Title of article :
Landmark Prediction of Survival for Breast Cancer Patients: A Case Study in Tehran, Iran
Author/Authors :
ALAFCHI ، Behnaz Department of Biostatistics - School of Public Health - Hamadan University of Medical Sciences , TAPAK ، Leili Department of Biostatistics - School of Public Health, Modeling of Noncommunicable Diseases Research Center, School of Health, Hamadan - Hamadan University of Medical Sciences , HAMIDI ، Omid Department of Science - Hamedan University of Technology , POOROLAJAL ، Jalal Department of Epidemiology - Research Center for Health Sciences, School of Public Health - Hamadan University of Medical Sciences , MAHJUB ، Hossein Department of Biostatistics - Research Center for Health Sciences, School of Public Health - Hamadan University of Medical Sciences
Abstract :
Background: Breast cancer is the first non-cutaneous malignancy in women and the second cause of death due to cancer all over the world. There are situations where researchers are interested in dynamic prediction of survival of patients where traditional models might fail to achieve this goal. We aimed to use a dynamic prediction model in analyzing survival of breast cancer patients. Methods: We used a data set originates from a retrospective cohort (registry-based) study conducted in 2014 in Tehran, Iran, information of 550 patients were available analyzed. A method of landmarking was utilized for dynamic prediction of survival of the patients. The criteria of time-dependent area under the curve and predic-tion error curve were used to evaluate the performance of the model. Results: An index of risk score (prognostic index) was calculated according to the available covariates based on Cox proportional hazards. Therefore, hazard of dying for a high-risk patient with breast cancer within the next five years was 2.69 to 3.04 times of that for a low-risk patient. The value of the dynamic C-index was 0.89 using prognostic index as covariate. Conclusion: Generally, the landmark model showed promising performance in predicting survival or probability of dying for breast cancer patients in this study in a predefined window. Therefore, this model can be used in other studies as a useful model for investigating the survival of breast cancer patients.
Keywords :
Breast neoplasms , Survival analysis , Landmarking , Dynamic prediction , Cohort studies
Journal title :
Iranian Journal of Public Health
Journal title :
Iranian Journal of Public Health