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Towards Automation in IVF: Pre-Clinical Validation of a Deep Learning-Based Embryo Grading System during PGT-A Cycles

Preimplantation genetic testing for aneuploidies (PGT-A) is arguably the most effective embryo selection strategy. Nevertheless, it requires greater workload, costs, and expertise. Therefore, a quest towards user-friendly, non-invasive strategies is ongoing. Although insufficient to replace PGT-A, e...

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Autores principales: Cimadomo, Danilo, Chiappetta, Viviana, Innocenti, Federica, Saturno, Gaia, Taggi, Marilena, Marconetto, Anabella, Casciani, Valentina, Albricci, Laura, Maggiulli, Roberta, Coticchio, Giovanni, Ahlström, Aisling, Berntsen, Jørgen, Larman, Mark, Borini, Andrea, Vaiarelli, Alberto, Ubaldi, Filippo Maria, Rienzi, Laura
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10002983/
https://www.ncbi.nlm.nih.gov/pubmed/36902592
http://dx.doi.org/10.3390/jcm12051806
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author Cimadomo, Danilo
Chiappetta, Viviana
Innocenti, Federica
Saturno, Gaia
Taggi, Marilena
Marconetto, Anabella
Casciani, Valentina
Albricci, Laura
Maggiulli, Roberta
Coticchio, Giovanni
Ahlström, Aisling
Berntsen, Jørgen
Larman, Mark
Borini, Andrea
Vaiarelli, Alberto
Ubaldi, Filippo Maria
Rienzi, Laura
author_facet Cimadomo, Danilo
Chiappetta, Viviana
Innocenti, Federica
Saturno, Gaia
Taggi, Marilena
Marconetto, Anabella
Casciani, Valentina
Albricci, Laura
Maggiulli, Roberta
Coticchio, Giovanni
Ahlström, Aisling
Berntsen, Jørgen
Larman, Mark
Borini, Andrea
Vaiarelli, Alberto
Ubaldi, Filippo Maria
Rienzi, Laura
author_sort Cimadomo, Danilo
collection PubMed
description Preimplantation genetic testing for aneuploidies (PGT-A) is arguably the most effective embryo selection strategy. Nevertheless, it requires greater workload, costs, and expertise. Therefore, a quest towards user-friendly, non-invasive strategies is ongoing. Although insufficient to replace PGT-A, embryo morphological evaluation is significantly associated with embryonic competence, but scarcely reproducible. Recently, artificial intelligence-powered analyses have been proposed to objectify and automate image evaluations. iDAScore v1.0 is a deep-learning model based on a 3D convolutional neural network trained on time-lapse videos from implanted and non-implanted blastocysts. It is a decision support system for ranking blastocysts without manual input. This retrospective, pre-clinical, external validation included 3604 blastocysts and 808 euploid transfers from 1232 cycles. All blastocysts were retrospectively assessed through the iDAScore v1.0; therefore, it did not influence embryologists’ decision-making process. iDAScore v1.0 was significantly associated with embryo morphology and competence, although AUCs for euploidy and live-birth prediction were 0.60 and 0.66, respectively, which is rather comparable to embryologists’ performance. Nevertheless, iDAScore v1.0 is objective and reproducible, while embryologists’ evaluations are not. In a retrospective simulation, iDAScore v1.0 would have ranked euploid blastocysts as top quality in 63% of cases with one or more euploid and aneuploid blastocysts, and it would have questioned embryologists’ ranking in 48% of cases with two or more euploid blastocysts and one or more live birth. Therefore, iDAScore v1.0 may objectify embryologists’ evaluations, but randomized controlled trials are required to assess its clinical value.
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spelling pubmed-100029832023-03-11 Towards Automation in IVF: Pre-Clinical Validation of a Deep Learning-Based Embryo Grading System during PGT-A Cycles Cimadomo, Danilo Chiappetta, Viviana Innocenti, Federica Saturno, Gaia Taggi, Marilena Marconetto, Anabella Casciani, Valentina Albricci, Laura Maggiulli, Roberta Coticchio, Giovanni Ahlström, Aisling Berntsen, Jørgen Larman, Mark Borini, Andrea Vaiarelli, Alberto Ubaldi, Filippo Maria Rienzi, Laura J Clin Med Article Preimplantation genetic testing for aneuploidies (PGT-A) is arguably the most effective embryo selection strategy. Nevertheless, it requires greater workload, costs, and expertise. Therefore, a quest towards user-friendly, non-invasive strategies is ongoing. Although insufficient to replace PGT-A, embryo morphological evaluation is significantly associated with embryonic competence, but scarcely reproducible. Recently, artificial intelligence-powered analyses have been proposed to objectify and automate image evaluations. iDAScore v1.0 is a deep-learning model based on a 3D convolutional neural network trained on time-lapse videos from implanted and non-implanted blastocysts. It is a decision support system for ranking blastocysts without manual input. This retrospective, pre-clinical, external validation included 3604 blastocysts and 808 euploid transfers from 1232 cycles. All blastocysts were retrospectively assessed through the iDAScore v1.0; therefore, it did not influence embryologists’ decision-making process. iDAScore v1.0 was significantly associated with embryo morphology and competence, although AUCs for euploidy and live-birth prediction were 0.60 and 0.66, respectively, which is rather comparable to embryologists’ performance. Nevertheless, iDAScore v1.0 is objective and reproducible, while embryologists’ evaluations are not. In a retrospective simulation, iDAScore v1.0 would have ranked euploid blastocysts as top quality in 63% of cases with one or more euploid and aneuploid blastocysts, and it would have questioned embryologists’ ranking in 48% of cases with two or more euploid blastocysts and one or more live birth. Therefore, iDAScore v1.0 may objectify embryologists’ evaluations, but randomized controlled trials are required to assess its clinical value. MDPI 2023-02-23 /pmc/articles/PMC10002983/ /pubmed/36902592 http://dx.doi.org/10.3390/jcm12051806 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Cimadomo, Danilo
Chiappetta, Viviana
Innocenti, Federica
Saturno, Gaia
Taggi, Marilena
Marconetto, Anabella
Casciani, Valentina
Albricci, Laura
Maggiulli, Roberta
Coticchio, Giovanni
Ahlström, Aisling
Berntsen, Jørgen
Larman, Mark
Borini, Andrea
Vaiarelli, Alberto
Ubaldi, Filippo Maria
Rienzi, Laura
Towards Automation in IVF: Pre-Clinical Validation of a Deep Learning-Based Embryo Grading System during PGT-A Cycles
title Towards Automation in IVF: Pre-Clinical Validation of a Deep Learning-Based Embryo Grading System during PGT-A Cycles
title_full Towards Automation in IVF: Pre-Clinical Validation of a Deep Learning-Based Embryo Grading System during PGT-A Cycles
title_fullStr Towards Automation in IVF: Pre-Clinical Validation of a Deep Learning-Based Embryo Grading System during PGT-A Cycles
title_full_unstemmed Towards Automation in IVF: Pre-Clinical Validation of a Deep Learning-Based Embryo Grading System during PGT-A Cycles
title_short Towards Automation in IVF: Pre-Clinical Validation of a Deep Learning-Based Embryo Grading System during PGT-A Cycles
title_sort towards automation in ivf: pre-clinical validation of a deep learning-based embryo grading system during pgt-a cycles
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10002983/
https://www.ncbi.nlm.nih.gov/pubmed/36902592
http://dx.doi.org/10.3390/jcm12051806
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