基于深度学习的性传播疾病生殖器病变临床图像分类

R. González-Alday, F. Peinado, D. Carrillo, V. Maojo
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引用次数: 0

摘要

性传播疾病是世界重大突发卫生事件之一。鉴于其发病率和流行率,特别是在发展中国家,有必要寻找早期诊断和治疗的新方法。然而,在医疗服务有限的地理区域,这可能会变得复杂。在这篇文章中,我们提出了一个基于深度学习的系统的基础,用于由这些疾病引起的生殖器病变的图像分类,该系统使用卷积神经网络模型和迁移学习和数据增强等方法构建。此外,采用可解释性方法(GradCam)来增强所得结果的可解释性。最后,我们开发了一个web框架,以方便额外的数据收集和注释。这项工作旨在成为一个起点,一个“概念验证”,以测试各种不同的方法,为性传播疾病的医疗保健开发更强大、更可靠的人工智能方法,这可以在不久的将来大大改善医疗援助,特别是在发展中地区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for Clinical Image Classification of Genital Lesions Caused by Sexually Transmitted Diseases
Sexually transmitted diseases (STDs) are one of the world’s major health emergencies. Given its incidence and prevalence, particularly in developing countries, it is necessary to find new methods for early diagnosis and treatment. However, this can be complicated in geographical areas where medical care is limited. In this article, we present the basis of a deep learning-based system for image classification of genital lesions caused by these diseases, built using a convolutional neural network model and methods such as transfer learning and data augmentation. In addition, an explainability method (GradCam) is employed to enhance the interpretability of the obtained results. Finally, we developed a web framework to facilitate additional data collection and annotation. This work aims to be a starting point, a “proof of concept” to test various different approaches, for the development of more robust and trustworthy Artificial Intelligence approaches for medical care in STDs, which could substantially improve medical assistance in the near future, particularly in developing regions.
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