S

S. C. Kou

Harvard University

ORCID: 0000-0002-1774-3316

Publishes on Data-Driven Disease Surveillance, Influenza Virus Research Studies, Advanced Fluorescence Microscopy Techniques. 97 papers and 5.1k citations.

97Publications
5.1kTotal Citations

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Top publicationsby citations

Generalized Langevin Equation with Fractional Gaussian Noise: Subdiffusion within a Single Protein Molecule
S. C. Kou, X. Sunney Xie|Physical Review Letters|2004
Cited by 556

By introducing fractional Gaussian noise into the generalized Langevin equation, the subdiffusion of a particle can be described as a stationary Gaussian process with analytical tractability. This model is capable of explaining the equilibrium fluctuation of the distance between an electron transfer donor and acceptor pair within a protein that spans a broad range of time scales, and is in excellent agreement with a single-molecule experiment.

Observation of a Power-Law Memory Kernel for Fluctuations within a Single Protein Molecule
Wei Min, Guobin Luo, Binny J. Cherayil et al.|Physical Review Letters|2005
Cited by 419

The fluctuation of the distance between a fluorescein-tyrosine pair within a single protein complex was directly monitored in real time by photoinduced electron transfer and found to be a stationary, time-reversible, and non-Markovian Gaussian process. Within the generalized Langevin equation formalism, we experimentally determine the memory kernel K(t), which is proportional to the autocorrelation function of the random fluctuating force. K(t) is a power-law decay, t(-0.51 +/- 0.07) in a broad range of time scales (10(-3)-10 s). Such a long-time memory effect could have implications for protein functions.

Accurate estimation of influenza epidemics using Google search data via ARGO
Shihao Yang, Mauricio Santillana, S. C. Kou|Proceedings of the National Academy of Sciences|2015
Cited by 409Open Access

Accurate real-time tracking of influenza outbreaks helps public health officials make timely and meaningful decisions that could save lives. We propose an influenza tracking model, ARGO (AutoRegression with GOogle search data), that uses publicly available online search data. In addition to having a rigorous statistical foundation, ARGO outperforms all previously available Google-search-based tracking models, including the latest version of Google Flu Trends, even though it uses only low-quality search data as input from publicly available Google Trends and Google Correlate websites. ARGO not only incorporates the seasonality in influenza epidemics but also captures changes in people's online search behavior over time. ARGO is also flexible, self-correcting, robust, and scalable, making it a potentially powerful tool that can be used for real-time tracking of other social events at multiple temporal and spatial resolutions.

Fluctuating Enzymes:  Lessons from Single-Molecule Studies
Wei Min, Brian P. English, Guobin Luo et al.|Accounts of Chemical Research|2005
Cited by 360

Recent single-molecule enzymology measurements with improved statistics have demonstrated that a single enzyme molecule exhibits large temporal fluctuations of the turnover rate constant at a broad range of time scales (from 1 ms to 100 s). The rate constant fluctuations, termed as dynamic disorder, are associated with fluctuations of the protein conformations observed on the same time scales. We discuss the unique information extractable from these experiments and the reconciliation of these observations with ensemble-averaged Michaelis-Menten equation. A theoretical model based on the generalized Langevin equation (GLE) treatment of Kramers' barrier crossing problem for chemical reactions accounts naturally for the observation of dynamic disorder and highly dispersed kinetics.