Cheung Ching-Lung, Li Gloria Hy, Li Hang-Long, Mak Constance, Tan Kathryn Cb, Kung Annie Wc
Department of Pharmacology and Pharmacy, The University of Hong Kong, Hong Kong.
Laboratory of Data Discovery for Health (D24H), Hong Kong Science and Technology Park, Hong Kong SAR, China.
Osteoporos Sarcopenia. 2023 Mar;9(1):8-13. doi: 10.1016/j.afos.2023.03.009. Epub 2023 Mar 24.
To enhance the public awareness and facilitate diagnosis of osteoporosis, we aim to develop a new Chinese Osteoporosis Screening Algorithm (COSA) to identify people at high risk of osteoporosis.
A total of 4747 postmenopausal women and men aged ≥ 50 from the Hong Kong Osteoporosis Study were randomly split into a development (N = 2373) and an internal validation cohort (N = 2374). An external validation cohort comprising 1876 community-dwelling subjects was used to evaluate the positive predictive value (PPV).
Among 11 predictors included, age, sex, weight, and history of fracture were significantly associated with osteoporosis after correction for multiple testing. Age- and sex-stratified models were developed due to the presence of significant sex and age interactions. The area under the curve of the COSA in the internal validation cohort was 0.761 (95% CI, 0.711-0.811), 0.822 (95% CI, 0.792-0.851), and 0.946 (95% CI, 0.908-0.984) for women aged < 65, women aged ≥ 65, and men, respectively. The COSA demonstrated improved reclassification performance when compared to Osteoporosis Self-Assessment Tool for Asians. In the external validation cohort, the PPV of COSA was 40.6%, 59.4%, and 19.4% for women aged < 65, women aged ≥ 65, and men, respectively. In addition, COSA > 0 was associated with an increased 10-year risk of hip fracture in women ≥ 65 (OR, 4.65; 95% CI, 2.24-9.65) and men (OR, 11.51; 95% CI, 4.16-31.81).
We have developed and validated a new osteoporosis screening algorithm, COSA, specific for Hong Kong Chinese.
为提高公众对骨质疏松症的认识并促进其诊断,我们旨在开发一种新的中国骨质疏松症筛查算法(COSA),以识别骨质疏松症高危人群。
来自香港骨质疏松症研究的4747名绝经后妇女和年龄≥50岁的男性被随机分为开发队列(N = 2373)和内部验证队列(N = 2374)。一个由1876名社区居住受试者组成的外部验证队列用于评估阳性预测值(PPV)。
在纳入的11个预测因素中,校正多重检验后,年龄、性别、体重和骨折史与骨质疏松症显著相关。由于存在显著的性别和年龄交互作用,因此构建了年龄和性别分层模型。在内部验证队列中,COSA在年龄<65岁的女性、年龄≥65岁的女性和男性中的曲线下面积分别为0.761(95%CI,0.711 - 0.811)、0.822(95%CI,0.792 - 0.851)和0.946(95%CI,0.908 - 0.984)。与亚洲人骨质疏松症自我评估工具相比,COSA表现出更好的重新分类性能。在外部验证队列中,COSA在年龄<65岁的女性、年龄≥65岁的女性和男性中的PPV分别为40.6%、59.4%和19.4%。此外,在年龄≥65岁的女性(OR,4.65;95%CI,2.24 - 9.65)和男性(OR,11.51;95%CI,4.16 - 31.81)中,COSA>0与髋部骨折10年风险增加相关。
我们已经开发并验证了一种专门针对中国香港人的新型骨质疏松症筛查算法COSA。