著差异。对于实验组,经验年限、资质和医院类型与放射技师的知识水平以及识别图像质量错误的存在、命名错误和指定适当纠正策略的信心无关(p > 0.05)。
该研究确定了智能手机应用程序作为一种有效的教育工具的潜力,以支持MR放射技师识别和描述MR图像质量错误的知识。
• 高水平的知识对于优化MR图像质量至关重要。• 需要持续进行图像质量优化方面的教育。• 确定了应用程序作为有效教育工具的潜在作用。