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Novel computational approaches for border irregularity prediction to detect melanoma in skin lesions

机译:边境不规则预测的新型计算方法检测皮肤病变中黑色素瘤

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Medical image detection has been a rapidly growing field of study during the last few years. There are different challenges associated with it. Many works have been done in order to provide solutions for key challenges. This study of work is focused on melanoma detection by using Asymmetry, Border irregularity, Colour textures, and Diameter (ABCD) feature along with proposing two new approaches for border irregularity detection. The proposed two new approaches are distance difference method and gradient method, which follows the main concept as traversing along the continuous borderline of the lesion. Further, this study varies from the existing studies, since it has been taken counts of distances from the centroid to the borderline without considering the distance from the image border to the borderline of the lesion. It was able to achieve a classification rate of 79% and 78.5% using distance difference method and gradient method, respectively whereas the classification without the border irregularity feature achieved 78% of accuracy performing on PH2 dataset. Further, this study can be stated as most appropriate to classify non-melanoma rather than melanoma. It is contributed by generating simple computer science-based approaches rather than complex mathematical methods to detect border irregularity and makes the medical image detection easy.
机译:在过去几年中,医学图像检测一直是一种迅速增长的研究领域。与它有不同的挑战。已经完成了许多作品,以便为关键挑战提供解决方案。该工作研究专注于通过使用不对称,边界不规则性,颜色纹理和直径(ABCD)特征的黑色素瘤检测,以及提出两种用于边界不规则检测的新方法。提出的两种新方法是距离差异方法和梯度方法,其沿着沿着病变的连续边界线横穿。此外,该研究因现有研究而异,因为已经从质心到邻接的距离计数,而不考虑从图像边界到病变的边界的距离。它能够使用距离差异方法和梯度法实现79%和78.5%的分类率,而没有边界不规则特征的分类达到了在pH上执行的78%的准确性 2 数据集。此外,该研究可以表示最适合分类非黑色素瘤而不是黑色素瘤。它是通过生成简单的计算机科学的方法而不是复杂的数学方法来贡献,以检测边界不规则性并使医学图像检测变得容易。

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