Caliebe A, Rösler U, Hansen U-P
Mathematical Seminar, Ludewig-Meyn-Str. 4, D-24098 Kiel, Germany.
J Membr Biol. 2002 Jan 1;185(1):25-41. doi: 10.1007/s00232-001-0107-0. Epub 2002 Jan 13.
A chi(2) test is proposed that provides a means of discriminating between different Markov models used for the description of a measured (patch clamp) time series. It is based on a test statistic constructed from the measured and the predicted number of transitions between the current levels. With a certain probability, this test statistic is below a threshold if the model with a reduced number of degrees of freedom is compatible with the data. A second criterion is provided by the dependence of the test statistic on the number of data points. For data generated by the alternative model it increases linearly. The applicability of this test for verifying and rejecting models is illustrated by means of time series generated by two distinct channels with different conductances and by time series generated by one channel with two conductance levels. For noisy data, a noise correction is proposed, which eliminates noise-induced false jumps that would interfere with the test. It is shown that the test can also be extended to aggregated Markov models.
本文提出了一种卡方检验方法,该方法可用于区分用于描述测量的(膜片钳)时间序列的不同马尔可夫模型。它基于一个检验统计量,该统计量由当前水平之间测量的和预测的跃迁次数构建而成。如果自由度减少的模型与数据兼容,那么这个检验统计量在一定概率下会低于一个阈值。检验统计量对数据点数的依赖性提供了第二个标准。对于由替代模型生成的数据,它呈线性增加。通过具有不同电导的两个不同通道生成的时间序列以及由具有两个电导水平的一个通道生成的时间序列,说明了该检验在验证和拒绝模型方面的适用性。对于有噪声的数据,提出了一种噪声校正方法,该方法消除了会干扰检验的噪声引起的虚假跃迁。结果表明,该检验也可以扩展到聚合马尔可夫模型。