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利用临床风险因素识别绝经后椎体骨折女性。

Use of clinical risk factors to identify postmenopausal women with vertebral fractures.

作者信息

Tobias J H, Hutchinson A P, Hunt L P, McCloskey E V, Stone M D, Martin J C, Thompson P W, Palferman T G, Bhalla A K

机构信息

Department of Clinical Science at South Bristol, University of Bristol, Bristol, BS2 8HW, UK.

出版信息

Osteoporos Int. 2007 Jan;18(1):35-43. doi: 10.1007/s00198-006-0209-8. Epub 2006 Sep 2.

Abstract

INTRODUCTION AND HYPOTHESIS

Previous studies have been unable to identify risk factors for prevalent vertebral fractures (VF), which are suitable for use in selection strategies intended to target high-risk sub-groups for diagnostic assessment. However, these studies generally consisted of large epidemiology surveys based on questionnaires and were only able to evaluate a limited number of risk factors. Here, we investigated whether a stronger relationship exists with prevalent VF when conventional risk factors are combined with additional information obtained from detailed one-to-one assessment.

METHODS

Women aged 65-75 registered at four geographically distinct GP practices were invited to participate (n=1,518), of whom 540 attended for assessment as follows: a questionnaire asking about risk factors for osteoporosis such as height loss compared to age 25 and history of non-vertebral fracture (NVF), the get-up-and-go test, Margolis back pain score, measurement of wall-tragus and rib-pelvis distances, and BMD as measured by the distal forearm BMD. A lateral thoraco-lumbar spine X-ray was obtained, which was subsequently scored for the presence of significant vertebral deformities.

RESULTS

Of the 509 subjects who underwent spinal radiographs, 37 (7.3%) were found to have one or more VF. Following logistic regression analysis, the four most predictive clinical risk factors for prevalent VF were: height loss (P=0.006), past NVF (P=0.004), history of back pain (P=0.075) and age (P=0.05). BMD was also significantly associated with prevalent VF (P=0.002), but its inclusion did not affect associations with other variables. Factors elicited from detailed one-to-one assessment were not related to the risk of one or more prevalent VFs. The area under ROC curves derived from these regressions, which suggested that models for prevalent VF had modest predictive accuracy, were as follows: 0.68 (BMD), 0.74 (four clinical risk factors above) and 0.78 (clinical risk factors + BMD). Analyses were repeated in relation to the subgroup of 13 patients with two or more VFs, which revealed that in this instance, the Margolis back pain score and rib-pelvis distance were associated with the presence of multiple VFs (P=0.022 and 0.026, respectively). Moreover, the predictive value as reflected by the ROC curve area was improved: 0.80 (BMD), 0.88 (the four most predictive clinical risk factors consisting of the height loss, past NVF, Margolis back pain score and rib-pelvis distance) and 0.91 (clinical risk factors + BMD).

CONCLUSIONS

Evaluation of additional risk factors from detailed one-to-one assessment does not improve the predictive value of risk factors for one or more prevalent vertebral deformities in postmenopausal women. However, the use of factors such as the Margolis back pain score and rib-pelvis distance may be helpful in identifying postmenopausal women at high risk of multiple prevalent VFs.

摘要

引言与假设

既往研究未能确定适用于针对高风险亚组进行诊断评估的选择策略的现患椎体骨折(VF)风险因素。然而,这些研究通常是基于问卷的大型流行病学调查,只能评估有限数量的风险因素。在此,我们研究了将传统风险因素与从详细的一对一评估中获得的额外信息相结合时,与现患VF的关系是否更强。

方法

邀请在四个地理位置不同的全科医生诊所登记的65 - 75岁女性参与研究(n = 1,518),其中540人参加了如下评估:一份询问骨质疏松风险因素的问卷,如与25岁时相比的身高降低情况和非椎体骨折(NVF)病史、起身行走测试、马戈利斯背痛评分、测量耳屏至墙壁距离和肋骨盆距离,以及通过远端前臂骨密度测量的骨密度。获取了胸腰段脊柱侧位X线片,随后对显著椎体畸形的存在进行评分。

结果

在接受脊柱X线检查的509名受试者中,发现37人(7.3%)有一处或多处VF。经过逻辑回归分析,现患VF的四个最具预测性的临床风险因素为:身高降低(P = 0.006)、既往NVF(P = 0.004)、背痛病史(P = 0.075)和年龄(P = 0.05)。骨密度也与现患VF显著相关(P = 0.002),但其纳入并未影响与其他变量的关联。从详细的一对一评估中得出的因素与一处或多处现患VF的风险无关。这些回归得出的ROC曲线下面积表明,现患VF模型的预测准确性一般,具体如下:0.68(骨密度)、0.74(上述四个临床风险因素)和0.78(临床风险因素 + 骨密度)。对13名有两处或更多处VF的患者亚组重复进行分析,结果显示,在此情况下,马戈利斯背痛评分和肋骨盆距离与多处VF的存在相关(分别为P = 0.022和0.026)。此外,ROC曲线面积所反映的预测价值有所提高:0.80(骨密度)、0.88(由身高降低、既往NVF、马戈利斯背痛评分和肋骨盆距离组成的四个最具预测性的临床风险因素)和0.91(临床风险因素 + 骨密度)。

结论

从详细的一对一评估中评估额外的风险因素并不能提高绝经后女性一处或多处现患椎体畸形风险因素的预测价值。然而,使用马戈利斯背痛评分和肋骨盆距离等因素可能有助于识别有多处现患VF高风险的绝经后女性。

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