Division of Rheumatology, Allergy and Immunology, Department of Internal Medicine, Kaohsiung Chang Gung Memorial Hospital, Chang Gung University College of Medicine, No. 123, Ta-Pei Road, Kaohsiung, 833, Taiwan.
Department of Family Medicine, National Cheng Kung University Hospital, College of Medicine, National Cheng Kung University, Tainan, Taiwan.
J Bone Miner Metab. 2020 Mar;38(2):213-221. doi: 10.1007/s00774-019-01046-4. Epub 2019 Oct 3.
The aim of this study was to develop an algorithm to identify high-risk populations of fragility fractures in Taiwan.
A total of 16,539 postmenopausal women and men (age ≥ 50 years) were identified from the Taiwan Osteoporosis Survey database. Using the Taiwan FRAX tool, the 10-year probability of major osteoporotic fracture (MOF) and hip fracture (HF) and the individual intervention threshold (IIT) of each participant were calculated. Subjects with either a probability above the IIT or those with MOF ≥ 20% or HF ≥ 9% were included as group A. Subjects with a bone mineral density (BMD) T-score at femoral neck based on healthy subjects of ≤ - 2.5 were included in group B. We tested several cutoff points for MOF and HF so that the number of patients in group A and group B were similar. A novel country-specific hybrid intervention threshold along with an algorithm was generated to identify high fracture risk individuals.
3173 (19.2%) and 3129 (18.9%) participants were categorized to groups A and B, respectively. Participants in group B had a significantly lower BMD (p < 0.001), but clinical characteristics, especially the 10-year probability of MOF (p < 0.001) or HF (p < 0.001), were significantly worse in group A. We found the algorithm generated from the hybrid intervention threshold is practical.
The strategy of generating an algorithm for fracture prevention by novel hybrid intervention threshold is more efficient as it identifies patients with a higher risk of fragility fracture and could be a template for other country-specific policies.
本研究旨在开发一种用于识别台湾脆性骨折高危人群的算法。
从台湾骨质疏松症调查数据库中确定了 16539 名绝经后妇女和男性(年龄≥50 岁)。使用台湾 FRAX 工具,计算每位参与者的 10 年主要骨质疏松性骨折(MOF)和髋部骨折(HF)的概率和个体干预阈值(IIT)。概率高于 IIT 或 MOF≥20%或 HF≥9%的参与者被纳入 A 组。BMD 股骨颈 T 评分低于健康人群的-2.5 者被纳入 B 组。我们测试了 MOF 和 HF 的几个截止值,以便 A 组和 B 组的患者数量相似。生成了一种新的国家特异性混合干预阈值以及一种算法,以识别高骨折风险个体。
3173(19.2%)和 3129(18.9%)名参与者分别被归类为 A 组和 B 组。B 组的参与者 BMD 显著较低(p<0.001),但临床特征,特别是 10 年 MOF(p<0.001)或 HF(p<0.001)的概率明显较差。我们发现,从混合干预阈值生成的算法是可行的。
通过新型混合干预阈值生成骨折预防算法的策略更有效,因为它可以识别出脆性骨折风险较高的患者,并且可以作为其他国家特定政策的模板。