Conversa L, Bori L, Insua F, Marqueño S, Cobo A, Meseguer M
IVIRMA Global Research Alliance-IVI Valencia, IVF Laboratory, Valencia, Spain.
IVIRMA Global Research Alliance-IVI Foundation, Health Research Institute La Fe, Reproductive Medicine, Valencia, Spain.
Hum Reprod. 2024 Oct 1;39(10):2240-2248. doi: 10.1093/humrep/deae178.
Could an artificial intelligence (AI) algorithm predict fetal heartbeat from images of vitrified-warmed embryos?
Applying AI to vitrified-warmed blastocysts may help predict which ones will result in implantation failure early enough to thaw another.
The application of AI in the field of embryology has already proven effective in assessing the quality of fresh embryos. Therefore, it could also be useful to predict the outcome of frozen embryo transfers, some of which do not recover their pre-vitrification volume, collapse, or degenerate after warming without prior evidence.
STUDY DESIGN, SIZE, DURATION: This retrospective cohort study included 1109 embryos from 792 patients. Of these, 568 were vitrified blastocysts cultured in time-lapse systems in the period between warming and transfer, from February 2022 to July 2023. The other 541 were fresh-transferred blastocysts serving as controls.
PARTICIPANTS/MATERIALS, SETTING, METHODS: Four types of time-lapse images were collected: last frame of development of 541 fresh-transferred blastocysts (FTi), last frame of 467 blastocysts to be vitrified (PVi), first frame post-warming of 568 vitrified embryos (PW1i), and last frame post-warming of 568 vitrified embryos (PW2i). After providing the images to the AI algorithm, the returned scores were compared with the conventional morphology and fetal heartbeat outcomes of the transferred embryos (n = 1098). The contribution of the AI score to fetal heartbeat was analyzed by multivariate logistic regression in different patient populations, and the predictive ability of the models was measured by calculating the area under the receiver-operating characteristic curve (ROC-AUC).
Fetal heartbeat rate was related to AI score from FTi (P < 0.001), PW1i (P < 0.05), and PW2i (P < 0.001) images. The contribution of AI score to fetal heartbeat was significant in the oocyte donation program for PW2i (odds ratio (OR)=1.13; 95% CI [1.04-1.23]; P < 0.01), and in cycles with autologous oocytes for PW1i (OR = 1.18; 95% CI [1.01-1.38]; P < 0.05) and PW2i (OR = 1.15; 95% CI [1.02-1.30]; P < 0.05), but was not significantly associated with fetal heartbeat in genetically analyzed embryos. AI scores from the four groups of images varied according to morphological category (P < 0.001). The PW2i score differed in collapsed, non-re-expanded, or non-viable embryos compared to normal/viable embryos (P < 0.001). The predictability of the AI score was optimal at a post-warming incubation time of 3.3-4 h (AUC = 0.673).
LIMITATIONS, REASONS FOR CAUTION: The algorithm was designed to assess fresh embryos prior to vitrification, but not thawed ones, so this study should be considered an external trial.
The application of predictive software in the management of frozen embryo transfers may be a useful tool for embryologists, reducing the cancellation rates of cycles in which the blastocyst does not recover from vitrification. Specifically, the algorithm tested in this research could be used to evaluate thawed embryos both in clinics with time-lapse systems and in those with conventional incubators only, as just a single photo is required.
STUDY FUNDING/COMPETING INTERESTS: This study was supported by the Regional Ministry of Innovation, Universities, Science and Digital Society of the Valencian Community (CIACIF/2021/019) and by Instituto de Salud Carlos III (PI21/00283), and co-funded by European Union (ERDF, 'A way to make Europe'). M.M. received personal fees in the last 5 years as honoraria for lectures from Merck, Vitrolife, MSD, Ferring, AIVF, Theramex, Gedeon Richter, Genea Biomedx, and Life Whisperer. There are no other competing interests.
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人工智能(AI)算法能否根据玻璃化冷冻复苏胚胎的图像预测胎儿心跳?
将人工智能应用于玻璃化冷冻复苏的囊胚,可能有助于尽早预测哪些囊胚会导致植入失败,以便解冻其他囊胚。
人工智能在胚胎学领域的应用已被证明在评估新鲜胚胎质量方面是有效的。因此,预测冷冻胚胎移植的结果可能也有用,其中一些胚胎在复苏后没有恢复到玻璃化前的体积,在没有先前证据的情况下发生塌陷或退化。
研究设计、规模、持续时间:这项回顾性队列研究纳入了来自792名患者的1109个胚胎。其中,568个是2022年2月至2023年7月期间在延时培养系统中培养的玻璃化冷冻囊胚,在复苏和移植之间进行观察。另外541个是新鲜移植的囊胚作为对照。
参与者/材料、设置、方法:收集了四种类型的延时图像:541个新鲜移植囊胚(FTi)的发育最后一帧、467个待玻璃化囊胚(PVi)的最后一帧、568个玻璃化冷冻胚胎复苏后的第一帧(PW1i)以及568个玻璃化冷冻胚胎复苏后的最后一帧(PW2i)。将这些图像提供给人工智能算法后,将返回的分数与移植胚胎(n = 1098)的传统形态学和胎儿心跳结果进行比较。通过多因素逻辑回归分析不同患者群体中人工智能分数对胎儿心跳的贡献,并通过计算受试者操作特征曲线下面积(ROC-AUC)来衡量模型的预测能力。
胎儿心跳率与FTi(P < 0.001)、PW1i(P < 0.05)和PW2i(P < 0.001)图像的人工智能分数相关。在卵子捐赠项目中,PW2i的人工智能分数对胎儿心跳的贡献显著(优势比(OR)= 1.13;95%置信区间[1.04 - 1.23];P < 0.01),在自体卵子周期中,PW1i(OR = 1.18;95%置信区间[1.01 - 1.38];P < 0.05)和PW2i(OR = 1.15;95%置信区间[1.02 - 1.30];P < 0.05)的人工智能分数对胎儿心跳的贡献显著,但在基因分析的胚胎中与胎儿心跳无显著关联。四组图像的人工智能分数根据形态学类别有所不同(P < 0.001)。与正常/存活胚胎相比,塌陷、未再扩张或无活力胚胎的PW2i分数不同(P < 0.001)。在复苏后培养3.3 - 4小时时,人工智能分数的预测能力最佳(AUC = 0.673)。
局限性、注意事项:该算法旨在评估玻璃化冷冻前的新鲜胚胎,而非解冻后的胚胎,因此本研究应被视为一项外部试验。
预测软件在冷冻胚胎移植管理中的应用可能是胚胎学家的一个有用工具,可降低囊胚未从玻璃化冷冻中恢复的周期取消率。具体而言,本研究中测试的算法可用于在配备延时培养系统的诊所和仅配备传统培养箱的诊所中评估解冻后的胚胎,因为只需要一张照片。
研究资金/利益冲突:本研究得到了巴伦西亚自治区创新、大学、科学和数字社会区域部(CIACIF/2021/019)和卡洛斯三世健康研究所(PI21/00283)的支持,并由欧盟(欧洲区域发展基金,“建设欧洲的途径”)共同资助。M.M.在过去5年中从默克、Vitrolife、默沙东、辉凌、AIVF、Theramex、吉德昂·里奇特、Genea Biomedx和Life Whisperer获得了讲课酬金等个人费用。不存在其他利益冲突。
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