4.6 Article

Evaluation of oocyte maturity using artificial intelligence quantification of follicle volume biomarker by three-dimensional ultrasound

期刊

REPRODUCTIVE BIOMEDICINE ONLINE
卷 45, 期 6, 页码 1197-1206

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.rbmo.2022.07.012

关键词

ovarian hyper -response?; Artificial intelligence; Follicular monitoring; Oocyte maturation; Ovarian reserve; Three-dimensional ultrasound

资金

  1. Clinical Research 4310 Program of the First Affiliated Hospital of the University of South China [4310-202 1-K06]
  2. National Natural Science Foundation of China [82102054]
  3. Major Research Projects of Universities in Guangdong Province [2019KZDZX1032]

向作者/读者索取更多资源

This study established a novel biomarker for assessing oocyte maturity, timing of HCG administration, and individual prediction of ovarian hyper-response using deep learning-based segmentation algorithms and multivariate classifiers based on three-dimensional ultrasound (3D-US). The results showed that the performance of the novel biomarker was significantly better than conventional methods in predicting the number of mature oocytes retrieved and optimizing HCG trigger timing. Furthermore, the accuracy of the multi-layer perceptron model was better than other classifiers in predicting ovarian hyper-response.
Research question: Can a novel deep learning-based follicle volume biomarker using three-dimensional ultrasound (3D-US) be established to aid in the assessment of oocyte maturity, timing of HCG administration and the individual prediction of ovarian hyper-response?Design: A total of 515 IVF cases were enrolled, and 3D-US scanning was carried out on HCG administration day. A follicle volume biomarker established by means of a deep learning-based segmentation algorithm was used to calculate optimal leading follicle volume for predicting number of mature oocytes retrieved and optimizing HCG trigger timing. Performance of the novel biomarker cut-off value was compared with conventional two-dimensional ultrasound (2D-US) follicular diameter measurements in assessing oocyte retrieval outcome. Moreover, demographics, infertility work-up and ultrasound biomarkers were used to build models for predicting ovarian hyper-response.Results: On the basis of the deep learning method, the optimal cut-off value of the follicle volume biomarker was determined to be 0.5 cm3 for predicting number of mature oocytes retrieved; its performance was significantly better than the conventional method (two-dimensional diameter measurement >= 10 mm). The cut-off value for leading follicle volume to optimize HCG trigger timing was determined to be 3.0 cm3 and was significantly associated with a higher number of mature oocytes retrieved (P = 0.01). Accuracy of the multi-layer perceptron model was better than two-dimensional diameter measurement (0.890 versus 0.785) and other multivariate classifiers in predicting ovarian hyper-response (P < 0.001).Conclusions: Deep learning segmentation methods and multivariate classifiers based on 3D-US were found to be potentially effective approaches for assessing mature oocyte retrieval outcome and individual prediction of ovarian hyper-response.

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