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AI-Skin: Skin disease recognition based on self-learning and wide data collection through a closed-loop framework

机译:Ai-Skin:通过闭环框架的自学习和宽数据收集的皮肤病认可

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摘要

There are a lot of hidden dangers in the change of human skin conditions, such as the sunburn caused by long-time exposure to ultraviolet radiation, which not only has aesthetic impact causing psychological depression and lack of self-confidence, but also may even be life-threatening due to skin canceration. Current skin disease researches adopt the auto-classification system for improving the accuracy rate of skin disease classification. However, the excessive dependence on the image sample database is unable to provide individualized diagnosis service for different population groups. To overcome this problem, a medical AI framework based on data width evolution and self-learning is put forward in this paper to provide skin disease medical service meeting the requirement of real time, extendibility and individualization. First, the wide collection of data in the close-loop information flow of user and remote medical data center is discussed. Next, a data set filter algorithm based on information entropy is given, to lighten the load of edge node and meanwhile improve the learning ability of remote cloud analysis model. In addition, the framework provides an external algorithm load module, which can be compatible with the application requirements according to the model selected. Three kinds of deep learning model, i.e., LeNet-5, AlexNet and VGG16, are loaded and compared, which have verified the universality of the algorithm load module. The experiment platform for the proposed real-time, individualized and extensible skin disease recognition system is built. And the system's computation and communication delay under the interaction scenario between tester and remote data center are analyzed. It is demonstrated that the system we put forward is reliable and effective.
机译:人类皮肤状况的变化存在很多隐患,如晒伤由长期暴露于紫外线辐射,这不仅具有导致心理抑郁症和缺乏自信的审美影响,而且甚至可能是由于皮肤癌失,危及生命。目前的皮肤病研究采用自动分类系统,提高皮肤病分类的准确率。但是,对图像样本数据库的过度依赖性无法为不同的人群组提供个性化诊断服务。为了克服这个问题,本文提出了一种基于数据宽度演化和自学的医疗AI框架,以提供满足实时,可扩展性和个体化的要求的皮肤病医疗服务。首先,讨论了用户和远程医疗数据中心的闭环信息流中的广泛集合。接下来,给出基于信息熵的数据集滤波器算法,以减轻边缘节点的负载,同时提高远程云分析模型的学习能力。此外,该框架提供了一种外部算法负载模块,可根据所选模型与应用要求兼容。加载和比较了三种深度学习模型,即Lenet-5,AlexNet和VGG16,验证了算法负载模块的普遍性。建立了实时,个性化和可伸展皮肤病识别系统的实验平台。分析了测试仪和远程数据中心之间的交互方案下的系统的计算和通信延迟。证明我们提出的系统可靠而有效。

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