Invention of automated numerical algorithm adopting binarization for the evaluation of scalp hair coverage: An image analysis providing a substitute for phototrichogram and global photography assessment for hair diseases

IF 4.6
Masaya Takagi , Misaki Kinoshita-Ise , Masahiro Fukuyama , Saori Nishikawa , Mami Miyoshi , Takaki Sugimoto , Masako Yamazaki , Masashi Ogo , Manabu Ohyama
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引用次数: 0

Abstract

Background

The efficacy of therapeutic modalities for hair disease can be evaluated globally by photo assessment and more precisely by phototrichogram (PTG). However, the latter procedure is laborious, time consuming, subject to inter-observer variation, and requires hair clipping.

Objective

To establish an automated and patient/investigator friendly methodology enabling quantitative hair amount evaluation for daily clinical practice.

Methods

A novel automated numerical algorithm (aNA) adopting digital image binarization (i.e., black and white color conversion) was invented to evaluate hair coverage and measure PTG parameters in scalp images. Step-by-step improvement of aNA was attempted through comparative analyses of the data obtained respectively by the novel approach and conventional PTG/global photography assessment (GPA).

Results

For measuring scalp hair coverage, the initial version of aNA generally agreed with the cumulative hair diameter as assessed using PTG, showing a coefficient of 0.60. However, these outcomes were influenced by the angle of hair near the parting line. By integrating an angle compensation formula, the standard deviation of aNA data decreased from 5.7% to 1.2%. Consequently, the coefficient of determination for hair coverage calculated using the modified aNA and cumulative hair diameter assessed by PTG increased to 0.90. Furthermore, the change in hair coverage as determined by the modified aNA protocol correlated well with changes in the GPA score of images obtained using clinical trials.

Conclusion

The novel aNA method provides a valuable tool for enabling simple and accurate evaluation of hair growth and volume for clinical trials and for treatment of hair disease.

采用二值化评估头皮毛发覆盖率的自动数值算法的发明:一种图像分析,为毛发疾病的光富集图和全局摄影评估提供了替代品。
背景:毛发疾病的治疗方法的疗效可以通过照片评估进行全球评估,更准确地说可以通过光富集图(PTG)进行评估。然而,后一种程序费力、耗时、受观察者之间变化的影响,并且需要修剪头发。目的:建立一种自动化、患者/研究者友好的方法,为日常临床实践提供定量毛发量评估。方法:提出一种新的采用数字图像二值化(即黑白颜色转换)的自动数值算法(aNA)来评估头皮图像中的头发覆盖率和测量PTG参数。通过对新方法和传统PTG/全局摄影评估(GPA)分别获得的数据进行比较分析,尝试逐步改善aNA。结果:对于测量头皮毛发覆盖率,aNA的初始版本通常与使用PTG评估的累积毛发直径一致,显示系数为0.60。然而,这些结果受到分模线附近头发角度的影响。通过整合角度补偿公式,aNA数据的标准偏差从5.7%下降到1.2%。因此,使用修正后的aNA和PTG评估的累积头发直径计算的头发覆盖率的确定系数增加到0.90。此外,由改良的aNA方案确定的头发覆盖率的变化与使用临床试验获得的图像的GPA得分的变化良好相关。结论:新的aNA方法为临床试验和头发疾病的治疗提供了一种有价值的工具,可以简单准确地评估头发的生长和体积。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
7.60
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