Department of Primary and Secondary Healthcare, Lahore 54000, Pakistan.
Electrical and Computer Engineering Department, Effat College of Engineering, Effat University, Jeddah 22332, Saudi Arabia.
Sensors (Basel). 2022 Sep 29;22(19):7418. doi: 10.3390/s22197418.
Assisted reproductive technology is helping humans by addressing infertility using different medical procedures that help in a successful pregnancy. In vitro fertilization (IVF) is one of those assisted reproduction methods in which the sperm and eggs are combined outside the human body in a specialized environment and kept for growth. Assisted reproductive technology is helping humans by addressing infertility using different medical procedures that help in a successful pregnancy. The morphology of the embryological components is highly related to the success of the assisted reproduction procedure. In approximately 3-5 days, the embryo transforms into the blastocyst. To prevent the multiple-birth risk and to increase the chance of pregnancy the embryologist manually analyzes the blastocyst components and selects valuable embryos to transfer to the women's uterus. The manual microscopic analysis of blastocyst components, such as trophectoderm, zona pellucida, blastocoel, and inner cell mass, is time-consuming and requires keen expertise to select a viable embryo. Artificial intelligence is easing medical procedures by the successful implementation of deep learning algorithms that mimic the medical doctor's knowledge to provide a better diagnostic procedure that helps in reducing the diagnostic burden. The deep learning-based automatic detection of these blastocyst components can help to analyze the morphological properties to select viable embryos. This research presents a deep learning-based embryo component segmentation network (ECS-Net) that accurately detects trophectoderm, zona pellucida, blastocoel, and inner cell mass for embryological analysis. The proposed method (ECS-Net) is based on a shallow deep segmentation network that uses two separate streams produced by a base convolutional block and a depth-wise separable convolutional block. Both streams are densely concatenated in combination with two dense skip paths to produce powerful features before and after upsampling. The proposed ECS-Net is evaluated on a publicly available microscopic blastocyst image dataset, the experimental segmentation results confirm the efficacy of the proposed method. The proposed ECS-Net is providing a mean Jaccard Index (Mean JI) of 85.93% for embryological analysis.
辅助生殖技术通过使用不同的医疗程序来解决不孕问题,从而帮助人类成功怀孕。体外受精 (IVF) 是其中一种辅助生殖方法,其中精子和卵子在专门的环境中在人体外结合,并进行生长。辅助生殖技术通过使用不同的医疗程序来解决不孕问题,从而帮助人类成功怀孕。胚胎学成分的形态与辅助生殖程序的成功高度相关。大约 3-5 天后,胚胎转变为囊胚。为了降低多胎妊娠的风险并增加怀孕的机会,胚胎学家手动分析囊胚成分,并选择有价值的胚胎移植到女性的子宫。囊胚成分,如滋养层、透明带、囊胚腔和内细胞团的手动显微镜分析既耗时又需要专业知识,以选择有活力的胚胎。人工智能通过成功实施深度学习算法来简化医疗程序,这些算法模拟医生的知识,提供更好的诊断程序,有助于减轻诊断负担。这些囊胚成分的基于深度学习的自动检测有助于分析形态学特性,以选择有活力的胚胎。本研究提出了一种基于深度学习的胚胎成分分割网络 (ECS-Net),用于准确检测滋养层、透明带、囊胚腔和内细胞团,以进行胚胎学分析。所提出的方法 (ECS-Net) 基于浅层深度分割网络,该网络使用由基础卷积块和深度可分离卷积块产生的两个单独的流。两个流都在密集连接的组合中,具有两个密集的跳过路径,以在上采样之前和之后产生强大的特征。所提出的 ECS-Net 在公开的微观囊胚图像数据集上进行了评估,实验分割结果证实了该方法的有效性。所提出的 ECS-Net 为胚胎学分析提供了 85.93%的平均 Jaccard 指数 (Mean JI)。