Literature DB >> 23462389

Objective way to support embryo transfer: a probabilistic decision.

L Gianaroli1, M C Magli, L Gambardella, A Giusti, C Grugnetti, G Corani.   

Abstract

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 strong predictor imposes several restrictions on this strategy. STUDY DESIGN, SIZE, DURATION: Medical histories, laboratory data and clinical outcomes of all fresh transfer cycles performed at the International Institute for Reproductive Medicine of Lugano, Switzerland, in the period 2006-2008 (n = 388 cycles), were retrospectively evaluated and analyzed. PARTICIPANTS/MATERIALS, SETTING,
METHODS: Patients were unselected for age, sperm parameters or other infertility criteria. Before being admitted to treatment, uterine anomalies were excluded by diagnostic hysteroscopy. To evaluate the factors possibly related to embryo viability and maternal receptivity, the class variable was categorized as pregnancy versus no pregnancy and the features included: female age, number of previous cycles, insemination technique, sperm of proven fertility, the number of transferred top-history embryos, the number of transferred top-quality embryos, the number of follicles >14 mm and the level of estradiol on the day of HCG administration. To assess the classifier, the indicators of performance were computed by cross-validation. Two statistical models were used: the decision tree and the BN. MAIN RESULTS AND THE ROLE OF CHOICE: The decision tree identified the number of transferred top-history embryos, female age and the insemination technique as the features discriminating between pregnancy and no pregnancy. The model achieved an accuracy of 81.5% that was significantly higher in comparison with the trivial classifier, but the increase was so modest that the model was clinically useless for predictions of pregnancy. The BN could more reliably predict the occurrence of pregnancy with an AUC of 0.72, and confirmed the importance of top-history embryos, female age and insemination technique in determining implantation. In addition, it could discriminate between no implantation, single implantation and twin implantation with the AUC of 0.72, 0.64 and 0.83, respectively. LIMITATIONS, REASONS FOR CAUTION: The relatively small sample of the study did not permit the inclusion of more features that could also have a role in determining the clinical outcome. The design of this study was retrospective to identify the relevant features; a prospective study is now needed to verify the validity of the model. WIDER IMPLICATIONS OF THE
FINDINGS: The resulting predictive model can discriminate with reasonable reliability between pregnancy and no pregnancy, and can also predict the occurrence of a single pregnancy or multiple pregnancy. This could represent an effective support for deciding how many embryos and which embryos to transfer for each couple. Due to its flexibility, the number of variables in the predictor can easily be increased to include other features that may affect implantation. STUDY FUNDING/COMPETING INTERESTS: This study was supported by a grant, CTI Medtech Project Number: 9707.1 PFLS-L, Swiss Confederation. No competing interests are declared.

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Mesh:

Year:  2013        PMID: 23462389     DOI: 10.1093/humrep/det030

Source DB:  PubMed          Journal:  Hum Reprod        ISSN: 0268-1161            Impact factor:   6.918


  6 in total

1.  The outcome of different post-thawed culture period in frozen-thawed embryo transfer cycle.

Authors:  Lei Guo; Chen Luo; Song Quan; Leining Chen; Hong Li; Yangchun Guo; Zhiming Han; Xianghong Ou
Journal:  J Assist Reprod Genet       Date:  2013-10-25       Impact factor: 3.412

Review 2.  Are computational applications the "crystal ball" in the IVF laboratory? The evolution from mathematics to artificial intelligence.

Authors:  Mara Simopoulou; Konstantinos Sfakianoudis; Evangelos Maziotis; Nikolaos Antoniou; Anna Rapani; George Anifandis; Panagiotis Bakas; Stamatis Bolaris; Agni Pantou; Konstantinos Pantos; Michael Koutsilieris
Journal:  J Assist Reprod Genet       Date:  2018-07-27       Impact factor: 3.412

3.  Factors predicting double embryo implantation following double embryo transfer in assisted reproductive technology: implications for elective single embryo transfer.

Authors:  Caitlin Martin; Jeani Chang; Sheree Boulet; Denise J Jamieson; Dmitry Kissin
Journal:  J Assist Reprod Genet       Date:  2016-07-14       Impact factor: 3.412

Review 4.  Artificial intelligence in the IVF laboratory: overview through the application of different types of algorithms for the classification of reproductive data.

Authors:  Eleonora Inácio Fernandez; André Satoshi Ferreira; Matheus Henrique Miquelão Cecílio; Dóris Spinosa Chéles; Rebeca Colauto Milanezi de Souza; Marcelo Fábio Gouveia Nogueira; José Celso Rocha
Journal:  J Assist Reprod Genet       Date:  2020-07-11       Impact factor: 3.412

Review 5.  Enabling pregnant women and their physicians to make informed medication decisions using artificial intelligence.

Authors:  Lena Davidson; Mary Regina Boland
Journal:  J Pharmacokinet Pharmacodyn       Date:  2020-04-11       Impact factor: 2.745

6.  Informative predictors of pregnancy after first IVF cycle using eIVF practice highway electronic health records.

Authors:  Tingting Xu; Alexis de Figueiredo Veiga; Karissa C Hammer; Ioannis Ch Paschalidis; Shruthi Mahalingaiah
Journal:  Sci Rep       Date:  2022-01-17       Impact factor: 4.379

  6 in total

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