Automatic Image Segmentation and Grading Diagnosis of Sacroiliitis Associated with AS Using a Deep Convolutional Neural Network on CT Images

被引:0
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作者
Ke Zhang
Guibo Luo
Wenjuan Li
Yunfei Zhu
Jielin Pan
Ximeng Li
Chaoran Liu
Jianchao Liang
Yingying Zhan
Jing Zheng
Shaolin Li
Wenli Cai
Guobin Hong
机构
[1] the Fifth Affiliated Hospital,Department of Radiology
[2] Sun Yat-Sen University,Department of Radiology
[3] Massachusetts General Hospitaland,Shenzhen Graduate School
[4] Harvard Medical School ,Department of Radiology
[5] Peking University,Department of Rheumatology
[6] Nanshan District,undefined
[7] Zhuhai People’s Hospital,undefined
[8] Zhuhai Hospital Affiliated With Jinan University,undefined
[9] the Fifth Affiliated Hospital,undefined
[10] Sun Yat-Sen University,undefined
关键词
Ankylosing spondylitis; Sacroiliitis; Deep convolutional neural network; Computed tomography; Automatic segmentation;
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摘要
Ankylosing spondylitis (AS) is a chronic inflammatory disease that causes inflammatory low back pain and may even limit activity. The grading diagnosis of sacroiliitis on imaging plays a central role in diagnosing AS. However, the grading diagnosis of sacroiliitis on computed tomography (CT) images is viewer-dependent and may vary between radiologists and medical institutions. In this study, we aimed to develop a fully automatic method to segment sacroiliac joint (SIJ) and further grading diagnose sacroiliitis associated with AS on CT. We studied 435 CT examinations from patients with AS and control at two hospitals. No-new-UNet (nnU-Net) was used to segment the SIJ, and a 3D convolutional neural network (CNN) was used to grade sacroiliitis with a three-class method, using the grading results of three veteran musculoskeletal radiologists as the ground truth. We defined grades 0–I as class 0, grade II as class 1, and grades III–IV as class 2 according to modified New York criteria. nnU-Net segmentation of SIJ achieved Dice, Jaccard, and relative volume difference (RVD) coefficients of 0.915, 0.851, and 0.040 with the validation set, respectively, and 0.889, 0.812, and 0.098 with the test set, respectively. The areas under the curves (AUCs) of classes 0, 1, and 2 using the 3D CNN were 0.91, 0.80, and 0.96 with the validation set, respectively, and 0.94, 0.82, and 0.93 with the test set, respectively. 3D CNN was superior to the junior and senior radiologists in the grading of class 1 for the validation set and inferior to expert for the test set (P < 0.05). The fully automatic method constructed in this study based on a convolutional neural network could be used for SIJ segmentation and then accurately grading and diagnosis of sacroiliitis associated with AS on CT images, especially for class 0 and class 2. The method for class 1 was less effective but still more accurate than that of the senior radiologist.
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页码:2025 / 2034
页数:9
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