Automated classification of subcellular patterns in multicell images without segmentation into single cells

Kai Huang, R.F. Murphy
2004 2nd IEEE International Symposium on Biomedical Imaging: Macro to Nano (IEEE Cat No. 04EX821)  
Fluorescence microscope images capture information from an entire field of view, which often comprises several cells scattered on the slide. We have previously trained classifiers to accurately predict subcellular location patterns by using numerical features calculated from manually cropped 2D single-cell images. We describe here results on directly classifying fields of fluorescence microscope images using a subset of our previous features that do not require segmentation into single cells.
more » ... ature selection was conducted by stepwise discriminant analysis (SDA) to select the most discriminative features from the feature set. Better classification performance was achieved on multicell images than single-cell images, suggesting a promising future for classifying subcellular patterns in tissue images.
doi:10.1109/isbi.2004.1398744 fatcat:kmube4m3xzgwvn74e7d7xmd53y