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使用二维U-NET在矢状面高分辨率T1加权磁共振图像中对腰椎骨髓进行全自动分割。

Fully automated segmentation of lumbar bone marrow in sagittal, high-resolution T1-weighted magnetic resonance images using 2D U-NET.

作者信息

Hwang Eo-Jin, Kim Sanghee, Jung Joon-Yong

机构信息

Department of Radiology, Seoul St. Mary's Hospital, College of Medicine, The Catholic University of Korea, Seoul, Republic of Korea.

Department of Radiology, Yeouido St. Mary's Hospital, College of Medicine, The Catholic University of Korea, Seoul, Republic of Korea.

出版信息

Comput Biol Med. 2022 Jan;140:105105. doi: 10.1016/j.compbiomed.2021.105105. Epub 2021 Dec 1.

Abstract

BACKGROUND

We investigated a 2-dimensional (2D) U-Net model to delineate lumbar bone marrow (BM) using a high resolution T1-weighted magnetic resonance imaging.

METHOD

Healthy controls (n = 44, 836 images) and patients with hematologic diseases (n = 56, 1064 images) received MRI of the lumbar spines. Lumbar BM on each image was manually delineated by an experienced radiologist as a ground-truth. The 2D U-Net models were trained using a healthy lumbar BM only, diseased BM only, and using healthy and diseased BM combined, respectively. The models were validated using healthy and diseased subjects, separately. A repeated-measures analysis of variance was performed to compare segmentation accuracies with 2 validation cohorts among U-Net trained with healthy subjects (UNET_HC), U-Net trained with diseased subjects (UNET_HD), U-Net trained with all subjects including both healthy and diseased subjects (UNET_HCHD), and 3-dimensional Grow-Cut algorithm (3DGC).

RESULTS

When validated with the healthy subjects, UNET_HC, UNET_HD, UNET_HCHD and 3DGC achieved the mean and standard deviation of the Dice Similarity Coefficient (DSC) of 0.9415 ± 0.07056, 0.9583 ± 0.05146, 0.9602 ± 0.0486 and 0.9139 ± 0.2039, respectively. When validated with the diseased subjects, DSCs of UNET_HC, UNET_HD, UNET_HCHD and 3DGC were 0.8303 ± 0.1073, 0.9502 ± 0.0217, 0.9502 ± 0.0217 and 0.8886 ± 0.2179, respectively. The U-Net models segmented BM better than the semi-automatic 3DGC (P < 0.0001), and UNET_HD produced better results than UNET_HC (P < 0.0001).

CONCLUSIONS

We successfully constructed a fully automatic lumbar BM segmentation model for a high-resolution T1-weighted MRI using U-Net, which outperformed most of the previously reported approaches and the existing semi-automatic algorithm.

摘要

背景

我们研究了一种二维(2D)U-Net模型,用于使用高分辨率T1加权磁共振成像来描绘腰椎骨髓(BM)。

方法

健康对照者(n = 44,共836张图像)和血液系统疾病患者(n = 56,共1064张图像)接受了腰椎的MRI检查。由经验丰富的放射科医生手动勾勒出每张图像上的腰椎骨髓作为真实标准。2D U-Net模型分别使用仅健康的腰椎骨髓、仅患病的骨髓以及健康和患病骨髓的组合进行训练。这些模型分别使用健康和患病受试者进行验证。进行重复测量方差分析,以比较在使用健康受试者训练的U-Net(UNET_HC)、使用患病受试者训练的U-Net(UNET_HD)、使用包括健康和患病受试者在内的所有受试者训练的U-Net(UNET_HCHD)以及三维生长切割算法(3DGC)之间,两个验证队列的分割准确性。

结果

在使用健康受试者进行验证时,UNET_HC、UNET_HD、UNET_HCHD和3DGC的骰子相似系数(DSC)的均值和标准差分别为0.9415±0.07056、0.9583±0.05146、0.9602±0.0486和0.9139±0.2039。在使用患病受试者进行验证时,UNET_HC、UNET_HD、UNET_HCHD和3DGC的DSC分别为0.8303±0.1073、0.9502±0.0217、0.9502±0.0217和0.8886±0.2179。U-Net模型对骨髓的分割效果优于半自动的3DGC(P < 0.0001),并且UNET_HD的结果优于UNET_HC(P < 0.0001)。

结论

我们成功地使用U-Net构建了一种用于高分辨率T1加权MRI的全自动腰椎骨髓分割模型,该模型优于大多数先前报道的方法和现有的半自动算法。

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