Deustotech-LIFE Unit (eVIDA). University of Deusto. Avda. Universidades, 24. 48007 Bilbao, Spain.
Comput Biol Med. 2014 Jan;44:144-57. doi: 10.1016/j.compbiomed.2013.11.002. Epub 2013 Nov 12.
By means of this study, a detection algorithm for the "pigment network" in dermoscopic images is presented, one of the most relevant indicators in the diagnosis of melanoma. The design of the algorithm consists of two blocks. In the first one, a machine learning process is carried out, allowing the generation of a set of rules which, when applied over the image, permit the construction of a mask with the pixels candidates to be part of the pigment network. In the second block, an analysis of the structures over this mask is carried out, searching for those corresponding to the pigment network and making the diagnosis, whether it has pigment network or not, and also generating the mask corresponding to this pattern, if any. The method was tested against a database of 220 images, obtaining 86% sensitivity and 81.67% specificity, which proves the reliability of the algorithm.
本研究提出了一种针对皮肤镜图像中“色素网络”的检测算法,该算法是黑色素瘤诊断中最重要的指标之一。该算法的设计由两个模块组成。在第一个模块中,进行机器学习过程,生成一组规则,将这些规则应用于图像上,可以构建一个包含候选色素网络像素的掩模。在第二个模块中,对这个掩模上的结构进行分析,寻找与色素网络对应的结构,并进行诊断,判断是否存在色素网络,并生成相应的掩模,如果存在的话。该方法在一个包含 220 张图像的数据库上进行了测试,获得了 86%的灵敏度和 81.67%的特异性,证明了该算法的可靠性。