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Design and implementation of a medical image knowledge base for pulmonary nodules diagnosis

机译:医学影像学知识在肺结节诊断中的设计与实现

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In order to achieve pulmonary nodule computer-aided diagnosis (CAD) more effectively in the context of big data and deep learning, we designed and implemented a medical image knowledge base (KB) to store the case data of thoracic computed tomography (CT) scanning. To guarantee this medical image KB more flexible and easy to expand, its two MySQL relational databases (DICOM medical image database and expert diagnosis database) were designed to be independent logically, but be stored in the same database. We used Apache Web Server to implement the medical image KB. Then we utilized PHP scripting language to manage and maintain the KB. We employed Lung Image Database Consortium (LIDC) dataset and designed some test cases to test our medical image KB. Summarily, the medical image KB presented in this paper is capable of storing thoracic CT image and its diagnostic information effectively and structurally for pulmonary nodule diagnosis; and it is high potential for realizing the CAD of pulmonary nodule in the background of big data and deep learning.
机译:为了在大数据和深度学习的情况下更有效地实现肺结节计算机辅助诊断(CAD),我们设计并实现了医学图像知识库(KB),用于存储胸部计算机断层扫描(CT)扫描的病例数据。为了确保此医学图像KB更灵活和易于扩展,其两个MySQL关系数据库(DICOM医学图像数据库和专家诊断数据库)被设计为逻辑上独立,但存储在同一数据库中。我们使用Apache Web Server来实现医学图像KB。然后,我们利用PHP脚本语言来管理和维护知识库。我们采用了肺图像数据库协会(LIDC)数据集,并设计了一些测试用例来测试我们的医学图像KB。综上所述,本文提出的医学影像KB能够有效,结构化地存储胸CT影像及其诊断信息,以进行肺结节的诊断。在大数据和深度学习的背景下,实现肺结节CAD的潜力很大。

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