Among the different types of skin cancer, melanoma is considered to be the deadliest and is difficult to treat at advanced stages. Detection of melanoma at earlier stages can lead to reduced mortality rates. Desktop-based computer-aided systems have been developed to assist dermatologists with early diagnosis. However, there is significant interest in developing portable, at-home melanoma diagnostic systems which can assess the risk of cancerous skin lesions. Here, we present a smartphone application that combines image capture capabilities with preprocessing and segmentation to extract the Asymmetry, Border irregularity, Color variegation, and Diameter (ABCD) features of a skin lesion. Using the feature sets, classification of malignancy is achieved through support vector machine classifiers. By using adaptive algorithms in the individual data-processing stages, our approach is made computationally light, user friendly, and reliable in discriminating melanoma cases from benign ones. Images of skin lesions are either captured with the smartphone camera or imported from public datasets. The entire process from image capture to classification runs on an Android smartphone equipped with a detachable 10x lens, and processes an image in less than a second. The overall performance metrics are evaluated on a public database of 200 images with Synthetic Minority Over-sampling Technique (SMOTE) (80% sensitivity, 90% specificity, 88% accuracy, and 0.85 area under curve (AUC)) and without SMOTE (55% sensitivity, 95% specificity, 90% accuracy, and 0.75 AUC). The evaluated performance metrics and computation times are comparable or better than previous methods. This all-inclusive smartphone application is designed to be easy-to-download and easy-to-navigate for the end user, which is imperative for the eventual democratization of such medical diagnostic systems.
翻译:在不同类型的皮肤癌中,乳腺瘤被认为是最致命的,在高级阶段难以治疗。在早期检测乳腺瘤可以降低死亡率。已经开发了基于桌面的计算机辅助系统,以协助皮肤学家进行早期诊断。然而,人们很有兴趣开发便携式的、在家里的乳腺瘤诊断系统,这种系统可以评估癌症皮肤损伤的风险。在这里,我们展示了一个智能手机应用程序,将图像采集能力与预处理和分解结合起来,以提取皮肤精确度、边界不规则、色变异和直径(ABCD)特征可以降低死亡率。利用功能组,通过支持传感机分类来进行恶性肿瘤分类。通过在单个数据处理阶段使用适应性算法,我们的方法可以计算性光度、用户友好和可靠地分析皮肤损伤皮肤损伤的风险。皮肤损伤的图像要么通过智能相机摄取,要么从公共数据集进口(从图像采集到分类过程从第二个智能智能智能智能部恢复到智能部的精确度 95 ), 用户的精确值值值值值值通过支持性能评估 10 的镜像化系统, 。在前的精确度上, 直径直径直径直径, 直径 直径 直到直径 直径 直到直径 直径 直径 直 直到直到直到直到直到直到直到直到直到直到直径 直径直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直到直