» Articles » PMID: 31002504

Statistical Uncertainty Analysis for Small-Sample, High Log-Variance Data: Cautions for Bootstrapping and Bayesian Bootstrapping

Overview
Specialties Biochemistry
Chemistry
Date 2019 Apr 20
PMID 31002504
Citations 15
Authors
Affiliations
Soon will be listed here.
Abstract

Recent advances in molecular simulations allow the evaluation of previously unattainable observables, such as rate constants for protein folding. However, these calculations are usually computationally expensive, and even significant computing resources may result in a small number of independent estimates spread over many orders of magnitude. Such small-sample, high "log-variance" data are not readily amenable to analysis using the standard uncertainty (i.e., "standard error of the mean") because unphysical negative limits of confidence intervals result. Bootstrapping, a natural alternative guaranteed to yield a confidence interval within the minimum and maximum values, also exhibits a striking systematic bias of the lower confidence limit in log space. As we show, bootstrapping artifactually assigns high probability to improbably low mean values. A second alternative, the Bayesian bootstrap strategy, does not suffer from the same deficit and is more logically consistent with the type of confidence interval desired. The Bayesian bootstrap provides uncertainty intervals that are more reliable than those from the standard bootstrap method but must be used with caution nevertheless. Neither standard nor Bayesian bootstrapping can overcome the intrinsic challenge of underestimating the mean from small-size, high log-variance samples. Our conclusions are based on extensive analysis of model distributions and reanalysis of multiple independent atomistic simulations. Although we only analyze rate constants, similar considerations will apply to related calculations, potentially including highly nonlinear averages like the Jarzynski relation.

Citing Articles

A FAIR-Compliant Management Solution for Molecular Simulation Trajectories.

Vitalis A, Winkler S, Zhang Y, Widmer J, Caflisch A J Chem Inf Model. 2025; 65(5):2443-2455.

PMID: 39977657 PMC: 11898051. DOI: 10.1021/acs.jcim.4c01301.


Rare-Event Sampling using a Reinforcement Learning-Based Weighted Ensemble Method.

Yang D, Goldberg A, Chong L bioRxiv. 2024; .

PMID: 39416089 PMC: 11482931. DOI: 10.1101/2024.10.09.617475.


WEDAP: A Python Package for Streamlined Plotting of Molecular Simulation Data.

Yang D, Chong L J Chem Inf Model. 2024; 64(15):5749-5755.

PMID: 39013164 PMC: 11323263. DOI: 10.1021/acs.jcim.4c00867.


Revisiting Textbook Azide-Clock Reactions: A "Propeller-Crawling" Mechanism Explains Differences in Rates.

Bogetti A, Zwier M, Chong L J Am Chem Soc. 2024; 146(18):12828-12835.

PMID: 38687173 PMC: 11078601. DOI: 10.1021/jacs.4c03360.


A Suite of Tutorials for the WESTPA 2.0 Rare-Events Sampling Software [Article v2.0].

Bogetti A, Leung J, Russo J, Zhang S, Thompson J, Saglam A Living J Comput Mol Sci. 2023; 5(1).

PMID: 37200895 PMC: 10191340. DOI: 10.33011/livecoms.5.1.1655.


References
1.
Suarez E, Lettieri S, Zwier M, Stringer C, Subramanian S, Chong L . Simultaneous Computation of Dynamical and Equilibrium Information Using a Weighted Ensemble of Trajectories. J Chem Theory Comput. 2014; 10(7):2658-2667. PMC: 4168800. DOI: 10.1021/ct401065r. View

2.
Adelman J, Dale A, Zwier M, Bhatt D, Chong L, Zuckerman D . Simulations of the alternating access mechanism of the sodium symporter Mhp1. Biophys J. 2011; 101(10):2399-407. PMC: 3218348. DOI: 10.1016/j.bpj.2011.09.061. View

3.
Grossfield A, Patrone P, Roe D, Schultz A, Siderius D, Zuckerman D . Best Practices for Quantification of Uncertainty and Sampling Quality in Molecular Simulations [Article v1.0]. Living J Comput Mol Sci. 2018; 1(1). PMC: 6286151. DOI: 10.33011/livecoms.1.1.5067. View

4.
Bhatt D, Zhang B, Zuckerman D . Steady-state simulations using weighted ensemble path sampling. J Chem Phys. 2010; 133(1):014110. PMC: 2912933. DOI: 10.1063/1.3456985. View

5.
Zwier M, Adelman J, Kaus J, Pratt A, Wong K, Rego N . WESTPA: an interoperable, highly scalable software package for weighted ensemble simulation and analysis. J Chem Theory Comput. 2015; 11(2):800-9. PMC: 4573570. DOI: 10.1021/ct5010615. View