A deep learning-based segmentation pipeline for profiling cellular morphodynamics using multiple types of live cell microscopy

Jang*, J., C. Wang*, X. Zhang, H. J. Choi, and X. Pan. 2021. “A Deep Learning-Based Segmentation Pipeline for Profiling Cellular Morphodynamics Using Multiple Types of Live Cell Microscopy”. Cell Reports Methods 1: 100105 (*Co-first authors).

Abstract

To accurately segment cell edges and quantify cellular morphodynamics from live-cell imaging data, we developed a deep learning-based pipeline termed MARS-Net (multiple-microscopy-type-based accurate and robust segmentation network). MARS-Net utilizes transfer learning and data from multiple types of microscopy to localize cell edges with high accuracy. For effective training on distinct types of live-cell microscopy, MARS-Net comprises a pretrained VGG19 encoder with U-Net decoder and dropout layers. We trained MARS-Net on movies from phase-contrast, spinning-disk confocal, and total internal reflection fluorescence microscopes. MARS-Net produced more accurate edge localization than the neural network models trained with single-microscopy-type datasets. We expect that MARS-Net can accelerate the studies of cellular morphodynamics by providing accurate pixel-level segmentation of complex live-cell datasets. *Co-first authors: J. Jang and C. Wang
Last updated on 08/07/2024