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使用近似贝叶斯计算对结肠干细胞分裂的不朽模型进行参数估计。

Parameter estimation for an immortal model of colonic stem cell division using approximate Bayesian computation.

机构信息

School of Mathematics and Statistics, University of Sheffield, Hicks Building, Hounsfield Road, Sheffield S3 7RH, United Kingdom.

出版信息

J Theor Biol. 2012 Aug 7;306:104-14. doi: 10.1016/j.jtbi.2012.04.021. Epub 2012 Apr 26.

Abstract

In this paper we use approximate Bayesian computation to estimate the parameters in an immortal model of colonic stem cell division. We base the inferences on the observed DNA methylation patterns of cells sampled from the human colon. Utilising DNA methylation patterns as a form of molecular clock is an emerging area of research and has been used in several studies investigating colonic stem cell turnover. There is much debate concerning the two competing models of stem cell turnover: the symmetric (immortal) and asymmetric models. Early simulation studies concluded that the observed methylation data were not consistent with the immortal model. A later modified version of the immortal model that included preferential strand segregation was subsequently shown to be consistent with the same methylation data. Most of this earlier work assumes site independent methylation models that do not take account of the known processivity of methyltransferases whilst other work does not take into account the methylation errors that occur in differentiated cells. This paper addresses both of these issues for the immortal model and demonstrates that approximate Bayesian computation provides accurate estimates of the parameters in this neighbour-dependent model of methylation error rates. The results indicate that if colonic stem cells divide asymmetrically then colon stem cell niches are maintained by more than 8 stem cells. Results also indicate the possibility of preferential strand segregation and provide clear evidence against a site-independent model for methylation errors. In addition, algebraic expressions for some of the summary statistics used in the approximate Bayesian computation (that allow for the additional variation arising from cell division in differentiated cells) are derived and their utility discussed.

摘要

在本文中,我们使用近似贝叶斯计算来估计结肠干细胞分裂不朽模型中的参数。我们的推断基于从人类结肠中采样的细胞的观察到的 DNA 甲基化模式。利用 DNA 甲基化模式作为分子钟是一个新兴的研究领域,并已被用于几项研究中,以调查结肠干细胞的更替。关于干细胞更替的两个竞争模型:对称(不朽)和不对称模型,存在很多争议。早期的模拟研究得出结论,观察到的甲基化数据与不朽模型不一致。后来,一个包括优先链分离的不朽模型的修改版本随后被证明与相同的甲基化数据一致。早期的大部分工作假设了独立于位点的甲基化模型,没有考虑到已知的甲基转移酶的连续性,而其他工作则没有考虑到在分化细胞中发生的甲基化错误。本文针对不朽模型解决了这两个问题,并证明了近似贝叶斯计算为这种依赖于邻居的甲基化错误率模型提供了参数的准确估计。结果表明,如果结肠干细胞不对称分裂,那么结肠干细胞龛由超过 8 个干细胞维持。结果还表明了优先链分离的可能性,并提供了明确的证据反对甲基化错误的独立于位点的模型。此外,还推导出了近似贝叶斯计算中一些摘要统计量的代数表达式(允许在分化细胞中细胞分裂引起的额外变化),并讨论了它们的实用性。

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