2020
DOI: 10.1002/prot.26019
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Machine learning‐based prediction of enzyme substrate scope: Application to bacterial nitrilases

Abstract: Predicting the range of substrates accepted by an enzyme from its amino acid sequence is challenging. Although sequence‐ and structure‐based annotation approaches are often accurate for predicting broad categories of substrate specificity, they generally cannot predict which specific molecules will be accepted as substrates for a given enzyme, particularly within a class of closely related molecules. Combining targeted experimental activity data with structural modeling, ligand docking, and physicochemical pro… Show more

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Cited by 36 publications
(63 citation statements)
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References 82 publications
(133 reference statements)
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“…We compared ESP with two recently published models for predicting the substrate scope of specific enzyme families. Mou et al 3 We added all training data from Ref. 3 to our training set and validated the updated ESP model on the corresponding test data, which had no overlap with our training data.…”
Section: Esp Outperforms Two Recently Published Models For Predicting...mentioning
confidence: 99%
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“…We compared ESP with two recently published models for predicting the substrate scope of specific enzyme families. Mou et al 3 We added all training data from Ref. 3 to our training set and validated the updated ESP model on the corresponding test data, which had no overlap with our training data.…”
Section: Esp Outperforms Two Recently Published Models For Predicting...mentioning
confidence: 99%
“…ESP can be applied successfully across widely different enzymes and a broad range of metabolites. It outperforms recently published models designed for individual, well-studied enzyme families, which use much more detailed input data [3,4].…”
mentioning
confidence: 94%
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“…However, engineering enzymes in the data-assisted synthetic biology landscape could accelerate the hunt of the “super-enzyme” in environmental perspectives. However, as this is a new frontier to the scientific literature body, only a handful of the kindest efforts are available at present (Ajjolli Nagaraja et al, 2020 ; Lawson et al, 2020 ; Mou et al, 2020 ; Robinson et al, 2020 ; Siedhoff et al, 2020 ; Wittmann et al, 2020 ). Herein, we have summarized current state-of-the-art knowledge of the data-assisted enzyme redesigning ( Figure 1 ) to promote new studies on enzyme redesigning from an environmental perspective.…”
Section: Introductionmentioning
confidence: 99%