Ravi Vinayakumar
Center for Artificial Intelligence, Prince Mohammad Bin Fahd University, Khobar 34754, Saudi Arabia.
Cancers (Basel). 2022 Nov 29;14(23):5872. doi: 10.3390/cancers14235872.
Deep learning-based models have been employed for the detection and classification of skin diseases through medical imaging. However, deep learning-based models are not effective for rare skin disease detection and classification. This is mainly due to the reason that rare skin disease has very a smaller number of data samples. Thus, the dataset will be highly imbalanced, and due to the bias in learning, most of the models give better performances. The deep learning models are not effective in detecting the affected tiny portions of skin disease in the overall regions of the image. This paper presents an attention-cost-sensitive deep learning-based feature fusion ensemble meta-classifier approach for skin cancer detection and classification. Cost weights are included in the deep learning models to handle the data imbalance during training. To effectively learn the optimal features from the affected tiny portions of skin image samples, attention is integrated into the deep learning models. The features from the finetuned models are extracted and the dimensionality of the features was further reduced by using a kernel-based principal component (KPCA) analysis. The reduced features of the deep learning-based finetuned models are fused and passed into ensemble meta-classifiers for skin disease detection and classification. The ensemble meta-classifier is a two-stage model. The first stage performs the prediction of skin disease and the second stage performs the classification by considering the prediction of the first stage as features. Detailed analysis of the proposed approach is demonstrated for both skin disease detection and skin disease classification. The proposed approach demonstrated an accuracy of 99% on skin disease detection and 99% on skin disease classification. In all the experimental settings, the proposed approach outperformed the existing methods and demonstrated a performance improvement of 4% accuracy for skin disease detection and 9% accuracy for skin disease classification. The proposed approach can be used as a computer-aided diagnosis (CAD) tool for the early diagnosis of skin cancer detection and classification in healthcare and medical environments. The tool can accurately detect skin diseases and classify the skin disease into their skin disease family.
基于深度学习的模型已被用于通过医学成像对皮肤疾病进行检测和分类。然而,基于深度学习的模型在罕见皮肤疾病的检测和分类方面效果不佳。这主要是因为罕见皮肤疾病的数据样本数量非常少。因此,数据集将高度不平衡,并且由于学习中的偏差,大多数模型表现较好。深度学习模型在检测图像整体区域中皮肤疾病的受影响微小部分时效果不佳。本文提出了一种基于注意力成本敏感的深度学习特征融合集成元分类器方法,用于皮肤癌的检测和分类。在深度学习模型中纳入成本权重,以处理训练期间的数据不平衡问题。为了有效地从皮肤图像样本的受影响微小部分学习最优特征,将注意力集成到深度学习模型中。提取微调模型的特征,并使用基于核的主成分(KPCA)分析进一步降低特征的维度。基于深度学习的微调模型的降维特征被融合,并传递到集成元分类器中进行皮肤疾病的检测和分类。集成元分类器是一个两阶段模型。第一阶段进行皮肤疾病的预测,第二阶段将第一阶段的预测作为特征进行分类。对所提出的方法在皮肤疾病检测和皮肤疾病分类方面都进行了详细分析。所提出的方法在皮肤疾病检测方面的准确率为99%,在皮肤疾病分类方面的准确率为99%。在所有实验设置中,所提出的方法优于现有方法,在皮肤疾病检测方面准确率提高了4%,在皮肤疾病分类方面准确率提高了9%。所提出的方法可作为一种计算机辅助诊断(CAD)工具,用于医疗保健和医疗环境中皮肤癌检测和分类的早期诊断。该工具可以准确地检测皮肤疾病,并将皮肤疾病分类到其所属的皮肤疾病类别中。