Manousaki Aglaia G, Manios Andreas G, Tsompanaki Evgenia I, Panayiotides John G, Tsiftsis Dimitris D, Kostaki Anastasia K, Tosca Androniki D
Department of Surgical Oncology, School of Medicine, University of Crete, Greece.
Int J Dermatol. 2006 Apr;45(4):402-10. doi: 10.1111/j.1365-4632.2006.02726.x.
For early melanoma diagnosis, experienced dermatologists have an accuracy of 64-80% using clinical diagnostic criteria, usually the ABCD rule, while automated melanoma diagnosis systems are still considered to be experimental and serve as adjuncts to the naked-eye expert prediction. In an attempt to aid in early melanoma diagnosis, we developed an image processing program with the aim to discriminate melanoma from melanocytic nevi, establishing a mathematical model to come up with a melanoma probability.
Digital images of 132 melanocytic skin lesions (23 melanomas and 109 melanocytic nevi) were studied in features of geometry, color, and color texture. A total of 43 variables were studied for all lesions, e.g., geometry, color texture, sharpness of border, and color variables. Univariate logistic regression analysis followed by "-2 log likelihood" test and Spearman's rank correlation coefficient were used to eliminate inappropriate variables, as the presence of multi-collinearity among variables could cause severe problems in any stepwise variable selection method. Initially, "-2 log likelihood" and nonparametric Spearman's rho picked five variables to be included in a multivariate model of prediction. The five-variable model was then reduced to three variables and the performance of each model was tested. The "jackknife" method was performed in order to validate the model with the three variables and its accuracy was weighed vs. the five-variable model by receiver-operating characteristics (ROC) curve plotting. It was concluded that the reduced model did not compromise discriminatory power.
Not all variables contributed much to the model, therefore they were progressively eliminated and the model was finally reduced to three covariates of significance. A predictive equation was calculated, incorporating parameters of geometry, color, and color texture as independent covariates for the prediction of melanoma. The proposed model provides melanoma probability with a 60.9% sensitivity and 95.4% specificity of prediction, an overall accuracy of 89.4% (probability level 0.5), and 8% false-negative results.
Through a digital image processing system and the development of a mathematical model of prediction, discrimination between melanomas and melanocytic nevi seems feasible with a high rate of accuracy using multivariate logistic regression analysis. The proposed model is an alternative method to aid in early melanoma diagnosis. Expensive and sophisticated equipment is not required and it can be easily implemented in a reasonably priced portable programmable computer, in order to predict previously undiagnosed skin melanoma before histopathology results confirm diagnosis.
对于早期黑色素瘤诊断,经验丰富的皮肤科医生使用临床诊断标准(通常是ABCD规则)的准确率为64 - 80%,而自动化黑色素瘤诊断系统仍被认为处于实验阶段,仅作为肉眼专家预测的辅助手段。为了辅助早期黑色素瘤诊断,我们开发了一个图像处理程序,旨在区分黑色素瘤和黑素细胞痣,并建立一个数学模型以得出黑色素瘤的概率。
研究了132个黑素细胞性皮肤病变(23个黑色素瘤和109个黑素细胞痣)的数字图像的几何、颜色和颜色纹理特征。对所有病变共研究了43个变量,例如几何形状、颜色纹理、边界清晰度和颜色变量。采用单因素逻辑回归分析,随后进行“-2对数似然”检验和Spearman等级相关系数分析以消除不合适的变量,因为变量之间的多重共线性在任何逐步变量选择方法中都可能导致严重问题。最初,“-2对数似然”和非参数Spearman秩相关系数选择了五个变量纳入多变量预测模型。然后将五变量模型简化为三变量模型,并对每个模型的性能进行测试。采用“留一法”对三变量模型进行验证,并通过绘制受试者工作特征(ROC)曲线将其准确性与五变量模型进行比较。得出结论,简化后的模型并未损害判别能力。
并非所有变量对模型都有很大贡献,因此逐步将它们剔除,最终模型简化为三个具有显著意义的协变量。计算了一个预测方程,将几何、颜色和颜色纹理参数作为独立协变量纳入其中以预测黑色素瘤。所提出的模型预测黑色素瘤概率的敏感性为60.9%,特异性为95.4%,总体准确率为89.4%(概率水平为0.5),假阴性结果为8%。
通过数字图像处理系统和开发预测数学模型,使用多变量逻辑回归分析以高准确率区分黑色素瘤和黑素细胞痣似乎是可行的。所提出的模型是辅助早期黑色素瘤诊断的一种替代方法。不需要昂贵和复杂的设备,并且可以很容易地在价格合理的便携式可编程计算机上实现,以便在组织病理学结果确认诊断之前预测先前未诊断的皮肤黑色素瘤。