Publication | Open Access
An annotated human blastocyst dataset to benchmark deep learning architectures for in vitro fertilization
22
Citations
21
References
2023
Year
Convolutional Neural NetworkEngineeringFertilityMachine LearningGardner Criteria AnnotationsDigital PathologyReproductive BiologyEmbryologyReproductive BiotechnologyImage ClassificationImage AnalysisData SciencePredictive BiomarkersBiostatisticsInfertilityMedical Image ComputingDeep LearningNeural Architecture SearchVitro FertilizationDevelopmental BiologyDeep Learning ArchitecturesArtificial Intelligence ModelsHuman Embryonic DevelopmentSystems BiologyMedicineFoundation ModelsGardner Criteria
Abstract Medical Assisted Reproduction proved its efficacy to treat the vast majority forms of infertility. One of the key procedures in this treatment is the selection and transfer of the embryo with the highest developmental potential. To assess this potential, clinical embryologists routinely work with static images (morphological assessment) or short video sequences (time-lapse annotation). Recently, Artificial Intelligence models were utilized to support the embryo selection procedure. Even though they have proven their great potential in different in vitro fertilization settings, there is still considerable room for improvement. To support the advancement of algorithms in this research field, we built a dataset consisting of static blastocyst images and additional annotations. As such, Gardner criteria annotations, depicting a morphological blastocyst rating scheme, and collected clinical parameters are provided. The presented dataset is intended to be used to train deep learning models on static morphological images to predict Gardner’s criteria and clinical outcomes such as live birth. A benchmark of human expert’s performance in annotating Gardner criteria is provided.
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