Suppr超能文献

绝经后女性骨折风险预测:GO 研究中 FRAX、Garvan 和 POL-RISK 算法的比较。

Fracture risk prediction in postmenopausal women from GO Study: the comparison between FRAX, Garvan, and POL-RISK algorithms.

机构信息

Department and Clinic of Internal Diseases, Diabetology, and Nephrology, Metabolic Bone Diseases Unit, Faculty of Medical Sciences in Zabrze, Medical University of Silesia, 3-Maja 13/15 Street, 41-800, Katowice, Poland.

Department of Applied Informatics, Silesian University of Technology, 44-100, Gliwice, Poland.

出版信息

Arch Osteoporos. 2024 May 16;19(1):39. doi: 10.1007/s11657-024-01392-5.

Abstract

UNLABELLED

In the longitudinal, retrospective study, the ability of the FRAX, Garvan, and POL-RISK algorithms to predict osteoporotic fractures was compared in a group of 457 women. Using the rigid threshold of 10% showed a significant discrepancy in sensitivity and specificity of all tools. New thresholds for high risk of fractures were established for each calculator separately: 6.3% for FRAX major fracture, 20.0% for Garvan any fracture, and 18.0% for POL-RISK any fracture. Such thresholds allow for improving the diagnostic accuracy of all three calculators.

INTRODUCTION

The aim of the longitudinal, retrospective study was to compare three tools designed to assess fracture risk: FRAX, Garvan, and POL-RISK in their prediction of fracture incidence.

MATERIAL

The study group consisted of 457 postmenopausal women with a mean age of 64.21 ± 5.94 years from the Gliwice Osteoporosis (GO) Study. Comprehensive data on clinical factors related to fractures were collected for all participants. Bone densitometry was performed at the proximal femur using the Prodigy device (GE, USA). Fracture risk was established using the FRAX, Garvan, and POL-RISK algorithms. Data on the incidence of osteoporotic fractures were collected over the last 10 years.

RESULTS

During the period of observation 72, osteoporotic fractures occurred in 63 subjects. For a preliminary comparison of the predictive value of analyzed diagnostic tools, the fracture risk threshold of 10% was used. For FRAX, the fracture probability exceeding 10% was observed only in 11 subjects who experienced fractures; thus, the fracture was properly predicted only in 22.9% of women. For Garvan, the respective value was 90.5%, and for POL-RISK, it was 98.4%. That gave a very low true positive value for FRAX and a very high false positive value for Garvan and POL-RISK. Based on ROC curves, new thresholds for high risk of fractures were established for each calculator separately: 6.3% for FRAX major fracture, 20.0% for Garvan any fracture, and 18.0% for POL-RISK any fracture. Such thresholds improve the diagnostic accuracy of all compared fracture prediction tools.

CONCLUSION

The current study showed that different fracture risk assessment tools, although having similar clinical purposes, require different cut-off thresholds for making therapeutic decisions. Better identification of patients requiring therapy based on such an approach may help reduce the number of new fractures.

摘要

目的

本纵向回顾性研究旨在比较三种用于评估骨折风险的工具:FRAX、Garvan 和 POL-RISK,以预测骨折发生率。

材料

研究组由来自 Gliwice Osteoporosis (GO) 研究的 457 名绝经后女性组成,平均年龄为 64.21±5.94 岁。所有参与者均收集了与骨折相关的临床因素的综合数据。使用 Prodigy 设备(美国通用电气公司)在股骨近端进行骨密度测定。使用 FRAX、Garvan 和 POL-RISK 算法确定骨折风险。收集了过去 10 年的骨质疏松性骨折发病数据。

结果

在观察期间,72 名受试者发生了骨质疏松性骨折。为了初步比较分析诊断工具的预测价值,使用了 10%的骨折风险阈值。对于 FRAX,只有 11 名发生骨折的受试者的骨折概率超过 10%;因此,只有 22.9%的女性正确预测了骨折。对于 Garvan,相应的值为 90.5%,而对于 POL-RISK,则为 98.4%。这使得 FRAX 的真阳性值非常低,而 Garvan 和 POL-RISK 的假阳性值非常高。基于 ROC 曲线,为每个计算器分别建立了骨折高风险的新阈值:FRAX 主要骨折为 6.3%,Garvan 任何骨折为 20.0%,POL-RISK 任何骨折为 18.0%。这些阈值提高了所有比较骨折预测工具的诊断准确性。

结论

本研究表明,尽管不同的骨折风险评估工具具有相似的临床用途,但为了做出治疗决策,需要不同的截断值。基于这种方法更好地识别需要治疗的患者,可能有助于减少新发骨折的数量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/22a2/11098877/0613d1c58591/11657_2024_1392_Fig1_HTML.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验