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皮肤 CAD:基于双高级 CNN 特征选择和迁移学习的皮肤镜图像皮肤癌可解释深度学习分类。

Skin-CAD: Explainable deep learning classification of skin cancer from dermoscopic images by feature selection of dual high-level CNNs features and transfer learning.

机构信息

Department of Electronics and Communications Engineering, College of Engineering and Technology, Arab Academy for Science, Technology and Maritime Transport, Alexandri, 21937, Egypt; Wearables, Biosensing, and Biosignal Processing Laboratory, Arab Academy for Science, Technology and Maritime Transport, Alexandria, 21937, Egypt.

出版信息

Comput Biol Med. 2024 Aug;178:108798. doi: 10.1016/j.compbiomed.2024.108798. Epub 2024 Jun 25.

Abstract

Skin cancer (SC) significantly impacts many individuals' health all over the globe. Hence, it is imperative to promptly identify and diagnose such conditions at their earliest stages using dermoscopic imaging. Computer-aided diagnosis (CAD) methods relying on deep learning techniques especially convolutional neural networks (CNN) can effectively address this issue with outstanding outcomes. Nevertheless, such black box methodologies lead to a deficiency in confidence as dermatologists are incapable of comprehending and verifying the predictions that were made by these models. This article presents an advanced an explainable artificial intelligence (XAI) based CAD system named "Skin-CAD" which is utilized for the classification of dermoscopic photographs of SC. The system accurately categorises the photographs into two categories: benign or malignant, and further classifies them into seven subclasses of SC. Skin-CAD employs four CNNs of different topologies and deep layers. It gathers features out of a pair of deep layers of every CNN, particularly the final pooling and fully connected layers, rather than merely depending on attributes from a single deep layer. Skin-CAD applies the principal component analysis (PCA) dimensionality reduction approach to minimise the dimensions of pooling layer features. This also reduces the complexity of the training procedure compared to using deep features from a CNN that has a substantial size. Furthermore, it combines the reduced pooling features with the fully connected features of each CNN. Additionally, Skin-CAD integrates the dual-layer features of the four CNNs instead of entirely depending on the features of a single CNN architecture. In the end, it utilizes a feature selection step to determine the most important deep attributes. This helps to decrease the general size of the feature set and streamline the classification process. Predictions are analysed in more depth using the local interpretable model-agnostic explanations (LIME) approach. This method is used to create visual interpretations that align with an already existing viewpoint and adhere to recommended standards for general clarifications. Two benchmark datasets are employed to validate the efficiency of Skin-CAD which are the Skin Cancer: Malignant vs. Benign and HAM10000 datasets. The maximum accuracy achieved using Skin-CAD is 97.2 % and 96.5 % for the Skin Cancer: Malignant vs. Benign and HAM10000 datasets respectively. The findings of Skin-CAD demonstrate its potential to assist professional dermatologists in detecting and classifying SC precisely and quickly.

摘要

皮肤癌(SC)严重影响了全球许多人的健康。因此,使用皮肤镜成像技术在疾病的早期阶段及时识别和诊断此类疾病至关重要。基于深度学习技术,特别是卷积神经网络(CNN)的计算机辅助诊断(CAD)方法可以有效地解决这个问题,并取得优异的结果。然而,这种黑盒方法导致信心不足,因为皮肤科医生无法理解和验证这些模型做出的预测。本文提出了一种名为“Skin-CAD”的先进的可解释人工智能(XAI)基于 CAD 系统,用于对 SC 的皮肤镜照片进行分类。该系统可以准确地将照片分为良性或恶性两类,并进一步将其分为 SC 的七个子类。Skin-CAD 使用了四种不同拓扑结构和深层的 CNN。它从每个 CNN 的一对深层中收集特征,特别是最后一个池化层和全连接层,而不仅仅依赖于单个深层的属性。Skin-CAD 采用主成分分析(PCA)降维方法来最小化池化层特征的维度。与使用具有较大尺寸的 CNN 的深层特征相比,这也减少了训练过程的复杂性。此外,它将减少后的池化特征与每个 CNN 的全连接特征相结合。此外,Skin-CAD 集成了四个 CNN 的双层特征,而不是完全依赖于单个 CNN 架构的特征。最后,它使用特征选择步骤来确定最重要的深层属性。这有助于减小特征集的总体大小并简化分类过程。使用局部可解释模型无关解释(LIME)方法对预测进行更深入的分析。该方法用于创建与现有观点一致并符合一般解释推荐标准的可视化解释。使用皮肤癌:良性与恶性和 HAM10000 数据集来验证 Skin-CAD 的效率。使用 Skin-CAD 实现的最高准确率分别为 97.2%和 96.5%,用于皮肤癌:良性与恶性和 HAM10000 数据集。Skin-CAD 的研究结果表明,它有可能帮助专业皮肤科医生准确快速地检测和分类 SC。

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