在一个基础设施上,以支持共享和聚合出版前和出版后的系统生物学研究数据。

Systems and Synthetic Biology Pub Date : 2012-06-01 Epub Date: 2012-08-03 DOI:10.1007/s11693-012-9095-x
Mark Slaymaker, James Osborne, Andrew Simpson, David Gavaghan
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引用次数: 1

摘要

计算机实验的发展导致了在传统实验模型之外使用计算模型来生成原始数据,这些数据作为研究结果进行分析和发表。这种变化需要引入新的方法,以促进对基础模型和报告结果的独立验证。促进合作研究有可能有助于验证结果和探索更广泛的问题领域。在本文中,我们利用并扩展了两个现有的软件框架来开发一个基础设施,该基础设施既可以促进研究人员在发表前共享数据,又可以在发表后为感兴趣的各方访问数据。出版前数据的共享将使分布的研究小组能够探索更大的问题空间;允许在发表后访问数据将使审稿人和更广泛的社区能够独立验证已发表的结果,从长远来看,这将有助于增加对已发表结果的信心。该框架用于执行可重复和数值验证的基于个体的计算实验,以确定结直肠癌的发病情况。现有的结果得到了验证,并对结肠直肠隐窝浸润的自上而下与自下而上假说提出了新的见解。
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On an infrastructure to support sharing and aggregating pre- and post-publication systems biology research data.

The move towards in silico experimentation has resulted in the use of computational models, in addition to traditional experimental models, to generate the raw data that is analysed and published as research findings. This change requires new methods to be introduced to facilitate independent validation of the underlying models and the reported results. The promotion of co-operative research has the potential to help to both validate results and explore wider problem areas. In this paper we leverage and extend two existing software frameworks to develop an infrastructure that has the potential to both promote the sharing of data between researchers pre-publication and enable access to the data for interested parties post-publication. The pre-publication sharing of data would enable larger problem spaces to be explored by distributed research groups; enabling access to the data post-publication would allow reviewers and the wider community to independently verify the published results which would, in the longer term, help to increase confidence in published results. The framework is used to perform reproducible and numerically validated individual-based computational experiments into the onset of colorectal cancer. Existing results are verified and new insights into the top-down versus bottom-up hypothesis of colorectal crypt invasion are given.

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