Approaching human parity in the quality of automated organoid image segmentation
Chase Cartwright, Gongbo Guo, Sai Teja Pusuluri, Christopher N. Mayhew, Mark Hester, Horacio E. Castillo

TL;DR
This paper presents a novel composite computer vision method combining SAM with domain-specific tools to accurately segment organoid images, achieving performance comparable to human annotators.
Contribution
The introduction of a composite segmentation approach that leverages foundation models and domain tools to improve accuracy in organoid image analysis.
Findings
The composite method outperforms individual tools across various test conditions.
It achieves segmentation accuracy comparable to inter-observer variability.
Most challenging images are segmented accurately by the new method.
Abstract
Organoids are complex, three dimensional, self-organizing cell cultures which manifest organ-like features and represent a powerful platform for studying human disease and developing treatment options. Organoid development is characterized by dynamic morphological and cellular organization, which mimic some aspects of organ development. To study these rapid changes over the course of organoid development, advanced imaging and analytical tools are critical to accurately monitor the trajectory of organoid growth and investigate disease processes. In this work, we focus on computer vision and machine learning techniques to automatically measure the size and shape of developing spheroids derived from pluripotent stem cells (iPSCs), which are typically the starting material for generating organoid cultures. To facilitate this task, we introduce a composite method that combines the Segment…
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