利用计算机视觉从皮肤镜图像中检测黑色素瘤皮肤癌

S. Jayatilake, G. U. Ganegoda
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引用次数: 0

摘要

皮肤癌是白种人中最常见的一种癌症,并且每年都在迅速增加。黑色素瘤是最危险的皮肤癌类型,是世界上第17种最常见的癌症类型,占全球所有癌症患者的1.8%。在早期阶段发现黑色素瘤对于治愈患者而不让癌症进一步发展是至关重要的。提出的解决方案是开发一种系统,该系统可以通过分析皮肤镜图像来检测黑色素瘤,同时提取不对称性、边界不规则性、颜色、直径(ABCD)特征和其他在黑色素瘤皮肤病变中更常见的皮肤镜特征。不同的分类方法也正在被评估,以确定哪种分类器与特征提取阶段提取的皮肤镜特征效果最好,以便在诊断黑色素瘤时获得最高的准确性。因此,当给该系统提供皮肤镜图像时,它将输出患者是否被诊断为黑色素瘤,以及模型根据从病变中提取的各种皮肤镜特征进行诊断的诊断结果的置信度。
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Melanoma Skin Cancer Detection from Dermoscopic Images using Computer Vision
Skin cancer is a form of cancer that is most common among Caucasians and is rapidly increasing year by year. Melanoma is the most dangerous type of skin cancer making it the world’s 17th most common cancer type which is 1.8% of all cancer patients globally. It is vital to detect Melanoma at its early stages to cure the patient without letting the cancer grow further. The proposed solution is to develop a system that can detect Melanoma by analysing the dermoscopic images while extracting Asymmetry, Border Irregularity, Colour, Diameter (ABCD) features and other salient dermoscopic features which are more often visible in Melanoma skin lesions. Different classification methods are also being evaluated to identify which classifier works best with the dermoscopic features extracted in the feature extraction stage so that the highest accuracy could be obtained when diagnosing Melanoma. Therefore, when a dermoscopic image is given to this proposed system it will output whether the patient is diagnosed with Melanoma along with the confidence level of the diagnosis result at which the model performed the diagnosis based on the various dermoscopic features extracted from the lesion.
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