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Control of retinal isomerization in bacteriorhodopsin in the high-intensity regime.


ABSTRACT: A learning algorithm was used to manipulate optical pulse shapes and optimize retinal isomerization in bacteriorhodopsin, for excitation levels up to 1.8 x 10(16) photons per square centimeter. Below 1/3 the maximum excitation level, the yield was not sensitive to pulse shape. Above this level the learning algorithm found that a Fourier-transform-limited (TL) pulse maximized the 13-cis population. For this optimal pulse the yield increases linearly with intensity well beyond the saturation of the first excited state. To understand these results we performed systematic searches varying the chirp and energy of the pump pulses while monitoring the isomerization yield. The results are interpreted including the influence of 1-photon and multiphoton transitions. The population dynamics in each intermediate conformation and the final branching ratio between the all-trans and 13-cis isomers are modified by changes in the pulse energy and duration.

SUBMITTER: Florean AC 

PROVIDER: S-EPMC2708765 | biostudies-literature | 2009 Jul

REPOSITORIES: biostudies-literature

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Control of retinal isomerization in bacteriorhodopsin in the high-intensity regime.

Florean Andrei C AC   Cardoza David D   White James L JL   Lanyi J K JK   Sension Roseanne J RJ   Bucksbaum Philip H PH  

Proceedings of the National Academy of Sciences of the United States of America 20090629 27


A learning algorithm was used to manipulate optical pulse shapes and optimize retinal isomerization in bacteriorhodopsin, for excitation levels up to 1.8 x 10(16) photons per square centimeter. Below 1/3 the maximum excitation level, the yield was not sensitive to pulse shape. Above this level the learning algorithm found that a Fourier-transform-limited (TL) pulse maximized the 13-cis population. For this optimal pulse the yield increases linearly with intensity well beyond the saturation of th  ...[more]

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