Cytoplasmic Strings Analysis in Human Embryo Time-Lapse Videos using Deep Learning Framework
Anabia Sohail, Mohamad Alansari, Ahmed Abughali, Asmaa Chehab, Abdelfatah Ahmed, Divya Velayudhan, Sajid Javed, Hasan Al Marzouqi, Ameena Saad Al-Sumaiti, Junaid Kashir, and Naoufel Werghi

TL;DR
This paper introduces a novel deep learning framework for automated analysis of Cytoplasmic Strings in human embryo videos, improving detection accuracy and reducing manual effort in embryo viability assessment.
Contribution
It presents the first computational method for CS analysis, including a curated dataset, a two-stage deep learning model, and a new loss function to handle class imbalance and uncertainty.
Findings
NUCE loss improves F1-score across transformer models
RF-DETR achieves state-of-the-art CS detection performance
The framework enables automated, objective CS assessment in embryo videos
Abstract
Infertility is a major global health issue, and while in-vitro fertilization has improved treatment outcomes, embryo selection remains a critical bottleneck. Time-lapse imaging enables continuous, non-invasive monitoring of embryo development, yet most automated assessment methods rely solely on conventional morphokinetic features and overlook emerging biomarkers. Cytoplasmic Strings, thin filamentous structures connecting the inner cell mass and trophectoderm in expanded blastocysts, have been associated with faster blastocyst formation, higher blastocyst grades, and improved viability. However, CS assessment currently depends on manual visual inspection, which is labor-intensive, subjective, and severely affected by detection and subtle visual appearance. In this work, we present, to the best of our knowledge, the first computational framework for CS analysis in human IVF embryos. We…
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Taxonomy
TopicsReproductive Biology and Fertility · AI in cancer detection · Fetal and Pediatric Neurological Disorders
