Deep learning as a predictive tool for fetal heart pregnancy following time-lapse incubation and blastocyst transfer

被引:199
|
作者
Tran, D. [1 ]
Cooke, S. [2 ]
Illingworth, P. J. [2 ]
Gardner, D. K. [3 ]
机构
[1] Harrison AI, Med AI, Barangaroo, NSW, Australia
[2] IVF Australia, Embryol, Greenwich, NSW, Australia
[3] Melbourne IVF, Embryol, East Melbourne, Vic, Australia
关键词
artificial intelligence; deep learning; neural network; embryo selection; time-lapse; DAY; 5; EMBRYO; LIVE BIRTH; IMPLANTATION; SELECTION; MORPHOKINETICS; ALGORITHMS; CULTURE;
D O I
10.1093/humrep/dez064
中图分类号
R71 [妇产科学];
学科分类号
100211 ;
摘要
STUDY QUESTION: Can a deep learning model predict the probability of pregnancy with fetal heart (FH) from time-lapse videos? SUMMARY ANSWER: We created a deep learning model named IVY, which was an objective and fully automated system that predicts the probability of FH pregnancy directly from raw time-lapse videos without the need for any manual morphokinetic annotation or blastocyst morphology assessment. WHAT IS KNOWN ALREADY: The contribution of time-lapse imaging in effective embryo selection is promising. Existing algorithms for the analysis of time-lapse imaging are based on morphology and morphokinetic parameters that require subjective human annotation and thus have intrinsic inter-reader and intra-reader variability. Deep learning offers promise for the automation and standardization of embryo selection. STUDY DESIGN, SIZE, DURATION: A retrospective analysis of time-lapse videos and clinical outcomes of 10 638 embryos from eight different IVF clinics, across four different countries, between January 2014 and December 2018. PARTICIPANTS/MATERIALS, SETTING, METHODS: The deep learning model was trained using time-lapse videos with known FH pregnancy outcome to perform a binary classification task of predicting the probability of pregnancy with FH given time-lapse video sequence. The predictive power of the model was measured using the average area under the curve (AUC) of the receiver operating characteristic curve over 5-fold stratified cross-validation. MAIN RESULTS AND THE ROLE OF CHANCE: The deep learning model was able to predict FH pregnancy from time-lapse videos with an AUC of 0.93 [95% CI 0.92-0.94] in 5-fold stratified cross-validation. A hold-out validation test across eight laboratories showed that the AUC was reproducible, ranging from 0.95 to 0.90 across different laboratories with different culture and laboratory processes. LIMITATIONS, REASONS FOR CAUTION: This study is a retrospective analysis demonstrating that the deep learning model has a high level of predictability of the likelihood that an embryo will implant. The clinical impacts of these findings are still uncertain. Further studies, including prospective randomized controlled trials, are required to evaluate the clinical significance of this deep learning model. The time-lapse videos collected for training and validation are Day 5 embryos; hence, additional adjustment would need to be made for the model to be used in the context of Day 3 transfer. WIDER IMPLICATIONS OF THE FINDINGS: The high predictive value for embryo implantation obtained by the deep learning model may improve the effectiveness of previous approaches used for time-lapse imaging in embryo selection. This may improve the prioritization of the most viable embryo for a single embryo transfer. The deep learning model may also prove to be useful in providing the optimal order for subsequent transfers of cryopreserved embryos.
引用
收藏
页码:1011 / 1018
页数:8
相关论文
共 50 条
  • [41] Time-lapse seismic data inversion for estimating reservoir parameters using deep learning
    Kaur, Harpreet
    Zhong, Zhi
    Sun, Alexander
    Fomel, Sergey
    INTERPRETATION-A JOURNAL OF SUBSURFACE CHARACTERIZATION, 2022, 10 (01): : T167 - T179
  • [42] A deep learning approach to track Arabidopsis seedlings’ circumnutation from time-lapse videos
    Yixiang Mao
    Hejian Liu
    Yao Wang
    Eric D. Brenner
    Plant Methods, 19
  • [43] Deep learning for characterizing CO2 migration in time-lapse seismic images
    Sheng, Hanlin
    Wu, Xinming
    Sun, Xiaoming
    Wu, Long
    FUEL, 2023, 336
  • [44] A deep learning approach to track Arabidopsis seedlings' circumnutation from time-lapse videos
    Mao, Yixiang
    Liu, Hejian
    Wang, Yao
    Brenner, Eric D.
    PLANT METHODS, 2023, 19 (01)
  • [45] Automatic flower detection and phenology monitoring using time-lapse cameras and deep learning
    Mann, Hjalte M. R.
    Iosifidis, Alexandros
    Jepsen, Jane U.
    Welker, Jeffrey M.
    Loonen, Maarten J. J. E.
    Hoye, Toke T.
    REMOTE SENSING IN ECOLOGY AND CONSERVATION, 2022, 8 (06) : 765 - 777
  • [46] How to maximize the pregnancy rate with no increase in multiple pregnancy rates following blastocyst embryo transfer? Is blastocyst transfer time the missing ingredient?
    Alansari, Lolwa
    Akande, Valentine
    MIDDLE EAST FERTILITY SOCIETY JOURNAL, 2015, 20 (04) : 241 - 245
  • [47] An artificial intelligence method based on time-lapse images and deep learning may predict if a day2/3 embryo will form a utilizable blastocyst
    Ahlstrom, A.
    Berntsen, J.
    Johansen, M.
    Hardarson, T.
    Cimadomo, D.
    Bergh, C.
    Lundin, K.
    HUMAN REPRODUCTION, 2023, 38
  • [48] Embryo assessment and selection by time-lapse evaluation using EEVA™ with transfer at the cleavage stage achieves similar clinical outcomes to blastocyst transfer
    Gaudoin, M.
    Adam, C.
    Gibson, N.
    Noble, C.
    Mitchell, P.
    Fleming, R.
    HUMAN REPRODUCTION, 2014, 29 : 150 - 151
  • [49] NEW PROTOCOL OF FROZEN-THAW ELECTIVE SINGLE BLASTOCYST TRANSFER CYCLE USING MULTIPLEX TIME-LAPSE CINEMATOGRAPHY
    Leonard, P. H.
    Charlesworth, M. C.
    Walker, D. L.
    Fredrickson, J. R.
    Morbeck, D. E.
    FERTILITY AND STERILITY, 2011, 96 (03) : S247 - S247
  • [50] Conjoined twins after single blastocyst transfer: a case report including detailed time-lapse recording of the earliest embryogenesis, from zygote to expanded blastocyst
    Grondahl, Marie Louise
    Tharin, Julie Elisabeth
    Maroun, Lisa Leth
    Jorgensen, Finn Stener
    HUMAN REPRODUCTION, 2022, 37 (04) : 718 - 724