Research Article

Classification of Bovine Cumulus-Oocyte Complexes with Convolutional Neural Networks

Volume: 5 Number: 3 September 18, 2023
EN

Classification of Bovine Cumulus-Oocyte Complexes with Convolutional Neural Networks

Abstract

Aim: Determining oocyte quality is crucial for successful fertilization and embryonic development, and there is a serious correlation between live birth rates and oocyte quality. Parameters such as the regular/irregular formation of the cumulus cell layer around the oocyte, the number of cumulus cell layers and the homogeneity of the appearance of the ooplasm are used to determine the quality of the oocytes to be used in in vitro fertilization (IVF) and intracytoplasmic sperm injection (ICSI) methods. Material and Methods: In this study, classification processes have been carried out using convolutional neural networks (CNN), a deep learning method, on the images of the cumulus-oocyte complex selected based on the theoretical knowledge and professional experience of embryologists. A convolutional neural network with a depth of 4 is used. In each depth level, one convolution, one ReLU and one max-pooling layer are included. The designed network architecture is trained using the Adam optimization algorithm. The cumulus-oocyte complexes (n=400) used in the study were obtained by using the oocyte aspiration method from the ovaries of the bovine slaughtered at the slaughterhouse. Results: The CNN-based classification model developed in this study showed promising results in classifying three-class image data in terms of cumulus-oocyte complex classification. The classification model achieved high accuracy, precision, and sensitivity values on the test dataset. Conclusion: Continuous research and optimization of the model can further improve its performance and benefit the field of cumulus-oocyte complexes classification and oocyte quality assessment.

Keywords

Supporting Institution

Ege University Scientific Research Projects Coordination Unit

Project Number

THD-2021-23077

Thanks

This study is supported by the Ege University Scientific Research Projects Coordination Unit, Scientific Research Project ID: THD-2021-23077.

References

  1. 1-Dourou P, Gourounti K, Lykeridou A, et al. Quality of life among couples with a fertility related diagnosis. Clin Pract. 2023;13:251–63.
  2. 2. Ozturk, S. Selection of competent oocytes by morphological criteria for assisted reproductive technologies. Mol Reprod Dev. 2020;87:1021–36.
  3. 3. Esteves SC, Roque M, Sunkara SK, et al. Oocyte quantity, as well as oocyte quality, plays a significant role for the cumulative live birth rate of a POSEIDON criteria patient. Hum Reprod. 2019;34:2555–7.
  4. 4. Turathum B, Gao EM, Chian RC. The function of cumulus cells in oocyte growth and maturation and in subsequent ovulation and fertilization. Cells. 2021;10:2292.
  5. 5. Lewis N, Hinrichs K, Leese HJ, et al. Energy metabolism of the equine cumulus oocyte complex during in vitro maturation. Sci Rep. 2020;10:3493.
  6. 6. von Mengden L, Klamt F, Smitz J. Redox biology of human cumulus cells: basic concepts, impact on oocyte quality, and potential clinical use. Antioxid Redox Signal. 2020;32:522-35.
  7. 7. Lu X, Liu Y, Xu J, et al. Mitochondrial dysfunction in cumulus cells is related to decreased reproductive capacity in advanced-age women. Fertil Steril. 2022;118:393-404.
  8. 8. Yang Y, Cheung HH, Zhang C, et al. Melatonin as potential targets for delaying ovarian aging. Curr Drug Targets. 2019;20:16-28.

Details

Primary Language

English

Subjects

Clinical Sciences

Journal Section

Research Article

Early Pub Date

July 6, 2023

Publication Date

September 18, 2023

Submission Date

May 5, 2023

Acceptance Date

May 29, 2023

Published in Issue

Year 2023 Volume: 5 Number: 3

AMA
1.Çavuşoğlu T, Gökhan A, Şirin C, et al. Classification of Bovine Cumulus-Oocyte Complexes with Convolutional Neural Networks. Med Records. 2023;5(3):489-95. doi:10.37990/medr.1292782

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