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利用多方向紧致卷积神经网络集成和 Gabor 小波进行皮肤癌分类。

Skin cancer classification leveraging multi-directional compact convolutional neural network ensembles and gabor wavelets.

机构信息

Department of Electronics and Communications Engineering, College of Engineering and Technology, Arab Academy for Science, Technology and Maritime Transport, Alexandria, 21937, Egypt.

Wearables, Biosensing, and Biosignal Processing Laboratory, Arab Academy for Science, Technology, and Maritime Transport, Alexandria, 21937, Egypt.

出版信息

Sci Rep. 2024 Sep 4;14(1):20637. doi: 10.1038/s41598-024-69954-8.

Abstract

Skin cancer (SC) is an important medical condition that necessitates prompt identification to ensure timely treatment. Although visual evaluation by dermatologists is considered the most reliable method, its efficacy is subjective and laborious. Deep learning-based computer-aided diagnostic (CAD) platforms have become valuable tools for supporting dermatologists. Nevertheless, current CAD tools frequently depend on Convolutional Neural Networks (CNNs) with huge amounts of deep layers and hyperparameters, single CNN model methodologies, large feature space, and exclusively utilise spatial image information, which restricts their effectiveness. This study presents SCaLiNG, an innovative CAD tool specifically developed to address and surpass these constraints. SCaLiNG leverages a collection of three compact CNNs and Gabor Wavelets (GW) to acquire a comprehensive feature vector consisting of spatial-textural-frequency attributes. SCaLiNG gathers a wide range of image details by breaking down these photos into multiple directional sub-bands using GW, and then learning several CNNs using those sub-bands and the original picture. SCaLiNG also combines attributes taken from various CNNs trained with the actual images and subbands derived from GW. This fusion process correspondingly improves diagnostic accuracy due to the thorough representation of attributes. Furthermore, SCaLiNG applies a feature selection approach which further enhances the model's performance by choosing the most distinguishing features. Experimental findings indicate that SCaLiNG maintains a classification accuracy of 0.9170 in categorising SC subcategories, surpassing conventional single-CNN models. The outstanding performance of SCaLiNG underlines its ability to aid dermatologists in swiftly and precisely recognising and classifying SC, thereby enhancing patient outcomes.

摘要

皮肤癌 (SC) 是一种重要的医学病症,需要及时识别以确保及时治疗。尽管皮肤科医生的目视评估被认为是最可靠的方法,但它的效果具有主观性且费力。基于深度学习的计算机辅助诊断 (CAD) 平台已成为支持皮肤科医生的有价值的工具。然而,当前的 CAD 工具经常依赖于具有大量深层和超参数的卷积神经网络 (CNN)、单一 CNN 模型方法、大特征空间,并且仅利用空间图像信息,这限制了它们的有效性。本研究提出了 SCaLiNG,这是一种专门为解决和克服这些限制而开发的创新 CAD 工具。SCaLiNG 利用三个紧凑的 CNN 和 Gabor 小波 (GW) 来获取一个包含空间-纹理-频率属性的综合特征向量。SCaLiNG 通过使用 GW 将这些照片分解成多个方向的子带,从而收集了广泛的图像细节,然后使用那些子带和原始图片学习几个 CNN。SCaLiNG 还结合了从实际图像和 GW 导出的子带中训练的多个 CNN 的属性。这种融合过程由于属性的全面表示相应地提高了诊断准确性。此外,SCaLiNG 应用了一种特征选择方法,通过选择最具区分度的特征进一步提高了模型的性能。实验结果表明,SCaLiNG 在对 SC 子类别进行分类时保持了 0.9170 的分类准确率,超过了传统的单一 CNN 模型。SCaLiNG 的出色表现突显了其帮助皮肤科医生快速准确地识别和分类 SC 的能力,从而改善了患者的治疗效果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7a91/11375051/d01b3d39f723/41598_2024_69954_Fig1_HTML.jpg

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