Sharma Akriti, Dorobantiu Alexandru, Ali Saquib, Iliceto Mario, Stensen Mette H, Delbarre Erwan, Riegler Michael A, Hammer Hugo L
Department of Computer Science, Oslo Metropolitan University, Oslo, Norway.
Computer Science and Electrical Engineering Department, Lucian Blaga University of Sibiu, Emil Cioran, Sibiu, Romania.
PLoS One. 2025 Sep 2;20(9):e0330924. doi: 10.1371/journal.pone.0330924. eCollection 2025.
In assisted reproductive technology, evaluating the quality of the embryo is crucial when selecting the most viable embryo for transferring to a woman. Assessment also plays an important role in determining the optimal transfer time, either in the cleavage stage or in the blastocyst stage. Several AI-based tools exist to automate the assessment process. However, none of the existing tools predicts upcoming video frames to assist embryologists in the early assessment of embryos. In this paper, we propose an AI system to forecast the dynamics of embryo morphology over a time period in the future.
The AI system is designed to analyze embryo development in the past two hours and predict the morphological changes of the embryo for the next two hours. It utilizes a novel predictive model incorporating Convolutional LSTM layers for recursive forecasting, enabling prediction of future embryo morphology by analyzing prior changes in the video sequence and predicting embryo development up to 23 hours ahead.
The results demonstrated that the AI system could accurately forecast embryo development at the cleavage stage on day 2 and the blastocyst stage on day 4. The system provided valuable information on the cell division processes on day 2 and the start of the blastocyst stage on day 4. The system focused on specific developmental features effective across both the categories of embryos. The embryos that were transferred to the female, and the embryos that were discarded. However, in the 'transfer' category, the forecast had a clearer cell membrane and less distortion as compared to the 'avoid' category.
This study assists in the embryo evaluation process by providing early insights into the quality of the embryo for both the transfer and avoid categories of videos. The embryologists recognize the ability of the forecast to depict the morphological changes of the embryo. Additionally, enhancement in image quality has the potential to make this approach relevant in clinical settings.
在辅助生殖技术中,评估胚胎质量对于选择最具活力的胚胎移植到女性体内至关重要。评估在确定最佳移植时间方面也起着重要作用,无论是在卵裂期还是囊胚期。现有的几种基于人工智能的工具可实现评估过程的自动化。然而,现有的工具都无法预测即将出现的视频帧以协助胚胎学家对胚胎进行早期评估。在本文中,我们提出了一种人工智能系统,用于预测未来一段时间内胚胎形态的动态变化。
该人工智能系统旨在分析过去两小时内的胚胎发育情况,并预测未来两小时内胚胎的形态变化。它利用了一种新颖的预测模型,该模型结合了卷积长短期记忆(Convolutional LSTM)层进行递归预测,通过分析视频序列中的先前变化并预测未来长达23小时的胚胎发育情况,从而能够预测未来的胚胎形态。
结果表明,该人工智能系统能够准确预测第2天卵裂期和第4天囊胚期的胚胎发育情况。该系统提供了关于第2天细胞分裂过程和第4天囊胚期开始的有价值信息。该系统关注于对两类胚胎都有效的特定发育特征。移植到女性体内的胚胎和被丢弃的胚胎。然而,在“移植”类别中,与“避免移植”类别相比,预测的细胞膜更清晰,变形更少。
本研究通过为移植和避免移植类别的视频提供胚胎质量的早期见解,有助于胚胎评估过程。胚胎学家认可该预测描绘胚胎形态变化的能力。此外,图像质量的提高有可能使这种方法在临床环境中具有相关性。