Objective: To develop a random forest model (RFM) to predict implantation potential of a transferred embryo and compare it with a multivariate logistic regression model (MvLRM), based on data from a large cohort including in vitro fertilization (IVF) patients treated with the use of single-embryo transfer (SET) of blastocyst-stage embryos. Design: Retrospective study of a 2-year single-center cohort of women undergoing IVF or intracytoplasmatic sperm injection (ICSI). Setting: Academic hospital. Patient(s): Data from 1,052 women who underwent fresh SET in IVF or ICSI cycles were included. Intervention(s): None. Main Outcome Measure(s): The performance of both RFM and MvLRM to predict pregnancy was quantified in terms of the area under the r...
Objective: To develop a prognostic model for the prediction of ongoing pregnancy after single-embryo...
Objective: Hidden knowledge could be discovered within a large practical data of in vitro fertilizat...
In-vitro fertilization (IVF) is the most advanced treatment for infertility problems; however, its f...
Objective: To develop a random forest model (RFM) to predict implantation potential of a transferred...
In vitro fertilization-embryo transfer (IVF-ET) technology make it possible for infertile couples to...
ization (IVF) treatment increase the number of successful pregnancies while elevating the risk of mu...
ization (IVF) treatment increase the number of successful pregnancies while elevating the risk of mu...
Research question: Which machine learning model predicts the implantation outcome better in an IVF c...
Introduction: The use of human reproduction techniques (ART) to obtain pregnancy are increasing. How...
International audiencePURPOSE : While several studies reported the association between morphokinetic...
Artificial intelligence (AI) has been gaining support in the field of in vitro fertilization (IVF). ...
Objective: To evaluate the multivariate embryo selection model by van Loendersloot et al. (2014) (VL...
International audienceOBJECTIVE:To study the performance of a previously published implantation pred...
Objective: To evaluate the application in a different fertility clinic of a prediction model for sel...
Objective: To develop a prognostic model for the prediction of ongoing pregnancy after single-embryo...
Objective: Hidden knowledge could be discovered within a large practical data of in vitro fertilizat...
In-vitro fertilization (IVF) is the most advanced treatment for infertility problems; however, its f...
Objective: To develop a random forest model (RFM) to predict implantation potential of a transferred...
In vitro fertilization-embryo transfer (IVF-ET) technology make it possible for infertile couples to...
ization (IVF) treatment increase the number of successful pregnancies while elevating the risk of mu...
ization (IVF) treatment increase the number of successful pregnancies while elevating the risk of mu...
Research question: Which machine learning model predicts the implantation outcome better in an IVF c...
Introduction: The use of human reproduction techniques (ART) to obtain pregnancy are increasing. How...
International audiencePURPOSE : While several studies reported the association between morphokinetic...
Artificial intelligence (AI) has been gaining support in the field of in vitro fertilization (IVF). ...
Objective: To evaluate the multivariate embryo selection model by van Loendersloot et al. (2014) (VL...
International audienceOBJECTIVE:To study the performance of a previously published implantation pred...
Objective: To evaluate the application in a different fertility clinic of a prediction model for sel...
Objective: To develop a prognostic model for the prediction of ongoing pregnancy after single-embryo...
Objective: Hidden knowledge could be discovered within a large practical data of in vitro fertilizat...
In-vitro fertilization (IVF) is the most advanced treatment for infertility problems; however, its f...