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原发性骨质疏松风险评分(RPOPs):基层医院原发性骨质疏松风险评估的算法模型。

Risk of primary osteoporosis score (RPOPs): an algorithm model for primary osteoporosis risk assessment in grass-roots hospital.

机构信息

Department of Laboratory Medicine, Zhejiang Quhua Hospital, Quzhou, Zhejiang Province, China.

Key Laboratory of Digital Technology in Medical Diagnostics of Zhejiang Province, Dian Diagnostics Group Co.,Ltd, Hangzhou, Zhejiang Province, China.

出版信息

BMC Musculoskelet Disord. 2022 Dec 1;23(1):1041. doi: 10.1186/s12891-022-06014-0.

Abstract

BACKGROUND

This study aimed to develop and validate a lasso regression algorithm model which was established by correlation factors of bone mineral density (BMD) and could be accurately predicted a high-risk population of primary osteoporosis (POP). It provides a rapid, economical and acceptable early screening method for osteoporosis in grass-roots hospitals.

METHODS

We collected 120 subjects from primary osteoporosis screening population in Zhejiang Quhua Hospital between May 2021 and November 2021 who were divided into three groups (normal, osteopenia and osteoporosis) according to the BMD T-score. The levels of three micro-RNAs in the plasma of these people were detected and assessed by qRT-PCR. At the same time, the levels of β-CTX and t-P1NP in serum of the three groups were determined. Based on the cluster random sampling method, 84 subjects (84/120, 70%) were selected as the training set and the rest were the test set. Lasso regression was used to screen characteristic variables and establish an algorithm model to evaluate the population at high risk of POP which was evaluated and tested in an independent test cohort. The feature variable screening process was used 10-fold cross validation to find the optimal lambda.

RESULTS

The osteoporosis risk score was established in the training set: Risk of primary osteoporosis score (RPOPs) = -0.1497785 + 2.52Age - 0.19miR21 + 0.35miR182 + 0.17β-CTx. The sensitivity, precision and accuracy of RPOPs in an independent test cohort were 79.17%, 82.61% and 75%, respectively. The AUC in the test set was 0.80. Some risk factors have a significant impact on the abnormal bone mass of the subjects. These risk factors were female (p = 0.00013), older than 55 (p < 2.2e-16) and BMI < 24 (p = 0.0091) who should pay more attention to their bone health.

CONCLUSION

In this study, we successfully constructed and validated an early screening model of osteoporosis that is able to recognize people at high risk for developing osteoporosis and remind them to take preventive measures. But it is necessary to conduct further external and prospective validation research in large sample size for RPOPs prediction models.

摘要

背景

本研究旨在建立一种基于骨密度(BMD)相关因素的lasso 回归算法模型,并对原发性骨质疏松症(POP)高危人群进行准确预测。为基层医院提供一种快速、经济、可接受的骨质疏松早期筛查方法。

方法

我们收集了 2021 年 5 月至 2021 年 11 月在浙江衢化医院进行原发性骨质疏松症筛查的人群中 120 例受试者,根据 BMD T 评分将其分为三组(正常、骨量减少和骨质疏松)。采用 qRT-PCR 检测并评估这些人的血浆中三种 micro-RNAs 的水平。同时,测定三组血清中β-CTX 和 t-P1NP 的水平。采用聚类随机抽样法,从 120 例受试者中选取 84 例(84/120,70%)作为训练集,其余为测试集。采用 lasso 回归筛选特征变量,建立评估 POP 高危人群的算法模型,并在独立测试队列中进行评估和验证。特征变量筛选过程采用 10 折交叉验证寻找最优 lambda。

结果

在训练集中建立了骨质疏松症风险评分:原发性骨质疏松症风险评分(RPOPs)= -0.1497785 + 2.52Age - 0.19miR21 + 0.35miR182 + 0.17β-CTX。在独立测试队列中,RPOPs 的灵敏度、特异度和准确度分别为 79.17%、82.61%和 75%。在测试集中的 AUC 为 0.80。一些危险因素对受试者的骨量异常有显著影响。这些危险因素包括女性(p=0.00013)、年龄大于 55 岁(p<2.2e-16)和 BMI<24(p=0.0091),这些人应更加关注自己的骨骼健康。

结论

本研究成功构建并验证了一种骨质疏松症早期筛查模型,能够识别出骨质疏松高危人群,并提醒他们采取预防措施。但需要进一步在大样本量的情况下进行外部和前瞻性验证研究,以验证 RPOPs 预测模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9222/9714167/692f7cf58b7e/12891_2022_6014_Fig1_HTML.jpg

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