Litcius/Paper detail

Segmentation and Tracking of Mammary Epithelial Organoids in Brightfield Microscopy

Lucia Hradecká, David Wiesner, Jakub Sumbal, Zuzana Koledová, Martin Maška

2022IEEE Transactions on Medical Imaging22 citationsDOI

Abstract

We present an automated and deep-learning-based workflow to quantitatively analyze the spatiotemporal development of mammary epithelial organoids in two-dimensional time-lapse (2D+t) sequences acquired using a brightfield microscope at high resolution. It involves a convolutional neural network (U-Net), purposely trained using computer-generated bioimage data created by a conditional generative adversarial network (pix2pixHD), to infer semantic segmentation, adaptive morphological filtering to identify organoid instances, and a shape-similarity-constrained, instance-segmentation-correcting tracking procedure to reliably cherry-pick the organoid instances of interest in time. By validating it using real 2D+t sequences of mouse mammary epithelial organoids of morphologically different phenotypes, we clearly demonstrate that the workflow achieves reliable segmentation and tracking performance, providing a reproducible and laborless alternative to manual analyses of the acquired bioimage data.

Topics & Concepts

OrganoidArtificial intelligenceSegmentationComputer scienceDeep learningComputer visionWorkflowConvolutional neural networkImage segmentationPattern recognition (psychology)Tracking (education)BiologyNeuroscienceDatabasePsychologyPedagogyCell Image Analysis TechniquesAI in cancer detectionCancer Cells and Metastasis