Monte Carlo analysis of sedimentation experiments

被引:0
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作者
Borries Demeler
Emre Brookes
机构
[1] University of Texas Health Science Center at San Antonio,Department of Biochemistry
[2] University of Texas at San Antonio,Department of Computer Science
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关键词
Two-dimensional spectrum analysis; Genetic algorithms; UltraScan; Analytical ultracentrifugation; Molecular weight determination; Curve fitting;
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摘要
High resolution analysis approaches for sedimentation experiments have recently been developed that promise to provide a detailed description of heterogeneous samples by identifying both shape and molecular weight distributions. In this study, we describe the effect experimental noise has on the accuracy and precision of such determinations and offer a stochastic Monte Carlo approach, which reliably quantifies the effect of noise by determining the confidence intervals for the parameters that describe each solute. As a result, we can now predict reliable confidence intervals for determined parameters. We also explore the effect of various experimental parameters on the confidence intervals and provide suggestions for improving the statistics by applying a few practical rules for the design of sedimentation experiments.
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页码:129 / 137
页数:8
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