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An Open IoHT-Based Deep Learning Framework for Online Medical Image Recognition

机译:基于Ooht的在线医学图像识别的深度深度学习框架

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摘要

Systems developed to work with computational intelligence have become very efficient, and in some cases obtain more accurate results than evaluations by humans. Hence, this work proposes a new online approach based on deep learning tools according to the concept of transfer learning to generate a computational intelligence framework for use with the Internet of Health Things (IoHT) devices. This framework allows the user to add their images and perform platform training almost as easily as creating folders and placing files in regular cloud storage services. The trials carried out with the tool showed that even people with no programming and image processing knowledge were able to set up projects in a few minutes. The proposed approach is validated using three medical databases, which include cerebral vascular accident images for stroke type classification, lung nodule images for malignant classification, and skin images for the classification of melanocytic lesions. The results show the efficiency and reliability of the framework, which reached 91.6% Accuracy in the stroke images and lung nodules databases, and 92% Accuracy in the skin images databases. This prove the immense contribution that this work can bring to assist medical professionals in analyzing complex examinations quickly and accurately, allowing a large medical examination database through a consolidated collaborative IoT platform.
机译:开发使用计算智能的系统变得非常有效,在某些情况下,比人类的评估获得更准确的结果。因此,根据转移学习的概念,这项工作提出了一种基于深度学习工具的新的在线方法,以生成与健康互联网(IOHT)设备使用的计算智能框架。此框架允许用户添加图像并执行平台培训,几乎可以轻松地创建文件夹并在常规云存储服务中放置文件。使用该工具进行的试验表明,即使没有编程和图像处理知识的人也能在几分钟内设置项目。采用三种医学数据库验证了所提出的方法,该数据库包括用于中风型分类的脑血管事故图像,用于恶性分类的肺结核图像,以及对黑素细胞病变进行分类的皮肤图像。结果表明框架的效率和可靠性,在行程图像和肺结结数据库中达到91.6%,皮肤图像数据库中的92%精度达到91.6%。这证明了这项工作可以促进巨大的贡献,以帮助医疗专业人员快速准确地分析复杂的考试,允许通过综合协作的IOT平台进行大型体检数据库。

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