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Prediction Model for Gastric Cancer Incidence in Korean Population

Author

Listed:
  • Bang Wool Eom
  • Jungnam Joo
  • Sohee Kim
  • Aesun Shin
  • Hye-Ryung Yang
  • Junghyun Park
  • Il Ju Choi
  • Young-Woo Kim
  • Jeongseon Kim
  • Byung-Ho Nam

Abstract

Background: Predicting high risk groups for gastric cancer and motivating these groups to receive regular checkups is required for the early detection of gastric cancer. The aim of this study is was to develop a prediction model for gastric cancer incidence based on a large population-based cohort in Korea. Method: Based on the National Health Insurance Corporation data, we analyzed 10 major risk factors for gastric cancer. The Cox proportional hazards model was used to develop gender specific prediction models for gastric cancer development, and the performance of the developed model in terms of discrimination and calibration was also validated using an independent cohort. Discrimination ability was evaluated using Harrell’s C-statistics, and the calibration was evaluated using a calibration plot and slope. Results: During a median of 11.4 years of follow-up, 19,465 (1.4%) and 5,579 (0.7%) newly developed gastric cancer cases were observed among 1,372,424 men and 804,077 women, respectively. The prediction models included age, BMI, family history, meal regularity, salt preference, alcohol consumption, smoking and physical activity for men, and age, BMI, family history, salt preference, alcohol consumption, and smoking for women. This prediction model showed good accuracy and predictability in both the developing and validation cohorts (C-statistics: 0.764 for men, 0.706 for women). Conclusions: In this study, a prediction model for gastric cancer incidence was developed that displayed a good performance.

Suggested Citation

  • Bang Wool Eom & Jungnam Joo & Sohee Kim & Aesun Shin & Hye-Ryung Yang & Junghyun Park & Il Ju Choi & Young-Woo Kim & Jeongseon Kim & Byung-Ho Nam, 2015. "Prediction Model for Gastric Cancer Incidence in Korean Population," PLOS ONE, Public Library of Science, vol. 10(7), pages 1-19, July.
  • Handle: RePEc:plo:pone00:0132613
    DOI: 10.1371/journal.pone.0132613
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    Cited by:

    1. Ami Yu & Sang Myung Woo & Jungnam Joo & Hye-Ryung Yang & Woo Jin Lee & Sang-Jae Park & Byung-Ho Nam, 2016. "Development and Validation of a Prediction Model to Estimate Individual Risk of Pancreatic Cancer," PLOS ONE, Public Library of Science, vol. 11(1), pages 1-14, January.

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