Parametric Model Evaluation in Examining the Survival of Gastric Cancer Patients Andits Influencing Factors
- Abolfazl Nikpour
- Jamshid Yazdani-Charati
- Iradj Maleki
- Hosien Ranjbaran
- Alireza Khalilian
Abstract
BACKGROUND: Cox proportional hazard model is the most common technique to analysis the variables effect on survival time, but under certain circumstances, parametric models may offer advantages over Cox’s model. In this study we use cox regression and alternative parametric models such as Weibull, exponential, log-normal, logistics and gamma model to evaluate factors affecting survival of patients with gastric cancer. Comparisons were made to find the best model.
METHOD: In this study, data from 643 patients with gastric cancer who were referred to Imam Khomeini hospital with personal details during 2007 to 2013 have been reviewed in order to determine the survival rate of gastric cancer. It was observed that 74 cases were eliminated due to incomplete information and 569 persons were examined. Akaike Information model was used for comparison between models.
RESULT: Of a total of 569 patients, 329 (57.8%) died during the period. The figure of Cox-Snell residuals indicates that only the exponential model does not have better fitness. Weibull, log-normal, log-logistic and gamma models show the better fitness because points are on straight line. At the time of diagnosis, stage with (p<0.0008) and metastasis with (p<0.0219) were subjected to higher risk of death.
CONCLUSION: Based on Akaike's criterion, the Weibull model with Akaike value of 257.165 is the most favorable for survival data.
- Full Text: PDF
- DOI:10.5539/gjhs.v9n3p260
Journal Metrics
- h-index: 88 (The data was calculated based on Google Scholar Citations)
- i10-index: 464
- WJCI (2022): 0.897
- WJCI Impact Factor: 0.306
Index
- Academic Journals Database
- BASE (Bielefeld Academic Search Engine)
- CNKI Scholar
- Copyright Clearance Center
- DBH
- EBSCOhost
- Elektronische Zeitschriftenbibliothek (EZB)
- Excellence in Research for Australia (ERA)
- Genamics JournalSeek
- GHJournalSearch
- Google Scholar
- Harvard Library
- Index Copernicus
- Jisc Library Hub Discover
- JournalTOCs
- LIVIVO (ZB MED)
- MIAR
- Norwegian Centre for Research Data (NSD)
- PKP Open Archives Harvester
- Publons
- Qualis/CAPES
- ResearchGate
- ROAD
- SafetyLit
- Scilit
- SHERPA/RoMEO
- Standard Periodical Directory
- Stanford Libraries
- The Keepers Registry
- UCR Library
- UniCat
- UoB Library
- WJCI Report
- WorldCat
- Zeitschriften Daten Bank (ZDB)
Contact
- Erica GreyEditorial Assistant
- gjhs@ccsenet.org