Joo Hyun Lim, Areum Han, Soo-Jeong Cho, Seokyung Hahn, Sang Gyun Kim
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引用次数: 0
摘要
背景:幽门螺杆菌(Hp)和胃萎缩是胃癌的重要危险因素。然而,迄今为止,还没有根据个案中存在的风险因素的特定组合来预测胃癌的提名图:利用 2003 年至 2018 年间收集的健康筛查数据进行了一项回顾性队列研究。抗-Hp抗体呈阳性结果的受试者被纳入研究。受试者被分为 4 组:低 B 组(低滴度无萎缩)、高 B 组(高滴度无萎缩)、高 C 组(高滴度有萎缩)和低 C 组(低滴度有萎缩)。通过采用考克斯比例危害模型和亚分布危害模型,为总体胃癌以及肠癌和弥漫性癌症(每种类型都被视为竞争事件)建立了提名图预测模型。通过10倍交叉验证,使用一致性指数(c-index)和曲线下面积(AUC)评估预测效果:结果:在中位 5.7 年的随访期内,28,311 名受试者中有 231 例新发胃癌,其中包括 159 例肠型胃癌、68 例弥漫型胃癌和 4 例类型不明的胃癌。多变量分析表明,年龄、体重指数、家族史、吸烟以及高C或低C组别是预测胃癌的重要因素。肠型胃癌、弥漫型胃癌和全胃癌的提名图的AUC值分别为0.82、0.62和0.75,c指数分别为0.85、0.54和0.76:胃癌预测提名图有助于识别高风险人群,尤其是肠道类型的高风险人群。结论:胃癌预测提名图有助于识别高危人群,尤其是肠型胃癌患者,这将有助于针对胃癌高危人群实施个性化的根除和强化筛查策略。
Nomogram prediction for gastric cancer development.
Background: Helicobacter pylori (Hp) and gastric atrophy represent significant risk factors for gastric cancer. Nevertheless, to date no nomogram has been developed to predict gastric cancer based on the specific combination of risk factors, present in individual cases.
Methods: A retrospective-cohort study was conducted using health-screening data collected between 2003 and 2018. Subjects with positive results for anti-Hp antibody were enrolled. Individuals were classified into 4 groups: low-B (low titer without atrophy), high-B (high titer without atrophy), high-C (high titer with atrophy), and low-C (low titer with atrophy). Nomogram prediction models were developed for overall gastric cancers as well as intestinal and diffuse cancers, with each type considered a competing event, by employing both Cox proportional and sub-distribution hazard models. Prediction performance was evaluated using concordance index (c-index) and the area under the curve (AUC) through 10-fold cross-validation.
Results: During a median follow-up period of 5.7 years, 231 new gastric cancer cases developed among the total cohort of 28,311 subjects, including 159 intestinal type, 68 diffuse type, and 4 cases of unknown type. Multivariable analyses indicated that age, body mass index, family history, smoking, and classification into the high-C or low-C group were significant predictors of gastric cancer. The nomograms for intestinal type, diffuse type, and total gastric cancer demonstrated AUC values of 0.82, 0.62, and 0.75, respectively and c-indices of 0.85, 0.54, and 0.76, respectively.
Conclusions: The nomograms for gastric cancer prediction would be useful in identifying high risk individuals, particularly for intestinal type. This would facilitate the implementation of personalized eradication and intensive screening strategies to target those at higher risk for gastric cancer.
期刊介绍:
Clinical and Translational Gastroenterology (CTG), published on behalf of the American College of Gastroenterology (ACG), is a peer-reviewed open access online journal dedicated to innovative clinical work in the field of gastroenterology and hepatology. CTG hopes to fulfill an unmet need for clinicians and scientists by welcoming novel cohort studies, early-phase clinical trials, qualitative and quantitative epidemiologic research, hypothesis-generating research, studies of novel mechanisms and methodologies including public health interventions, and integration of approaches across organs and disciplines. CTG also welcomes hypothesis-generating small studies, methods papers, and translational research with clear applications to human physiology or disease.
Colon and small bowel
Endoscopy and novel diagnostics
Esophagus
Functional GI disorders
Immunology of the GI tract
Microbiology of the GI tract
Inflammatory bowel disease
Pancreas and biliary tract
Liver
Pathology
Pediatrics
Preventative medicine
Nutrition/obesity
Stomach.