Lydick E, Cook K, Turpin J, Melton M, Stine R, Byrnes C
Merck & Co., Inc., West Point, PA 19486, USA.
Am J Manag Care. 1998 Jan;4(1):37-48.
The relationship between low bone mass and risk of fracture is well documented. Although bone densitometry is the method of choice for detecting low bone mass, its use may be limited by the availability of equipment, cost, and reimbursement issues. Improved patient selection for bone densitometry might increase the cost-effectiveness of screening for osteoporosis, a goal we sought to achieve by developing and validating a questionnaire based solely on patient-derived data. Responses to the questionnaire were used to assign postmenopausal women to one of two groups: (1) those unlikely to have low bone mineral density (defined as 2 standard deviations or more below the mean bone mass at the femoral neck in young, healthy white women) and therefore probably not currently candidates for bone densitometry; and (2) those likely to have low bone mineral density and therefore probably candidates for bone densitometry. We asked community-dwelling perimenopausal and postmenopausal women attending one of 106 participating multispecialty centers (both academic and community based) to complete a self-administered questionnaire and undergo bone density measurement using dual x-ray absorptiometry. We used regression modeling to identify factors most predictive of low bone density at the femoral neck in the postmenopausal group. A simple additive scoring system was developed based on the regression model. Results were validated in a separate cohort of postmenopausal women. Data were collected from 1279 postmenopausal women in the development cohort. Using only six questions (age, weight, race, fracture history, rheumatoid arthritis history, and estrogen use), we achieved a target of 89% sensitivity and 50% specificity. The likelihood ratio was 1.78. Validation in a separate group of 207 postmenopausal women yielded 91% sensitivity and 40% specificity. Assuming population characteristics similar to those of our development cohort, use of our questionnaire could decrease the use of bone densitometry by approximately 30%. Sensitivity and specificity can be varied by changing the level for referral for densitometry to provide the most cost-effective use within a particular healthcare setting. Thus use of our questionnaire, an inexpensive prescreening tool, in conjunction with physician assessment can optimize the use of bone densitometry and may lead to substantial savings in many healthcare settings where large numbers of women require evaluation for low bone mass.
低骨量与骨折风险之间的关系已有充分记录。尽管骨密度测定是检测低骨量的首选方法,但其应用可能受到设备可用性、成本及报销问题的限制。改进骨密度测定的患者选择可能会提高骨质疏松症筛查的成本效益,这是我们试图通过开发并验证一份仅基于患者自身数据的问卷来实现的目标。问卷的回答被用于将绝经后女性分为两组:(1)那些不太可能有低骨矿物质密度的女性(定义为比年轻、健康白人女性股骨颈平均骨量低2个标准差或更多),因此目前可能不是骨密度测定的候选对象;(2)那些可能有低骨矿物质密度的女性,因此可能是骨密度测定的候选对象。我们让在106个参与研究的多专科中心(包括学术中心和社区中心)之一就诊的社区围绝经期和绝经后女性完成一份自我管理的问卷,并使用双能X线吸收法进行骨密度测量。我们使用回归模型来确定绝经后组中最能预测股骨颈低骨密度的因素。基于回归模型开发了一个简单的加法评分系统。结果在另一组绝经后女性中得到验证。在开发队列中收集了1279名绝经后女性的数据。仅使用六个问题(年龄、体重、种族、骨折史、类风湿关节炎史和雌激素使用情况),我们达到了89%的敏感性和50%的特异性目标。似然比为1.78。在另一组207名绝经后女性中的验证产生了91% 的敏感性和40%的特异性。假设人群特征与我们的开发队列相似,使用我们的问卷可使骨密度测定的使用减少约30%。通过改变骨密度测定转诊水平,可以改变敏感性和特异性,以便在特定医疗环境中实现最具成本效益的使用。因此,在许多有大量女性需要评估低骨量的医疗环境中,将我们的问卷(一种廉价的预筛查工具)与医生评估结合使用,可以优化骨密度测定的使用,并可能带来可观的节省。