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无症状筛查人群中晚期结直肠肿瘤的预测模型。

A prediction model for advanced colorectal neoplasia in an asymptomatic screening population.

作者信息

Hong Sung Noh, Son Hee Jung, Choi Sun Kyu, Chang Dong Kyung, Kim Young-Ho, Jung Sin-Ho, Rhee Poong-Lyul

机构信息

Department of Medicine, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, Korea.

Center for Health Promotion, Samsung Medical Center, Seoul, South Korea.

出版信息

PLoS One. 2017 Aug 25;12(8):e0181040. doi: 10.1371/journal.pone.0181040. eCollection 2017.

Abstract

BACKGROUND

An electronic medical record (EMR) database of a large unselected population who received screening colonoscopies may minimize sampling error and represent real-world estimates of risk for screening target lesions of advanced colorectal neoplasia (CRN). Our aim was to develop and validate a prediction model for assessing the probability of advanced CRN using a clinical data warehouse.

METHODS

A total of 49,450 screenees underwent their first colonoscopy as part of a health check-up from 2002 to 2012 at Samsung Medical Center, and the dataset was constructed by means of natural language processing from the computerized EMR system. The screenees were randomized into training and validation sets. The prediction model was developed using logistic regression. The model performance was validated and compared with existing models using area under receiver operating curve (AUC) analysis.

RESULTS

In the training set, age, gender, smoking duration, drinking frequency, and aspirin use were identified as independent predictors for advanced CRN (adjusted P < .01). The developed model had good discrimination (AUC = 0.726) and was internally validated (AUC = 0.713). The high-risk group had a 3.7-fold increased risk of advanced CRN compared to the low-risk group (1.1% vs. 4.0%, P < .001). The discrimination performance of the present model for high-risk patients with advanced CRN was better than that of the Asia-Pacific Colorectal Screening score (AUC = 0.678, P < .001) and Schroy's CAN index (AUC = 0.672, P < .001).

CONCLUSION

The present 5-item risk model can be calculated readily using a simple questionnaire and can identify the low- and high-risk groups of advanced CRN at the first screening colonoscopy. This model may increase colorectal cancer risk awareness and assist healthcare providers in encouraging the high-risk group to undergo a colonoscopy.

摘要

背景

一个包含大量未经过筛选的接受结肠镜检查人群的电子病历(EMR)数据库,可能会将抽样误差降至最低,并能代表晚期结直肠癌(CRN)筛查目标病变的真实风险估计值。我们的目的是开发并验证一种使用临床数据仓库评估晚期CRN概率的预测模型。

方法

2002年至2012年期间,共有49450名受检者在三星医疗中心作为健康检查的一部分接受了首次结肠镜检查,数据集通过计算机化EMR系统的自然语言处理构建而成。受检者被随机分为训练集和验证集。使用逻辑回归开发预测模型。通过受试者操作特征曲线(AUC)分析验证模型性能,并与现有模型进行比较。

结果

在训练集中,年龄、性别、吸烟时长、饮酒频率和阿司匹林使用情况被确定为晚期CRN的独立预测因素(校正P < 0.01)。所开发的模型具有良好的区分度(AUC = 0.726),并经过内部验证(AUC = 0.713)。高风险组晚期CRN的风险比低风险组增加了3.7倍(1.1%对4.0%,P < 0.001)。本模型对晚期CRN高风险患者的区分性能优于亚太结直肠癌筛查评分(AUC = 0.678,P < 0.001)和施罗伊的CAN指数(AUC = 0.672,P < 0.001)。

结论

目前的五项风险模型可以通过简单问卷轻松计算得出,并且能够在首次结肠镜筛查时识别晚期CRN的低风险和高风险组。该模型可能会提高结直肠癌风险意识,并帮助医疗服务提供者鼓励高风险组接受结肠镜检查。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0743/5571924/0346b69d4af3/pone.0181040.g001.jpg

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