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首页> 外文期刊>Computational Biology and Bioinformatics, IEEE/ACM Transactions on >Some Mathematical Refinements Concerning Error Minimization in the Genetic Code
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Some Mathematical Refinements Concerning Error Minimization in the Genetic Code

机译:关于遗传代码中错误最小化的一些数学改进

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The genetic code is known to have a high level of error robustness and has been shown to be very error robust compared to randomly selected codes, but to be significantly less error robust than a certain code found by a heuristic algorithm. We formulate this optimization problem as a Quadratic Assignment Problem and use this to formally verify that the code found by the heuristic algorithm is the global optimum. We also argue that it is strongly misleading to compare the genetic code only with codes sampled from the fixed block model, because the real code space is orders of magnitude larger. We thus enlarge the space from which random codes can be sampled from approximately 2.433 times 10^{18} codes to approximately 5.908 times 10^{45} codes. We do this by leaving the fixed block model, and using the wobble rules to formulate the characteristics acceptable for a genetic code. By relaxing more constraints, three larger spaces are also constructed. Using a modified error function, the genetic code is found to be more error robust compared to a background of randomly generated codes with increasing space size. We point out that these results do not necessarily imply that the code was optimized during evolution for error minimization, but that other mechanisms could be the reason for this error robustness.
机译:已知遗传密码具有高水平的错误鲁棒性,并且与随机选择的代码相比,已显示出非常强的错误鲁棒性,但是与启发式算法发现的特定代码相比,其错误鲁棒性明显较低。我们将此优化问题表述为二次分配问题,并使用它来正式验证由启发式算法找到的代码是否是全局最优的。我们还认为,仅将遗传密码与从固定块模型采样的密码进行比较会产生很大的误导性,因为实际的密码空间要大几个数量级。因此,我们将可以从其采样随机码的空间从大约2.433乘10 ^ {18}码扩大到大约5.908乘以10 ^ {45}码。我们通过保留固定块模型并使用摆动规则来制定遗传密码可接受的特征来实现此目的。通过放宽更多约束,还可以构造三个更大的空间。使用经过修改的错误函数,发现遗传代码与随机生成的代码的背景相比具有更强的错误鲁棒性,而且空间大小越来越大。我们指出,这些结果并不一定意味着在开发过程中对代码进行了优化以使错误最小化,但是其他机制可能是导致此错误健壮性的原因。

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