STUDY QUESTION Is it feasible to identify factors that significantly affect the clinical outcome of IVF-ICSI cycles and use them to reliably design a predictor of implantation? SUMMARY ANSWER The Bayesian network (BN) identified top-history embryos, female age and the insemination technique as the most relevant factors for predicting the occurrence of pregnancy (AUC, area under curve, of 0.72). In addition, it could discriminate between no implantation and single or twin implantations in a prognostic model that can be used prospectively. WHAT IS KNOWN ALREADY The key requirement for achieving a single live birth in an IVF-ICSI cycle is the capacity to estimate embryo viability in relation to maternal receptivity. Nevertheless, the lack of a...
Objective To develop a prediction model to estimate the chances of a live birth over multiple comple...
Background: Assisted reproductive technology (ART) cycles include in vitro fertilization of the sper...
The aim of this study is to determine the most informative pre- and in-cycle variables for predictin...
STUDY QUESTION:Are the published pre-treatment and post-treatment McLernon models, predicting cumula...
STUDY QUESTION: Are the published pre-treatment and post-treatment McLernon models, predicting cumul...
STUDY QUESTION: Are the published pre-treatment and post-treatment McLernon models, predicting cumul...
STUDY QUESTION Can we develop an IVF prediction model to estimate individualized chances of a live b...
Embryo selection is a critical step in assisted reproduction: good selection criteria are expected t...
Embryo selection has been based on developmental and morphological characteristics. However, the pre...
OBJECTIVE: To study the efficacy of six embryo-selection algorithms (ESAs) when applied to a large, ...
STUDY QUESTION: Can a generally applicable morphokinetic algorithm suitable for Day 3 transfers of t...
Purpose: Several mathematical models have been developed to estimate individualized chances of assis...
Background The extent to which baseline couple characteristics affect the probability of live bir...
Research question: Which machine learning model predicts the implantation outcome better in an IVF c...
STUDY QUESTION Is the predictive model for IVF success proposed by van Loendersloot et al. valid in ...
Objective To develop a prediction model to estimate the chances of a live birth over multiple comple...
Background: Assisted reproductive technology (ART) cycles include in vitro fertilization of the sper...
The aim of this study is to determine the most informative pre- and in-cycle variables for predictin...
STUDY QUESTION:Are the published pre-treatment and post-treatment McLernon models, predicting cumula...
STUDY QUESTION: Are the published pre-treatment and post-treatment McLernon models, predicting cumul...
STUDY QUESTION: Are the published pre-treatment and post-treatment McLernon models, predicting cumul...
STUDY QUESTION Can we develop an IVF prediction model to estimate individualized chances of a live b...
Embryo selection is a critical step in assisted reproduction: good selection criteria are expected t...
Embryo selection has been based on developmental and morphological characteristics. However, the pre...
OBJECTIVE: To study the efficacy of six embryo-selection algorithms (ESAs) when applied to a large, ...
STUDY QUESTION: Can a generally applicable morphokinetic algorithm suitable for Day 3 transfers of t...
Purpose: Several mathematical models have been developed to estimate individualized chances of assis...
Background The extent to which baseline couple characteristics affect the probability of live bir...
Research question: Which machine learning model predicts the implantation outcome better in an IVF c...
STUDY QUESTION Is the predictive model for IVF success proposed by van Loendersloot et al. valid in ...
Objective To develop a prediction model to estimate the chances of a live birth over multiple comple...
Background: Assisted reproductive technology (ART) cycles include in vitro fertilization of the sper...
The aim of this study is to determine the most informative pre- and in-cycle variables for predictin...