Boosting accuracy of automated classification of fluorescence microscope images for location proteomics
Open Access
- 18 June 2004
- journal article
- research article
- Published by Springer Nature in BMC Bioinformatics
- Vol. 5 (1) , 78
- https://doi.org/10.1186/1471-2105-5-78
Abstract
Detailed knowledge of the subcellular location of each expressed protein is critical to a full understanding of its function. Fluorescence microscopy, in combination with methods for fluorescent tagging, is the most suitable current method for proteome-wide determination of subcellular location. Previous work has shown that neural network classifiers can distinguish all major protein subcellular location patterns in both 2D and 3D fluorescence microscope images. Building on these results, we evaluate here new classifiers and features to improve the recognition of protein subcellular location patterns in both 2D and 3D fluorescence microscope images. We report here a thorough comparison of the performance on this problem of eight different state-of-the-art classification methods, including neural networks, support vector machines with linear, polynomial, radial basis, and exponential radial basis kernel functions, and ensemble methods such as AdaBoost, Bagging, and Mixtures-of-Experts. Ten-fold cross validation was used to evaluate each classifier with various parameters on different Subcellular Location Feature sets representing both 2D and 3D fluorescence microscope images, including new feature sets incorporating features derived from Gabor and Daubechies wavelet transforms. After optimal parameters were chosen for each of the eight classifiers, optimal majority-voting ensemble classifiers were formed for each feature set. Comparison of results for each image for all eight classifiers permits estimation of the lower bound classification error rate for each subcellular pattern, which we interpret to reflect the fraction of cells whose patterns are distorted by mitosis, cell death or acquisition errors. Overall, we obtained statistically significant improvements in classification accuracy over the best previously published results, with the overall error rate being reduced by one-third to one-half and with the average accuracy for single 2D images being higher than 90% for the first time. In particular, the classification accuracy for the easily confused endomembrane compartments (endoplasmic reticulum, Golgi, endosomes, lysosomes) was improved by 5-15%. We achieved further improvements when classification was conducted on image sets rather than on individual cell images. The availability of accurate, fast, automated classification systems for protein location patterns in conjunction with high throughput fluorescence microscope imaging techniques enables a new subfield of proteomics, location proteomics. The accuracy and sensitivity of this approach represents an important alternative to low-resolution assignments by curation or sequence-based prediction.Keywords
This publication has 24 references indexed in Scilit:
- Protein microarrays and proteomicsNature Genetics, 2002
- Using Functional Domain Composition and Support Vector Machines for Prediction of Protein Subcellular LocationJournal of Biological Chemistry, 2002
- Predicting Protein Cellular Localization Using a Domain Projection MethodGenome Research, 2002
- Advances in molecular labeling, high throughput imaging and machine intelligence portend powerful functional cellular biochemistry toolsJournal of Cellular Biochemistry, 2002
- A Bayesian system integrating expression data with sequence patterns for localizing proteins: comprehensive application to the yeast genome 1 1Edited by F. CohenJournal of Molecular Biology, 2000
- Texture features for browsing and retrieval of image dataPublished by Institute of Electrical and Electronics Engineers (IEEE) ,1996
- Hierarchical Mixtures of Experts and the EM AlgorithmNeural Computation, 1994
- Adaptive Mixtures of Local ExpertsNeural Computation, 1991
- Neural network ensemblesPublished by Institute of Electrical and Electronics Engineers (IEEE) ,1990
- Complete discrete 2-D Gabor transforms by neural networks for image analysis and compressionIEEE Transactions on Acoustics, Speech, and Signal Processing, 1988