Live-Birth Prediction of Natural-Cycle In Vitro Fertilization Using 57,558 Linked Cycle Records: A Machine Learning Perspective

被引:2
作者
Zhang, Yanran
Shen, Lei
Yin, Xinghui
Chen, Wenfeng
机构
[1] Medical School, Nanjing University, Nanjing
[2] College of Computer and Information, Hohai University, Nanjing
[3] Nanjing Marine Radar Institute, Nanjing
来源
FRONTIERS IN ENDOCRINOLOGY | 2022年 / 13卷
关键词
NC-IVF; HFEA; machine learning; ensemble learning; live birth; PERINATAL OUTCOMES; IVF; STIMULATION;
D O I
10.3389/fendo.2022.838087
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BackgroundNatural-cycle in vitro fertilization (NC-IVF) is an in vitro fertilization (IVF) cycle without gonadotropins or any other stimulation of follicular growth. Previous studies on live-birth prediction of NC-IVF were very few; the sample size was very limited. This study aims to construct a machine learning model to predict live-birth occurrence of NC-IVF using 57,558 linked cycle records and help clinicians develop treatment strategies. Design and MethodsThe dataset contained 57,558 anonymized register patient records undergoing NC-IVF cycles from 2005 to 2016 filtered from 7bsp;60,732 records in the Human Fertilisation and Embryology Authority (HFEA) data. We selected matching records and features through data filtering and feature selection methods. Two groups of twelve machine learning models were trained and tested. Eight metrics, e.g., F1 score, Matthews correlation coefficient (MCC), the area under the receiver operating characteristic curve (AUC), etc., were computed to evaluate the performance of each model. ResultsTwo groups of twelve models were trained and tested. The artificial neural network (ANN) model performed the best in the machine learning group (F1 score, 70.87%; MCC, 50.37%; and AUC score, 0.7939). The LogitBoost model obtained the best scores in the ensemble learning group (F1 score, 70.57%; MCC, 50.75%; and AUC score, 0.7907). After the comparison between the two models, the LogitBoost model was recognized as an optimal one. ConclusionIn this study, NC-IVF-related datasets were extracted from the HFEA data, and a machine learning-based prediction model was successfully constructed through this largest NC-IVF dataset currently. This model is universal and stable, which can help clinicians predict the live-birth success rate of NC-IVF in advance before developing IVF treatment strategies and then choose the best benefit treatment strategy according to the patients' wishes. As "use less stimulation and back to natural condition" becomes more and more popular, this model is more meaningful in the decision-making assistance system for IVF.
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页数:12
相关论文
共 54 条
  • [1] Ahemmed B, 2017, INT J REPROD MED, V2017, DOI [10.1155/2017/9451235, DOI 10.1155/2017/9451235]
  • [2] Assisted reproductive technology in Europe, 2004: results generated from European registers by ESHRE
    Andersen, A. Nyboe
    Goossens, V.
    Ferraretti, A. P.
    Bhattacharya, S.
    Felberbaum, R.
    de Mouzon, J.
    Nygren, K. G.
    [J]. HUMAN REPRODUCTION, 2008, 23 (04) : 756 - 771
  • [3] Bekkar M., 2013, INT J DATA MINING KN, V3, P15, DOI [10.5121/ijdkp.2013.3402, DOI 10.5121/IJDKP.2013.3402]
  • [4] Prediction of implantation after blastocyst transfer in in vitro fertilization: a machine-learning perspective
    Blank, Celine
    Wildeboer, Rogier Rudolf
    DeCroo, Ilse
    Tilleman, Kelly
    Weyers, Basiel
    de Sutter, Petra
    Mischi, Massimo
    Schoot, Benedictus Christiaan
    [J]. FERTILITY AND STERILITY, 2019, 111 (02) : 318 - 326
  • [5] SmcHD1, containing a structural-maintenance-of-chromosomes hinge domain, has a critical role in X inactivation
    Blewitt, Marnie E.
    Gendrel, Anne-Valerie
    Pang, Zhenyi
    Sparrow, Duncan B.
    Whitelaw, Nadia
    Craig, Jeffrey M.
    Apedaile, Anwyn
    Hilton, Douglas J.
    Dunwoodie, Sally L.
    Brockdorff, Neil
    Kay, Graham F.
    Whitelaw, Emma
    [J]. NATURE GENETICS, 2008, 40 (05) : 663 - 669
  • [6] The Ovarian Hyperstimulation Syndrome
    Blumenfeld, Zeev
    [J]. OVARIAN CYCLE, 2018, 107 : 423 - 451
  • [7] Suppression of extravillous trophoblast vascular endothelial growth factor expression and uterine spiral artery invasion by estrogen during early baboon pregnancy
    Bonagura, Thomas W.
    Pepe, Gerald J.
    Enders, Allen C.
    Albrecht, Eugene D.
    [J]. ENDOCRINOLOGY, 2008, 149 (10) : 5078 - 5087
  • [8] Performance of a deep learning based neural network in the selection of human blastocysts for implantation
    Bormann, Charles L.
    Kanakasabapathy, Manoj Kumar
    Thirumalaraju, Prudhvi
    Gupta, Raghav
    Pooniwala, Rohan
    Kandula, Hemanth
    Hariton, Eduardo
    Souter, Irene
    Dimitriadis, Irene
    Ramirez, Leslie B.
    Curchoe, Carol L.
    Swain, Jason
    Boehnlein, Lynn M.
    Shafiee, Hadi
    [J]. ELIFE, 2020, 9
  • [9] Breiman L, 1996, MACH LEARN, V24, P123, DOI 10.1023/A:1018054314350
  • [10] Artificial intelligence and machine learning for human reproduction and embryology presented at ASRM and ESHRE 2018
    Curchoe, Carol Lynn
    Bormann, Charles L.
    [J]. JOURNAL OF ASSISTED REPRODUCTION AND GENETICS, 2019, 36 (04) : 591 - 600