作者
Nining Handayani, Claudio Michael Louis, Alva Erwin, Tri Aprilliana, Arie A Polim, Batara Sirait, Arief Boediono, Ivan Sini
发表日期
2022/6/10
期刊
Fertility & Reproduction
卷号
4
期号
02
页码范围
77-87
出版商
World Scientific Publishing Company
简介
Objective: Hidden knowledge could be discovered within a large practical data of in vitro fertilization (IVF) practice. In this study, Machine learning-based data mining techniques were utilized to construct a reliable prediction model for clinical pregnancy in IVF.
Study Design: A retrospective cohort multicenter study involving 4.570 IVF cycles. All patients underwent fresh embryo transfer at either the cleavage or blastocyst stage between January 2015 and December 2019. The experiment focused on utilizing tree-based classifiers to generate and compare the most effective prediction model that could predict a clinical pregnancy through clinical data. Additionally, each classifier is optimized via a genetic algorithm technique, along with the selection of variables.
Results: Both the decision tree and random forest showed similar performance that was much better than the gradient boost. The two superior classifiers …
引用总数
学术搜索中的文章