论文标题

胸部X射线报告通过细粒标签学习生成

Chest X-ray Report Generation through Fine-Grained Label Learning

论文作者

Syeda-Mahmood, Tanveer, Wong, Ken C. L., Gur, Yaniv, Wu, Joy T., Jadhav, Ashutosh, Kashyap, Satyananda, Karargyris, Alexandros, Pillai, Anup, Sharma, Arjun, Syed, Ali Bin, Boyko, Orest, Moradi, Mehdi

论文摘要

获得常见考试(例如胸部X射线检查)的自动初步阅读报告将加快临床工作流程并提高医院的运营效率。但是,当前自动化方法产生的报告质量在临床上尚不可接受,因为它们无法正确检测到广泛的放射线照相发现,也无法准确地描述它们的横向性,解剖学位置,严重性等。来自大型报告数据库的报告。我们还开发了一种自动标记算法,用于将此类描述符分配给图像并建立一个新颖的深度学习网络,以识别发现发现的粗糙和细粒度描述。由此产生的报告生成算法明显优于使用已建立的得分指标的最新现状。

Obtaining automated preliminary read reports for common exams such as chest X-rays will expedite clinical workflows and improve operational efficiencies in hospitals. However, the quality of reports generated by current automated approaches is not yet clinically acceptable as they cannot ensure the correct detection of a broad spectrum of radiographic findings nor describe them accurately in terms of laterality, anatomical location, severity, etc. In this work, we present a domain-aware automatic chest X-ray radiology report generation algorithm that learns fine-grained description of findings from images and uses their pattern of occurrences to retrieve and customize similar reports from a large report database. We also develop an automatic labeling algorithm for assigning such descriptors to images and build a novel deep learning network that recognizes both coarse and fine-grained descriptions of findings. The resulting report generation algorithm significantly outperforms the state of the art using established score metrics.

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