An Automated Pipeline for the Identification of Liver Tissue in Ultrasound Video

Eloise S Ockenden, Simon Mpooya, J. Alison Noble, Goylette F Chami
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Abstract

Liver diseases are a leading cause of death worldwide, with an estimated 2 million deaths each year. Causes of liver disease are diffi- cult to ascertain, especially in sub-Saharan Africa where there is a high prevalence of infectious diseases such as hepatitis B and schistosomi- asis, along with alcohol use. Point-of-care ultrasound often is used in low-resource settings for diagnosis of liver disease due to its portabil- ity and low cost. For classification models that can automatically stage liver disease from ultrasound video, the region of interest is liver tissue. A fully-automated pipeline for liver tissue identification in ultrasound video is presented. Ultrasound video data was collected using a low-cost, portable ultrasound machine in rural areas of Uganda. The pipeline first detects the diaphragm in each ultrasound video frame, then segments the diaphragm to ultimately use this segmentation to infer the position of liver tissue in each frame. This pipeline outperforms directly segmenting liver tissue with an intersection over union of 0.83 compared to 0.62. This pipeline also shows improved results with respect to the ease of clinical interpretation and anticipated clinical utility.
超声视频中肝脏组织的自动识别管道
肝脏疾病是全世界的主要死因之一,估计每年有 200 万人死于肝脏疾病。肝病的病因很难确定,尤其是在撒哈拉以南非洲地区,那里乙型肝炎、血吸虫病等传染病和酗酒的发病率很高。由于便携性和低成本,护理点超声波通常用于低资源环境下的肝病诊断。对于能从超声视频中自动分期肝病的分类模型来说,感兴趣的区域是肝组织。本文介绍了超声视频中肝脏组织识别的全自动流程。超声视频数据是在乌干达农村地区使用低成本便携式超声机收集的。该流水线首先检测每个超声视频帧中的横膈膜,然后对横膈膜进行分割,最终利用这种分割推断出肝脏组织在每个帧中的位置。该管道的性能优于直接分割肝脏组织,其交集大于联合的比率为 0.83,而直接分割肝脏组织的比率为 0.62。在临床解释的简易性和预期的临床实用性方面,该管道也显示出更好的结果。
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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