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Real-Time Mobile-Phone-Aided Melanoma Skin Lesion Detection Using Triangulation Technique

机译:实时移动式通用 - 辅助黑色素瘤皮肤病病变检测使用三角测量技术

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摘要

Melanoma is a harmful disease among all types of skin cancer. Genetic factors and the exposure of UV rays causes melanoma skin lesions. Early diagnosis is important to identify malignant melanomas to improve the patient prognosis. A biopsy is a traditional method which is painful and invasive when used for skin cancer detection. This method requires laboratory testing which is not very efficient and time-consuming to detect skin lesions. To solve the above issue, a computer aided diagnosis (CAD) for skin lesion detection is needed. In this article, we have developed a mobile application with the capabilities to segment skin lesions in dermoscopy images using a triangulation method and categorize them into malignant or bengin lesions through a supervised method which is convolution neural network (CNN). This mobile application will make the skin cancer detection non-invasive which does not require any laboratory testing, making the detection less time consuming and inexpensive with a detection accuracy of 81%.
机译:黑色素瘤是各种皮肤癌中的有害疾病。遗传因素和紫外线的暴露导致黑素瘤皮肤病变。早期诊断对于鉴定恶性黑色素来改善患者预后是重要的。活检是一种传统方法,用于皮肤癌检测时是痛苦和侵入性的。该方法需要实验室测试,其对检测皮肤病变不是非常有效和耗时。为了解决上述问题,需要一种用于皮肤病变检测的计算机辅助诊断(CAD)。在本文中,我们已经使用三角测量方法开发了一种移动应用程序,该应用具有在Dermoscopy图像中对皮肤病图像进行筛查的能力,并通过卷积神经网络(CNN)的监督方法将它们分为恶性或笨蛋病变。该移动应用将使皮肤癌检测无侵入性,这不需要任何实验室测试,使得检测较少耗时且廉价,检测精度为81%。

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