ImVitro, AI Team, Paris, France.
Sci Rep. 2024 Nov 22;14(1):29016. doi: 10.1038/s41598-024-80565-1.
The use of time lapse systems (TLS) in In Vitro Fertilization (IVF) labs to record developing embryos has paved the way for deep-learning based computer vision algorithms to assist embryologists in their morphokinetic evaluation. Today, most of the literature has characterized algorithms that predict pregnancy, ploidy or blastocyst quality, leaving to the side the task of identifying key morphokinetic events. Using a dataset of N = 1909 embryos collected from multiple clinics equipped with EMBRYOSCOPE/EMBRYOSCOPE+ (Vitrolife), GERI (Genea Biomedx) or MIRI (Esco Medical), this study proposes a novel deep-learning architecture to automatically detect 11 kinetic events (from 1-cell to blastocyst). First, a Transformer based video backbone was trained with a custom metric inspired by reverse cross-entropy which enables the model to learn the ordinal structure of the events. Second, embeddings were extracted from the backbone and passed into a Gated Recurrent Unit (GRU) sequence model to account for kinetic dependencies. A weighted average of 66.0%, 67.6% and 66.3% in timing precision, recall and F1-score respectively was reached on a test set of 278 embryos, with a model applicable to multiple TLS.
在体外受精(IVF)实验室中使用延时系统(TLS)记录胚胎发育,为基于深度学习的计算机视觉算法辅助胚胎学家进行形态动力学评估铺平了道路。如今,大多数文献都描述了预测妊娠、ploidy 或囊胚质量的算法,而忽略了识别关键形态动力学事件的任务。本研究使用了来自多个配备 EMBRYOSCOPE/EMBRYOSCOPE+(Vitrolife)、GERI(Genea Biomedx)或 MIRI(Esco Medical)的诊所收集的 N = 1909 个胚胎数据集,提出了一种新的深度学习架构,用于自动检测 11 个动力学事件(从 1 细胞到囊胚)。首先,使用基于 Transformer 的视频骨干网络进行训练,该骨干网络使用了一种受反向交叉熵启发的自定义指标,使模型能够学习事件的有序结构。其次,从骨干网络中提取嵌入,并将其传递到门控循环单元(GRU)序列模型中,以考虑动力学依赖性。在一个 278 个胚胎的测试集上,分别达到了 66.0%、67.6%和 66.3%的定时精度、召回率和 F1 分数的加权平均值,并且该模型适用于多种 TLS。