A new deep-learning model using YOLOv3 to support sperm selection during intracytoplasmic sperm injection procedure

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Abstract

Purpose: To create and evaluate a machine-learning model for YOLOv3 that can simultaneously perform morphological evaluation and tracking in a short time, which can be adapted to video data under an inverted microscope. Methods: Japanese patients who underwent intracytoplasmic sperm injection at the Jikei University School of Medicine and Keiai Reproductive and Endosurgical Clinic from January 2019 to March 2020 were included. An AI model that simultaneously performs morphological assessment and tracking was created and its performance was evaluated. Results: For morphological assessment, the sensitivity and positive predictive value (PPV) of this model for abnormal sperm were 0.881 and 0.853, respectively. The sensitivity and PPV for normal sperm were 0.794 and 0.689, respectively. For tracking performance, among the 51 objects, 40 (78.4%) were mostly tracked, 11 (21.6%) were partially tracked, and 0 (0%) were mostly lost. Conclusions: This study showed that evaluating sperm morphology while tracking in a single model is possible by training YOLO v3. This model could acquire time-series data of one sperm, which will assist in acquiring and annotating sperm image data.

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Sato, T., Kishi, H., Murakata, S., Hayashi, Y., Hattori, T., Nakazawa, S., … Okamoto, A. (2022). A new deep-learning model using YOLOv3 to support sperm selection during intracytoplasmic sperm injection procedure. Reproductive Medicine and Biology, 21(1). https://doi.org/10.1002/rmb2.12454

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