Cargando…

Development of a dynamic machine learning algorithm to predict clinical pregnancy and live birth rate with embryo morphokinetics

OBJECTIVE: To evaluate the feasibility of generating a center-specific embryo morphokinetic algorithm by time-lapse microscopy to predict clinical pregnancy rates. DESIGN: A retrospective cohort analysis. SETTING: Academic fertility clinic in a tertiary hospital setting. PATIENT(S): Patients who und...

Descripción completa

Detalles Bibliográficos
Autores principales: Yang, Liubin, Peavey, Mary, Kaskar, Khalied, Chappell, Neil, Zhu, Lynn, Devlin, Darius, Valdes, Cecilia, Schutt, Amy, Woodard, Terri, Zarutskie, Paul, Cochran, Richard, Gibbons, William E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9250114/
https://www.ncbi.nlm.nih.gov/pubmed/35789724
http://dx.doi.org/10.1016/j.xfre.2022.04.004
_version_ 1784739737265766400
author Yang, Liubin
Peavey, Mary
Kaskar, Khalied
Chappell, Neil
Zhu, Lynn
Devlin, Darius
Valdes, Cecilia
Schutt, Amy
Woodard, Terri
Zarutskie, Paul
Cochran, Richard
Gibbons, William E.
author_facet Yang, Liubin
Peavey, Mary
Kaskar, Khalied
Chappell, Neil
Zhu, Lynn
Devlin, Darius
Valdes, Cecilia
Schutt, Amy
Woodard, Terri
Zarutskie, Paul
Cochran, Richard
Gibbons, William E.
author_sort Yang, Liubin
collection PubMed
description OBJECTIVE: To evaluate the feasibility of generating a center-specific embryo morphokinetic algorithm by time-lapse microscopy to predict clinical pregnancy rates. DESIGN: A retrospective cohort analysis. SETTING: Academic fertility clinic in a tertiary hospital setting. PATIENT(S): Patients who underwent in vitro fertilization with embryos that underwent EmbryoScope time-lapse microscopy and subsequent transfer between 2014 and 2018. INTERVENTION(S): None. MAIN OUTCOME MEASURE(S): Clinical pregnancy. RESULT(S): A supervised, random forest learning algorithm from 367 embryos successfully predicted clinical pregnancy from a training set with overall 65% sensitivity and 74% positive predictive value, with an area under the curve of 0.7 for the test set. Similar results were achieved for live birth outcomes. For the secondary analysis, embryo growth morphokinetics were grouped into five clusters using unsupervised clustering. The clusters that had the fastest morphokinetics (time to blastocyst = 97 hours) had pregnancy rates of 54%, whereas a cluster that had the slowest morphokinetics (time to blastocyst = 122 hours) had a pregnancy rate of 71%, although the differences were not statistically significant (P=.356). Other clusters had pregnancy rates of 51%–60%. CONCLUSION(S): This study shows the feasibility of a clinic-specific, noninvasive embryo morphokinetic simple machine learning model to predict clinical pregnancy rates.
format Online
Article
Text
id pubmed-9250114
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-92501142022-07-03 Development of a dynamic machine learning algorithm to predict clinical pregnancy and live birth rate with embryo morphokinetics Yang, Liubin Peavey, Mary Kaskar, Khalied Chappell, Neil Zhu, Lynn Devlin, Darius Valdes, Cecilia Schutt, Amy Woodard, Terri Zarutskie, Paul Cochran, Richard Gibbons, William E. F S Rep Original Article OBJECTIVE: To evaluate the feasibility of generating a center-specific embryo morphokinetic algorithm by time-lapse microscopy to predict clinical pregnancy rates. DESIGN: A retrospective cohort analysis. SETTING: Academic fertility clinic in a tertiary hospital setting. PATIENT(S): Patients who underwent in vitro fertilization with embryos that underwent EmbryoScope time-lapse microscopy and subsequent transfer between 2014 and 2018. INTERVENTION(S): None. MAIN OUTCOME MEASURE(S): Clinical pregnancy. RESULT(S): A supervised, random forest learning algorithm from 367 embryos successfully predicted clinical pregnancy from a training set with overall 65% sensitivity and 74% positive predictive value, with an area under the curve of 0.7 for the test set. Similar results were achieved for live birth outcomes. For the secondary analysis, embryo growth morphokinetics were grouped into five clusters using unsupervised clustering. The clusters that had the fastest morphokinetics (time to blastocyst = 97 hours) had pregnancy rates of 54%, whereas a cluster that had the slowest morphokinetics (time to blastocyst = 122 hours) had a pregnancy rate of 71%, although the differences were not statistically significant (P=.356). Other clusters had pregnancy rates of 51%–60%. CONCLUSION(S): This study shows the feasibility of a clinic-specific, noninvasive embryo morphokinetic simple machine learning model to predict clinical pregnancy rates. Elsevier 2022-04-15 /pmc/articles/PMC9250114/ /pubmed/35789724 http://dx.doi.org/10.1016/j.xfre.2022.04.004 Text en © 2022 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Article
Yang, Liubin
Peavey, Mary
Kaskar, Khalied
Chappell, Neil
Zhu, Lynn
Devlin, Darius
Valdes, Cecilia
Schutt, Amy
Woodard, Terri
Zarutskie, Paul
Cochran, Richard
Gibbons, William E.
Development of a dynamic machine learning algorithm to predict clinical pregnancy and live birth rate with embryo morphokinetics
title Development of a dynamic machine learning algorithm to predict clinical pregnancy and live birth rate with embryo morphokinetics
title_full Development of a dynamic machine learning algorithm to predict clinical pregnancy and live birth rate with embryo morphokinetics
title_fullStr Development of a dynamic machine learning algorithm to predict clinical pregnancy and live birth rate with embryo morphokinetics
title_full_unstemmed Development of a dynamic machine learning algorithm to predict clinical pregnancy and live birth rate with embryo morphokinetics
title_short Development of a dynamic machine learning algorithm to predict clinical pregnancy and live birth rate with embryo morphokinetics
title_sort development of a dynamic machine learning algorithm to predict clinical pregnancy and live birth rate with embryo morphokinetics
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9250114/
https://www.ncbi.nlm.nih.gov/pubmed/35789724
http://dx.doi.org/10.1016/j.xfre.2022.04.004
work_keys_str_mv AT yangliubin developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics
AT peaveymary developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics
AT kaskarkhalied developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics
AT chappellneil developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics
AT zhulynn developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics
AT devlindarius developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics
AT valdescecilia developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics
AT schuttamy developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics
AT woodardterri developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics
AT zarutskiepaul developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics
AT cochranrichard developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics
AT gibbonswilliame developmentofadynamicmachinelearningalgorithmtopredictclinicalpregnancyandlivebirthratewithembryomorphokinetics