使用 U-Net 自动检测和分割脊柱 MRI 上的骨转移瘤:一项多中心研究

IF 4.4 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Dong Hyun Kim, Jiwoon Seo, Ji Hyun Lee, Eun-Tae Jeon, DongYoung Jeong, Hee Dong Chae, Eugene Lee, Ji Hee Kang, Yoon-Hee Choi, Hyo Jin Kim, Jee Won Chai
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引用次数: 0

摘要

目的开发并评估用于脊柱 MRI 上骨转移瘤自动分割和检测的深度学习模型:我们纳入了骨转移成年患者的全脊柱 MRI 扫描:来自三个研究中心的302名患者(63.5±11.5岁;男性:女性,151:151)的662个MRI序列,于2015年1月至2021年8月期间获得,用于训练和内部测试(分别随机分成536和126个序列);来自另一个中心的20名患者(65.9±11.5岁;男性:女性,11:9)的49个MRI序列,于2018年1月至2020年8月期间获得,用于外部测试。使用了三种矢状面 MRI 序列,包括非对比 T1 加权图像(T1)、对比增强 T1 加权 Dixon 纯脂肪图像(FO)和对比增强脂肪抑制 T1 加权图像(CE)。使用二维和三维 U-Nets 训练建立了七个不同组合(T1、FO、CE、T1 + FO、T1 + CE、FO + CE 和 T1 + FO + CE)的模型。使用骰子系数、像素召回率和像素精度评估了分割性能。检测性能采用每个病灶灵敏度和自由响应接收器工作特征曲线进行分析。使用外部测试集将该模型的性能与五位放射科医生的性能进行了比较:在外部测试中,二维 U-Net T1 + CE 模型的分割性能优于其他模型,其 Dice 系数为 0.699,像素召回率为 0.653。在内部和外部测试中,T1 + CE 模型对转移灶的单病灶灵敏度分别为 0.828(497/600)和 0.857(150/175)。在外部测试中,放射科医生对每个病灶的平均灵敏度为 0.746,对每个病灶的平均阳性预测值为 0.701:结论:针对脊柱磁共振成像骨转移瘤的自动分割和检测提出的深度学习模型具有很高的诊断性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Detection and Segmentation of Bone Metastases on Spine MRI Using U-Net: A Multicenter Study.

Objective: To develop and evaluate a deep learning model for automated segmentation and detection of bone metastasis on spinal MRI.

Materials and methods: We included whole spine MRI scans of adult patients with bone metastasis: 662 MRI series from 302 patients (63.5 ± 11.5 years; male:female, 151:151) from three study centers obtained between January 2015 and August 2021 for training and internal testing (random split into 536 and 126 series, respectively) and 49 MRI series from 20 patients (65.9 ± 11.5 years; male:female, 11:9) from another center obtained between January 2018 and August 2020 for external testing. Three sagittal MRI sequences, including non-contrast T1-weighted image (T1), contrast-enhanced T1-weighted Dixon fat-only image (FO), and contrast-enhanced fat-suppressed T1-weighted image (CE), were used. Seven models trained using the 2D and 3D U-Nets were developed with different combinations (T1, FO, CE, T1 + FO, T1 + CE, FO + CE, and T1 + FO + CE). The segmentation performance was evaluated using Dice coefficient, pixel-wise recall, and pixel-wise precision. The detection performance was analyzed using per-lesion sensitivity and a free-response receiver operating characteristic curve. The performance of the model was compared with that of five radiologists using the external test set.

Results: The 2D U-Net T1 + CE model exhibited superior segmentation performance in the external test compared to the other models, with a Dice coefficient of 0.699 and pixel-wise recall of 0.653. The T1 + CE model achieved per-lesion sensitivities of 0.828 (497/600) and 0.857 (150/175) for metastases in the internal and external tests, respectively. The radiologists demonstrated a mean per-lesion sensitivity of 0.746 and a mean per-lesion positive predictive value of 0.701 in the external test.

Conclusion: The deep learning models proposed for automated segmentation and detection of bone metastases on spinal MRI demonstrated high diagnostic performance.

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来源期刊
Korean Journal of Radiology
Korean Journal of Radiology 医学-核医学
CiteScore
10.60
自引率
12.50%
发文量
141
审稿时长
1.3 months
期刊介绍: The inaugural issue of the Korean J Radiol came out in March 2000. Our journal aims to produce and propagate knowledge on radiologic imaging and related sciences. A unique feature of the articles published in the Journal will be their reflection of global trends in radiology combined with an East-Asian perspective. Geographic differences in disease prevalence will be reflected in the contents of papers, and this will serve to enrich our body of knowledge. World''s outstanding radiologists from many countries are serving as editorial board of our journal.
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