Semantic Label Prediction of Mammography Based on CC and MLO Views

Author(s):  
Xiaomeng Wang ◽  
Jiyun Li ◽  
Chen Qian
2020 ◽  
Author(s):  
Kathryn E. Kirchoff ◽  
Shawn M. Gomez

AbstractKinase-catalyzed phosphorylation of proteins forms the backbone of signal transduction within the cell, enabling the coordination of numerous processes such as the cell cycle, apoptosis, and differentiation. While on the order of 105 phosphorylation events have been described, we know the specific kinase performing these functions for less than 5% of cases. The ability to predict which kinases initiate specific individual phosphorylation events has the potential to greatly enhance the design of downstream experimental studies, while simultaneously creating a preliminary map of the broader phosphorylation network that controls cellular signaling. To this end, we describe EMBER, a deep learning method that integrates kinase-phylogeny information and motif-dissimilarity information into a multi-label classification model for the prediction of kinase-motif phosphorylation events. Unlike previous deep learning methods that perform single-label classification, we restate the task of kinase-motif phosphorylation prediction as a multi-label problem, allowing us to train a single unified model rather than a separate model for each of the 134 kinase families. We utilize a Siamese network to generate novel vector representations, or an embedding, of motif sequences, and we compare our novel embedding to a previously proposed peptide embedding. Our motif vector representations are used, along with one-hot encoded motif sequences, as input to a classification network while also leveraging kinase phylogenetic relationships into our model via a kinase phylogeny-based loss function. Results suggest that this approach holds significant promise for improving our map of phosphorylation relations that underlie kinome signaling.Availabilityhttps://github.com/gomezlab/EMBER


2016 ◽  
Vol 12 (1) ◽  
pp. 248-256 ◽  
Author(s):  
Weiming Jiang ◽  
Zhao Zhang ◽  
Fanzhang Li ◽  
Li Zhang ◽  
Mingbo Zhao ◽  
...  

2017 ◽  
Vol 237 ◽  
pp. 397-400 ◽  
Author(s):  
Marco Frasca ◽  
Giorgio Valentini

Author(s):  
Pablo Bermejo ◽  
Marta Lucas ◽  
José A. Rodríguez-Montes ◽  
Pedro J. Tárraga ◽  
Javier Lucas ◽  
...  
Keyword(s):  

Author(s):  
Chang Tang ◽  
Xinzhong Zhu ◽  
Xinwang Liu ◽  
Lizhe Wang

Multi-view unsupervised feature selection (MV-UFS) aims to select a feature subset from multi-view data without using the labels of samples. However, we observe that existing MV-UFS algorithms do not well consider the local structure of cross views and the diversity of different views, which could adversely affect the performance of subsequent learning tasks. In this paper, we propose a cross-view local structure preserved diversity and consensus semantic learning model for MV-UFS, termed CRV-DCL briefly, to address these issues. Specifically, we project each view of data into a common semantic label space which is composed of a consensus part and a diversity part, with the aim to capture both the common information and distinguishing knowledge across different views. Further, an inter-view similarity graph between each pairwise view and an intra-view similarity graph of each view are respectively constructed to preserve the local structure of data in different views and different samples in the same view. An l2,1-norm constraint is imposed on the feature projection matrix to select discriminative features. We carefully design an efficient algorithm with convergence guarantee to solve the resultant optimization problem. Extensive experimental study is conducted on six publicly real multi-view datasets and the experimental results well demonstrate the effectiveness of CRV-DCL.


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