[Automatic modeling of the knee joint based on artificial intelligence]

Zhongguo Xiu Fu Chong Jian Wai Ke Za Zhi. 2023 Mar 15;37(3):348-352. doi: 10.7507/1002-1892.202212008.
[Article in Chinese]

Abstract

Objective: To investigate an artificial intelligence (AI) automatic segmentation and modeling method for knee joints, aiming to improve the efficiency of knee joint modeling.

Methods: Knee CT images of 3 volunteers were randomly selected. AI automatic segmentation and manual segmentation of images and modeling were performed in Mimics software. The AI-automated modeling time was recorded. The anatomical landmarks of the distal femur and proximal tibia were selected with reference to previous literature, and the indexes related to the surgical design were calculated. Pearson correlation coefficient ( r) was used to judge the correlation of the modeling results of the two methods; the consistency of the modeling results of the two methods were analyzed by DICE coefficient.

Results: The three-dimensional model of the knee joint was successfully constructed by both automatic modeling and manual modeling. The time required for AI to reconstruct each knee model was 10.45, 9.50, and 10.20 minutes, respectively, which was shorter than the manual modeling [(64.73±17.07) minutes] in the previous literature. Pearson correlation analysis showed that there was a strong correlation between the models generated by manual and automatic segmentation ( r=0.999, P<0.001). The DICE coefficients of the 3 knee models were 0.990, 0.996, and 0.944 for the femur and 0.943, 0.978, and 0.981 for the tibia, respectively, verifying a high degree of consistency between automatic modeling and manual modeling.

Conclusion: The AI segmentation method in Mimics software can be used to quickly reconstruct a valid knee model.

目的: 研究基于Mimics软件的人工智能(artificial intelligence,AI)自动分割膝关节CT图像建模方法,旨在提高膝关节建模效率。.

方法: 选择3名志愿者膝关节CT影像,在Mimics 软件中分别进行AI自动分割和手动分割图像并建模,记录自动建模时间。参考既往文献选择股骨远端和胫骨近端解剖标志点,计算与手术设计相关的参考指标,用Pearson相关系数( r)判断两种方法建模结果相关性,以DICE系数分析两种方法建模结果一致性。.

结果: 经自动及手动分割图像均成功构建膝关节三维模型。3个膝关节自动分割建模所需时间分别为10.45、9.50、10.20 min,较既往文献中手动分割建模(64.73±17.07) min 缩短。相关性分析示手动和自动分割生成的模型之间存在强相关性( r=0.999, P<0.001)。3个膝关节股骨DICE系数分别为0.990、0.996和0.944,胫骨分别为0.943、0.978和0.981,提示手动与自动分割建模一致性程度高。.

结论: 在Mimics软件中可采用AI分割图像方法快速建立有效的膝关节三维模型。.

Keywords: Automatic segmentation; DICE coefficient; Pearson coefficient; artificial intelligence; knee joint.

Publication types

  • English Abstract

MeSH terms

  • Artificial Intelligence*
  • Femur / diagnostic imaging
  • Humans
  • Knee
  • Knee Joint* / diagnostic imaging
  • Knee Joint* / surgery
  • Magnetic Resonance Imaging / methods
  • Tibia / diagnostic imaging

Grants and funding

上海介入医疗器械工程技术研究中心建设项目(18DZ2250900);国家自然科学基金资助项目(82172441)