Morphometric evaluation of two-pronucleus zygote images using image-processing techniques.

Zygote (Cambridge, England) Pub Date : 2022-12-01 Epub Date: 2022-08-17 DOI:10.1017/S0967199422000326
Niloofar Sayadi, Sara Monji-Azad, Seyed Abolghasem Mirroshandel, Fatemeh Ghasemian
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引用次数: 1

Abstract

Identifying embryos with a high potential for implementation remains a challenge in in vitro fertilization (IVF) cycles. Despite progress in IVF treatment, only a minority of generated embryos has the ability to implant. Another drawback of this practice is the high frequency of multiple pregnancies. This problem leads to economic and health problems. Therefore, the transfer of a single embryo with high implantation potential is the ideal strategy. Morphometric evaluation of two-pronucleus zygote images is a helpful technique when aiming to transfer a single embryo with a high implantation potential. In this study, an automated zygote morphometric evaluation algorithm, called the zygote morphology evaluation (ZME) algorithm, was created to analyze the zygote and provide morphological measurements. The first and most crucial step of the ZME algorithm is the noise reduction step, which was first applied to zygote images. After that, the proposed algorithm detects different parts of the zygote that are indicators of embryo viability and normality, that is the oolemma, perivitelline space, zona pellucida, and nucleolar precursor bodies (NPBs). In addition, a novel dataset was prepared for this task. This dataset consisted of 703 human zygote images, and called the human zygote morphometric evaluation dataset (HZME-DS). Our experimental results in the HZME-DS showed that the ZME algorithm was able to achieve 79.58% average accuracy in identifying the oolemma region, 79.40% average accuracy in determining the perivitelline space, and 79.72% accuracy in identifying the zona pellucida. To calculate the accuracy of identifying NPBs, the proposed algorithm uses Recall and Precision measures, and their harmonic average (F1 measure) reached values of 81.14% and 79.53%, respectively. These encouraging results for our proposed method, which is an automatic and very fast method, showed that the ZME algorithm could help embryologists to evaluate the best zygotes in real time and the best embryos subsequently.

利用图像处理技术对双原核受精卵图像进行形态计量学评价。
在体外受精(IVF)周期中,鉴定具有高实施潜力的胚胎仍然是一个挑战。尽管体外受精治疗取得了进展,但只有少数产生的胚胎具有植入能力。这种做法的另一个缺点是多胎妊娠的高频率。这个问题导致了经济和健康问题。因此,移植具有较高着床潜力的单个胚胎是理想的策略。在移植具有高着床潜力的单个胚胎时,双原核受精卵图像的形态计量学评价是一种有用的技术。在本研究中,创建了一种称为合子形态学评价(ZME)算法的自动合子形态学评价算法,用于分析合子并提供形态学测量。ZME算法的第一步也是最关键的一步是降噪步骤,该步骤首先应用于受精卵图像。然后,该算法检测合子的不同部分,即胚轴、卵泡周间隙、透明带和核仁前体(NPBs),作为胚胎存活和正常的指标。此外,为此任务准备了一个新的数据集。该数据集由703张人类受精卵图像组成,称为人类受精卵形态计量评价数据集(HZME-DS)。我们在HZME-DS上的实验结果表明,ZME算法对紫膜区域的识别平均准确率为79.58%,对卵泡周围空间的识别平均准确率为79.40%,对透明带的识别平均准确率为79.72%。为了计算npb识别的准确率,该算法使用Recall和Precision度量,它们的调和平均值(F1度量)分别达到81.14%和79.53%。这些令人鼓舞的结果表明,ZME算法可以帮助胚胎学家实时评估最佳受精卵,并随后评估最佳胚胎。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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