首页> 外文期刊>The journal of physical chemistry, B. Condensed matter, materials, surfaces, interfaces & biophysical >Monte Carlo Diffusion-Enhanced Photon Inference: Distance Distributions and Conformational Dynamics in Single-Molecule FRET
【24h】

Monte Carlo Diffusion-Enhanced Photon Inference: Distance Distributions and Conformational Dynamics in Single-Molecule FRET

机译:Monte Carlo扩散增强的光子推理:单分子FRET中的距离分布和构象动态

获取原文
获取原文并翻译 | 示例
           

摘要

Single-molecule Forster resonance energy transfer (smFRET) is utilized to study the structure and dynamics of many biomolecules, such as proteins, DNA, and their various complexes. The structural assessment is based on the well-known Forster relationship between the measured efficiency of energy transfer between a donor (D) and an acceptor (A) dye and the distance between them. Classical smFRET analysis methods called photon distribution analysis (PDA) take into account photon shot-noise, D-A distance distribution, and, more recently, interconversion between states in order to extract accurate distance information. It is known that rapid D-A distance fluctuations on the order of the D lifetime (or shorter) can increase the measured mean FRET efficiency and thus decrease the estimated D-A distance. Nonetheless, this effect has been so far neglected in smFRET experiments, potentially leading to biases in estimated distances. Here we introduce a PDA approach dubbed Monte Carlo diffusion-enhanced photon inference (MC-DEPI). MC-DEPI recolor detected photons of smFRET experiments taking into account dynamics of D-A distance fluctuations, multiple interconverting states, and photoblinking. Using this approach, we show how different underlying conditions may yield identical FRET histograms and how the additional information from fluorescence decays helps in distinguishing between the different conditions. We also introduce a machine learning fitting approach for retrieving the D-A distance distribution, decoupled from the above mentioned effects. We show that distance interpretation of smFRET experiments of even the simplest dsDNA is nontrivial and requires decoupling the effects of rapid D-A distance fluctuations on FRET in order to avoid systematic biases in the estimation of the D-A distance distribution.
机译:单分子福尔斯特共振能量转移(SMFRet)用于研究许多生物分子的结构和动态,例如蛋白质,DNA及其各种络合物。结构评估基于供体(D)与受体(A)染料之间的能量转移的测量效率与它们之间的距离之间的众所周知的叉孔关系。经典SMFRet分析方法称为光子分布分析(PDA)考虑到光子射击噪声,D-A距离分布,以及最近,在状态之间的相互互连,以提取准确的距离信息。众所周知,在D寿命(或更短)的顺序上的快速D-A距离波动可以增加测量的平均尺寸效率,从而降低估计的D-A距离。尽管如此,在SMFRet实验中已经忽略了这种效果,可能导致估计距离的偏见。在这里,我们介绍了一种PDA方法被称为蒙特卡罗扩散增强的光子推理(MC-DEPI)。 MC-DEPI Recolor检测到SMFRet实验的光子,考虑到D-A距离波动,多个互连状态和光照的动态。使用这种方法,我们展示了不同的底层条件如何产生相同的FRET直方图以及来自荧光衰减的附加信息如何有助于区分不同的条件。我们还介绍了一种用于检索D-A距离分布的机器学习配件方法,从上述效果解耦。我们表明,即使是最简单的DSDNA的SMFRet实验的距离解释是非竞争,并且需要去耦的快速D-A距离波动对FRET的影响,以避免在D-A距离分布的估计中进行系统偏差。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号