Computer Engineering Department, Faculty of Engineering, Cyprus International University, via Mersin10, Nicosia, Northern Cyprus, Turkey.
Artificial Intelligence Application and Research Center, Cyprus International University, via Mersin10, Nicosia, Northern Cyprus, Turkey.
BMC Med Imaging. 2024 Sep 2;24(1):231. doi: 10.1186/s12880-024-01400-7.
Recent improvements in artificial intelligence and computer vision make it possible to automatically detect abnormalities in medical images. Skin lesions are one broad class of them. There are types of lesions that cause skin cancer, again with several types. Melanoma is one of the deadliest types of skin cancer. Its early diagnosis is at utmost importance. The treatments are greatly aided with artificial intelligence by the quick and precise diagnosis of these conditions. The identification and delineation of boundaries inside skin lesions have shown promise when using the basic image processing approaches for edge detection. Further enhancements regarding edge detections are possible. In this paper, the use of fractional differentiation for improved edge detection is explored on the application of skin lesion detection. A framework based on fractional differential filters for edge detection in skin lesion images is proposed that can improve automatic detection rate of malignant melanoma. The derived images are used to enhance the input images. Obtained images then undergo a classification process based on deep learning. A well-studied dataset of HAM10000 is used in the experiments. The system achieves 81.04% accuracy with EfficientNet model using the proposed fractional derivative based enhancements whereas accuracies are around 77.94% when using original images. In almost all the experiments, the enhanced images improved the accuracy. The results show that the proposed method improves the recognition performance.
最近人工智能和计算机视觉的进步使得自动检测医学图像中的异常成为可能。皮肤病变就是其中一个广泛的类别。有些类型的病变会导致皮肤癌,而且有几种类型。黑色素瘤是最致命的皮肤癌之一。早期诊断至关重要。人工智能可以通过快速准确地诊断这些疾病,极大地帮助治疗。使用基本的图像处理方法进行边缘检测,可以对皮肤病变内部的边界进行识别和描绘。进一步提高边缘检测的效果是可能的。在本文中,探讨了分数阶微分在皮肤病变检测中的应用,以提高边缘检测效果。提出了一种基于分数阶微分滤波器的皮肤病变图像边缘检测框架,可以提高恶性黑色素瘤的自动检测率。所得到的图像用于增强输入图像。然后,基于深度学习对获得的图像进行分类处理。实验中使用了经过充分研究的 HAM10000 数据集。使用基于分数导数的增强的 EfficientNet 模型,系统达到了 81.04%的准确率,而使用原始图像的准确率约为 77.94%。在几乎所有的实验中,增强后的图像都提高了准确性。结果表明,该方法可以提高识别性能。