Rehabilitation Research Laboratory 2rLab, Department of Business Economics, Health and Social Care, University of Applied Sciences and Arts of Southern Switzerland, Via Violino 11, Manno, 6928, Switzerland, 41 586666442.
Institute of Systems and Technologies for Sustainable Production, University of Applied Sciences and Arts of Southern Switzerland, Lugano, Switzerland.
JMIR Mhealth Uhealth. 2024 Aug 27;12:e53119. doi: 10.2196/53119.
Understanding the causes and mechanisms underlying musculoskeletal pain is crucial for developing effective treatments and improving patient outcomes. Self-report measures, such as the Pain Drawing Scale, involve individuals rating their level of pain on a scale. In this technique, individuals color the area where they experience pain, and the resulting picture is rated based on the depicted pain intensity. Analyzing pain drawings (PDs) typically involves measuring the size of the pain region. There are several studies focusing on assessing the clinical use of PDs, and now, with the introduction of digital PDs, the usability and reliability of these platforms need validation. Comparative studies between traditional and digital PDs have shown good agreement and reliability. The evolution of PD acquisition over the last 2 decades mirrors the commercialization of digital technologies. However, the pen-on-paper approach seems to be more accepted by patients, but there is currently no standardized method for scanning PDs.
The objective of this study was to evaluate the accuracy of PD analysis performed by a web platform using various digital scanners. The primary goal was to demonstrate that simple and affordable mobile devices can be used to acquire PDs without losing important information.
Two sets of PDs were generated: one with the addition of 216 colored circles and another composed of various red shapes distributed randomly on a frontal view body chart of an adult male. These drawings were then printed in color on A4 sheets, including QR codes at the corners in order to allow automatic alignment, and subsequently scanned using different devices and apps. The scanners used were flatbed scanners of different sizes and prices (professional, portable flatbed, and home printer or scanner), smartphones with varying price ranges, and 6 virtual scanner apps. The acquisitions were made under normal light conditions by the same operator.
High-saturation colors, such as red, cyan, magenta, and yellow, were accurately identified by all devices. The percentage error for small, medium, and large pain spots was consistently below 20% for all devices, with smaller values associated with larger areas. In addition, a significant negative correlation was observed between the percentage of error and spot size (R=-0.237; P=.04). The proposed platform proved to be robust and reliable for acquiring paper PDs via a wide range of scanning devices.
This study demonstrates that a web platform can accurately analyze PDs acquired through various digital scanners. The findings support the use of simple and cost-effective mobile devices for PD acquisition without compromising the quality of data. Standardizing the scanning process using the proposed platform can contribute to more efficient and consistent PD analysis in clinical and research settings.
了解肌肉骨骼疼痛的原因和机制对于开发有效的治疗方法和改善患者预后至关重要。自我报告测量方法,如疼痛绘图量表,涉及个体在量表上评定他们的疼痛程度。在这种技术中,个体在他们经历疼痛的区域涂色,然后根据所描绘的疼痛强度对所得到的图片进行评分。分析疼痛绘图(PD)通常涉及测量疼痛区域的大小。有几项研究专注于评估 PD 的临床应用,现在,随着数字 PD 的引入,这些平台的可用性和可靠性需要验证。传统 PD 和数字 PD 之间的比较研究表明它们具有良好的一致性和可靠性。过去 20 年来 PD 获取的演变反映了数字技术的商业化。然而,患者似乎更接受纸笔方式,但目前还没有用于扫描 PD 的标准化方法。
本研究旨在评估使用各种数字扫描仪的网络平台进行 PD 分析的准确性。主要目标是证明简单且经济实惠的移动设备可以用于获取 PD,而不会丢失重要信息。
生成两组 PD:一组添加了 216 个彩色圆圈,另一组由分布在成年男性正面身体图表上的各种红色形状组成。这些绘图随后以彩色打印在 A4 纸上,包括角落的 QR 码以允许自动对齐,然后使用不同的设备和应用程序进行扫描。使用的扫描仪包括不同尺寸和价格的平板扫描仪(专业、便携式平板和家用打印机或扫描仪)、价格范围不同的智能手机,以及 6 个虚拟扫描仪应用程序。由同一位操作员在正常光照条件下进行采集。
所有设备都能准确识别高饱和度颜色,如红色、青色、品红色和黄色。对于所有设备,小、中、大疼痛点的百分比误差始终低于 20%,较小的数值与较大的区域相关。此外,观察到误差百分比与斑点大小之间存在显著负相关(R=-0.237;P=.04)。该平台被证明对于通过各种数字扫描仪获取纸质 PD 具有强大的稳健性和可靠性。
本研究表明,网络平台可以准确分析通过各种数字扫描仪获取的 PD。研究结果支持使用简单且经济实惠的移动设备进行 PD 采集,而不会影响数据质量。使用所提出的平台标准化扫描过程可以促进在临床和研究环境中更高效和一致的 PD 分析。