论文标题
开放的肾脏超声数据集
The Open Kidney Ultrasound Data Set
论文作者
论文摘要
超声是由于其低成本,非离子化和非侵入性特征,因此已成为基石放射学检查。超声应用程序的研究也扩大了,尤其是通过机器学习的图像分析。但是,超声数据通常仅限于封闭的数据集,只有少数几个公开可用。尽管经常检查器官,但肾脏缺乏公开可用的超声数据集。拟议的开放肾脏超声数据集是第一套公开可用的肾脏亮度模式(B模式)超声数据,其中包括用于多级语义分段的注释。它基于5年以上的5年患者在5年内收集的数据,该患者的平均年龄为53.2 +/- 14。7年,体重指数为27.0 +/- 5.4 kg/m2,最常见的原发性疾病是糖尿病,是糖尿病,是糖尿病,免疫球蛋白A(IGA)肾上腺素和高含量。有两位专家超声师的视图标签和精细的手动注释。值得注意的是,该数据包括天然和移植的肾脏。进行了初始的基准标记测量结果,证明了一种最先进的算法,肾脏胶囊达到了Sorenson系数为0.85。该数据集是一个高质量的数据集,包括两组专家注释,图像比以前可用的更大。为了增加获得肾脏超声数据的访问,未来的研究人员可能能够创建用于组织表征,疾病检测和预测的新型图像分析技术。
Ultrasound, because of its low cost, non-ionizing, and non-invasive characteristics, has established itself as a cornerstone radiological examination. Research on ultrasound applications has also expanded, especially with image analysis with machine learning. However, ultrasound data are frequently restricted to closed data sets, with only a few openly available. Despite being a frequently examined organ, the kidney lacks a publicly available ultrasonography data set. The proposed Open Kidney Ultrasound Data Set is the first publicly available set of kidney brightness mode (B-mode) ultrasound data that includes annotations for multi-class semantic segmentation. It is based on data retrospectively collected in a 5-year period from over 500 patients with a mean age of 53.2 +/- 14.7 years, body mass index of 27.0 +/- 5.4 kg/m2, and most common primary diseases being diabetes mellitus, immunoglobulin A (IgA) nephropathy, and hypertension. There are labels for the view and fine-grained manual annotations from two expert sonographers. Notably, this data includes native and transplanted kidneys. Initial bench-marking measurements are performed, demonstrating a state-of-the-art algorithm achieving a Dice Sorenson Coefficient of 0.85 for the kidney capsule. This data set is a high-quality data set, including two sets of expert annotations, with a larger breadth of images than previously available. In increasing access to kidney ultrasound data, future researchers may be able to create novel image analysis techniques for tissue characterization, disease detection, and prognostication.