Published online Nov 24, 2020. doi: 10.5306/wjco.v11.i11.918
Peer-review started: June 24, 2020
First decision: September 18, 2020
Revised: October 6, 2020
Accepted: October 20, 2020
Article in press: October 20, 2020
Published online: November 24, 2020
Processing time: 147 Days and 10.3 Hours
Oral cancer is highly prevalent in the world, yet there is a limited understanding of oral cancer risk factors and survival.
To increase one’s quality of life, it is important to be able to predict oral cancer survival.
The objectives of this study were to build an accurate model to precisely predict the length of oral cancer survival and to explore the most important factors that determine the longevity of oral cancer survivors.
Oral cancer data were obtained from the years 1975 to 2016 in the Surveillance, Epidemiology, and End Results database. Methods from the field of artificial intelligence were applied to build and validate prediction models from 40+ years of oral cancer data representative of the United States’ population.
Age at diagnosis, primary cancer site, tumor size and year of diagnosis were the most important factors related to oral cancer survival. Individuals with tumors that were diagnosed in the modern era tend to have longer survival than those diagnosed in the past, which was a novel finding that had not been reported in the literature.
Machine learning algorithms were developed this study to predict the length of oral cancer survival that can be readily deployed to clinical settings.
This study was the first of its kind to use methods from artificial intelligence to examine the length of survival for individuals diagnosed with oral cancer. The outcome of this study has the potential to reduce healthcare disparities and improve the quality of life for oral cancer survivors and their friends and families around the world.