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Dive into the research topics where Jaroslav Bendl is active.

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Featured researches published by Jaroslav Bendl.


PLOS Computational Biology | 2014

PredictSNP: Robust and Accurate Consensus Classifier for Prediction of Disease-Related Mutations

Jaroslav Bendl; Jan Štourač; Ondrej Salanda; Antonín Pavelka; Eric D. Wieben; Jaroslav Zendulka; Jan Brezovsky; Jiri Damborsky

Single nucleotide variants represent a prevalent form of genetic variation. Mutations in the coding regions are frequently associated with the development of various genetic diseases. Computational tools for the prediction of the effects of mutations on protein function are very important for analysis of single nucleotide variants and their prioritization for experimental characterization. Many computational tools are already widely employed for this purpose. Unfortunately, their comparison and further improvement is hindered by large overlaps between the training datasets and benchmark datasets, which lead to biased and overly optimistic reported performances. In this study, we have constructed three independent datasets by removing all duplicities, inconsistencies and mutations previously used in the training of evaluated tools. The benchmark dataset containing over 43,000 mutations was employed for the unbiased evaluation of eight established prediction tools: MAPP, nsSNPAnalyzer, PANTHER, PhD-SNP, PolyPhen-1, PolyPhen-2, SIFT and SNAP. The six best performing tools were combined into a consensus classifier PredictSNP, resulting into significantly improved prediction performance, and at the same time returned results for all mutations, confirming that consensus prediction represents an accurate and robust alternative to the predictions delivered by individual tools. A user-friendly web interface enables easy access to all eight prediction tools, the consensus classifier PredictSNP and annotations from the Protein Mutant Database and the UniProt database. The web server and the datasets are freely available to the academic community at http://loschmidt.chemi.muni.cz/predictsnp.


PLOS Computational Biology | 2015

FireProt: Energy- and Evolution-Based Computational Design of Thermostable Multiple-Point Mutants.

David Bednar; Koen Beerens; Eva Sebestova; Jaroslav Bendl; Sagar D. Khare; Radka Chaloupková; Zbynek Prokop; Jan Brezovsky; David Baker; Jiri Damborsky

There is great interest in increasing proteins’ stability to enhance their utility as biocatalysts, therapeutics, diagnostics and nanomaterials. Directed evolution is a powerful, but experimentally strenuous approach. Computational methods offer attractive alternatives. However, due to the limited reliability of predictions and potentially antagonistic effects of substitutions, only single-point mutations are usually predicted in silico, experimentally verified and then recombined in multiple-point mutants. Thus, substantial screening is still required. Here we present FireProt, a robust computational strategy for predicting highly stable multiple-point mutants that combines energy- and evolution-based approaches with smart filtering to identify additive stabilizing mutations. FireProt’s reliability and applicability was demonstrated by validating its predictions against 656 mutations from the ProTherm database. We demonstrate that thermostability of the model enzymes haloalkane dehalogenase DhaA and γ-hexachlorocyclohexane dehydrochlorinase LinA can be substantially increased (ΔT m = 24°C and 21°C) by constructing and characterizing only a handful of multiple-point mutants. FireProt can be applied to any protein for which a tertiary structure and homologous sequences are available, and will facilitate the rapid development of robust proteins for biomedical and biotechnological applications.


Nucleic Acids Research | 2016

HotSpot Wizard 2.0: automated design of site-specific mutations and smart libraries in protein engineering

Jaroslav Bendl; Jan Štourač; Eva Sebestova; Ondrej Vavra; Miloš Musil; Jan Brezovsky; Jiri Damborsky

HotSpot Wizard 2.0 is a web server for automated identification of hot spots and design of smart libraries for engineering proteins’ stability, catalytic activity, substrate specificity and enantioselectivity. The server integrates sequence, structural and evolutionary information obtained from 3 databases and 20 computational tools. Users are guided through the processes of selecting hot spots using four different protein engineering strategies and optimizing the resulting librarys size by narrowing down a set of substitutions at individual randomized positions. The only required input is a query protein structure. The results of the calculations are mapped onto the proteins structure and visualized with a JSmol applet. HotSpot Wizard lists annotated residues suitable for mutagenesis and can automatically design appropriate codons for each implemented strategy. Overall, HotSpot Wizard provides comprehensive annotations of protein structures and assists protein engineers with the rational design of site-specific mutations and focused libraries. It is freely available at http://loschmidt.chemi.muni.cz/hotspotwizard.


PLOS Computational Biology | 2016

PredictSNP2: A Unified Platform for Accurately Evaluating SNP Effects by Exploiting the Different Characteristics of Variants in Distinct Genomic Regions.

Jaroslav Bendl; Miloš Musil; Jan Štourač; Jaroslav Zendulka; Jiří Damborský; Jan Brezovský

An important message taken from human genome sequencing projects is that the human population exhibits approximately 99.9% genetic similarity. Variations in the remaining parts of the genome determine our identity, trace our history and reveal our heritage. The precise delineation of phenotypically causal variants plays a key role in providing accurate personalized diagnosis, prognosis, and treatment of inherited diseases. Several computational methods for achieving such delineation have been reported recently. However, their ability to pinpoint potentially deleterious variants is limited by the fact that their mechanisms of prediction do not account for the existence of different categories of variants. Consequently, their output is biased towards the variant categories that are most strongly represented in the variant databases. Moreover, most such methods provide numeric scores but not binary predictions of the deleteriousness of variants or confidence scores that would be more easily understood by users. We have constructed three datasets covering different types of disease-related variants, which were divided across five categories: (i) regulatory, (ii) splicing, (iii) missense, (iv) synonymous, and (v) nonsense variants. These datasets were used to develop category-optimal decision thresholds and to evaluate six tools for variant prioritization: CADD, DANN, FATHMM, FitCons, FunSeq2 and GWAVA. This evaluation revealed some important advantages of the category-based approach. The results obtained with the five best-performing tools were then combined into a consensus score. Additional comparative analyses showed that in the case of missense variations, protein-based predictors perform better than DNA sequence-based predictors. A user-friendly web interface was developed that provides easy access to the five tools’ predictions, and their consensus scores, in a user-understandable format tailored to the specific features of different categories of variations. To enable comprehensive evaluation of variants, the predictions are complemented with annotations from eight databases. The web server is freely available to the community at http://loschmidt.chemi.muni.cz/predictsnp2.


ACS Synthetic Biology | 2014

Computer-Assisted Engineering of the Synthetic Pathway for Biodegradation of a Toxic Persistent Pollutant

Nagendra Prasad Kurumbang; Pavel Dvorak; Jaroslav Bendl; Jan Brezovsky; Zbynek Prokop; Jiri Damborsky

Anthropogenic halogenated compounds were unknown to nature until the industrial revolution, and microorganisms have not had sufficient time to evolve enzymes for their degradation. The lack of efficient enzymes and natural pathways can be addressed through a combination of protein and metabolic engineering. We have assembled a synthetic route for conversion of the highly toxic and recalcitrant 1,2,3-trichloropropane to glycerol in Escherichia coli, and used it for a systematic study of pathway bottlenecks. Optimal ratios of enzymes for the maximal production of glycerol, and minimal toxicity of metabolites were predicted using a mathematical model. The strains containing the expected optimal ratios of enzymes were constructed and characterized for their viability and degradation efficiency. Excellent agreement between predicted and experimental data was observed. The validated model was used to quantitatively describe the kinetic limitations of currently available enzyme variants and predict improvements required for further pathway optimization. This highlights the potential of forward engineering of microorganisms for the degradation of toxic anthropogenic compounds.


ChemBioChem | 2014

Maximizing the Efficiency of Multienzyme Process by Stoichiometry Optimization

Pavel Dvorak; Nagendra Prasad Kurumbang; Jaroslav Bendl; Jan Brezovsky; Zbynek Prokop; Jiri Damborsky

Multienzyme processes represent an important area of biocatalysis. Their efficiency can be enhanced by optimization of the stoichiometry of the biocatalysts. Here we present a workflow for maximizing the efficiency of a three‐enzyme system catalyzing a five‐step chemical conversion. Kinetic models of pathways with wild‐type or engineered enzymes were built, and the enzyme stoichiometry of each pathway was optimized. Mathematical modeling and one‐pot multienzyme experiments provided detailed insights into pathway dynamics, enabled the selection of a suitable engineered enzyme, and afforded high efficiency while minimizing biocatalyst loadings. Optimizing the stoichiometry in a pathway with an engineered enzyme reduced the total biocatalyst load by an impressive 56 %. Our new workflow represents a broadly applicable strategy for optimizing multienzyme processes.


Nucleic Acids Research | 2017

FireProt: web server for automated design of thermostable proteins

Miloš Musil; Jan Štourač; Jaroslav Bendl; Jan Brezovský; Zbyněk Prokop; Jaroslav Zendulka; Tomáš Martínek; David Bednář; Jiří Damborský

Abstract There is a continuous interest in increasing proteins stability to enhance their usability in numerous biomedical and biotechnological applications. A number of in silico tools for the prediction of the effect of mutations on protein stability have been developed recently. However, only single-point mutations with a small effect on protein stability are typically predicted with the existing tools and have to be followed by laborious protein expression, purification, and characterization. Here, we present FireProt, a web server for the automated design of multiple-point thermostable mutant proteins that combines structural and evolutionary information in its calculation core. FireProt utilizes sixteen tools and three protein engineering strategies for making reliable protein designs. The server is complemented with interactive, easy-to-use interface that allows users to directly analyze and optionally modify designed thermostable mutants. FireProt is freely available at http://loschmidt.chemi.muni.cz/fireprot.


Methods of Molecular Biology | 2014

Computational Tools for Designing Smart Libraries

Eva Sebestova; Jaroslav Bendl; Jan Brezovsky; Jiri Damborsky


Protein Engineering Design & Selection | 2017

NewProt – a protein engineering portal

Andreas Schwarte; Maika Genz; Lilly Skalden; Alberto Nobili; Clare Vickers; Okke Melse; Remko Kuipers; Henk-Jan Joosten; Jan Štourač; Jaroslav Bendl; Jon Black; Peter Haase; Coos Baakman; Jiri Damborsky; Uwe T. Bornscheuer; Gert Vriend; Hanka Venselaar


Archive | 2017

FireProt 1.0

Miloš Musil; Jan Štourač; Jaroslav Bendl; Jan Brezovský; Zbyněk Prokop; Jaroslav Zendulka; Tomáš Martínek; David Bednář; Jiří Damborský

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Jaroslav Zendulka

Brno University of Technology

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