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Clinical Skin Lesion Diagnosis using Representations Inspired by Dermatologist Criteria

机译:使用皮肤科医师标准启发的临床皮肤病诊断

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The skin is the largest organ in human body. Around 30%-70% of individuals worldwide have skin related health problems, for whom effective and efficient diagnosis is necessary. Recently, computer aided diagnosis (CAD) systems have been successfully applied to the recognition of skin cancers in dermatoscopic images. However, little work has concentrated on the commonly encountered skin diseases in clinical images captured by easily-accessed cameras or mobile phones. Meanwhile, for a CAD system, the representations of skin lesions are required to be understandable for dermatologists so that the predictions are convincing. To address this problem, we present effective representations inspired by the accepted dermatological criteria for diagnosing clinical skin lesions. We demonstrate that the dermatological criteria are highly correlated with measurable visual components. Accordingly, we design six medical representations considering different criteria for the recognition of skin lesions, and construct a diagnosis system for clinical skin disease images. Experimental results show that the proposed medical representations can not only capture the manifestations of skin lesions effectively, and consistently with the dermatological criteria, but also improve the prediction performance with respect to the state-of-the-art methods based on uninterpretable features.
机译:皮肤是人体最大的器官。全球约有30%-70%的个人具有皮肤相关的健康问题,有效,有效的诊断是必要的。最近,计算机辅助诊断(CAD)系统已成功应用于Dercercopic图像中皮肤癌的识别。然而,小型工作集中在易于访问的摄像机或手机捕获的临床图像中的常见皮肤病上。同时,对于CAD系统,需要皮肤病变的表示对于皮肤科医生来说需要可以理解,以便预测是令人信服的。为了解决这一问题,我们提出了受到可接受的皮肤病学标准的有效陈述,用于诊断临床皮肤病变。我们证明皮肤病学标准与可测量的视觉组件高度相关。因此,我们设计六种医学表现,考虑到识别皮肤病变的不同标准,构建临床皮肤病图像的诊断系统。实验结果表明,所提出的医疗表现不仅可以有效地捕获皮肤病变的表现,并且始终如一地与皮肤病学标准,而且还基于未诠释特征改善了最先进的方法的预测性能。

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