Sechenov University, 8-2 Trubetskaya, Moscow, Russia, 119991.
Marchuk Institute of Numerical Mathematics RAS, 8 Gubkin Str., Moscow, Russia, 119333.
Int J Comput Assist Radiol Surg. 2022 Feb;17(2):393-402. doi: 10.1007/s11548-021-02527-6. Epub 2021 Nov 13.
The diseases and injuries of the knee joint are the most common orthopedic disorders. Personalized knee models can be helpful in the process of early intervention and lasting treatment techniques development. Fully automatic reconstruction of knee joint anatomical structures from medical images (CT, MRI, ultrasound) remains a challenge. For this reason, most of state-of-the-art knee joint models contain simplifications such as representation of muscles and ligaments as line segments connecting two points which replace attachment areas. The paper presents algorithms for automatic detection of such points on knee CT images.
This paper presents three approaches to automatic detection of ligaments and tendons attachment sites on the patients CT images: qualitative anatomical descriptions, analysis of bones curvature, and quantitative anatomical descriptions. Combinations of these approaches result in new automatic detection algorithms. Each algorithm exploits anatomical peculiarities of each attachment site, e.g., bone curvature and number of other attachments in a neighborhood of the site.
The experimental dataset consisted of 26 anonymized CT sequences containing right and left knee joints in different resolutions. The proposed algorithms take into account bone surface curvatures and spatial differences in locations of medial and lateral parts of both knees. The algorithms for detection of quadriceps femoris, popliteus, biceps femoris tendons, and lateral collateral and medial collateral ligaments attachment sites are provided, as well as examples of their application. Two algorithms are validated by comparison with known statistics of ligaments lengths and also using ground truth annotations for anatomical landmarks approved by clinical experts.
The algorithms simplify generation of patient-specific knee joint models demanded in personalized biomechanical models. The algorithms in the current implementation have two important limitations. First, the correctness of the produced results depends on the bones segmentation quality. Second, the presented algorithms detect a point of the attachment site, which is not necessarily its center. Therefore, manual correction of the attachment site location may be required for attachments with relatively large area.
膝关节疾病和损伤是最常见的骨科疾病。个性化膝关节模型有助于早期干预和持久治疗技术的发展。从医学图像(CT、MRI、超声)中全自动重建膝关节解剖结构仍然是一个挑战。出于这个原因,大多数最先进的膝关节模型都包含简化,例如将肌肉和韧带表示为连接两个点的线段,以替代附着区域。本文提出了从膝关节 CT 图像中自动检测这些点的算法。
本文提出了三种自动检测患者 CT 图像中韧带和肌腱附着点的方法:定性解剖描述、骨骼曲率分析和定量解剖描述。这些方法的组合产生了新的自动检测算法。每个算法都利用了每个附着点的解剖学特征,例如附着点附近骨骼曲率和其他附着点的数量。
实验数据集包含 26 个匿名 CT 序列,包含不同分辨率的右侧和左侧膝关节。所提出的算法考虑了骨骼表面曲率以及内侧和外侧膝关节部分在空间上的差异。提供了检测股四头肌、腘绳肌腱、股二头肌肌腱以及外侧副韧带和内侧副韧带附着点的算法,以及它们的应用示例。两种算法通过与已知的韧带长度统计数据进行比较,并使用经过临床专家认可的解剖学标记的地面实况注释进行验证。
这些算法简化了个性化生物力学模型所需的患者特定膝关节模型的生成。当前实现的算法有两个重要的局限性。首先,生成结果的正确性取决于骨骼分割的质量。其次,所提出的算法检测到的是附着点的位置,而不一定是其中心。因此,对于相对较大面积的附着点,可能需要手动修正附着点的位置。