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基于深度学习的集成方法用于磁共振图像上肾肿块的全自动检测

Deep-learning-based ensemble method for fully automated detection of renal masses on magnetic resonance images.

作者信息

Anush Agarwal, Rohini Gaikar, Nicola Schieda, WalaaEldin Elfaal Mohamed, Eranga Ukwatta

机构信息

University of Guelph, School of Engineering, Guelph, Ontario, Canada.

University of Ottawa, Department of Radiology, Ottawa, Ontario, Canada.

出版信息

J Med Imaging (Bellingham). 2023 Mar;10(2):024501. doi: 10.1117/1.JMI.10.2.024501. Epub 2023 Mar 20.

Abstract

PURPOSE

Accurate detection of small renal masses (SRM) is a fundamental step for automated classification of benign and malignant or indolent and aggressive renal tumors. Magnetic resonance image (MRI) may outperform computed tomography (CT) for SRM subtype differentiation due to improved tissue characterization, but is less explored compared to CT. The objective of this study is to autonomously detect SRM on contrast-enhanced magnetic resonance images (CE-MRI).

APPROACH

In this paper, we described a novel, fully automated methodology for accurate detection and localization of SRM on CE-MRI. We first determine the kidney boundaries using a U-Net convolutional neural network. We then search for SRM within the localized kidney regions using a mixture-of-experts ensemble model based on the U-Net architecture. Our dataset contained CE-MRI scans of 118 patients with different solid kidney tumor subtypes including renal cell carcinomas, oncocytomas, and fat-poor renal angiomyolipoma. We evaluated the proposed model on the entire CE-MRI dataset using 5-fold cross validation.

RESULTS

The developed algorithm reported a Dice similarity coefficient of (mean standard deviation) for kidney segmentation from 118 volumes consisting of 25,025 slices. Our proposed ensemble model for SRM detection yielded a recall and precision of 86.2% and 83.3% on the entire CE-MRI dataset, respectively.

CONCLUSIONS

We described a deep-learning-based method for fully automated SRM detection using CE-MR images, which has not been studied previously. The results are clinically important as SRM localization is a pre-step for fully automated diagnosis of SRM subtypes.

摘要

目的

准确检测小肾肿块(SRM)是对肾肿瘤的良恶性或惰性与侵袭性进行自动分类的基本步骤。由于改善了组织特征,磁共振成像(MRI)在SRM亚型鉴别方面可能优于计算机断层扫描(CT),但与CT相比,其研究较少。本研究的目的是在对比增强磁共振图像(CE-MRI)上自动检测SRM。

方法

在本文中,我们描述了一种新颖的、全自动的方法,用于在CE-MRI上准确检测和定位SRM。我们首先使用U-Net卷积神经网络确定肾脏边界。然后,我们使用基于U-Net架构的专家混合集成模型在局部肾脏区域内搜索SRM。我们的数据集包含118例患有不同实性肾肿瘤亚型(包括肾细胞癌、嗜酸细胞瘤和乏脂性肾血管平滑肌脂肪瘤)患者的CE-MRI扫描图像。我们使用5折交叉验证在整个CE-MRI数据集上评估了所提出的模型。

结果

所开发的算法在由25,025个切片组成的118个容积的肾脏分割中报告的骰子相似系数为(平均值±标准差)。我们提出的用于SRM检测的集成模型在整个CE-MRI数据集上的召回率和精确率分别为86.2%和83.3%。

结论

我们描述了一种基于深度学习的方法,用于使用CE-MR图像全自动检测SRM,这在以前尚未被研究过。由于SRM定位是SRM亚型全自动诊断的前期步骤,因此该结果具有临床重要性。

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