Model based on GA and DNN for prediction of mRNA-Smad7 expression regulated by miRNAs in breast cancer.

Q1 Mathematics
Edgar Manzanarez-Ozuna, Dora-Luz Flores, Everardo Gutiérrez-López, David Cervantes, Patricia Juárez
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引用次数: 16

Abstract

Background: The Smad7 protein is negative regulator of the TGF-β signaling pathway, which is upregulated in patients with breast cancer. miRNAs regulate proteins expressions by arresting or degrading the mRNAs. The purpose of this work is to identify a miRNAs profile that regulates the expression of the mRNA coding for Smad7 in breast cancer using the data from patients with breast cancer obtained from the Cancer Genome Atlas Project.

Methods: We develop an automatic search method based on genetic algorithms to find a predictive model based on deep neural networks (DNN) which fit the set of biological data and apply the Olden algorithm to identify the relative importance of each miRNAs.

Results: A computational model of non-linear regression is shown, based on deep neural networks that predict the regulation given by the miRNA target transcripts mRNA coding for Smad7 protein in patients with breast cancer, with R2 of 0.99 is shown and MSE of 0.00001. In addition, the model is validated with the results in vivo and in vitro experiments reported in the literature. The set of miRNAs hsa-mir-146a, hsa-mir-93, hsa-mir-375, hsa-mir-205, hsa-mir-15a, hsa-mir-21, hsa-mir-20a, hsa-mir-503, hsa-mir-29c, hsa-mir-497, hsa-mir-107, hsa-mir-125a, hsa-mir-200c, hsa-mir-212, hsa-mir-429, hsa-mir-34a, hsa-let-7c, hsa-mir-92b, hsa-mir-33a, hsa-mir-15b, hsa-mir-224, hsa-mir-185 and hsa-mir-10b integrate a profile that critically regulates the expression of the mRNA coding for Smad7 in breast cancer.

Conclusions: We developed a genetic algorithm to select best features as DNN inputs (miRNAs). The genetic algorithm also builds the best DNN architecture by optimizing the parameters. Although the confirmation of the results by laboratory experiments has not occurred, the results allow suggesting that miRNAs profile could be used as biomarkers or targets in targeted therapies.

Abstract Image

Abstract Image

Abstract Image

基于GA和DNN的模型预测mirna调控的mRNA-Smad7在乳腺癌中的表达。
背景:Smad7蛋白是TGF-β信号通路的负调控因子,在乳腺癌患者中表达上调。mirna通过抑制或降解mrna来调节蛋白质的表达。这项工作的目的是利用从癌症基因组图谱项目中获得的乳腺癌患者的数据,确定一个调节乳腺癌中Smad7编码mRNA表达的miRNAs谱。方法:我们开发了一种基于遗传算法的自动搜索方法来寻找基于深度神经网络(DNN)的预测模型,该模型与生物数据集拟合,并应用Olden算法来识别每个mirna的相对重要性。结果:建立了基于深度神经网络的非线性回归计算模型,预测乳腺癌患者中miRNA靶转录本mRNA编码Smad7蛋白的调控作用,R2为0.99,MSE为0.00001。此外,用文献报道的体内和体外实验结果对模型进行了验证。这组mirna hsa-mir-146a、hsa-mir-93、hsa-mir-375、hsa-mir-205、hsa-mir-15a、hsa-mir-21、hsa-mir-20a、hsa-mir-503、hsa-mir-29c、hsa-mir-497、hsa-mir-107、hsa-mir-125a、hsa-mir-200c、hsa-mir-212、hsa-mir-429、hsa-mir-34a、hsa-mir- 7c、hsa-mir-92b、hsa-mir-33a、hsa-mir-15b、hsa-mir-224、hsa-mir-185和hsa-mir-10b整合了一个关键调控乳腺癌中Smad7编码mRNA表达的谱。结论:我们开发了一种遗传算法来选择最佳特征作为DNN输入(mirna)。遗传算法还通过优化参数来构建最佳深度神经网络架构。虽然实验室实验结果尚未得到证实,但结果表明miRNAs谱可以用作靶向治疗的生物标志物或靶标。
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来源期刊
Theoretical Biology and Medical Modelling
Theoretical Biology and Medical Modelling MATHEMATICAL & COMPUTATIONAL BIOLOGY-
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Theoretical Biology and Medical Modelling is an open access peer-reviewed journal adopting a broad definition of "biology" and focusing on theoretical ideas and models associated with developments in biology and medicine. Mathematicians, biologists and clinicians of various specialisms, philosophers and historians of science are all contributing to the emergence of novel concepts in an age of systems biology, bioinformatics and computer modelling. This is the field in which Theoretical Biology and Medical Modelling operates. We welcome submissions that are technically sound and offering either improved understanding in biology and medicine or progress in theory or method.
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