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Embryo Grading with Unreliable Labels due to Chromosome Abnormalities by Regularized PU Learning with Ranking
2021
IEEE Transactions on Medical Imaging
We propose a method for human embryo grading with its images. This grading has been achieved by positive-negative classification (i.e., live birth or non-live birth). However, negative (non-live birth) labels collected in clinical practice are unreliable because the visual features of negative images are equal to those of positive (live birth) images if these non-live birth embryos have chromosome abnormalities. For alleviating an adverse effect of these unreliable labels, our method employs
doi:10.1109/tmi.2021.3126169
pmid:34748484
fatcat:nztxjfg4gfcs3bjpu4tdqcis3q