Segmentation of phase contrast microscopy images based on multi-scale local Basic Image Features histograms

Comput Methods Biomech Biomed Eng Imaging Vis. 2017 Sep 3;5(5):359-367. doi: 10.1080/21681163.2015.1016243. Epub 2017 Apr 7.

Abstract

Phase contrast microscopy (PCM) is routinely used for the inspection of adherent cell cultures in all fields of biology and biomedicine. Key decisions for experimental protocols are often taken by an operator based on typically qualitative observations. However, automated processing and analysis of PCM images remain challenging due to the low contrast between foreground objects (cells) and background as well as various imaging artefacts. We propose a trainable pixel-wise segmentation approach whereby image structures and symmetries are encoded in the form of multi-scale Basic Image Features local histograms, and classification of them is learned by random decision trees. This approach was validated for segmentation of cell versus background, and discrimination between two different cell types. Performance close to that of state-of-the-art specialised algorithms was achieved despite the general nature of the method. The low processing time ( < 4 s per 1280 × 960 pixel images) is suitable for batch processing of experimental data as well as for interactive segmentation applications.

Keywords: Basic Image Features; local feature histograms; phase contrast microscopy; random forest; segmentation; trainable segmentation.