Embryo quality predictive models based on cumulus cells gene expression

Since the introduction of in vitro fertilization (IVF) in clinical practice of infertility treatment, the indicators for high quality embryos were investigated. Cumulus cells (CC) have a specific gene expression profile according to the developmental potential of the oocyte they are surrounding, and...

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Main Authors: Devjak R, Burnik Papler T, Verdenik I, Fon Tacer K, Vrtačnik Bokal E
Format: Article
Language:English
Published: Sciendo 2016-06-01
Series:Balkan Journal of Medical Genetics
Subjects:
Online Access:https://doi.org/10.1515/bjmg-2016-0001
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spelling doaj-04c41a658694416087a5a95137b93c6e2021-09-05T20:42:32ZengSciendoBalkan Journal of Medical Genetics1311-01602016-06-0119151210.1515/bjmg-2016-0001bjmg-2016-0001Embryo quality predictive models based on cumulus cells gene expressionDevjak R0Burnik Papler T1Verdenik I2Fon Tacer K3Vrtačnik Bokal E4Division of Medical Oncology, Institute of Oncology, Ljubljana, SloveniaReproductive Unit, Department of Obstetrics and Gynaecology, University Medical Centre Ljubljana, Ljubljana, SloveniaReproductive Unit, Department of Obstetrics and Gynaecology, University Medical Centre Ljubljana, Ljubljana, SloveniaFaculty of Medicine, University of Ljubljana, Ljubljana, SloveniaReproductive Unit, Department of Obstetrics and Gynaecology, University Medical Centre Ljubljana, Ljubljana, SloveniaSince the introduction of in vitro fertilization (IVF) in clinical practice of infertility treatment, the indicators for high quality embryos were investigated. Cumulus cells (CC) have a specific gene expression profile according to the developmental potential of the oocyte they are surrounding, and therefore, specific gene expression could be used as a biomarker. The aim of our study was to combine more than one biomarker to observe improvement in prediction value of embryo development. In this study, 58 CC samples from 17 IVF patients were analyzed. This study was approved by the Republic of Slovenia National Medical Ethics Committee. Gene expression analysis [quantitative real time polymerase chain reaction (qPCR)] for five genes, analyzed according to embryo quality level, was performed. Two prediction models were tested for embryo quality prediction: a binary logistic and a decision tree model. As the main outcome, gene expression levels for five genes were taken and the area under the curve (AUC) for two prediction models were calculated. Among tested genes, AMHR2 and LIF showed significant expression difference between high quality and low quality embryos. These two genes were used for the construction of two prediction models: the binary logistic model yielded an AUC of 0.72 ± 0.08 and the decision tree model yielded an AUC of 0.73 ± 0.03. Two different prediction models yielded similar predictive power to differentiate high and low quality embryos. In terms of eventual clinical decision making, the decision tree model resulted in easy-to-interpret rules that are highly applicable in clinical practice.https://doi.org/10.1515/bjmg-2016-0001amhr2 genecumulus cells (cc)embryo predictionlif genein vitro fertilization (ivf)
collection DOAJ
language English
format Article
sources DOAJ
author Devjak R
Burnik Papler T
Verdenik I
Fon Tacer K
Vrtačnik Bokal E
spellingShingle Devjak R
Burnik Papler T
Verdenik I
Fon Tacer K
Vrtačnik Bokal E
Embryo quality predictive models based on cumulus cells gene expression
Balkan Journal of Medical Genetics
amhr2 gene
cumulus cells (cc)
embryo prediction
lif gene
in vitro fertilization (ivf)
author_facet Devjak R
Burnik Papler T
Verdenik I
Fon Tacer K
Vrtačnik Bokal E
author_sort Devjak R
title Embryo quality predictive models based on cumulus cells gene expression
title_short Embryo quality predictive models based on cumulus cells gene expression
title_full Embryo quality predictive models based on cumulus cells gene expression
title_fullStr Embryo quality predictive models based on cumulus cells gene expression
title_full_unstemmed Embryo quality predictive models based on cumulus cells gene expression
title_sort embryo quality predictive models based on cumulus cells gene expression
publisher Sciendo
series Balkan Journal of Medical Genetics
issn 1311-0160
publishDate 2016-06-01
description Since the introduction of in vitro fertilization (IVF) in clinical practice of infertility treatment, the indicators for high quality embryos were investigated. Cumulus cells (CC) have a specific gene expression profile according to the developmental potential of the oocyte they are surrounding, and therefore, specific gene expression could be used as a biomarker. The aim of our study was to combine more than one biomarker to observe improvement in prediction value of embryo development. In this study, 58 CC samples from 17 IVF patients were analyzed. This study was approved by the Republic of Slovenia National Medical Ethics Committee. Gene expression analysis [quantitative real time polymerase chain reaction (qPCR)] for five genes, analyzed according to embryo quality level, was performed. Two prediction models were tested for embryo quality prediction: a binary logistic and a decision tree model. As the main outcome, gene expression levels for five genes were taken and the area under the curve (AUC) for two prediction models were calculated. Among tested genes, AMHR2 and LIF showed significant expression difference between high quality and low quality embryos. These two genes were used for the construction of two prediction models: the binary logistic model yielded an AUC of 0.72 ± 0.08 and the decision tree model yielded an AUC of 0.73 ± 0.03. Two different prediction models yielded similar predictive power to differentiate high and low quality embryos. In terms of eventual clinical decision making, the decision tree model resulted in easy-to-interpret rules that are highly applicable in clinical practice.
topic amhr2 gene
cumulus cells (cc)
embryo prediction
lif gene
in vitro fertilization (ivf)
url https://doi.org/10.1515/bjmg-2016-0001
work_keys_str_mv AT devjakr embryoqualitypredictivemodelsbasedoncumuluscellsgeneexpression
AT burnikpaplert embryoqualitypredictivemodelsbasedoncumuluscellsgeneexpression
AT verdeniki embryoqualitypredictivemodelsbasedoncumuluscellsgeneexpression
AT fontacerk embryoqualitypredictivemodelsbasedoncumuluscellsgeneexpression
AT vrtacnikbokale embryoqualitypredictivemodelsbasedoncumuluscellsgeneexpression
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