URI-CADS:用于超声肾脏成像的全自动计算机辅助诊断系统。

Miguel Molina-Moreno, Iván González-Díaz, Maite Rivera Gorrín, Víctor Burguera Vion, Fernando Díaz-de-María
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摘要

超声波是一种广泛应用的成像模式,在肾脏病学等医学领域有着特殊的应用。然而,超声肾脏解读的自动化方法仍面临一些挑战:(1) 在系统的不同阶段需要专家的人工监督,这阻碍了其在初级医疗保健领域的应用;(2) 其考虑的分类有限(如病理数量减少),这使其不适合培训从业人员和为专家提供支持。本文提出了一种全自动计算机辅助诊断系统,用于超声肾脏成像,以应对这两个挑战。我们的系统基于多任务架构,由三分支卷积神经网络实现,能够分割肾脏并检测整体和局部病变,在诊断过程中无需人工干预。整合不同粒度的不同图像视角增强了诊断效果。我们采用了一个大型(1985 幅图像)且要求苛刻的超声肾脏成像数据库,该数据库与系统一起公开发布,并根据详尽的分类法对两种整体病变和九种局部病变(包括囊肿、结石、肾积水、血管肌脂肪瘤)进行了注释,为超声肾脏解读建立了一个基准。实验表明,我们提出的方法在分割和诊断任务中的表现均优于几种最先进的方法,并能充分利用全局和局部图像信息的组合来改进诊断。我们的结果表明,我们的系统在健康病理诊断中的 AUC 为 87.41%,在多重病理诊断中的 AUC 为 81.90%,支持将我们的系统用作医疗系统中的一种有用工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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URI-CADS: A Fully Automated Computer-Aided Diagnosis System for Ultrasound Renal Imaging.

Ultrasound is a widespread imaging modality, with special application in medical fields such as nephrology. However, automated approaches for ultrasound renal interpretation still pose some challenges: (1) the need for manual supervision by experts at various stages of the system, which prevents its adoption in primary healthcare, and (2) their limited considered taxonomy (e.g., reduced number of pathologies), which makes them unsuitable for training practitioners and providing support to experts. This paper proposes a fully automated computer-aided diagnosis system for ultrasound renal imaging addressing both of these challenges. Our system is based in a multi-task architecture, which is implemented by a three-branched convolutional neural network and is capable of segmenting the kidney and detecting global and local pathologies with no need of human interaction during diagnosis. The integration of different image perspectives at distinct granularities enhanced the proposed diagnosis. We employ a large (1985 images) and demanding ultrasound renal imaging database, publicly released with the system and annotated on the basis of an exhaustive taxonomy of two global and nine local pathologies (including cysts, lithiasis, hydronephrosis, angiomyolipoma), establishing a benchmark for ultrasound renal interpretation. Experiments show that our proposed method outperforms several state-of-the-art methods in both segmentation and diagnosis tasks and leverages the combination of global and local image information to improve the diagnosis. Our results, with a 87.41% of AUC in healthy-pathological diagnosis and 81.90% in multi-pathological diagnosis, support the use of our system as a helpful tool in the healthcare system.

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