3D U-Net Neural Network Architecture-Assisted LDCT to Acquire Vertebral Morphology Parameters: A Vertebral Morphology Comprehensive Analysis in a Chinese Population.

IF 3.3 3区 医学 Q2 ENDOCRINOLOGY & METABOLISM Calcified Tissue International Pub Date : 2024-10-01 Epub Date: 2024-07-17 DOI:10.1007/s00223-024-01255-8
Duoshan Ma, Yan Wang, Xinxin Zhang, Danyang Su, Mengze Ma, Baoxin Qian, Xiaopeng Yang, Jianbo Gao, Yan Wu
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Abstract

To evaluate the feasibility of acquiring vertebral height from chest low-dose computed tomography (LDCT) images using an artificial intelligence (AI) system based on 3D U-Net vertebral segmentation technology and the correlation and features of vertebral morphology with sex and age of the Chinese population. Patients who underwent chest LDCT between September 2020 and April 2023 were enrolled. The Altman and Pearson's correlation analyses were used to compare the correlation and consistency between the AI software and manual measurement of vertebral height. The anterior height (Ha), middle height (Hm), posterior height (Hp), and vertebral height ratios (VHRs) (Ha/Hp and Hm/Hp) were measured from T1 to L2 using an AI system. The VHR is the ratio of Ha to Hp or the ratio of Hm to Hp of the vertebrae, which can reflect the shape of the anterior wedge and biconcave vertebrae. Changes in these parameters, particularly the VHR, were analysed at different vertebral levels in different age and sex groups. The results of the AI methods were highly consistent and correlated with manual measurements. The Pearson's correlation coefficients were 0.855, 0.919, and 0.846, respectively. The trend of VHRs showed troughs at T7 and T11 and a peak at T9; however, Hm/Hp showed slight fluctuations. Regarding the VHR, significant sex differences were found at L1 and L2 in all age bands. This innovative study focuses on vertebral morphology for opportunistic analysis in the mainland Chinese population and the distribution tendency of vertebral morphology with ageing using a chest LDCT aided by an AI system based on 3D U-Net vertebral segmentation technology. The AI system demonstrates the potential to automatically perform opportunistic vertebral morphology analyses using LDCT scans obtained during lung cancer screening. We advocate the use of age-, sex-, and vertebral level-specific criteria for the morphometric evaluation of vertebral osteoporotic fractures for a more accurate diagnosis of vertebral fractures and spinal pathologies.

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三维 U-Net 神经网络架构辅助 LDCT 获取椎体形态参数:中国人群椎体形态综合分析》。
目的 评估利用基于三维 U-Net 椎体分割技术的人工智能(AI)系统从胸部低剂量计算机断层扫描(LDCT)图像中获取椎体高度的可行性,以及中国人群椎体形态与性别和年龄的相关性和特征。研究对象为 2020 年 9 月至 2023 年 4 月期间接受胸部 LDCT 检查的患者。采用 Altman 和 Pearson 相关性分析比较人工智能软件和人工测量椎体高度的相关性和一致性。使用人工智能系统测量了从 T1 到 L2 的椎体前高(Ha)、椎体中高(Hm)、椎体后高(Hp)和椎体高度比(VHRs)(Ha/Hp 和 Hm/Hp)。VHR 是椎体 Ha 与 Hp 的比值或 Hm 与 Hp 的比值,可以反映椎体前楔和双凹的形状。这些参数的变化,尤其是 VHR 的变化,在不同年龄和性别组的不同椎体水平上进行了分析。人工智能方法的结果与人工测量结果高度一致和相关。皮尔逊相关系数分别为 0.855、0.919 和 0.846。VHR 的变化趋势在 T7 和 T11 出现低谷,在 T9 出现高峰;但 Hm/Hp 则略有波动。关于 VHR,在所有年龄段的 L1 和 L2 发现了明显的性别差异。这项创新性研究利用胸部 LDCT,在基于三维 U-Net 椎体分割技术的人工智能系统的辅助下,重点研究了中国大陆人群中用于机会分析的椎体形态,以及椎体形态随年龄增长的分布趋势。该人工智能系统展示了利用肺癌筛查中获得的 LDCT 扫描自动执行机会性椎体形态分析的潜力。我们提倡使用年龄、性别和椎体水平特异性标准对椎体骨质疏松性骨折进行形态学评估,以便更准确地诊断椎体骨折和脊柱病变。
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来源期刊
Calcified Tissue International
Calcified Tissue International 医学-内分泌学与代谢
CiteScore
8.00
自引率
2.40%
发文量
112
审稿时长
4-8 weeks
期刊介绍: Calcified Tissue International and Musculoskeletal Research publishes original research and reviews concerning the structure and function of bone, and other musculoskeletal tissues in living organisms and clinical studies of musculoskeletal disease. It includes studies of cell biology, molecular biology, intracellular signalling, and physiology, as well as research into the hormones, cytokines and other mediators that influence the musculoskeletal system. The journal also publishes clinical studies of relevance to bone disease, mineral metabolism, muscle function, and musculoskeletal interactions.
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