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利用日本基于网络的全国性登记系统开发并验证胃癌切除术后发病率的分级预测模型

Development and validation of grade-based prediction models for postoperative morbidity in gastric cancer resection using a Japanese web-based nationwide registry.

作者信息

Haga Yoshio, Miyata Hiroaki, Tsuburaya Akira, Gotoh Mitsukazu, Yoshida Kazuhiro, Konno Hiroyuki, Seto Yasuyuki, Fujiwara Yoshiyuki, Baba Hideo

机构信息

Japan Community Healthcare Organization Amakusa Central General Hospital Amakusa-shi Japan.

Database Committee The Japanese Society of Gastroenterological Surgery Tokyo Japan.

出版信息

Ann Gastroenterol Surg. 2019 Jun 20;3(5):544-551. doi: 10.1002/ags3.12269. eCollection 2019 Sep.

Abstract

AIM

Gastric cancer is the second leading cause of cancer death worldwide. Surgery is the mainstay treatment for gastric cancer. There are no prediction models that examine the severity of postoperative morbidity. Herein, we constructed prediction models that analyze the risk for postoperative morbidity based on severity.

METHODS

Perioperative data were retrieved from the National Clinical Database in patients who underwent elective gastric cancer resection between 2011 and 2012 in Japan. Severity of postoperative complications was determined by Clavien-Dindo classification. Patients were randomly divided into two groups, the development set and the validation set. Logistic regression analysis was used to build prediction models. Calibration powers of the models were assessed by a calibration plot in which linearity between the observed and predicted event rates in 10 risk bands was assessed by the Pearson statistic.

RESULTS

We obtained 154 278 patients for the analysis. Prediction models were constructed for grade ≥2, grade ≥3, grade ≥4, and grade 5 in the development set (n = 77 423). Calibration plots of these models showed significant linearity in the validation set (n = 76 855):  = 0.995 for grade ≥2,  = 0.997 for grade ≥3,  = 0.998 for grade ≥4, and  = 0.997 for grade 5 (all: <0.001).

CONCLUSION

Prediction models for postoperative morbidity based on grade will provide a comprehensive risk of surgery. These models may be useful for informed consent and surgical decision-making.

摘要

目的

胃癌是全球癌症死亡的第二大主要原因。手术是胃癌的主要治疗方法。目前尚无用于评估术后并发症严重程度的预测模型。在此,我们构建了基于严重程度分析术后并发症风险的预测模型。

方法

从日本国家临床数据库中检索2011年至2012年接受择期胃癌切除术患者的围手术期数据。术后并发症的严重程度根据Clavien-Dindo分类法确定。患者被随机分为两组,即开发集和验证集。采用逻辑回归分析建立预测模型。通过校准图评估模型的校准能力,在校准图中,通过Pearson统计量评估10个风险等级中观察到的和预测的事件发生率之间的线性关系。

结果

我们获得了154278例患者用于分析。在开发集(n = 77423)中构建了针对≥2级、≥3级、≥4级和5级的预测模型。这些模型在校准集(n = 76855)中的校准图显示出显著的线性关系:≥2级时r = 0.995,≥3级时r = 0.997,≥4级时r = 0.998,5级时r = 0.997(所有P均<0.001)。

结论

基于分级的术后并发症预测模型将提供全面的手术风险。这些模型可能有助于进行知情同意和手术决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3c10/6749953/f97fd072762a/AGS3-3-544-g001.jpg

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