基于CT图像,采用2.5D ResUNet和2.5D DenseUNet自动分割复杂肾囊肿恶性潜能分析

IF 2.4 4区 计算机科学 Eurasip Journal on Image and Video Processing Pub Date : 2022-03-22 DOI:10.1186/s13640-022-00581-x
Parin Kittipongdaja, Thitirat Siriborvornratanakul
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引用次数: 9

摘要

Bosniak肾囊肿分类已被广泛用于确定肾囊肿的复杂性。然而,事实证明,大约一半接受波什尼亚克病第三类手术的患者,冒着手术风险,根本没有任何临床益处。这是因为他们的病理结果显示囊肿实际上是良性的而不是恶性的。这个问题激励我们使用最近流行的深度学习技术,并研究计算机断层扫描(CT)图像的精确二值分类(良性或恶性肿瘤)的替代分析方法。为了实现我们的目标,需要连续两个步骤——从CT图像中分割肾脏器官或病变,然后对分割后的肾脏进行分类。在本文中,我们提出了一种使用2.5D ResUNet和2.5D DenseUNet进行肾脏分割的研究,以有效地提取片内和片间特征。在两种不同的训练环境下,我们的模型在肾肿瘤分割(KiTS19)挑战的公共数据集上进行了训练和验证。因此,所有实验模型在KiTS19验证集(60例患者)上均达到了至少95%的高平均肾Dice评分。除了KiTS19数据集,我们还对4例泰国患者的腹部CT图像进行了单独的实验。基于4名泰国患者,我们的实验模型表现出性能下降,其中肾脏骰子的最佳平均得分为87.60%。
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Automatic kidney segmentation using 2.5D ResUNet and 2.5D DenseUNet for malignant potential analysis in complex renal cyst based on CT images

Bosniak renal cyst classification has been widely used in determining the complexity of a renal cyst. However, it turns out that about half of patients undergoing surgery for Bosniak category III, take surgical risks that reward them with no clinical benefit at all. This is because their pathological results reveal that the cysts are actually benign not malignant. This problem inspires us to use recently popular deep learning techniques and study alternative analytics methods for precise binary classification (benign or malignant tumor) on Computerized Tomography (CT) images. To achieve our goal, two consecutive steps are required–segmenting kidney organs or lesions from CT images then classifying the segmented kidneys. In this paper, we propose a study of kidney segmentation using 2.5D ResUNet and 2.5D DenseUNet for efficiently extracting intra-slice and inter-slice features. Our models are trained and validated on the public data set from Kidney Tumor Segmentation (KiTS19) challenge in two different training environments. As a result, all experimental models achieve high mean kidney Dice scores of at least 95% on the KiTS19 validation set consisting of 60 patients. Apart from the KiTS19 data set, we also conduct separate experiments on abdomen CT images of four Thai patients. Based on the four Thai patients, our experimental models show a drop in performance, where the best mean kidney Dice score is 87.60%.

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来源期刊
Eurasip Journal on Image and Video Processing
Eurasip Journal on Image and Video Processing Engineering-Electrical and Electronic Engineering
CiteScore
7.10
自引率
0.00%
发文量
23
审稿时长
6.8 months
期刊介绍: EURASIP Journal on Image and Video Processing is intended for researchers from both academia and industry, who are active in the multidisciplinary field of image and video processing. The scope of the journal covers all theoretical and practical aspects of the domain, from basic research to development of application.
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