Abstract

BackgroundAutomatic and reliable characterization of cells in cell cultures is key to several applications such as cancer research and drug discovery. Given the recent advances in light microscopy and the need for accurate and high-throughput analysis of cells, automated algorithms have been developed for segmenting and analyzing the cells in microscopy images. Nevertheless, accurate, generic and robust whole-cell segmentation is still a persisting need to precisely quantify its morphological properties, phenotypes and sub-cellular dynamics.ResultsWe present a single-channel whole cell segmentation algorithm. We use markers that stain the whole cell, but with less staining in the nucleus, and without using a separate nuclear stain. We show the utility of our approach in microscopy images of cell cultures in a wide variety of conditions. Our algorithm uses a deep learning approach to learn and predict locations of the cells and their nuclei, and combines that with thresholding and watershed-based segmentation. We trained and validated our approach using different sets of images, containing cells stained with various markers and imaged at different magnifications. Our approach achieved a 86% similarity to ground truth segmentation when identifying and separating cells.ConclusionsThe proposed algorithm is able to automatically segment cells from single channel images using a variety of markers and magnifications.

Highlights

  • Automatic and reliable characterization of cells in cell cultures is key to several applications such as cancer research and drug discovery

  • Fluorescent microscopy paved the way for detailed visu- In this work, we focused on whole cell segmentation alization of the cells and their sub-cellular structures [3]. in 2D microscopy images where the cytoplasm appears

  • We presented an algorithm for 2-D cell segmentation in microscopy images using a single channel/marker

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Summary

Introduction

Automatic and reliable characterization of cells in cell cultures is key to several applications such as cancer research and drug discovery. Given the recent advances in light microscopy and the need for accurate and high-throughput analysis of cells, automated algorithms have been developed for segmenting and analyzing the cells in microscopy images. Accurate, generic and robust whole-cell segmentation is still a persisting need to precisely quantify its morphological properties, phenotypes and sub-cellular dynamics. The ability to image, vides reproducible information Such quantification may extract and study cells and their sub-cellular compart- enable researchers to address different biological probments is essential to various research areas. Recent advancements in high-resolution segmenting the entire cell body including the cytoplasm. Fluorescent microscopy paved the way for detailed visu- In this work, we focused on whole cell segmentation alization of the cells and their sub-cellular structures [3]. Our approach involves 1) detecting novel techniques in computer vision and machine learn- the cells, 2) separating touching cells and 3) segmenting ing for image segmentation and classification [4]

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