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Chromatin accessibility prediction via convolutional long short-term memory networks with k-mer embedding

Identifieur interne : 000E61 ( Main/Exploration ); précédent : 000E60; suivant : 000E62

Chromatin accessibility prediction via convolutional long short-term memory networks with k-mer embedding

Auteurs : Xu Min [République populaire de Chine] ; Wanwen Zeng [République populaire de Chine] ; Ning Chen [République populaire de Chine] ; Ting Chen [République populaire de Chine, États-Unis] ; Rui Jiang [République populaire de Chine]

Source :

RBID : PMC:5870572

Descripteurs français

English descriptors

Abstract

AbstractMotivation

Experimental techniques for measuring chromatin accessibility are expensive and time consuming, appealing for the development of computational approaches to predict open chromatin regions from DNA sequences. Along this direction, existing methods fall into two classes: one based on handcrafted k-mer features and the other based on convolutional neural networks. Although both categories have shown good performance in specific applications thus far, there still lacks a comprehensive framework to integrate useful k-mer co-occurrence information with recent advances in deep learning.

Results

We fill this gap by addressing the problem of chromatin accessibility prediction with a convolutional Long Short-Term Memory (LSTM) network with k-mer embedding. We first split DNA sequences into k-mers and pre-train k-mer embedding vectors based on the co-occurrence matrix of k-mers by using an unsupervised representation learning approach. We then construct a supervised deep learning architecture comprised of an embedding layer, three convolutional layers and a Bidirectional LSTM (BLSTM) layer for feature learning and classification. We demonstrate that our method gains high-quality fixed-length features from variable-length sequences and consistently outperforms baseline methods. We show that k-mer embedding can effectively enhance model performance by exploring different embedding strategies. We also prove the efficacy of both the convolution and the BLSTM layers by comparing two variations of the network architecture. We confirm the robustness of our model to hyper-parameters by performing sensitivity analysis. We hope our method can eventually reinforce our understanding of employing deep learning in genomic studies and shed light on research regarding mechanisms of chromatin accessibility.

Availability and implementation

The source code can be downloaded from https://github.com/minxueric/ismb2017_lstm.

Supplementary information

Supplementary materials are available at Bioinformatics online.


Url:
DOI: 10.1093/bioinformatics/btx234
PubMed: 28881969
PubMed Central: 5870572


Affiliations:


Links toward previous steps (curation, corpus...)


Le document en format XML

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<term>Neural Networks, Computer</term>
<term>Software</term>
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<term>Humains</term>
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<title>Motivation</title>
<p>Experimental techniques for measuring chromatin accessibility are expensive and time consuming, appealing for the development of computational approaches to predict open chromatin regions from DNA sequences. Along this direction, existing methods fall into two classes: one based on handcrafted
<italic>k</italic>
-mer features and the other based on convolutional neural networks. Although both categories have shown good performance in specific applications thus far, there still lacks a comprehensive framework to integrate useful
<italic>k</italic>
-mer co-occurrence information with recent advances in deep learning.</p>
</sec>
<sec id="SA2">
<title>Results</title>
<p>We fill this gap by addressing the problem of chromatin accessibility prediction with a convolutional Long Short-Term Memory (LSTM) network with
<italic>k</italic>
-mer embedding. We first split DNA sequences into
<italic>k</italic>
-mers and pre-train
<italic>k</italic>
-mer embedding vectors based on the co-occurrence matrix of
<italic>k</italic>
-mers by using an unsupervised representation learning approach. We then construct a supervised deep learning architecture comprised of an embedding layer, three convolutional layers and a Bidirectional LSTM (BLSTM) layer for feature learning and classification. We demonstrate that our method gains high-quality fixed-length features from variable-length sequences and consistently outperforms baseline methods. We show that
<italic>k</italic>
-mer embedding can effectively enhance model performance by exploring different embedding strategies. We also prove the efficacy of both the convolution and the BLSTM layers by comparing two variations of the network architecture. We confirm the robustness of our model to hyper-parameters by performing sensitivity analysis. We hope our method can eventually reinforce our understanding of employing deep learning in genomic studies and shed light on research regarding mechanisms of chromatin accessibility.</p>
</sec>
<sec id="SA3">
<title>Availability and implementation</title>
<p>The source code can be downloaded from
<ext-link ext-link-type="uri" xlink:href="https://github.com/minxueric/ismb2017_lstm">https://github.com/minxueric/ismb2017_lstm</ext-link>
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<xref ref-type="supplementary-material" rid="sup1">Supplementary materials</xref>
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<name sortKey="Hinton, G" uniqKey="Hinton G">G. Hinton</name>
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<name sortKey="Mikolov, T" uniqKey="Mikolov T">T. Mikolov</name>
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<analytic>
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<name sortKey="Pennington, J" uniqKey="Pennington J">J. Pennington</name>
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</analytic>
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<name sortKey="S Nderby, S K" uniqKey="S Nderby S">S.K. Sønderby</name>
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<name sortKey="Tai, K S" uniqKey="Tai K">K.S. Tai</name>
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<author>
<name sortKey="Hinton, G" uniqKey="Hinton G">G. Hinton</name>
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<analytic>
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</author>
<author>
<name sortKey="Martinez, T R" uniqKey="Martinez T">T.R. Martinez</name>
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<analytic>
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<list>
<country>
<li>République populaire de Chine</li>
<li>États-Unis</li>
</country>
<region>
<li>Californie</li>
</region>
<settlement>
<li>Los Angeles</li>
<li>Pékin</li>
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<li>Université de Californie du Sud</li>
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<name sortKey="Min, Xu" sort="Min, Xu" uniqKey="Min X" first="Xu" last="Min">Xu Min</name>
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<name sortKey="Chen, Ning" sort="Chen, Ning" uniqKey="Chen N" first="Ning" last="Chen">Ning Chen</name>
<name sortKey="Chen, Ning" sort="Chen, Ning" uniqKey="Chen N" first="Ning" last="Chen">Ning Chen</name>
<name sortKey="Chen, Ting" sort="Chen, Ting" uniqKey="Chen T" first="Ting" last="Chen">Ting Chen</name>
<name sortKey="Chen, Ting" sort="Chen, Ting" uniqKey="Chen T" first="Ting" last="Chen">Ting Chen</name>
<name sortKey="Jiang, Rui" sort="Jiang, Rui" uniqKey="Jiang R" first="Rui" last="Jiang">Rui Jiang</name>
<name sortKey="Jiang, Rui" sort="Jiang, Rui" uniqKey="Jiang R" first="Rui" last="Jiang">Rui Jiang</name>
<name sortKey="Min, Xu" sort="Min, Xu" uniqKey="Min X" first="Xu" last="Min">Xu Min</name>
<name sortKey="Zeng, Wanwen" sort="Zeng, Wanwen" uniqKey="Zeng W" first="Wanwen" last="Zeng">Wanwen Zeng</name>
<name sortKey="Zeng, Wanwen" sort="Zeng, Wanwen" uniqKey="Zeng W" first="Wanwen" last="Zeng">Wanwen Zeng</name>
</country>
<country name="États-Unis">
<region name="Californie">
<name sortKey="Chen, Ting" sort="Chen, Ting" uniqKey="Chen T" first="Ting" last="Chen">Ting Chen</name>
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</record>

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