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中国人群高危食管静脉曲张的无创预测模型。

Non-invasive prediction model for high-risk esophageal varices in the Chinese population.

机构信息

Department of Gastroenterology, The Second Affiliated Hospital of Xi'an Jiaotong University, Xi'an 710004, Shaanxi Province, China.

出版信息

World J Gastroenterol. 2020 Jun 7;26(21):2839-2851. doi: 10.3748/wjg.v26.i21.2839.

Abstract

BACKGROUND

There are two types of esophageal varices (EVs): high-risk EVs (HEVs) and low-risk EVs, and HEVs pose a greater threat to patient life than low-risk EVs. The diagnosis of EVs is mainly conducted by gastroscopy, which can cause discomfort to patients, or by non-invasive prediction models. A number of non-invasive models for predicting EVs have been reported; however, those that are based on the formula for calculation of liver and spleen volume in HEVs have not been reported.

AIM

To establish a non-invasive prediction model based on the formula for liver and spleen volume for predicting HEVs in patients with viral cirrhosis.

METHODS

Data from 86 EV patients with viral cirrhosis were collected. Actual liver and spleen volumes of the patients were determined by computed tomography, and their calculated liver and spleen volumes were calculated by standard formulas. Other imaging and biochemical data were determined. The impact of each parameter on HEVs was analyzed by univariate and multivariate analyses, the data from which were employed to establish a non-invasive prediction model. Then the established prediction model was compared with other previous prediction models. Finally, the discriminating ability, calibration ability, and clinical efficacy of the new model was verified in both the modeling group and the external validation group.

RESULTS

Data from univariate and multivariate analyses indicated that the liver-spleen volume ratio, spleen volume change rate, and aspartate aminotransferase were correlated with HEVs. These indexes were successfully used to establish the non-invasive prediction model. The comparison of the models showed that the established model could better predict HEVs compared with previous models. The discriminating ability, calibration ability, and clinical efficacy of the new model were affirmed.

CONCLUSION

The non-invasive prediction model for predicting HEVs in patients with viral cirrhosis was successfully established. The new model is reliable for predicting HEVs and has clinical applicability.

摘要

背景

食管静脉曲张(EVs)有两种类型:高危食管静脉曲张(HEVs)和低危食管静脉曲张,HEVs 比低危食管静脉曲张对患者生命构成更大的威胁。EVs 的诊断主要通过胃镜进行,这会给患者带来不适,或者通过非侵入性预测模型进行。已经报道了许多用于预测 EVs 的非侵入性模型;然而,基于 HEVs 中计算肝脾体积的公式的模型尚未报道。

目的

建立一种基于肝脾体积公式的非侵入性预测模型,用于预测病毒性肝硬化患者的 HEVs。

方法

收集了 86 例 EV 患者的临床资料。采用 CT 测定患者的实际肝脾体积,采用标准公式计算其计算肝脾体积。同时测定其他影像学和生化数据。通过单因素和多因素分析分析各参数对 HEVs 的影响,利用这些数据建立非侵入性预测模型。然后将建立的预测模型与其他先前的预测模型进行比较。最后,在建模组和外部验证组中验证新模型的区分能力、校准能力和临床疗效。

结果

单因素和多因素分析数据表明,肝脾体积比、脾体积变化率和天冬氨酸转氨酶与 HEVs 相关。这些指标成功地用于建立非侵入性预测模型。模型比较表明,与先前的模型相比,所建立的模型能够更好地预测 HEVs。新模型的区分能力、校准能力和临床疗效得到了肯定。

结论

成功建立了预测病毒性肝硬化患者 HEVs 的非侵入性预测模型。该新模型可靠地预测 HEVs,具有临床适用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a1dc/7284178/68e968a37689/WJG-26-2839-g001.jpg

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