Predicting clinical pregnancy using clinical features and machine learning algorithms in in vitro fertilization.
Cheng-Wei WangChao-Yang KuoChi-Huang ChenYu-Hui HsiehEmily Chia-Yu SuPublished in: PloS one (2022)
Our findings show the importance of variables and propensity of each variable by random forest algorithm for clinical pregnancy in the assisted reproductive technology cycle. This study provides a ranking of variables affecting clinical pregnancy and explores the effects of each treatment on successful pregnancy. Our study has the potential to help clinicians evaluate the success of IVF in patients.