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使用基于主体的模型研究乳腺上皮中癌前乳腺病变、致癌作用和肿瘤演变之间的关系。

Examining the Relationship between Pre-Malignant Breast Lesions, Carcinogenesis and Tumor Evolution in the Mammary Epithelium Using an Agent-Based Model.

作者信息

Chapa Joaquin, An Gary, Kulkarni Swati A

机构信息

Pritzker School of Medicine, University of Chicago, 924 East 57th Street #104, Chicago, Illinois, 60637, United States of America.

Department of Surgery, University of Chicago, 5841 S. Maryland Ave, Chicago, Illinois, 60637, United States of America.

出版信息

PLoS One. 2016 Mar 29;11(3):e0152298. doi: 10.1371/journal.pone.0152298. eCollection 2016.

Abstract

INTRODUCTION

Breast cancer, the product of numerous rare mutational events that occur over an extended time period, presents numerous challenges to investigators interested in studying the transformation from normal breast epithelium to malignancy using traditional laboratory methods, particularly with respect to characterizing transitional and pre-malignant states. Dynamic computational modeling can provide insight into these pathophysiological dynamics, and as such we use a previously validated agent-based computational model of the mammary epithelium (the DEABM) to investigate the probabilistic mechanisms by which normal populations of ductal cells could transform into states replicating features of both pre-malignant breast lesions and a diverse set of breast cancer subtypes.

METHODS

The DEABM consists of simulated cellular populations governed by algorithms based on accepted and previously published cellular mechanisms. Cells respond to hormones, undergo mitosis, apoptosis and cellular differentiation. Heritable mutations to 12 genes prominently implicated in breast cancer are acquired via a probabilistic mechanism. 3000 simulations of the 40-year period of menstrual cycling were run in wild-type (WT) and BRCA1-mutated groups. Simulations were analyzed by development of hyperplastic states, incidence of malignancy, hormone receptor and HER-2 status, frequency of mutation to particular genes, and whether mutations were early events in carcinogenesis.

RESULTS

Cancer incidence in WT (2.6%) and BRCA1-mutated (45.9%) populations closely matched published epidemiologic rates. Hormone receptor expression profiles in both WT and BRCA groups also closely matched epidemiologic data. Hyperplastic populations carried more mutations than normal populations and mutations were similar to early mutations found in ER+ tumors (telomerase, E-cadherin, TGFB, RUNX3, p < .01). ER- tumors carried significantly more mutations and carried more early mutations in BRCA1, c-MYC and genes associated with epithelial-mesenchymal transition.

CONCLUSIONS

The DEABM generates diverse tumors that express tumor markers consistent with epidemiologic data. The DEABM also generates non-invasive, hyperplastic populations, analogous to atypia or ductal carcinoma in situ (DCIS), via mutations to genes known to be present in hyperplastic lesions and as early mutations in breast cancers. The results demonstrate that agent-based models are well-suited to studying tumor evolution through stages of carcinogenesis and have the potential to be used to develop prevention and treatment strategies.

摘要

引言

乳腺癌是在较长时间段内发生的众多罕见突变事件的产物,这给那些有兴趣使用传统实验室方法研究从正常乳腺上皮向恶性肿瘤转变过程的研究人员带来了诸多挑战,尤其是在表征过渡状态和癌前状态方面。动态计算建模能够深入了解这些病理生理动态变化,因此我们使用先前验证过的基于主体的乳腺上皮细胞计算模型(DEABM)来研究导管细胞正常群体转变为复制癌前乳腺病变和多种乳腺癌亚型特征状态的概率机制。

方法

DEABM由受基于已被认可且先前已发表的细胞机制的算法控制的模拟细胞群体组成。细胞对激素做出反应,进行有丝分裂、凋亡和细胞分化。通过概率机制获得与乳腺癌密切相关的12个基因的可遗传突变。在野生型(WT)和BRCA1突变组中对40年月经周期进行了3000次模拟。通过增生状态的发展、恶性肿瘤的发生率、激素受体和HER-2状态、特定基因突变的频率以及突变是否为致癌过程中的早期事件对模拟结果进行分析。

结果

WT群体(2.6%)和BRCA1突变群体(45.9%)中的癌症发生率与已发表的流行病学率密切匹配。WT组和BRCA组中的激素受体表达谱也与流行病学数据密切匹配。增生群体比正常群体携带更多突变,且这些突变与在雌激素受体阳性(ER+)肿瘤中发现的早期突变相似(端粒酶、E-钙黏蛋白、转化生长因子β、RUNX3,p < 0.01)。雌激素受体阴性(ER-)肿瘤携带的突变显著更多,并且在BRCA1、c-MYC以及与上皮-间质转化相关的基因中携带更多早期突变。

结论

DEABM生成了表达与流行病学数据一致的肿瘤标志物的多种肿瘤。DEABM还通过对已知存在于增生性病变中且作为乳腺癌早期突变的基因进行突变,生成了类似于非典型增生或原位导管癌(DCIS)的非侵袭性增生群体。结果表明,基于主体的模型非常适合研究肿瘤在致癌过程各阶段的演变,并且有潜力用于制定预防和治疗策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/811b/4811527/1e324a69477e/pone.0152298.g001.jpg

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