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Machine learning: A non-invasive prediction method for gastric cancer based on a survey of lifestyle behaviors

Machine learning: A non-invasive prediction method for gastric cancer based on a survey of lifestyle behaviors

Source : https://www.frontiersin.org/articles/10.3389/frai.2022.956385/full

Gastric cancer remains an enormous threat to human health. It is extremely significant to make a clear diagnosis and timely treatment of gastrointestinal tumors. The traditional diagnosis method (endoscope, surgery, and pathological tissue extraction) of gastric cancer is usually invasive, expensive, and time-consuming.


Conclusion/Relevance: This work aims to construct a cheap, non-invasive, rapid, and high-precision gastric cancer diagnostic model using personal behavioral lifestyles and non-invasive characteristics. A retrospective study was implemented on 3,630 participants. The developed models (extreme gradient boosting, decision tree, random forest, and logistic regression) were evaluated by cross-validation and the generalization ability in our test set. We found that the model developed using fingerprints based on the extreme gradient boosting (XGBoost) algorithm produced better results compared with the other models.