An Automatic Method for Morphological Abnormality Detection in Metaphase II Human Oocyte Images

Sedighe Firuzinia, S. Mirroshandel, F. Ghasemian, Seyed Mahmoodreza Afzali
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引用次数: 1

Abstract

The morphological evaluation of metaphase II (MII) oocytes before Intra-Cytoplasmic Sperm Injection (ICSI) can help to know and predict their developmental potential, the ICSI outcomes, and transfer the best embryo. The main morphometric features of MII oocytes are the thickness of zona pellucida, the width of perivitelline space, and the area of ooplasm and oocyte. Manual characterization of the MII oocytes can be prone to high inter-observer and intra-observer variability. In this study, we propose a fully automatic algorithm to identify malformations in images of human oocytes. 1500 images of MII oocytes were taken using inverted microscope before the ICSI process to build a dataset, namely the Human MII Oocyte Morphology Analysis Dataset (HMOMA-DS). The three main components of these prepared oocytes are analyzed. As the first step, we eliminated the noise and enhanced the quality of our input image. Further the regions were detected and segmented. Finally, the quality of the oocyte was assessed in terms of measuring the size and area of its main components. We have applied our method to the prepared dataset. It has been able to achieve an accuracy of 98.51% for the thickness of zona pellucida and area of oocyte. The accuracy values for measuring the area of ooplasm and the width of perivitelline space were 99.25% and 91.08%, respectively. The proposed fully automatic method performs effectively before ICSI due to its high accuracy and low computation time. It can help embryologists to select the best-qualified embryo based on the available analyzed parameters from injected oocytes in real-time.
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人卵母细胞中期形态异常自动检测方法研究
细胞质内精子注射(ICSI)前对中期II (MII)卵母细胞的形态学评估有助于了解和预测其发育潜力,ICSI结果,并移植最佳胚胎。MII卵母细胞的主要形态学特征是透明带的厚度、卵泡周间隙的宽度以及卵浆和卵母细胞的面积。人工鉴定MII卵母细胞可能容易引起观察者之间和观察者内部的高度变异性。在这项研究中,我们提出了一种全自动算法来识别人类卵母细胞图像中的畸形。在ICSI过程之前,使用倒置显微镜拍摄1500张MII卵母细胞的图像,建立数据集,即人类MII卵母细胞形态学分析数据集(HMOMA-DS)。分析了制备的卵母细胞的三种主要成分。作为第一步,我们消除了噪声并提高了输入图像的质量。进一步对区域进行检测和分割。最后,通过测量卵母细胞主要成分的大小和面积来评价卵母细胞的质量。我们已经将我们的方法应用于准备好的数据集。对透明带厚度和卵母细胞面积的测定精度可达98.51%。测定卵浆面积和卵泡间隙宽度的准确度分别为99.25%和91.08%。该方法具有精度高、计算时间短等优点,在ICSI前具有较好的效果。它可以帮助胚胎学家根据注射卵母细胞的可用分析参数实时选择最合适的胚胎。
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