Pellacani G, Grana C, Seidenari S
Department of Dermatology, University of Modena and Reggio Emila, Modena, Italy.
J Eur Acad Dermatol Venereol. 2006 Nov;20(10):1214-9. doi: 10.1111/j.1468-3083.2006.01751.x.
Semiquantitative algorithms were applied to dermoscopic images to improve the clinical diagnosis for melanoma.
The aim of the study was to develop a computerized method for automated quantification of the 'A' (asymmetry) and 'B' (border cut-off) parameters, according to the ABCD rule for dermoscopy, thus reproducing human evaluation.
Three hundred and thirty-one melanocytic lesion images, referring to 113 melanomas and 218 melanocytic nevi, acquired by means of a digital videodermatoscope, were considered. Images were evaluated by two experienced observers and by using computer algorithms developed by us. Clinical evaluation of asymmetry was performed by attributing scores to shape asymmetry and asymmetry of pigment distribution and structures, whereas computer evaluation of shape and pigment distribution asymmetries were based on the assessment of differences in area and lightness in the two halves of the image, respectively. Borders were evaluated both by clinicians and by the computer, by attributing a score to each border segment ending abruptly. Differences between nevus and melanoma values were evaluated using the chi-square test, while Cohen's Kappa index for agreement was employed for the evaluation of the concordance between human and computer.
Pigment distribution asymmetry appears the most striking parameter for melanoma diagnosis both for human and for automated diagnosis. A good concordance between clinicians and computer evaluation was achieved for all asymmetry parameters, and was excellent for border cut-off evaluation.
These algorithms enable a good reproduction of the 'A' and 'B' parameters of the ABCD rule for dermoscopy, and appear useful for diagnostic and learning purposes.
将半定量算法应用于皮肤镜图像以改善黑色素瘤的临床诊断。
本研究的目的是开发一种计算机化方法,根据皮肤镜检查的ABCD规则自动量化“A”(不对称性)和“B”(边界截断)参数,从而重现人类评估。
考虑了通过数字视频皮肤镜获取的331张黑素细胞病变图像,涉及113例黑色素瘤和218例黑素细胞痣。图像由两名经验丰富的观察者以及使用我们开发的计算机算法进行评估。不对称性的临床评估是通过对形状不对称性以及色素分布和结构的不对称性进行评分来进行的,而形状和色素分布不对称性的计算机评估分别基于对图像两半部分面积和亮度差异的评估。临床医生和计算机都通过对每个突然终止的边界段进行评分来评估边界。使用卡方检验评估痣和黑色素瘤值之间的差异,而使用科恩卡帕一致性指数来评估人与计算机之间的一致性。
色素分布不对称性在黑色素瘤诊断中无论是对人类还是对自动诊断而言似乎都是最显著的参数。对于所有不对称性参数,临床医生和计算机评估之间都达成了良好的一致性,对于边界截断评估则非常出色。
这些算法能够很好地重现皮肤镜检查ABCD规则中的“A”和“B”参数,并且似乎对诊断和学习目的有用。