Spyridonos Panagiota, Gaitanis Georgios, Likas Aristidis, Seretis Konstantinos, Moschovos Vasileios, Feldmeyer Laurence, Heidemeyer Kristine, Zampeta Athanasia, Bassukas Ioannis D
Department of Medical Physics, Faculty of Medicine, School of Health Sciences, University of Ioannina, 45110 Ioannina, Greece.
Department of Skin and Venereal Diseases, Faculty of Medicine, School of Health Sciences, University of Ioannina, 45110 Ioannina, Greece.
Cancers (Basel). 2023 Jul 8;15(14):3539. doi: 10.3390/cancers15143539.
Efficient management of basal cell carcinomas (BCC) requires reliable assessments of both tumors and post-treatment scars. We aimed to estimate image similarity metrics that account for BCC's perceptual color and texture deviation from perilesional skin. In total, 176 clinical photographs of BCC were assessed by six physicians using a visual deviation scale. Internal consistency and inter-rater agreement were estimated using Cronbach's α, weighted Gwet's AC2, and quadratic Cohen's kappa. The mean visual scores were used to validate a range of similarity metrics employing different color spaces, distances, and image embeddings from a pre-trained VGG16 neural network. The calculated similarities were transformed into discrete values using ordinal logistic regression models. The Bray-Curtis distance in the YIQ color model and rectified embeddings from the 'fc6' layer minimized the mean squared error and demonstrated strong performance in representing perceptual similarities. Box plot analysis and the Wilcoxon rank-sum test were used to visualize and compare the levels of agreement, conducted on a random validation round between the two groups: 'Human-System' and 'Human-Human.' The proposed metrics were comparable in terms of internal consistency and agreement with human raters. The findings suggest that the proposed metrics offer a robust and cost-effective approach to monitoring BCC treatment outcomes in clinical settings.
基底细胞癌(BCC)的有效管理需要对肿瘤和治疗后的疤痕进行可靠评估。我们旨在估计图像相似性指标,该指标考虑了BCC与病变周围皮肤在感知颜色和纹理上的偏差。共有176张BCC临床照片由六位医生使用视觉偏差量表进行评估。使用Cronbach's α、加权Gwet's AC2和二次Cohen's kappa估计内部一致性和评分者间一致性。平均视觉分数用于验证一系列使用不同颜色空间、距离和来自预训练VGG16神经网络的图像嵌入的相似性指标。使用序数逻辑回归模型将计算出的相似性转换为离散值。YIQ颜色模型中的Bray-Curtis距离和来自“fc6”层的校正嵌入使均方误差最小化,并在表示感知相似性方面表现出强大性能。箱线图分析和Wilcoxon秩和检验用于可视化和比较两组(“人类-系统”和“人类-人类”)在随机验证轮次中的一致性水平。所提出的指标在内部一致性和与人类评分者的一致性方面具有可比性。研究结果表明,所提出的指标为临床环境中监测BCC治疗结果提供了一种稳健且具有成本效益的方法。