IVCVLGAug 19, 2020

Image Segmentation of Zona-Ablated Human Blastocysts

arXiv:2008.08673v16 citations
Originality Incremental advance
AI Analysis

This work addresses the need for more accurate and objective embryo grading in IVF to potentially increase pregnancy success rates and reduce risks from genetic abnormalities, though it is incremental as it applies deep learning to a specific medical imaging task.

The paper tackles the problem of automating human blastocyst image segmentation to improve embryo quality assessment in IVF, achieving up to 99.4% accuracy in segmentation for zona-ablated blastocysts.

Automating human preimplantation embryo grading offers the potential for higher success rates with in vitro fertilization (IVF) by providing new quantitative and objective measures of embryo quality. Current IVF procedures typically use only qualitative manual grading, which is limited in the identification of genetically abnormal embryos. The automatic quantitative assessment of blastocyst expansion can potentially improve sustained pregnancy rates and reduce health risks from abnormal pregnancies through a more accurate identification of genetic abnormality. The expansion rate of a blastocyst is an important morphological feature to determine the quality of a developing embryo. In this work, a deep learning based human blastocyst image segmentation method is presented, with the goal of facilitating the challenging task of segmenting irregularly shaped blastocysts. The type of blastocysts evaluated here has undergone laser ablation of the zona pellucida, which is required prior to trophectoderm biopsy. This complicates the manual measurements of the expanded blastocyst's size, which shows a correlation with genetic abnormalities. The experimental results on the test set demonstrate segmentation greatly improves the accuracy of expansion measurements, resulting in up to 99.4% accuracy, 98.1% precision, 98.8% recall, a 98.4% Dice Coefficient, and a 96.9% Jaccard Index.

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