Sun Yat-sen Memorial Hospital, Sun Yat-sen University, Guangzhou, China.
Zhongshan School of Medicine, Sun Yat-sen University, Guangzhou, China.
Artif Intell Med. 2024 Mar;149:102773. doi: 10.1016/j.artmed.2024.102773. Epub 2024 Jan 19.
The selection of embryos is a key for the success of in vitro fertilization (IVF). However, automatic quality assessment on human IVF embryos with optical microscope images is still challenging. In this study, we developed a clinical consensus-compliant deep learning approach, named Esava (Embryo Segmentation and Viability Assessment), to quantitatively evaluate the development of IVF embryos using optical microscope images. In total 551 optical microscope images of human IVF embryos of day-2 to day-3 were collected, preprocessed, and annotated. Using the Faster R-CNN model as baseline, our Esava model was constructed, refined, trained, and validated for precise and robust blastomere detection. A novel algorithm Crowd-NMS was proposed and employed in Esava to enhance the object detection and to precisely quantify the embryonic cells and their size uniformity. Additionally, an innovative GrabCut-based unsupervised module was integrated for the segmentation of blastomeres and embryos. Independently tested on 94 embryo images for blastomere detection, Esava obtained the high rates of 0.9940, 0.9121, and 0.9531 for precision, recall, and mAP respectively, and gained significant advances compared with previous computational methods. Intraclass correlation coefficients indicated the consistency between Esava and three experienced embryologists. Another test on 51 extra images demonstrated that Esava surpassed other tools significantly, achieving the highest average precision 0.9025. Moreover, it also accurately identified the borders of blastomeres with mIoU over 0.88 on the independent testing dataset. Esava is compliant with the Istanbul clinical consensus and compatible to senior embryologists. Taken together, Esava improves the accuracy and efficiency of embryonic development assessment with optical microscope images.
胚胎的选择是体外受精 (IVF) 成功的关键。然而,利用光学显微镜图像对人类 IVF 胚胎进行自动质量评估仍然具有挑战性。在这项研究中,我们开发了一种临床共识兼容的深度学习方法,命名为 Esava(胚胎分割和活力评估),用于使用光学显微镜图像定量评估 IVF 胚胎的发育情况。共收集了 551 个人类 IVF 胚胎第 2-3 天的光学显微镜图像,对其进行预处理和标注。以 Faster R-CNN 模型为基础,构建、优化、训练和验证了我们的 Esava 模型,以进行精确和稳健的卵裂球检测。提出并在 Esava 中采用了一种新颖的 Crowd-NMS 算法,用于增强目标检测并精确量化胚胎细胞及其大小均匀性。此外,还集成了一种创新的基于 GrabCut 的无监督模块,用于卵裂球和胚胎的分割。在 94 个胚胎图像的卵裂球检测中进行独立测试,Esava 的准确率、召回率和 mAP 分别达到了 0.9940、0.9121 和 0.9531,与之前的计算方法相比取得了显著进展。组内相关系数表明 Esava 与三位有经验的胚胎学家之间具有一致性。在另外 51 张额外图像上的测试表明,Esava 明显优于其他工具,平均准确率达到了 0.9025。此外,它还在独立测试数据集上实现了超过 0.88 的 mIoU,准确地识别了卵裂球的边界。Esava 符合伊斯坦布尔临床共识,与资深胚胎学家兼容。总之,Esava 提高了利用光学显微镜图像评估胚胎发育的准确性和效率。