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A Patient-Specific Model for Predicting Tibia Soft Tissue Insertions From Bony Outlines Using a Spatial Structure Supervised Learning Framework

机译:使用空间结构监督学习框架从骨轮廓预测胫骨软组织插入的患者特定模型

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Recreating the natural anatomy in ligament reconstruction is crucial to fully restore the knee joint function and reduce impingement on iatrogenic injury to adjacent structures, yet is subject to the difficulties in locating ligament and other associated soft tissues insertion sites intraoperatively and the high interperson morphological variability cross patients. In this study, we present a new quantitative analysis method capable of achieving personalized identification of cruciate ligament and soft tissue insertions. We craft patient-specific features of tibia outline that can be accurately and reliably measured from CT images. In addition, we propose a supervised structure learning and prediction model with special interdimensional and response structure regularization terms to capture relationship between the spatial arrangement of soft tissue insertions and the patient-specific features extracted from the tibia outlines. In the experiment, the proposed model outperforms baseline models and provides an accurate and accessible approach that can be used as the first and the most critical step to achieve personalized surgical planning in cruciate ligament reconstruction.
机译:在韧带重建中重建自然解剖结构对于全面恢复膝关节功能并减少对医源性损伤邻近结构的影响至关重要,但在手术中难以找到韧带和其他相关软组织插入部位的情况以及人际形态变异高耐心。在这项研究中,我们提出了一种新的定量分析方法,能够实现对交叉韧带和软组织插入物的个性化识别。我们根据胫骨轮廓绘制特定于患者的特征,可以从CT图像中准确可靠地对其进行测量。此外,我们提出了一种具有特殊的跨维和响应结构正则化术语的监督结构学习和预测模型,以捕获软组织插入物的空间排列与从胫骨轮廓提取的患者特定特征之间的关系。在实验中,提出的模型优于基线模型,并提供了一种精确且可访问的方法,可以用作在十字韧带重建中实现个性化手术计划的第一步和最关键的一步。

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