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使用霍普菲尔德网络对乳腺癌吸引子盆地进行建模。

Modeling Basins of Attraction for Breast Cancer Using Hopfield Networks.

作者信息

Conforte Alessandra Jordano, Alves Leon, Coelho Flávio Codeço, Carels Nicolas, da Silva Fabrício Alves Barbosa

机构信息

Laboratory of Biological Systems Modeling, Center for Technological Development in Health, Oswaldo Cruz Foundation, Rio de Janeiro, Brazil.

Laboratory of Computational Modeling of Biological Systems, Scientific Computing Program, Oswaldo Cruz Foundation, Rio de Janeiro, Brazil.

出版信息

Front Genet. 2020 Apr 7;11:314. doi: 10.3389/fgene.2020.00314. eCollection 2020.

Abstract

Cancer is a genetic disease for which traditional treatments cause harmful side effects. After two decades of genomics technological breakthroughs, personalized medicine is being used to improve treatment outcomes and mitigate side effects. In mathematical modeling, it has been proposed that cancer matches an attractor in Waddington's epigenetic landscape. The use of Hopfield networks is an attractive modeling approach because it requires neither previous biological knowledge about protein-protein interactions nor kinetic parameters. In this report, Hopfield network modeling was used to analyze bulk RNA-Seq data of paired breast tumor and control samples from 70 patients. We characterized the control and tumor attractors with respect to their size and potential energy and correlated the Euclidean distances between the tumor samples and the control attractor with their corresponding clinical data. In addition, we developed a protocol that outlines the key genes involved in tumor state stability. We found that the tumor basin of attraction is larger than that of the control and that tumor samples are associated with a more substantial negative energy than control samples, which is in agreement with previous reports. Moreover, we found a negative correlation between the Euclidean distances from tumor samples to the control attractor and patient overall survival. The ascending order of each node's density in the weight matrix and the descending order of the number of patients that have the target active only in the tumor sample were the parameters that withdrew more tumor samples from the tumor basin of attraction with fewer gene inhibitions. The combinations of therapeutic targets were specific to each patient. We performed an initial validation through simulation of trastuzumab treatment effects in HER2+ breast cancer samples. For that, we built an energy landscape composed of single-cell and bulk RNA-Seq data from trastuzumab-treated and non-treated HER2+ samples. The trajectory from the non-treated bulk sample toward the treated bulk sample was inferred through the perturbation of differentially expressed genes between these samples. Among them, we characterized key genes involved in the trastuzumab response according to the literature.

摘要

癌症是一种遗传性疾病,传统治疗方法会产生有害的副作用。经过二十年的基因组学技术突破,个性化医疗正被用于改善治疗效果并减轻副作用。在数学建模中,有人提出癌症与沃丁顿表观遗传景观中的一个吸引子相匹配。使用霍普菲尔德网络是一种有吸引力的建模方法,因为它既不需要关于蛋白质 - 蛋白质相互作用的先前生物学知识,也不需要动力学参数。在本报告中,霍普菲尔德网络建模被用于分析来自70名患者的配对乳腺肿瘤和对照样本的大量RNA测序数据。我们根据控制吸引子和肿瘤吸引子的大小及势能对它们进行了表征,并将肿瘤样本与对照吸引子之间的欧几里得距离与其相应的临床数据进行了关联。此外,我们制定了一个方案,概述了参与肿瘤状态稳定性的关键基因。我们发现肿瘤吸引盆比对照的吸引盆大,并且肿瘤样本比对照样本具有更大的负能量,这与先前的报告一致。此外,我们发现从肿瘤样本到对照吸引子的欧几里得距离与患者总生存期呈负相关。权重矩阵中每个节点密度的升序以及仅在肿瘤样本中具有活性的靶标的患者数量的降序是在较少基因抑制的情况下从肿瘤吸引盆中提取更多肿瘤样本的参数。治疗靶点的组合对每个患者都是特定的。我们通过模拟曲妥珠单抗在HER2 +乳腺癌样本中的治疗效果进行了初步验证。为此,我们构建了一个由曲妥珠单抗治疗和未治疗的HER2 +样本的单细胞和大量RNA测序数据组成的能量景观。通过对这些样本之间差异表达基因的扰动,推断出从未治疗的大量样本到治疗后的大量样本的轨迹。其中,我们根据文献对参与曲妥珠单抗反应的关键基因进行了表征。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1da3/7154169/70a72d788cef/fgene-11-00314-g0001.jpg

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