IEEE J Biomed Health Inform. 2018 Jul;22(4):1209-1217. doi: 10.1109/JBHI.2017.2761980. Epub 2017 Oct 11.
Intramedullary (IM) nail implantation is currently the standard treatment for femoral intertrochanteric fractures. However, individual differences in femur cavity bring a challenge in designing well-matched IM nails and cause difficulties in IM nail implantation. Therefore, there is an intense need to analyze femur cavities to predict difficulties in IM nail implantation to assist the design of IM nails. This study proposed a method to automatically identify subtypes of femur cavities that exhibit differences in potential difficulties in nail implantation by clustering the morphological features of femur models. The unsupervised subtype extraction method offers a scientific approach to stratify patients for designing and choosing well-matched IM nails. First, the quantitative morphological features of 422 femur cavities were extracted from computed tomography patient models. Second, 422 femur cavities were clustered into three distinct subtypes using a density peak-based k-means clustering method to provide a possible solution for the scientific design of IM nails. The effectiveness of the identified subtypes was validated by comparing subtype differences associated with IM nail implantation and the natural attributes of the patient. Quantitative evaluation of the mismatch degree and real clinical cases confirmed that the clustering results were clinically effective, with clear differences in the subtypes. Therefore, particular IM nails designed from the identified subtypes will potentially facilitate IM nail implantation and reduce complications. Compared with state-of-the-art methods, we used the largest scale dataset and unsupervised clustering to achieve subtype identification of femur cavities with clinical significance.
髓内钉植入术目前是股骨粗隆间骨折的标准治疗方法。然而,个体股骨腔的差异给匹配良好的髓内钉设计带来了挑战,导致髓内钉植入困难。因此,迫切需要分析股骨腔,以预测髓内钉植入的困难,从而辅助髓内钉的设计。本研究提出了一种通过聚类股骨模型的形态特征来自动识别具有潜在髓内钉植入困难差异的股骨腔亚型的方法。这种无监督的亚型提取方法为分层患者提供了一种科学的方法,以设计和选择匹配良好的髓内钉。首先,从计算机断层扫描患者模型中提取了 422 个股骨腔的定量形态特征。其次,使用基于密度峰值的 k-均值聚类方法将 422 个股骨腔聚类为三个不同的亚型,为髓内钉的科学设计提供了一种可能的解决方案。通过比较与髓内钉植入相关的亚型差异和患者的自然属性,验证了所识别的亚型的有效性。对不匹配程度的定量评估和真实临床病例证实,聚类结果具有临床意义,亚型之间存在明显差异。因此,从所识别的亚型设计的特殊髓内钉将有可能促进髓内钉植入并减少并发症。与最先进的方法相比,我们使用了最大规模的数据集和无监督聚类来实现具有临床意义的股骨腔亚型识别。