𝔖 Bobbio Scriptorium
✦   LIBER   ✦

Automated recognition of patterns characteristic of subcellular structures in fluorescence microscopy images

✍ Scribed by Michael V. Boland; Mia K. Markey; Robert F. Murphy


Publisher
John Wiley and Sons
Year
1998
Tongue
English
Weight
156 KB
Volume
33
Category
Article
ISSN
0196-4763

No coin nor oath required. For personal study only.

✦ Synopsis


Methods for numerical description and subsequent classification of cellular protein localization patterns are described. Images representing the localization patterns of 4 proteins and DNA were obtained using fluorescence microscopy and divided into distinct training and test sets. The images were processed to remove out-of-focus and background fluorescence and 2 sets of numeric features were generated: Zernike moments and Haralick texture features. These feature sets were used as inputs to either a classification tree or a neural network. Classifier performance (the average percent of each type of image correctly classified) on previously unseen images ranged from 63% for a classification tree using Zernike moments to 88% for a backpropagation neural network using a combination of fea-tures from the 2 feature sets. These results demonstrate the feasibility of applying pattern recognition methods to subcellular localization patterns, enabling sets of previously unseen images from a single class to be classified with an expected accuracy greater than 99%. This will provide not only a new automated way to describe proteins, based on localization rather than sequence, but also has potential application in the automation of microscope functions and in the field of gene discovery. Cytometry 33:366-375, 1998.