Melanoma is considered to be the deadliest variant of skin cancer causing around 75\% of total skin cancer deaths. To diagnose Melanoma, clinicians assess and compare multiple skin lesions of the same patient concurrently to gather contextual information regarding the patterns, and abnormality of the skin. So far this concurrent multi-image comparative method has not been explored by existing deep learning-based schemes. In this paper, based on contextual image feature fusion (CIFF), a deep neural network (CIFF-Net) is proposed, which integrates patient-level contextual information into the traditional approaches for improved Melanoma diagnosis by concurrent multi-image comparative method. The proposed multi-kernel self attention (MKSA) module offers better generalization of the extracted features by introducing multi-kernel operations in the self attention mechanisms. To utilize both self attention and contextual feature-wise attention, an attention guided module named contextual feature fusion (CFF) is proposed that integrates extracted features from different contextual images into a single feature vector. Finally, in comparative contextual feature fusion (CCFF) module, primary and contextual features are compared concurrently to generate comparative features. Significant improvement in performance has been achieved on the ISIC-2020 dataset over the traditional approaches that validate the effectiveness of the proposed contextual learning scheme.
翻译:为诊断梅兰诺马,临床医生评估和比较同一病人的多重皮肤损伤,同时收集有关皮肤形态和异常的背景资料。到目前为止,现有的深层学习计划尚未探讨这一并行的多图像比较方法。本文根据背景图像特征聚合(CIFF),提议建立一个深神经网络(CIFF-Net),将患者一级背景信息纳入通过同时采用多图像比较方法改进梅兰玛诊断的传统方法中。拟议的多内耳自我关注模块通过在自我关注机制中引入多内耳操作,更好地概括所提取的特征。为了利用自我关注和背景特征关注,建议以背景特征聚合(CFF)为基础的关注引导模块将从不同背景图像中提取的特征纳入单一特征矢量中。最后,在比较背景特征融合模块中,对主要和背景特征进行对比,以生成比较特征。拟议的多核心自我关注(MKSA)模块通过在自我关注机制中引入多内心功能操作,对所提取的特征进行了更好的概括。为了利用自我关注和背景特征融合(CFF),建议将一个名为背景特征融合(CFF)的受关注模块,将从不同背景图像中提取的特征的特征结合,在比较背景特征融合模块中,将主要和背景特征特征特征特征特征特征特征特征结合与拟议中的学习方法进行了对比。</s>