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用于鉴别血清胃蛋白酶原和抗幽门螺杆菌抗体结果为阴性的患者胃癌风险的评分模型。

Scoring model for discriminating gastric cancer risk in patients with negative serum pepsinogen and anti-Helicobacter pylori antibody results.

作者信息

Cho Jun-Hyung, Jin So-Young, Park Suyeon

机构信息

Digestive Disease Center, Soonchunhyang University Hospital, Seoul, South Korea.

Department of Pathology, Soonchunhyang University Hospital, Seoul, South Korea.

出版信息

J Gastroenterol Hepatol. 2021 Dec;36(12):3345-3353. doi: 10.1111/jgh.15630. Epub 2021 Jul 30.

Abstract

BACKGROUND

The ABC test measures serum pepsinogen and anti-Helicobacter pylori IgG antibody levels to predict precancerous conditions in the stomach and gastric cancer. However, a limitation of this test is that the gastric cancer risk is not negligible in patients with a negative result.

METHODS

Based on their ABC results, 1157 patients were classified into Groups A (n = 392), B (n = 479), C (n = 247), and D (n = 39). In Group A, 24.2% of patients had atrophic gastritis and/or intestinal metaplasia and had thus been incorrectly assigned to Group A. Patients in Group A were then assigned to derivation (n = 236) and validation (n = 156) cohorts by 3:2 random sampling. Logistic regression analyses were performed to identify the factors discriminating between a correct (true) and incorrect (false) Group A classification.

RESULTS

A 4-point discriminative model was constructed based on a high-negative H. pylori IgG antibody titer and the patient's age (50-64 and ≥65 years). The areas under the receiver operating characteristic curve for the derivation and validation cohorts were 0.868 and 0.894, respectively. In the validation cohort, the addition of a discriminative model score ≥2 to the ABC method showed a similar accuracy for predicting gastric cancer risk compared with the ABC method alone (93.8% vs. 92.4%).

CONCLUSION

The 4-point discriminative model may help identify patients with a normal serological test who are nonetheless at risk of developing gastric cancer.

摘要

背景

ABC检测通过测量血清胃蛋白酶原和抗幽门螺杆菌IgG抗体水平来预测胃癌前病变和胃癌。然而,该检测的一个局限性在于,检测结果为阴性的患者患胃癌的风险仍不可忽略。

方法

根据ABC检测结果,将1157例患者分为A组(n = 392)、B组(n = 479)、C组(n = 247)和D组(n = 39)。A组中,24.2%的患者患有萎缩性胃炎和/或肠化生,因此被错误地归入A组。然后,通过3:2随机抽样将A组患者分为推导队列(n = 236)和验证队列(n = 156)。进行逻辑回归分析以确定区分A组正确(真)和错误(假)分类的因素。

结果

基于幽门螺杆菌IgG抗体高阴性滴度和患者年龄(50 - 64岁和≥65岁)构建了一个4分判别模型。推导队列和验证队列的受试者工作特征曲线下面积分别为0.868和0.894。在验证队列中,与单独使用ABC方法相比,将判别模型评分≥2添加到ABC方法中在预测胃癌风险方面显示出相似的准确性(93.8%对92.4%)。

结论

4分判别模型可能有助于识别血清学检测正常但仍有患胃癌风险的患者。

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