Marosán-Vilimszky Péter, Szalai Klára, Horváth András, Csabai Domonkos, Füzesi Krisztián, Csány Gergely, Gyöngy Miklós
Faculty of Information Technology and Bionics, Pázmány Péter Catholic University, Práter u. 50/A, 1083 Budapest, Hungary.
Dermus Kft., Sopron út 64, 1116 Budapest, Hungary.
Diagnostics (Basel). 2021 Jul 3;11(7):1207. doi: 10.3390/diagnostics11071207.
The growing incidence of skin cancer makes computer-aided diagnosis tools for this group of diseases increasingly important. The use of ultrasound has the potential to complement information from optical dermoscopy. The current work presents a fully automatic classification framework utilizing fully-automated (FA) segmentation and compares it with classification using two semi-automated (SA) segmentation methods. Ultrasound recordings were taken from a total of 310 lesions (70 melanoma, 130 basal cell carcinoma and 110 benign nevi). A support vector machine (SVM) model was trained on 62 features, with ten-fold cross-validation. Six classification tasks were considered, namely all the possible permutations of one class versus one or two remaining classes. The receiver operating characteristic () area under the curve () as well as the accuracy () were measured. The best classification was obtained for the classification of nevi from cancerous lesions (melanoma, basal cell carcinoma), with s of over 90% and s of over 85% obtained with all segmentation methods. Previous works have either not implemented FA ultrasound-based skin cancer classification (making diagnosis more lengthy and operator-dependent), or are unclear in their classification results. Furthermore, the current work is the first to assess the effect of implementing FA instead of SA classification, with FA classification never degrading performance (in terms of or ) by more than 5%.
皮肤癌发病率的不断上升使得针对这类疾病的计算机辅助诊断工具变得越来越重要。超声的使用有可能补充光学皮肤镜检查的信息。当前的工作提出了一个利用全自动(FA)分割的全自动分类框架,并将其与使用两种半自动(SA)分割方法的分类进行比较。共采集了310个病变(70个黑色素瘤、130个基底细胞癌和110个良性痣)的超声记录。使用62个特征训练支持向量机(SVM)模型,并进行十折交叉验证。考虑了六个分类任务,即一类与一个或两个其余类别的所有可能排列。测量了曲线下面积(AUC)以及准确率(Acc)。对于从癌性病变(黑色素瘤、基底细胞癌)中分类痣,所有分割方法获得的AUC超过90%,Acc超过85%,得到了最佳分类。以前的工作要么没有实现基于FA超声的皮肤癌分类(使得诊断更加冗长且依赖操作人员),要么分类结果不明确。此外,当前的工作是首次评估实施FA而非SA分类的效果,FA分类在性能(AUC或Acc方面)下降从未超过5%。