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基于MRI-PDFF诊断的中国汉族人群非酒精性脂肪性肝病风险分子预测模型的诊断准确性评估

Diagnostic accuracy assessment of molecular prediction model for the risk of NAFLD based on MRI-PDFF diagnosed Chinese Han population.

作者信息

Zhang Qing, Zhu Yueli, Yu Wanjiang, Xu Zhipeng, Zhao Zhenzhen, Liu Shousheng, Xin Yongning, Lv Kuirong

机构信息

Department of Radiology, Qingdao Municipal Hospital, 5 Donghaizhong Road, Qingdao, 266071, Shandong Province, China.

Clinical Research Center, Qingdao Municipal Hospital, 5 Donghaizhong Road, Qingdao, 266071, Shandong Province, China.

出版信息

BMC Gastroenterol. 2021 Feb 25;21(1):88. doi: 10.1186/s12876-021-01675-y.

Abstract

BACKGROUND

Several molecular prediction models based on the clinical parameters had been constructed to predict and diagnosis the risk of NAFLD, but the accuracy of these molecular prediction models remains need to be verified based on the most accurate NAFLD diagnostic method. The aim of this study was to verify the accuracy of three molecular prediction models Fatty liver index (FLI), NAFLD liver fat score system (NAFLD LFS), and Liver fat (%) in the prediction and diagnosis of NAFLD in MRI-PDFF diagnosed Chinese Han population.

PATIENTS AND METHODS

MRI-PDFF was used to diagnose the hepatic steatosis of all the subjects. Information such as name, age, lifestyle, and major medical histories were collected and the clinical parameters were measured by the standard clinical laboratory techniques. The cut-off values of each model for the risk of NAFLD were calculated based on the MRI-PDFF results. All data were analyzed using the statistical analysis software SPSS 23.0.

RESULTS

A total of 169 subjects were recruited with the matched sex and age. The ROC curves of FLI, NAFLD LFS, and Liver fat (%) models were plotted based on the results of MRI-PDFF. We founded that the accuracy of FLI, NAFLD LFS, and Liver fat (%) models for the prediction and diagnosis of NAFLD were comparative available in Chinese Han population as well as the validity of them in other ethnics and regions.

CONCLUSIONS

The molecular prediction models FLI, NAFLD LFS, and Liver fat (%) were comparative available for the prediction and diagnosis of NAFLD in Chinese Han population. MRI-PDFF could be used as the golden standard to develop the new molecular prediction models for the prediction and diagnosis of NAFLD.

摘要

背景

已经构建了几种基于临床参数的分子预测模型来预测和诊断非酒精性脂肪性肝病(NAFLD)的风险,但这些分子预测模型的准确性仍需要基于最准确的NAFLD诊断方法进行验证。本研究的目的是验证三种分子预测模型——脂肪肝指数(FLI)、NAFLD肝脏脂肪评分系统(NAFLD LFS)和肝脏脂肪(%)——在通过磁共振成像质子密度脂肪分数(MRI-PDFF)诊断的中国汉族人群中预测和诊断NAFLD的准确性。

患者与方法

使用MRI-PDFF诊断所有受试者的肝脂肪变性。收集姓名、年龄、生活方式和主要病史等信息,并通过标准临床实验室技术测量临床参数。根据MRI-PDFF结果计算每个模型NAFLD风险的临界值。所有数据均使用统计分析软件SPSS 23.0进行分析。

结果

共招募了169名年龄和性别匹配的受试者。根据MRI-PDFF结果绘制了FLI、NAFLD LFS和肝脏脂肪(%)模型的ROC曲线。我们发现,FLI、NAFLD LFS和肝脏脂肪(%)模型在预测和诊断中国汉族人群NAFLD方面的准确性较高,并且在其他种族和地区也具有有效性。

结论

分子预测模型FLI、NAFLD LFS和肝脏脂肪(%)在预测和诊断中国汉族人群NAFLD方面具有较高的可用性。MRI-PDFF可作为开发用于预测和诊断NAFLD的新分子预测模型的金标准。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/099b/7908643/e265299d0510/12876_2021_1675_Fig1_HTML.jpg

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