Bioimage-based prediction of protein subcellular location in human tissue with ensemble features and deep networks

GH Liu, BW Zhang, G Qian, B Wang… - … ACM transactions on …, 2019 - ieeexplore.ieee.org
GH Liu, BW Zhang, G Qian, B Wang, B Mao, I Bichindaritz
IEEE/ACM transactions on computational biology and bioinformatics, 2019ieeexplore.ieee.org
Prediction of protein subcellular location has currently become a hot topic because it has
been proven to be useful for understanding both the disease mechanisms and novel drug
design. With the rapid development of automated microscopic imaging technology in recent
years, classification methods of bioimage-based protein subcellular location have attracted
considerable attention for images can describe the protein distribution intuitively and in
detail. In the current study, a prediction method of protein subcellular location was proposed …
Prediction of protein subcellular location has currently become a hot topic because it has been proven to be useful for understanding both the disease mechanisms and novel drug design. With the rapid development of automated microscopic imaging technology in recent years, classification methods of bioimage-based protein subcellular location have attracted considerable attention for images can describe the protein distribution intuitively and in detail. In the current study, a prediction method of protein subcellular location was proposed based on multi-view image features that are extracted from three different views, including the four texture features of the original image, the global and local features of the protein extracted from the protein channel images after color segmentation, and the global features of DNA extracted from the DNA channel image. Finally, the extracted features were combined together to improve the performance of subcellular localization prediction. From the performance comparison of different combination features under the same classifier, the best ensemble features could be obtained. In this work, a classifier based on Stacked Auto-encoders and the random forest was also put forward. To improve the prediction results, the deep network was combined with the traditional statistical classification methods. Stringent cross-validation and independent validation tests on the benchmark dataset demonstrated the efficacy of the proposed method.
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