División de Investigación en Ingeniería Médica, Instituto Nacional de Rehabilitación "Luis Guillermo Ibarra Ibarra", Calz. México-Xochimilco No. 289, Col. Arenal de Guadalupe, Tlalpan, C.P. 14389 Ciudad de México, Mexico.
Servicio de Rehabilitación Cardiaca, Instituto Nacional de Rehabilitación "Luis Guillermo Ibarra Ibarra", Calz. México-Xochimilco No. 289, Col. Arenal de Guadalupe, Tlalpan, C.P. 14389 Ciudad de México, Mexico.
J Healthc Eng. 2018 Dec 16;2018:9397105. doi: 10.1155/2018/9397105. eCollection 2018.
Diabetic skin manifestations, previous to ulcers and wounds, are not highly accounted as part of diagnosis even when they represent the first symptom of vascular damage and are present in up to 70% of patients with diabetes mellitus type II. Here, an application for skin macules characterization based on a three-stage segmentation and characterization algorithm used to classify vascular, petechiae, trophic changes, and trauma macules from digital photographs of the lower limbs is presented. First, in order to find the , a logical multiplication is performed on two skin masks obtained from color space transformations; dynamic thresholds are stabilised to self-adjust to a variety of skin tones. Then, in order to locate the , illumination enhancement is performed using a chromatic model color space, followed by a principal component analysis gray-scale transformation. Finally, characteristics of each type of macule are considered and classified; (area, axes, perimeter, and solidity), , and a set of (red, green, blue, and brown) are proposed as a measure to obviate skin color differences among subjects. The values calculated show differences between macules with a statistical significance, which agree with the physician's diagnosis. Later, macule properties are fed to an artificial neural network classifier, which proved a 97.5% accuracy, to differentiate between them. Characterization is useful in order to track macule changes and development along time, provides meaningful information to provide early treatments, and offers support in the prevention of amputations due to diabetic feet. A graphical user interface was designed to show the properties of the macules; this application could be the background of a future for educational (i.e., untrained physicians) and preventive assistance technology purposes.
糖尿病皮肤表现,在溃疡和伤口之前,即使它们代表血管损伤的第一个症状,并且在高达 70%的 2 型糖尿病患者中存在,也没有被高度认为是诊断的一部分。在这里,提出了一种基于三阶段分割和特征化算法的皮肤斑特征描述应用程序,用于对下肢数字照片中的血管斑、瘀点、营养变化和创伤斑进行分类。首先,为了找到 ,对从颜色空间变换获得的两个皮肤掩模执行逻辑乘法;动态阈值被稳定化以自适应各种肤色。然后,为了定位 ,使用颜色模型颜色空间进行光照增强,然后进行主成分分析灰度变换。最后,考虑并分类每种类型的斑的特征; (面积、轴、周长和实心度)、 (颜色强度)和一组 (红、绿、蓝和棕)作为消除受试者之间肤色差异的度量。计算出的值显示出斑之间存在统计学意义的差异,这与医生的诊断一致。随后,将斑的特性输入到人工神经网络分类器中,该分类器的准确率达到 97.5%,以对它们进行区分。特征描述有助于跟踪斑随时间的变化和发展,提供有意义的信息以进行早期治疗,并有助于预防因糖尿病足而截肢。设计了一个图形用户界面来显示斑的特性;该应用程序可以作为未来用于教育(即未经训练的医生)和预防辅助技术目的的 的背景。