Cargando…

The (decision) tree of fertility: an innovative decision-making algorithm in assisted reproduction technique

PURPOSE: Several mathematical models have been developed to estimate individualized chances of assisted reproduction techniques (ART) success, although with limited clinical application. Our study aimed to develop a decisional algorithm able to predict pregnancy and live birth rates after controlled...

Descripción completa

Detalles Bibliográficos
Autores principales: Villani, Maria Teresa, Morini, Daria, Spaggiari, Giorgia, Furini, Chiara, Melli, Beatrice, Nicoli, Alessia, Iannotti, Francesca, La Sala, Giovanni Battista, Simoni, Manuela, Aguzzoli, Lorenzo, Santi, Daniele
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer US 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8793814/
https://www.ncbi.nlm.nih.gov/pubmed/35084638
http://dx.doi.org/10.1007/s10815-021-02353-4
_version_ 1784640684371738624
author Villani, Maria Teresa
Morini, Daria
Spaggiari, Giorgia
Furini, Chiara
Melli, Beatrice
Nicoli, Alessia
Iannotti, Francesca
La Sala, Giovanni Battista
Simoni, Manuela
Aguzzoli, Lorenzo
Santi, Daniele
author_facet Villani, Maria Teresa
Morini, Daria
Spaggiari, Giorgia
Furini, Chiara
Melli, Beatrice
Nicoli, Alessia
Iannotti, Francesca
La Sala, Giovanni Battista
Simoni, Manuela
Aguzzoli, Lorenzo
Santi, Daniele
author_sort Villani, Maria Teresa
collection PubMed
description PURPOSE: Several mathematical models have been developed to estimate individualized chances of assisted reproduction techniques (ART) success, although with limited clinical application. Our study aimed to develop a decisional algorithm able to predict pregnancy and live birth rates after controlled ovarian stimulation (COS) phase, helping the physician to decide whether to perform oocytes pick-up continuing the ongoing ART path. METHODS: A single-center retrospective analysis of real-world data was carried out including all fresh ART cycles performed in 1998–2020. Baseline characteristics, ART parameters and biochemical/clinical pregnancies and live birth rates were collected. A seven-steps systematic approach for model development, combining linear regression analyses and decision trees (DT), was applied for biochemical, clinical pregnancy, and live birth rates. RESULTS: Of fresh ART cycles, 12,275 were included. Linear regression analyses highlighted a relationship between number of ovarian follicles > 17 mm detected at ultrasound before pick-up (OF17), embryos number and fertilization rate, and biochemical and clinical pregnancy rates (p < 0.001), but not live birth rate. DT were created for biochemical pregnancy (statistical power–SP:80.8%), clinical pregnancy (SP:85.4%), and live birth (SP:87.2%). Thresholds for OF17 entered in all DT, while sperm motility entered the biochemical pregnancy’s model, and female age entered the clinical pregnancy and live birth DT. In case of OF17 < 3, the chance of conceiving was < 6% for all DT. CONCLUSION: A systematic approach allows to identify OF17, female age, and sperm motility as pre-retrieval predictors of ART outcome, possibly reducing the socio-economic burden of ART failure, allowing the clinician to perform or not the oocytes pick-up.
format Online
Article
Text
id pubmed-8793814
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Springer US
record_format MEDLINE/PubMed
spelling pubmed-87938142022-01-28 The (decision) tree of fertility: an innovative decision-making algorithm in assisted reproduction technique Villani, Maria Teresa Morini, Daria Spaggiari, Giorgia Furini, Chiara Melli, Beatrice Nicoli, Alessia Iannotti, Francesca La Sala, Giovanni Battista Simoni, Manuela Aguzzoli, Lorenzo Santi, Daniele J Assist Reprod Genet Assisted Reproduction Technologies PURPOSE: Several mathematical models have been developed to estimate individualized chances of assisted reproduction techniques (ART) success, although with limited clinical application. Our study aimed to develop a decisional algorithm able to predict pregnancy and live birth rates after controlled ovarian stimulation (COS) phase, helping the physician to decide whether to perform oocytes pick-up continuing the ongoing ART path. METHODS: A single-center retrospective analysis of real-world data was carried out including all fresh ART cycles performed in 1998–2020. Baseline characteristics, ART parameters and biochemical/clinical pregnancies and live birth rates were collected. A seven-steps systematic approach for model development, combining linear regression analyses and decision trees (DT), was applied for biochemical, clinical pregnancy, and live birth rates. RESULTS: Of fresh ART cycles, 12,275 were included. Linear regression analyses highlighted a relationship between number of ovarian follicles > 17 mm detected at ultrasound before pick-up (OF17), embryos number and fertilization rate, and biochemical and clinical pregnancy rates (p < 0.001), but not live birth rate. DT were created for biochemical pregnancy (statistical power–SP:80.8%), clinical pregnancy (SP:85.4%), and live birth (SP:87.2%). Thresholds for OF17 entered in all DT, while sperm motility entered the biochemical pregnancy’s model, and female age entered the clinical pregnancy and live birth DT. In case of OF17 < 3, the chance of conceiving was < 6% for all DT. CONCLUSION: A systematic approach allows to identify OF17, female age, and sperm motility as pre-retrieval predictors of ART outcome, possibly reducing the socio-economic burden of ART failure, allowing the clinician to perform or not the oocytes pick-up. Springer US 2022-01-27 2022-02 /pmc/articles/PMC8793814/ /pubmed/35084638 http://dx.doi.org/10.1007/s10815-021-02353-4 Text en © The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2022
spellingShingle Assisted Reproduction Technologies
Villani, Maria Teresa
Morini, Daria
Spaggiari, Giorgia
Furini, Chiara
Melli, Beatrice
Nicoli, Alessia
Iannotti, Francesca
La Sala, Giovanni Battista
Simoni, Manuela
Aguzzoli, Lorenzo
Santi, Daniele
The (decision) tree of fertility: an innovative decision-making algorithm in assisted reproduction technique
title The (decision) tree of fertility: an innovative decision-making algorithm in assisted reproduction technique
title_full The (decision) tree of fertility: an innovative decision-making algorithm in assisted reproduction technique
title_fullStr The (decision) tree of fertility: an innovative decision-making algorithm in assisted reproduction technique
title_full_unstemmed The (decision) tree of fertility: an innovative decision-making algorithm in assisted reproduction technique
title_short The (decision) tree of fertility: an innovative decision-making algorithm in assisted reproduction technique
title_sort (decision) tree of fertility: an innovative decision-making algorithm in assisted reproduction technique
topic Assisted Reproduction Technologies
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8793814/
https://www.ncbi.nlm.nih.gov/pubmed/35084638
http://dx.doi.org/10.1007/s10815-021-02353-4
work_keys_str_mv AT villanimariateresa thedecisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT morinidaria thedecisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT spaggiarigiorgia thedecisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT furinichiara thedecisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT mellibeatrice thedecisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT nicolialessia thedecisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT iannottifrancesca thedecisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT lasalagiovannibattista thedecisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT simonimanuela thedecisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT aguzzolilorenzo thedecisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT santidaniele thedecisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT villanimariateresa decisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT morinidaria decisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT spaggiarigiorgia decisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT furinichiara decisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT mellibeatrice decisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT nicolialessia decisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT iannottifrancesca decisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT lasalagiovannibattista decisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT simonimanuela decisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT aguzzolilorenzo decisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique
AT santidaniele decisiontreeoffertilityaninnovativedecisionmakingalgorithminassistedreproductiontechnique