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首页> 外文期刊>Ultrasound in Medicine and Biology >AUTOMATIC IDENTIFICATION OF THE OPTIMAL REFERENCE FRAME FOR SEGMENTATION AND QUANTIFICATION OF FOCAL LIVER LESIONS IN CONTRAST-ENHANCED ULTRASOUND
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AUTOMATIC IDENTIFICATION OF THE OPTIMAL REFERENCE FRAME FOR SEGMENTATION AND QUANTIFICATION OF FOCAL LIVER LESIONS IN CONTRAST-ENHANCED ULTRASOUND

机译:对比增强超声中局部肝脏病变分割和定量的最佳参考帧的自动识别

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摘要

Post-examination interpretation of contrast-enhanced ultrasound (CEUS) cineloops of focal liver lesions (FLLs) requires offline manual assessment by experienced radiologists, which is time-consuming and generates subjective results. Such assessment usually starts by manually identifying a reference frame, where FLL and healthy parenchyma are well-distinguished. This study proposes an automatic computational method to objectively identify the optimal reference frame for distinguishing and hence delineating an FLL, by statistically analyzing the temporal intensity variation across the spatially discretized ultrasonographic image. Level of confidence and clinical value of the proposed method were quantitatively evaluated on retrospective multi-institutional data (n = 64) and compared with expert interpretations. Results support the proposed method for facilitating easier, quicker and reproducible assessment of FLLs, further increasing the radiologists' confidence in diagnostic decisions. Finally, our method yields a useful training tool for radiologists, widening CEUS use in non-specialist centers, potentially leading to reduced turnaround times and lower patient anxiety and healthcare costs. (C) 2017 World Federation for Ultrasound in Medicine & Biology.
机译:对比度增强超声检查的后检测解释(CEUS)局灶性肝脏病变(FLLS)的碎屑需要经验丰富的放射科医师的离线手动评估,这是耗时的并且产生主观效果。这种评估通常通过手动识别参考帧来开始,其中FLL和健康的实质良好。本研究提出了一种自动计算方法,客观地识别最佳参考帧,以通过统计分析空间离散化图像上的时间强度变化来区分和因此描绘FLL。在回顾性的多机构数据(n = 64)上定量评估了所提出的方法的置信水平和临床价值,并与专家解释进行比较。结果支持提出的方法,以促进更容易,更快,可重复的FLL评估,进一步提高放射科医师对诊断决策的信心。最后,我们的方法为放射科医生提供了有用的培训工具,扩大了在非专业中心的Ceus使用,可能导致周转时间降低,降低患者焦虑和医疗费用。 (c)2017年中国医学与生物学中超声波的世界联合会。

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