胸部X线影像诊断心血管系统病理的决策支持系统

A. G. Radzhabov
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引用次数: 0

摘要

由于缺乏通用(广义)数据集,以及缺乏注释数据,因此需要研究神经网络方法对特定数据集的可能性。由于微创和相对便宜的X射线诊断方法的广泛使用,鉴于此类图像的可用性,在胸部X射线图像上构建用于检测肺外病变的算法的重要性取决于该组许多疾病(例如心血管疾病)的巨大社会意义。在解决医学图像的自动分类问题时,最重要的问题之一是数据准备。由于对图像库的研究,最终算法的性能从75%提高到95%。由于资源有限,医疗机构很难处理所获得的图像的整个体积及其对广泛病理学列表的诊断。在这方面,建议使用分割和识别过程的自动化,即使在技术发展的最初阶段,也可以重新分配医生的注意力,将注意力集中在潜在的病理病例上,并将注意力转移到被错误识别为非病理病例上。
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Decision Making Support System for the Diagnostics of the Cardiovascular System Pathologies by the X-ray Images of the Chest
The lack of universal (generalized) data sets, as well as the lack of annotated data, creates the need to study the possibilities of neural network approaches for specific data sets. The importance of building algorithms for detecting extrapulmonary pathologies on chest X-ray images is dictated by the great social significance of many diseases of this group (for example, cardiovascular diseases), given the availability of such images, due to the widespread use of minimally invasive and relatively cheap X-ray diagnostic methods. One of the most impor tant issues in solving the problems of automating the classification of medical images is data preparation. As a result of work on the image base, the performance of the final algorithm has been increased from 75 to 95 %. The processing of the entire volume of the obtained images and their diagnostics for a wide list of pathologies are difficult for medical institutions because of the limited resources. In this regard, it is advisable to use the automation of segmentation and recognition processes, which even at the first stages of development of the technology makes it possible to redistribute the attention of doctors, focusing on potentially pathological cases and returning attention to cases mistakenly identified as non-pathological.
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