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通过带有强化学习的轻量级混合多尺度卷积神经网络对磁共振图像上的强直性脊柱炎进行自动分割和分级

Automatic segmentation and grading of ankylosing spondylitis on MR images via lightweight hybrid multi-scale convolutional neural network with reinforcement learning.

作者信息

Gou Shuiping, Lu Yunfei, Tong Nuo, Huang Luguang, Liu Ningtao, Han Qing

机构信息

Key Lab of Intelligent Perception and Image Understanding of Ministry of Education, Xidian University, Xi'an, Shaanxi 710071, People's Republic of China.

AI-based Big Medical Imaging Data Frontier Research Center, Academy of Advanced Interdisciplinary Research, Xidian University, Xi'an, Shaanxi 710071, People's Republic of China.

出版信息

Phys Med Biol. 2021 Oct 5;66(20). doi: 10.1088/1361-6560/ac262a.

Abstract

Ankylosing spondylitis (AS) is a disabling systemic disease that seriously threatens the patient's quality of life. Magnetic resonance imaging (MRI) is highly preferred in clinical diagnosis due to its high contrast and tissue resolution. However, since the uncertainty and intensity inhomogeneous of the AS lesions in MRI, it is still challenging and time-consuming for doctors to quantify the lesions to determine the grade of the patient's condition. Thus, an automatic AS grading method is presented in this study, which integrates the lesion segmentation and grading in a pipeline.. To tackle the large variations in lesion shapes, sizes, and intensity distributions, a lightweight hybrid multi-scale convolutional neural network with reinforcement learning (LHR-Net) is proposed for the AS lesion segmentation. Specifically, the proposed LHR-Net is equipped with the newly proposed hybrid multi-scale module, which consists of multiply convolution layers with different kernel sizes and dilation rates for extracting sufficient multi-scale features. Additionally, a reinforcement learning-based data augmentation module is utilized to deal with the subjects with diffuse and fuzzy lesions that are difficult to segment. Furthermore, to resolve the incomplete segmentation results caused by the inhomogeneous intensity distributions of the AS lesions in MR images, a voxel constraint strategy is proposed to weigh the training voxel labels in the lesion regions. With the accurately segmented AS lesions, automatic AS grading is then performed by a ResNet-50-based classification network.. The performance of the proposed LHR-Net was extensively evaluated on a clinically collected AS MRI dataset, which includes 100 subjects. Dice similarity coefficient (DSC), average surface distance, Hausdorff Distance at95thpercentile (HD95), predicted positive volume, and sensitivity were employed to quantitatively evaluate the segmentation results. The average DSC of the proposed LHR-Net on the AS dataset reached 0.71 on the test set, which outperforms the other state-of-the-art segmentation method by 0.04.. With the accurately segmented lesions, 31 subjects in the test set (38 subjects) were correctly graded, which demonstrates that the proposed LHR-Net might provide a potential automatic method for reproducible computer-assisted diagnosis of AS grading.

摘要

强直性脊柱炎(AS)是一种致残性全身性疾病,严重威胁患者的生活质量。磁共振成像(MRI)因其高对比度和组织分辨率,在临床诊断中备受青睐。然而,由于MRI中AS病变的不确定性和强度不均匀性,医生对病变进行量化以确定患者病情分级仍然具有挑战性且耗时。因此,本研究提出了一种自动AS分级方法,该方法将病变分割和分级整合在一个流程中。为了解决病变形状、大小和强度分布的巨大差异,提出了一种带有强化学习的轻量级混合多尺度卷积神经网络(LHR-Net)用于AS病变分割。具体而言,所提出的LHR-Net配备了新提出的混合多尺度模块,该模块由具有不同核大小和扩张率的多个卷积层组成,用于提取足够的多尺度特征。此外,利用基于强化学习的数据增强模块来处理难以分割的弥漫性和模糊性病变的受试者。此外,为了解决MR图像中AS病变强度分布不均匀导致的分割结果不完整问题,提出了一种体素约束策略来权衡病变区域中训练体素标签。利用准确分割的AS病变,然后通过基于ResNet-50的分类网络进行自动AS分级。在所临床收集的包括100名受试者的AS MRI数据集中广泛评估了所提出的LHR-Net的性能。采用骰子相似系数(DSC)、平均表面距离、第95百分位数的豪斯多夫距离(HD95)、预测阳性体积和灵敏度来定量评估分割结果。所提出的LHR-Net在AS数据集上的测试集平均DSC达到0.71,比其他现有最先进的分割方法高出0.04。利用准确分割的病变,测试集中的31名受试者(共38名受试者)被正确分级,这表明所提出的LHR-Net可能为AS分级的可重复计算机辅助诊断提供一种潜在的自动方法。

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