Deep learning-based quantitative morphological study of anteroposterior digital radiographs of the lumbar spine.

IF 2.9 2区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Quantitative Imaging in Medicine and Surgery Pub Date : 2024-08-01 Epub Date: 2023-02-22 DOI:10.21037/qims-22-540
Zhizhen Chen, Wenqi Wang, Xiaofei Chen, Fuwen Dong, Guohua Cheng, Linyang He, Chunyu Ma, Hongyan Yao, Sheng Zhou
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引用次数: 0

Abstract

Background: Morphological parameters of the lumbar spine are valuable in assessing lumbar spine diseases. However, manual measurement of lumbar morphological parameters is time-consuming. Deep learning has automatic quantitative and qualitative analysis capabilities. To develop a deep learning-based model for the automatic quantitative measurement of morphological parameters from anteroposterior digital radiographs of the lumbar spine and to evaluate its performance.

Methods: This study used 1,368 anteroposterior digital radiographs of the lumbar spine to train a deep learning model to measure the quantitative morphological indicators, including L1 to L5 vertebral body height (VBH) and L1-L2 to L4-L5 intervertebral disc height (IDH). The means of the manual measurements by three radiologists were used as the reference standard. The parameters predicted by the model were analyzed against the manual measurements using paired t-tests. Percentage of correct key points (PCK), intra-class correlation coefficient (ICC), Pearson correlation coefficient (r), mean absolute error (MAE), root mean square error (RMSE), and Bland-Altman plots were performed to assess the performance of the model.

Results: Within the 3-mm distance threshold, the model had a PCK range of 99.77-99.46% for the L1 to L4 vertebrae and 77.37% for the L5 vertebrae. Except for VBH-L5 and IDH_L3-L4, IDH_L4-L5 (P<0.05), the estimated values of the model in the remaining parameters were not statistically significant compared with the reference standard (P>0.05). Except for VBH-L5 and IDH_L4-L5, the model showed good correlation and consistency with the reference standard (ICC =0.84-0.96, r=0.85-0.97, MAE =0.5-0.66, RMSE =0.66-0.95). The model outperformed other models (EfficientDet + Unet, EfficientDet + DarkPose, HRNet, and Unet) in predicting landmarks within a distance threshold of 1.5 to 5 mm.

Conclusions: The model developed in this study can automatically measure the morphological parameters of the L1 to L4 vertebrae from anteroposterior digital radiographs of the lumbar spine. Its performance is close to the level of radiologists.

基于深度学习的腰椎前后位数字X光片定量形态学研究。
背景:腰椎的形态参数对评估腰椎疾病很有价值。然而,人工测量腰椎形态参数非常耗时。深度学习具有自动定量和定性分析能力。目的:开发一种基于深度学习的模型,用于自动定量测量腰椎前路数字X光片的形态参数,并评估其性能:本研究使用 1,368 张腰椎前路数字X光片训练深度学习模型,以测量定量形态学指标,包括 L1 至 L5 椎体高度(VBH)和 L1-L2 至 L4-L5 椎间盘高度(IDH)。三位放射科医生的人工测量平均值作为参考标准。使用配对 t 检验分析模型预测的参数与人工测量结果。为评估模型的性能,还使用了正确关键点百分比(PCK)、类内相关系数(ICC)、皮尔逊相关系数(r)、平均绝对误差(MAE)、均方根误差(RMSE)和布兰-阿尔特曼图:在 3 毫米距离阈值内,模型对 L1 至 L4 椎体的 PCK 范围为 99.77%-99.46%,对 L5 椎体的 PCK 范围为 77.37%。除 VBH-L5 和 IDH_L3-L4 外,IDH_L4-L5(P0.05)。除 VBH-L5 和 IDH_L4-L5 外,该模型与参考标准显示出良好的相关性和一致性(ICC =0.84-0.96,r=0.85-0.97,MAE =0.5-0.66,RMSE =0.66-0.95)。在预测1.5至5毫米距离阈值内的地标方面,该模型优于其他模型(EfficientDet + Unet、EfficientDet + DarkPose、HRNet和Unet):本研究中开发的模型可以从腰椎的正前方数字射线照片中自动测量 L1 至 L4 椎体的形态参数。其性能接近放射科医生的水平。
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来源期刊
Quantitative Imaging in Medicine and Surgery
Quantitative Imaging in Medicine and Surgery Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
4.20
自引率
17.90%
发文量
252
期刊介绍: Information not localized
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