Embryo grading at the compaction stage is highly predictive of outcome

2018 ◽  
Vol 37 ◽  
pp. e18
Author(s):  
Sue Montgomery ◽  
Ioannis Gallos ◽  
Rachel Smith ◽  
Lynne Nice ◽  
Lucy Jenner ◽  
...  
Keyword(s):  
F&S Reports ◽  
2020 ◽  
Vol 1 (3) ◽  
pp. 243-248
Author(s):  
Sarah M. Moustafa ◽  
Emma M. Rosen ◽  
Caitlin Boylan ◽  
Jennifer E. Mersereau
Keyword(s):  

2008 ◽  
Vol 25 (2) ◽  
pp. 90-97
Author(s):  
Osamu Okitsu
Keyword(s):  

Author(s):  
Danilo Cimadomo ◽  
Laura Sosa Fernandez ◽  
Daria Soscia ◽  
Gemma Fabozzi ◽  
Francesca Benini ◽  
...  

1995 ◽  
Vol 40 (3) ◽  
pp. 151-157 ◽  
Author(s):  
Linda Hoover ◽  
Amy Baker ◽  
Jerome H. Check ◽  
Deborah Lurie ◽  
Althea O’ Shaughnessy

2019 ◽  
Vol 01 (01) ◽  
pp. 51-56 ◽  
Author(s):  
Tsung-Jui Chen ◽  
Wei-Lin Zheng ◽  
Chun-Hsin Liu ◽  
Ian Huang ◽  
Hsing-Hua Lai ◽  
...  

The assessment of embryo viability for in vitro fertilization (IVF) is mainly based on subjective visual analysis, with the limitation of intra- and inter-observer variation and a time-consuming task. In this study, we used deep learning with large dataset of microscopic embryo images to develop an automated grading system for embryo assessment. This study included a total of 171,239 images from 16,201 embryos of 4,146 IVF cycles at Stork Fertility Center (https://www.e-stork.com.tw) from March 6, 2014 to April 13, 2018. The images were captured by inverted microscope (Zeiss Axio Observer Z1) at 112 to 116 hours (Day 5) or 136 to 140 hours (Day 6) after fertilization. Using a pre-trained network trained on the ImageNet dataset as convolution base, we applied Convolutional Neural Network (CNN) on embryo images, using ResNet50 architecture to fine-tune ImageNet parameters. The predicted grading results was compared with the grading results from trained embryologists to evaluate the model performance. The images were labeled by trained embryologists, based on Gardner’s grading system: blastocyst development ranking from 3–6, ICM quality as A, B, or C; and TE quality as a, b, or c. After pre-processing, the images were divided into training, validation, and test groups, in which 60% were allocated to the training group, 20% to the validation group, and 20% to the test group. The ResNet50 algorithm was trained on the 60% images allocated to the training group, and the algorithm’s performance was evaluated using the 20% images allocated to the test group. The results showed an average predictive accuracy of 75.36% for the all three grading categories: 96.24% for blastocyst development, 91.07% for ICM quality, and 84.42% for TE quality. To the best of our knowledge, this is the first study of an automatic embryo grading system using large dataset from Asian population. Combing the promising results obtained in this study with time-lapse microscope system integrated with IVF Electronic Medical Record platform, a fully automated and non-invasive pipeline for embryo assessment will be achieved.


2012 ◽  
Vol 97 (3) ◽  
pp. S31
Author(s):  
C.M.P. Duke ◽  
M.S. Christianson ◽  
A. Wharton ◽  
K. Broman ◽  
K. Thrift ◽  
...  

1998 ◽  
Vol 13 (suppl 4) ◽  
pp. 272-273
Author(s):  
L.J. Jenner ◽  
O. Salha ◽  
T. Dada ◽  
S.P. Levett ◽  
V. Sharma

2021 ◽  
Author(s):  
Li Chen ◽  
Wen Li ◽  
Yuxiu Liu ◽  
Zhihang Peng ◽  
Liyi Cai ◽  
...  

Abstract BackgroundThe success rates of in vitro fertilization (IVF) treatment are limited by the aneuploidy of human embryos. Pre-implantation genetic testing for aneuploidy(PGT-A) is often used to select embryos with normal ploidy but requires invasive embryo biopsy. MethodsWe performed chromosome sequencing of 345 paired blastocyst culture medium and whole blastocyst samples and developed a noninvasive embryo grading system based on the random forest machine-learning algorithm to predict blastocyst ploidy. The system was validated in 266 patients, and a blinded prospective observational study was performed to investigate clinical outcomes between machine learning-guided and traditional niPGT-A analyses. We graded embryos as A, B, or C using machine learning-guided niPGT-A analysis according to their euploidy probability levels predicted by noninvasive chromosomal screening. ResultsWe observed higher live birth rate in A- versus C-grade embryos (50.4% versus 27.1%, p=0.006) and B- versus C-grade embryos (45.3% versus 27.1%, p=0.022) and lower miscarriage rate in A- versus C-grade embryos (15.9% versus 33.3%, p=0.026) and B- versus C-grade embryos (14.3% versus 33.3%, p=0.021). The embryo utilization rate was significantly higher through machine learning strategy compared to the conventional dichotomic judgment of euploidy or aneuploidy in the niPGT-A analysis (78.8% versus 57.9%, p<0.001). We observed better outcomes in A- and B-grade embryos versus C-grade embryos and higher embryo utilization rates through machine learning strategies than traditional niPGT-A analysis. ConclusionThese results demonstrate that the machine learning-guided embryo grading system can optimize embryo selection and avoid wasting potential embryos.Trial registrationChinese Clinical Trial Registry,ChiCTR-RRC-17010396.Registered 11 January 2017, http://www.chictr.org.cn/ChiCTR-RRC-17010396


2012 ◽  
Vol 98 (3) ◽  
pp. S140
Author(s):  
D.R. Kinzer ◽  
M.A. Alper ◽  
D. Sakkas ◽  
C.B. Barrett
Keyword(s):  

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