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基于人工智能的自动磁共振图像分割技术进行三维腰骶重建以选择经皮内镜下腰椎间盘切除术的入路

Three-Dimensional Lumbosacral Reconstruction by An Artificial Intelligence-Based Automated MR Image Segmentation for Selecting the Approach of Percutaneous Endoscopic Lumbar Discectomy.

作者信息

Zhu Zhaoyin, Liu Enqing, Su Zhihai, Chen Weijian, Liu Zheng, Chen Tao, Lu Hai, Zhou Jin, Li Qingchu, Pang Shumao

机构信息

Southern Medical University, Guangzhou, Guangdong, China.

The Fifth Affiliated Hospital of Sun Yat-sen University, Spine Surgery, Zhuhai, Guangdong, China.

出版信息

Pain Physician. 2024 Feb;27(2):E245-E254.

Abstract

BACKGROUND

Assessing the 3-dimensional (3D) relationship between critical anatomical structures and the surgical channel can help select percutaneous endoscopic lumbar discectomy (PELD) approaches, especially at the L5/S1 level. However, previous evaluation methods for PELD were mainly assessed using 2-dimensional (2D) medical images, making the understanding of the 3D relationship of lumbosacral structures difficult. Artificial intelligence based on automated magnetic resonance (MR) image segmentation has the benefit of 3D reconstruction of medical images.

OBJECTIVES

We developed and validated an artificial intelligence-based MR image segmentation method for constructing a 3D model of lumbosacral structures for selecting the appropriate approach of percutaneous endoscopic lumbar discectomy at the L5/S1 level.

STUDY DESIGN

Three-dimensional reconstruction study using artificial intelligence based on MR image segmentation.

SETTING

Spine and radiology center of a university hospital.

METHODS

Fifty MR data samples were used to develop an artificial intelligence algorithm for automatic segmentation. Manual segmentation and labeling of vertebrae bone (L5 and S1 vertebrae bone), disc, lumbosacral nerve, iliac bone, and skin at the L5/S1 level by 3 experts were used as ground truth. Five-fold cross-validation was performed, and quantitative segmentation metrics were used to evaluate the performance of artificial intelligence based on the MR image segmentation method. The comparison analysis of quantitative measurements between the artificial intelligence-derived 3D (AI-3D) models and the ground truth-derived 3D (GT-3D) models was used to validate the feasibility of 3D lumbosacral structures reconstruction and preoperative assessment of PELD approaches.

RESULTS

Artificial intelligence-based automated MR image segmentation achieved high mean Dice Scores of 0.921, 0.924, 0.885, 0.808, 0.886, and 0.816 for L5 vertebrae bone, S1 vertebrae bone, disc, lumbosacral nerves, iliac bone, and skin, respectively. There were no significant differences between AI-3D and GT-3D models in quantitative measurements. Comparative analysis of quantitative measures showed a high correlation and consistency.

LIMITATIONS

Our method did not involve vessel segmentation in automated MR image segmentation. Our study's sample size was small, and the findings need to be validated in a prospective study with a large sample size.

CONCLUSION

We developed an artificial intelligence-based automated MR image segmentation method, which effectively segmented lumbosacral structures (e.g., L5 vertebrae bone, S1 vertebrae bone, disc, lumbosacral nerve, iliac bone, and skin) simultaneously on MR images, and could be used to construct a 3D model of lumbosacral structures for choosing an appropriate approach of PELD at the L5/S1 level.

摘要

背景

评估关键解剖结构与手术通道之间的三维(3D)关系有助于选择经皮内镜下腰椎间盘切除术(PELD)的入路,尤其是在L5/S1节段。然而,以往PELD的评估方法主要是使用二维(2D)医学图像进行评估,这使得对腰骶部结构三维关系的理解变得困难。基于自动磁共振(MR)图像分割的人工智能具有医学图像三维重建的优势。

目的

我们开发并验证了一种基于人工智能的MR图像分割方法,用于构建腰骶部结构的三维模型,以选择L5/S1节段经皮内镜下腰椎间盘切除术的合适入路。

研究设计

基于MR图像分割的人工智能三维重建研究。

研究地点

一所大学医院的脊柱与放射科中心。

方法

使用50个MR数据样本开发用于自动分割的人工智能算法。由3名专家对L5/S1节段的椎骨(L5和S1椎骨)、椎间盘、腰骶神经、髂骨和皮肤进行手动分割和标注,作为参考标准。进行五折交叉验证,并使用定量分割指标评估基于MR图像分割方法的人工智能的性能。通过对人工智能衍生的三维(AI-3D)模型与参考标准衍生的三维(GT-3D)模型之间的定量测量进行比较分析,以验证腰骶部结构三维重建及PELD入路术前评估的可行性。

结果

基于人工智能的自动MR图像分割对L5椎骨、S1椎骨、椎间盘、腰骶神经、髂骨和皮肤的平均Dice分数分别达到0.921、0.924、0.885、0.808、0.886和0.816。AI-3D模型与GT-3D模型在定量测量方面无显著差异。定量测量的比较分析显示出高度的相关性和一致性。

局限性

我们的方法在自动MR图像分割中未涉及血管分割。我们研究的样本量较小,研究结果需要在大样本的前瞻性研究中进行验证。

结论

我们开发了一种基于人工智能的自动MR图像分割方法,该方法能在MR图像上同时有效地分割腰骶部结构(如L5椎骨、S1椎骨、椎间盘、腰骶神经、髂骨和皮肤),并可用于构建腰骶部结构的三维模型,以选择L5/S1节段PELD的合适入路。

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