Department of Internal Medicine, Seoul National University Bundang Hospital, Seongnam, Korea.
Department of Internal Medicine, Seoul National University College of Medicine, Seoul, Korea.
Osteoporos Int. 2023 Aug;34(8):1437-1451. doi: 10.1007/s00198-023-06787-7. Epub 2023 May 17.
The need for an accurate country-specific real-world-based fracture prediction model is increasing. Thus, we developed scoring systems for osteoporotic fractures from hospital-based cohorts and validated them in an independent cohort in Korea. The model includes history of fracture, age, lumbar spine and total hip T-score, and cardiovascular disease.
Osteoporotic fractures are substantial health and economic burden. Therefore, the need for an accurate real-world-based fracture prediction model is increasing. We aimed to develop and validate an accurate and user-friendly model to predict major osteoporotic and hip fractures using a common data model database.
The study included 20,107 and 13,353 participants aged ≥ 50 years with data on bone mineral density using dual-energy X-ray absorptiometry from the CDM database between 2008 and 2011 from the discovery and validation cohort, respectively. The main outcomes were major osteoporotic and hip fracture events. DeepHit and Cox proportional hazard models were used to identify predictors of fractures and to build scoring systems, respectively.
The mean age was 64.5 years, and 84.3% were women. During a mean of 7.6 years of follow-up, 1990 major osteoporotic and 309 hip fracture events were observed. In the final scoring model, history of fracture, age, lumbar spine T-score, total hip T-score, and cardiovascular disease were selected as predictors for major osteoporotic fractures. For hip fractures, history of fracture, age, total hip T-score, cerebrovascular disease, and diabetes mellitus were selected. Harrell's C-index for osteoporotic and hip fractures were 0.789 and 0.860 in the discovery cohort and 0.762 and 0.773 in the validation cohort, respectively. The estimated 10-year risks of major osteoporotic and hip fractures were 2.0%, 0.2% at score 0 and 68.8%, 18.8% at their maximum scores, respectively.
We developed scoring systems for osteoporotic fractures from hospital-based cohorts and validated them in an independent cohort. These simple scoring models may help predict fracture risks in real-world practice.
准确的、基于特定国家的实际骨折预测模型的需求正在增加。因此,我们开发了基于医院队列的骨质疏松性骨折评分系统,并在韩国的一个独立队列中进行了验证。该模型包括骨折史、年龄、腰椎和全髋关节 T 评分以及心血管疾病。
骨质疏松性骨折是一个重大的健康和经济负担。因此,对准确的、基于实际情况的骨折预测模型的需求正在增加。我们旨在开发和验证一种准确且易于使用的模型,使用常见数据模型数据库来预测主要骨质疏松性和髋部骨折。
该研究纳入了 20107 名和 13353 名年龄≥50 岁的参与者,他们在 2008 年至 2011 年期间使用双能 X 线吸收法(DXA)在 CDM 数据库中进行了骨密度检测,分别来自发现队列和验证队列。主要结局是主要骨质疏松性和髋部骨折事件。DeepHit 和 Cox 比例风险模型分别用于确定骨折的预测因素和构建评分系统。
平均年龄为 64.5 岁,84.3%为女性。在平均 7.6 年的随访期间,观察到 1990 例主要骨质疏松性和 309 例髋部骨折事件。在最终的评分模型中,骨折史、年龄、腰椎 T 评分、全髋关节 T 评分和心血管疾病被选为主要骨质疏松性骨折的预测因素。对于髋部骨折,骨折史、年龄、全髋关节 T 评分、脑血管疾病和糖尿病被选为预测因素。骨质疏松性骨折和髋部骨折的 Harrell's C 指数在发现队列中分别为 0.789 和 0.860,在验证队列中分别为 0.762 和 0.773。估计的 10 年主要骨质疏松性和髋部骨折风险分别为 2.0%、0.2%(评分 0 分)和 68.8%、18.8%(评分最高)。
我们从基于医院的队列中开发了骨质疏松性骨折评分系统,并在一个独立的队列中进行了验证。这些简单的评分模型可能有助于预测实际实践中的骨折风险。