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Human Blastocyst Classification after In Vitro Fertilization Using Deep Learning

机译:使用深度学习体外施肥后的人胚性分类

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Embryo quality assessment after in vitro fertilization (IVF) is primarily done visually by embryologists. Variability among assessors, however, remains one of the main causes of the low success rate of IVF. This study aims to develop an automated embryo assessment based on a deep learning model using 1084 images from 1226 embryos. We captured the images using an inverted microscope at day 3 after fertilization. The images were labelled based on Veeck criteria that differentiate embryos to grade 1 to 5 based on the size of the blastomere and the grade of fragmentation. We compare the grading results from trained embryologists with our deep learning model to evaluate the performance. Our best model from a fine-tuned ResNet50 results in 91.79% accuracy. The model presented could be developed into an automated embryo assessment method in point-of-care settings.
机译:体外施肥后胚胎质量评估(IVF)主要由胚胎素医生在视觉上进行。 然而,评估员之间的变异性仍然是IVF成功率低的主要原因之一。 本研究旨在使用1226胚胎的1084个图像基于深度学习模型开发自动胚胎评估。 我们在受精后第3天使用倒置显微镜捕获图像。 基于Veeck标准标记图像,该标准基于裂缝粒度的尺寸和碎片等级来区分胚胎至1至5级。 我们将培训的胚胎学家的分级结果与我们的深度学习模型进行比较,以评估性能。 我们从精细的Reset50中获得最佳模型,精度为91.79%。 提供的模型可以在护理点设置中开发成自动胚胎评估方法。

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