Interactive Segmentation Model for Placenta Segmentation from 3D Ultrasound images
Hao Li, Baris Oguz, Gabriel Arenas, Xing Yao, Jiacheng Wang, Alison, Pouch, Brett Byram, Nadav Schwartz, Ipek Oguz

TL;DR
This paper evaluates the effectiveness of a human-in-the-loop interactive segmentation model for placenta segmentation in 3D ultrasound images, demonstrating its robustness and efficiency compared to state-of-the-art models.
Contribution
It introduces a human-in-the-loop approach tailored for 3D ultrasound placenta segmentation, outperforming existing models in accuracy and efficiency.
Findings
Human-in-the-loop model achieves Dice score of 0.95
Model is effective with fewer prompts
Code is publicly available
Abstract
Placenta volume measurement from 3D ultrasound images is critical for predicting pregnancy outcomes, and manual annotation is the gold standard. However, such manual annotation is expensive and time-consuming. Automated segmentation algorithms can often successfully segment the placenta, but these methods may not consistently produce robust segmentations suitable for practical use. Recently, inspired by the Segment Anything Model (SAM), deep learning-based interactive segmentation models have been widely applied in the medical imaging domain. These models produce a segmentation from visual prompts provided to indicate the target region, which may offer a feasible solution for practical use. However, none of these models are specifically designed for interactively segmenting 3D ultrasound images, which remain challenging due to the inherent noise of this modality. In this paper, we…
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Taxonomy
TopicsFace recognition and analysis · AI in cancer detection · Diverse Topics in Contemporary Research
