Binary genetic algorithm for optimal joinpoint detection: Application to cancer trend analysis
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0

초록

The joinpoint regression model (JRM) is used to describe trend changes in many applications and relies on the detection of joinpoints (changepoints). However, the existing joinpoint detection methods, namely, the grid search (GS)-based methods, are computationally demanding, and hence, the maximum number of computable joinpoints is limited. Herein, we developed a genetic algorithm-based joinpoint (GAJP) model in which an explicitly decoupled computing procedure for optimization and regression is used to embed a binary genetic algorithm into the JRM for optimal joinpoint detection. The combinations of joinpoints were represented as binary chromosomes, and genetic operations were performed to determine the optimum solution by minimizing the fitness function, the Bayesian information criterion (BIC) and BIC

키워드

binary genetic algorithmcancer incidencejoinpoint regressionSEER
제목
Binary genetic algorithm for optimal joinpoint detection: Application to cancer trend analysis
저자
Kim, SeongyoonLee S.JUNG-IL CHOICho H.
DOI
10.1002/sim.8803
발행일
2021-02
저널명
Statistics in Medicine
40
3
페이지
799 ~ 822