论文标题
Cancernet-SCA:量身定制的深神经网络设计,可从皮肤镜图像检测皮肤癌
CancerNet-SCa: Tailored Deep Neural Network Designs for Detection of Skin Cancer from Dermoscopy Images
论文作者
论文摘要
皮肤癌仍然是美国最常见的癌症形式,不仅对健康和福祉产生了重大影响,而且还与治疗相关的经济成本很大。治疗和治疗皮肤癌的关键步骤是在早期治疗时预后强的有效皮肤癌检测,其中一种关键筛查方法是皮肤镜检查。在研究界的开源计划的启发和启发下,在这项研究中,我们引入了Cancernet-SCA,这是一套为癌症NET主管的一部分,是开源的,可从开源的皮肤镜图像中检测出皮肤癌的一组深层神经网络设计。据作者所知,Cancernet-SCA包括专门针对皮肤癌检测的第一个机器设计的深神经网络架构设计,其中一种具有带有注意力冷凝器的自我注意力结构设计。此外,我们通过解释性驱动的模型审核以负责任且透明的方式研究和审核cancernet-SCA的行为。尽管Cancernet-SCA并不是一种准备生产的筛查解决方案,但希望在开源中释放Cancernet-SCA,开放式访问表将鼓励研究人员,临床医生和公民数据科学家都可以利用和建立在这些科学上。
Skin cancer continues to be the most frequently diagnosed form of cancer in the U.S., with not only significant effects on health and well-being but also significant economic costs associated with treatment. A crucial step to the treatment and management of skin cancer is effective skin cancer detection due to strong prognosis when treated at an early stage, with one of the key screening approaches being dermoscopy examination. Motivated by the advances of deep learning and inspired by the open source initiatives in the research community, in this study we introduce CancerNet-SCa, a suite of deep neural network designs tailored for the detection of skin cancer from dermoscopy images that is open source and available to the general public as part of the Cancer-Net initiative. To the best of the authors' knowledge, CancerNet-SCa comprises of the first machine-designed deep neural network architecture designs tailored specifically for skin cancer detection, one of which possessing a self-attention architecture design with attention condensers. Furthermore, we investigate and audit the behaviour of CancerNet-SCa in a responsible and transparent manner via explainability-driven model auditing. While CancerNet-SCa is not a production-ready screening solution, the hope is that the release of CancerNet-SCa in open source, open access form will encourage researchers, clinicians, and citizen data scientists alike to leverage and build upon them.