可视模拟标度
疤痕
可靠性(半导体)
等级间信度
表面有效性
医学
计算机科学
外科
数学
心理测量学
统计
评定量表
量子力学
临床心理学
物理
功率(物理)
作者
Damian Micomonaco,Kevin Fung,Gillian Mount,Jason Franklin,John Yoo,Michael G. Brandt,Corey C. Moore,Philip C. Doyle
标识
DOI:10.2310/7070.2008.oa0212
摘要
Objective Clinical scar assessment lacks standardized methodology and consensus on the most appropriate evaluation instrument. This study empirically evaluated whether area scars could be validly assessed by naive observers with the objective to develop and validate a novel multidimensional visual analogue scale (VAS) for the assessment of area scars. Methods Standardized digital photographs of radial forearm free flap (RFFF) donor sites were obtained. Naive observers evaluated the images in three sequential psychophysical experiments, which led to the development of the new scar scale. These experiments involved initial evaluation of four dimensions (pigmentation, vascularity, observer comfort, acceptability) using a paired comparison (PC) paradigm and correlation with ratings of overall severity using a VAS, and initial VAS test phase followed by formal debriefing, and, subsequently, evaluation of a VAS for the four dimensions in addition to contour. Validation involved determination of intra- and interrater reliability and correlational analysis. Results Across all three experiments, 56 observers evaluated 101 images, generating 12 720 observations for analysis. PC data demonstrated that observers could assess scars with high reliability and internal consistency for all dimensions (> 95%). Overall (VAS) severity correlated highly with all dimensions, including contour. The new VAS yielded high levels of correlation (r = .72-.98, p Conclusion Comprehensive VAS analysis demonstrates high reliability in mirroring PC results for multiple dimensions of area scars. These data support our novel multidimensional VAS method as a valid, reliable, simple, and time-efficient instrument for clinical and research use. We introduce the Western Scar Index as a new measurement tool with many potential applications.
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