• Hitting rewind to predict multi-step che

    From ScienceDaily@1:317/3 to All on Mon Apr 25 22:30:44 2022
    Hitting rewind to predict multi-step chemical reactions

    Date:
    April 25, 2022
    Source:
    Hokkaido University
    Summary:
    Researchers overcome computational limitations to predict the
    starting materials of multi-step reactions using only information
    about the target product molecule.



    FULL STORY ========================================================================== Researchers overcome computational limitations to predict the starting materials of multi-step reactions using only information about the target product molecule.


    ==========================================================================
    Have you ever only caught the end of a TV show and wondered how the
    story progressed to that ending? In a similar way, chemists often have a desired molecule in mind and wonder what kind of reaction could produce
    it. Researchers in the Maeda Group at the Institute for Chemical Reaction Design and Discovery (ICReDD) and Hokkaido University developed a method
    that can predict the "story" (i.e., the starting materials and reaction
    paths) of multi-step chemical reactions using only information about the "ending" (i.e., the product molecules).

    Predicting the recipe for a target product molecule, with no other
    knowledge than the molecule itself, would be a powerful tool for
    accelerating the discovery of new reactions. The Maeda group previously developed a computational method that succeeded in predicting single step reactions in this way. However, expanding to multi-step reactions leads to
    a dramatic increase in the number of possible reaction pathways -- what
    is known as combinatorial explosion. This sharp increase in complexity
    results in prohibitively high calculation costs.

    To overcome this limitation, researchers developed an algorithm that
    reduces the number of paths that need to be explored by discarding less
    viable paths at each step in the reaction. After calculating all possible
    paths for one step backward in the reaction, a kinetic analysis method evaluates how well each path produces the target molecule. Reaction paths
    that do not yield the target molecule above a pre-set threshold percentage
    are deemed not significant enough, and are not explored further.

    This cycle of exploring, evaluating, and discarding reaction paths is
    repeated for each step backward in a multi-step reaction and mitigates
    the combinatorial explosion that would normally occur, making multi-step reactions more feasible to calculate. Previous methods were limited
    to single step reactions, whereas this new method was able to predict
    reactions that involved more than 6 steps, marking a major jump in
    capability.

    As a proof-of-concept test, researchers tested the method on
    two well-known multi-step reactions, the Strecker and Passerini
    reactions. Thousands of starting material candidates were proposed for
    each reaction, which were filtered to the most promising candidates
    based on stability and product yield.

    Critically, among the proposed candidates were the well-known starting materials for each reaction, confirming the ability of the technique to identify experimentally viable starting materials from just the target
    product molecule.

    Although further work is required to enable predicting even larger and
    more complex systems, researchers anticipate that this breakthrough in
    handling multi-step processes will accelerate the discovery of novel
    chemical reactions.

    "This work provides a unique approach, as it is the first time performing reverse predictions of multi-step reactions using quantum chemical
    computations is possible without using any knowledge or data about the reaction," said Professor Satoshi Maeda. "We expect this technique will
    enable the discovery of entirely unimagined chemical transformations,
    in which case there is little knowledge or experimental data to use."

    ========================================================================== Story Source: Materials provided by Hokkaido_University. Note: Content
    may be edited for style and length.


    ========================================================================== Journal Reference:
    1. Yosuke Sumiya, Yu Harabuchi, Yuuya Nagata, Satoshi Maeda. Quantum
    Chemical Calculations to Trace Back Reaction Paths for the
    Prediction of Reactants. JACS Au, 2022; DOI: 10.1021/jacsau.2c00157 ==========================================================================

    Link to news story: https://www.sciencedaily.com/releases/2022/04/220425104850.htm

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