2019
DOI: 10.1093/bioinformatics/btz328
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Multifaceted protein–protein interaction prediction based on Siamese residual RCNN

Abstract: Motivation Sequence-based protein–protein interaction (PPI) prediction represents a fundamental computational biology problem. To address this problem, extensive research efforts have been made to extract predefined features from the sequences. Based on these features, statistical algorithms are learned to classify the PPIs. However, such explicit features are usually costly to extract, and typically have limited coverage on the PPI information. … Show more

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Cited by 207 publications
(277 citation statements)
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References 54 publications
(101 reference statements)
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“…Using this type of interaction map as the model input differs from the prevailing approach seen in sequence-based prediction models, not only in the field of TCR-epitope prediction, but also for the modeling of other molecular interactions. The interacting molecules are usually supplied to a model as separate or concatenated inputs (1, 3,5,6,15,18,20,25,26). Those types of models need to learn an internal representation for each molecule separately, before being combined again in deeper layers.…”
Section: Introductionmentioning
confidence: 99%
“…Using this type of interaction map as the model input differs from the prevailing approach seen in sequence-based prediction models, not only in the field of TCR-epitope prediction, but also for the modeling of other molecular interactions. The interacting molecules are usually supplied to a model as separate or concatenated inputs (1, 3,5,6,15,18,20,25,26). Those types of models need to learn an internal representation for each molecule separately, before being combined again in deeper layers.…”
Section: Introductionmentioning
confidence: 99%
“…These methods have included the Support Vector Machine [15], Random Forests [29] and autoencoders [6]. More recently, studies such as DPPI [31], DNN-PPI [32], and PIPR [33] have explored deep learning frameworks for PPI prediction. Note that these newer deep learning-based approaches are end-to-end classification models and do not specifically focus on the feature construction technique.…”
Section: Previous Workmentioning
confidence: 99%
“…All of these approaches are primarily based on the Convolutional Neural Network and have a deep architecture. The most recent of these approaches, PIPR [33], provides an end-to-end deep GRU (gated recurrent unit) based architecture for PPI prediction. The results reported [33] show an improvement in classification results (refer Table 3) compared to other benchmark methods -including other deep learning based approaches.…”
Section: Comparison With Deep Learning Approach -Piprmentioning
confidence: 99%
See 1 more Smart Citation
“…The first data resource is the sequence-to-sequence relationship. For example, proteinprotein interaction network and structural homology are often used to constraint the fact that closely related proteins should have similar GO labels [4,29]. The second data resource is in fact the Gene Ontology itself.…”
Section: Introductionmentioning
confidence: 99%