Department of Systems Biology, Harvard Medical School, 200 Longwood Avenue, Boston, USA.
BMC Biol. 2014 Apr 30;12:29. doi: 10.1186/1741-7007-12-29.
In this essay I will sketch some ideas for how to think about models in biology. I will begin by trying to dispel the myth that quantitative modeling is somehow foreign to biology. I will then point out the distinction between forward and reverse modeling and focus thereafter on the former. Instead of going into mathematical technicalities about different varieties of models, I will focus on their logical structure, in terms of assumptions and conclusions. A model is a logical machine for deducing the latter from the former. If the model is correct, then, if you believe its assumptions, you must, as a matter of logic, also believe its conclusions. This leads to consideration of the assumptions underlying models. If these are based on fundamental physical laws, then it may be reasonable to treat the model as 'predictive', in the sense that it is not subject to falsification and we can rely on its conclusions. However, at the molecular level, models are more often derived from phenomenology and guesswork. In this case, the model is a test of its assumptions and must be falsifiable. I will discuss three models from this perspective, each of which yields biological insights, and this will lead to some guidelines for prospective model builders.
在这篇文章中,我将勾勒出一些关于如何在生物学中思考模型的思路。我将首先试图消除定量建模在某种程度上与生物学无关的神话。然后,我将指出正向建模和逆向建模之间的区别,并将重点放在前者上。我不会深入讨论不同类型模型的数学细节,而是专注于它们的逻辑结构,即假设和结论。模型是一种从前者推导出后者的逻辑机器。如果模型是正确的,那么,如果你相信它的假设,那么根据逻辑,你必须也相信它的结论。这就引出了对模型所基于的假设的思考。如果这些假设基于基本的物理定律,那么我们可以将模型视为“可预测的”,也就是说它不会被证伪,我们可以依赖它的结论。然而,在分子水平上,模型更多地是从现象学和猜测中得出的。在这种情况下,模型是对其假设的检验,必须是可证伪的。我将从这个角度讨论三个模型,每个模型都产生了生物学上的见解,这将为未来的模型构建者提供一些指导方针。