Abstract 130P
Background
At the population level, it is useful to estimate the liver cancer risk based on lifestyle factors and regular biomarkers to encourage high-risk people to be screened. Therefore, we conducted the current study to develop a prediction model for the stratification of liver cancer risk among the general population in China.
Methods
112 440 subjects aged 20-80 years from Kailuan Cohort were included in the current study. A total of 326 incident primary liver cancer occurred during 913 078.51 person-years of follow-up. We used the Cox proportional hazards regression model to obtain coefficients for each predictor in the 8-year prediction models among a random two thirds of participants. The prediction models were validated in the remaining one third of participants. Hosmer-Lemeshow’s statistic and Harrell’s C-index were used to evaluate calibration and discrimination, respectively.
Results
A full prediction model that comprised of nine predictors, including age, sex, smoking pack-years, alcohol drinking, tea consumption, diabetes and fasting blood glucose (FBG) level, total cholesterol (TC), alanine aminotransferase (ALT), and hepatitis B virus surface antigen (HBsAg), was derived. The model showed good calibration (χ2=3.57, P = 0.89) and discrimination (Harrell’s C-index=0.85; 95% confidence interval [CI]: 0.81, 0.88) in the validation data set.
Conclusions
A practical liver prediction model based on accessible indicators combined with lifestyle factors, regular blood biomarkers, and hepatitis virus status was developed, which allows to stratify the risk of liver cancer among the general population. Because the factors in this model are able to be acquired from questionnaire and blood detection, it has great potential to be translated into practical use for public health.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
National Key R& D Program.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
381P - XKR8 is a promising potential prognostic marker in glioblastoma multiforme patients
Presenter: Kristina Havrysh
Session: Poster display session
Resources:
Abstract
383P - Screening of prognostic molecular biomarker for resectable pancreatic cancer
Presenter: Yonggang Peng
Session: Poster display session
Resources:
Abstract
384P - Prevalence of abnormal microsatellite instability test among ovary and endometrial cancer patients
Presenter: Min Kyu Kim
Session: Poster display session
Resources:
Abstract
385P - Identifying CASP8 polymorphisms associated with breast cancer risk in an Iranian population
Presenter: Alireza Pasdar
Session: Poster display session
Resources:
Abstract
386P - Unusual folding of NaPi2b transporter extramembrane domain 4 during malignant transformation
Presenter: Leysan Minigulova
Session: Poster display session
Resources:
Abstract
387P - 5-years conditional disease free survival and overall survival for breast cancer patients in South Korea
Presenter: Jee hyun Ahn
Session: Poster display session
Resources:
Abstract
388P - To identify circulating tumour cells by machine learning approach
Presenter: Yuebin Liang
Session: Poster display session
Resources:
Abstract
389P - The establishment of patient-derived organoid models and drug response of resectable non-small cell lung cancer
Presenter: Jing-Hua Chen
Session: Poster display session
Resources:
Abstract
395P - Filipinos and lung cancer: An infodemiological assessment using Google trends from 2009 to 2019
Presenter: Lance Isidore Catedral
Session: Poster display session
Resources:
Abstract
396P - Determinants of visiting a referral hospital for cervical cancer screening at Uganda Cancer Institute
Presenter: Collins Mpamani
Session: Poster display session
Resources:
Abstract