Arthur Dantas Mangussi, T. Pianoschi, Bernardo Cecchetto, V. Botelho
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引用次数: 0
摘要
目的:为支持数字化乳房x线影像的质量控制(QC),开发AQMI -“乳房x线影像质量评估”。材料和方法:软件采用Python编程语言,通过Streamlit库实现,涉及内容构建和环境规划。实验数据选自公共领域存储库[19]。从选定的数据库中,研究DICOM文件中存在的相关信息,以执行图像质量测试。然后,通过文献检索,找到衡量图像质量的指标,如信噪比、对比噪比、优值和图像直方图。结果:AQMI协助分析了Agência national de vigilicia Sanitária在1992年建立的图像质量测试[8]。它还具有质量添加指标,趋势图和图像评估历史。结论:就本工作的功能而言,所开发的软件具有免费、友好和易于使用的界面,是一种有希望用于临床实践的工具。
AQMI: Software for assessing the quality of mammographic images
Objective: AQMI - “Assessment of the quality of mammographic images” was developed to support the quality control (QC) of digital mammographic images. Materials and Methods: The software was implemented in the Python programming language via the Streamlit library, which involved content structuring and environmental planning. The experimental data that were selected from a public domain repository [19]. From the selected database, relevant information that was present in the DICOM file was studied to perform the image quality test. Then, from searching the literature, indicators that measure image quality were found, such as the signal-to-noise ratio, the contrast-to-noise ratio, figure of merit and image histogram. Results: AQMI assists in analyzing the image quality test established in IN 92 by the Agência Nacional de Vigilância Sanitária [8]. It also has quality addition indicators, trend graphs, and the image assessment history. Conclusion: For the functionalities of this work, the developed software is a promising tool for use in clinical practice, since it consists of a free, friendly, and easy-to-use interface.