基于卷积神经网络的PRDM9结合位点预测及基因重组图谱验证

Q3 Biochemistry, Genetics and Molecular Biology IPSJ Transactions on Bioinformatics Pub Date : 2022-01-01 DOI:10.2197/ipsjtbio.15.9
Takahiro Nakamura, T. Endo, N. Osada
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引用次数: 0

摘要

PR domain-containing 9 (PRDM9)是一种锌指蛋白,可结合特定的DNA基序并诱导染色体间的交叉,导致结合位点附近的高重组率。目前,PRDM9的结合位点预测主要采用基于基序匹配和位置特异性权重矩阵(PWM)的方法。同时,卷积神经网络(Convolutional Neural Network, CNN)在近年来的研究中普遍表现出较好的识别蛋白质结合区域的能力,有望在PRDM9结合位点预测方面有较好的表现。在本研究中,我们比较了PWM和CNN预测PRDM9结合位点的性能,不仅使用测试数据,而且还使用片段预测得分与局部重组率之间的相关性来评估性能,以避免过度拟合效应。利用含有PRDM9高通量测序(ChIP-seq)峰染色质免疫沉淀(Chromatin immune - precipitation)的人类基因组约17万个基因组DNA片段构建PWM和CNN。我们发现CNN在ROC曲线下的面积和其他指标方面优于PWM。此外,与PWM相比,CNN的预测分数与局部复合率的相关性更强。我们讨论了CNN的优越性能部分是由于CNN能够捕获实际prdm9结合位点周围序列的特征。
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Predicting PRDM9 Binding Sites by a Convolutional Neural Network and Verification Using Genetic Recombination Map
: PR domain-containing 9 (PRDM9) is a zinc-finger protein that binds to specific DNA motifs and induces the crossing-over between chromosomes, resulting in a high recombination rate around binding sites. Currently, the binding sites of PRDM9 are predicted with methods based on motif matching and Position-specific Weight Matrix (PWM). Meanwhile, the Convolutional Neural Network (CNN) has shown superior performance in recent studies to identify protein-binding regions in general, and it is expected to perform well in PRDM9 binding site prediction. In this study, we compared the performance of PWM and CNN for predicting PRDM9 binding sites with not only test data but also the correlation between the prediction score for a fragment and the local recombination rate to evaluate the performance without overfitting e ff ects. Approximately 170,000 genomic DNA fragments of the human genome containing the Chromatin Immuno-Precipitation with high-throughput sequencing (ChIP-seq) peak of PRDM9 were used for constructing PWM and CNN. We found that CNN outperformed PWM in terms of area under the ROC curve and other metrics. Furthermore, the prediction scores of CNN correlated more strongly with the local recombination rate than PWM. We discuss that the superior performance of CNN would be in part due to the ability of CNN to capture the feature of surrounding sequences of actual PRDM9-binding sites.
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来源期刊
IPSJ Transactions on Bioinformatics
IPSJ Transactions on Bioinformatics Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (miscellaneous)
CiteScore
1.90
自引率
0.00%
发文量
3
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