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使用深度学习技术通过手机图像对皮肤瑕疵进行分类。

Classification of skin blemishes with cell phone images using deep learning techniques.

作者信息

Rangel-Ramos José Antonio, Luna-Perejón Francisco, Civit Anton, Domínguez-Morales Manuel

机构信息

Universidad de Sevilla, ETS Ingeniería Informática, Avda. Reina Mercedes s/n, Seville, 41012, Spain.

Computer Architecture and Technology Dept. (Universidad de Sevilla), ETS Ingeniería Informática, Avda. Reina Mercedes s/n, Seville, 41012, Spain.

出版信息

Heliyon. 2024 Mar 29;10(7):e28058. doi: 10.1016/j.heliyon.2024.e28058. eCollection 2024 Apr 15.

Abstract

Skin blemishes can be caused by multiple events or diseases and, in some cases, it is difficult to distinguish where they come from. Therefore, there may be cases with a dangerous origin that go unnoticed or the opposite case (which can lead to overcrowding of health services). To avoid this, the use of artificial intelligence-based classifiers using images taken with mobile devices is proposed; this would help in the initial screening process and provide some information to the patient prior to their final diagnosis. To this end, this work proposes an optimization mechanism based on two phases in which a global search for the best classifiers (from among more than 150 combinations) is carried out, and, in the second phase, the best candidates are subjected to a phase of evaluation of the robustness of the system by applying the cross-validation technique. The results obtained reach 99.95% accuracy for the best case and 99.75% AUC. Comparing the developed classifier with previous works, an improvement in terms of classification rate is appreciated, as well as in the reduction of the classifier complexity, which allows our classifier to be integrated in a specific purpose system with few computational resources.

摘要

皮肤瑕疵可能由多种情况或疾病引起,在某些情况下,很难区分其来源。因此,可能存在一些危险来源的情况未被注意到,或者出现相反的情况(这可能导致医疗服务过度拥挤)。为避免这种情况,建议使用基于人工智能的分类器,利用移动设备拍摄的图像;这将有助于初始筛查过程,并在最终诊断前为患者提供一些信息。为此,这项工作提出了一种基于两个阶段的优化机制,其中第一阶段对最佳分类器进行全局搜索(从150多种组合中),在第二阶段,通过应用交叉验证技术,对最佳候选分类器进行系统稳健性评估。最佳情况下获得的结果准确率达到99.95%,AUC为99.75%。将开发的分类器与先前的工作进行比较,可以看到在分类率方面有所提高,同时分类器复杂度降低,这使得我们的分类器能够集成到具有很少计算资源的特定用途系统中。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d639/11004532/dd5aee621c4c/gr001.jpg

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