SH Ho Scoliosis Research Laboratory, Joint Scoliosis Research Centre of the Chinese University of Hong Kong and Nanjing University, The Chinese University of Hong Kong, Hong Kong Special Administrative Region (SAR), China.
Department of Orthopedics and Traumatology, The Chinese University of Hong Kong, Hong Kong SAR, China.
J Bone Miner Res. 2024 Aug 5;39(7):956-966. doi: 10.1093/jbmr/zjae083.
Low bone mineral density and impaired bone quality have been shown to be important prognostic factors for curve progression in adolescent idiopathic scoliosis (AIS). There is no evidence-based integrative interpretation method to analyze high-resolution peripheral quantitative computed tomography (HR-pQCT) data in AIS. This study aimed to (1) utilize unsupervised machine learning to cluster bone microarchitecture phenotypes on HR-pQCT parameters in girls with AIS, (2) assess the phenotypes' risk of curve progression and progression to surgical threshold at skeletal maturity (primary cohort), and (3) investigate risk of curve progression in a separate cohort of girls with mild AIS whose curve severity did not reach bracing threshold at recruitment (secondary cohort). Patients were followed up prospectively for 6.22 ± 0.33 years in the primary cohort (n = 101). Three bone microarchitecture phenotypes were clustered by fuzzy C-means at time of peripubertal peak height velocity (PHV). Phenotype 1 had normal bone characteristics. Phenotype 2 was characterized by low bone volume and high cortical bone density, and phenotype 3 had low cortical and trabecular bone density and impaired trabecular microarchitecture. The difference in bone quality among the phenotypes was significant at peripubertal PHV and continued to skeletal maturity. Phenotype 3 had significantly increased risk of curve progression to surgical threshold at skeletal maturity (odd ratio [OR] = 4.88; 95% CI, 1.03-28.63). In the secondary cohort (n = 106), both phenotype 2 (adjusted OR = 5.39; 95% CI, 1.47-22.76) and phenotype 3 (adjusted OR = 3.67; 95% CI, 1.05-14.29) had increased risk of curve progression ≥6° with mean follow-up of 3.03 ± 0.16 years. In conclusion, 3 distinct bone microarchitecture phenotypes could be clustered by unsupervised machine learning on HR-pQCT-generated bone parameters at peripubertal PHV in AIS. The bone quality reflected by these phenotypes was found to have significant differentiating risk of curve progression and progression to surgical threshold at skeletal maturity in AIS.
低骨矿物质密度和骨质量受损已被证明是青少年特发性脊柱侧凸 (AIS) 曲线进展的重要预后因素。目前尚无基于循证的综合解释方法来分析 AIS 中的高分辨率外周定量计算机断层扫描 (HR-pQCT) 数据。本研究旨在:(1) 利用无监督机器学习方法对 AIS 女孩的 HR-pQCT 参数进行骨微观结构表型聚类,(2) 在骨骼成熟时评估表型的曲线进展和进展到手术阈值的风险(主要队列),(3) 研究在招募时曲线严重程度未达到支具阈值的轻度 AIS 女孩的另一个队列中曲线进展的风险(次要队列)。在主要队列中,患者前瞻性随访 6.22 ± 0.33 年(n = 101)。在青春期峰值身高速度(PHV)时,通过模糊 C 均值对 3 种骨微观结构表型进行聚类。表型 1 具有正常的骨骼特征。表型 2 的特点是骨量低和皮质骨密度高,表型 3 的特点是皮质骨和小梁骨密度低以及小梁微观结构受损。在青春期 PHV 时,表型之间的骨质量差异显著,并持续到骨骼成熟。表型 3 在骨骼成熟时曲线进展到手术阈值的风险显著增加(优势比 [OR] = 4.88;95%CI,1.03-28.63)。在次要队列(n = 106)中,表型 2(调整后的 OR = 5.39;95%CI,1.47-22.76)和表型 3(调整后的 OR = 3.67;95%CI,1.05-14.29)的曲线进展风险均增加,随访平均时间为 3.03 ± 0.16 年。总之,在 AIS 中,在青春期 PHV 时,可以通过 HR-pQCT 生成的骨参数的无监督机器学习对 3 种不同的骨微观结构表型进行聚类。这些表型所反映的骨质量被发现对 AIS 中的曲线进展和进展到骨骼成熟时的手术阈值具有显著的区分风险。