12 results on '"Maciej Wójcikowski"'
Search Results
2. Open Drug Discovery Toolkit (ODDT): a new open-source player in the drug discovery field.
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Maciej Wójcikowski, Piotr Zielenkiewicz, and Pawel Siedlecki
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- 2015
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3. Tools4miRs - one place to gather all the tools for miRNA analysis.
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Anna Lukasik, Maciej Wójcikowski, and Piotr Zielenkiewicz
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- 2016
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4. DiSCuS: An Open Platform for (Not Only) Virtual Screening Results Management.
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Maciej Wójcikowski, Piotr Zielenkiewicz, and Pawel Siedlecki
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- 2014
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5. Building Machine-Learning Scoring Functions for Structure-Based Prediction of Intermolecular Binding Affinity
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Maciej, Wójcikowski, Pawel, Siedlecki, and Pedro J, Ballester
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Machine Learning ,Models, Molecular ,Databases, Genetic ,Proteins ,Quantitative Structure-Activity Relationship ,Web Browser ,Ligands ,Software ,Protein Binding ,Workflow - Abstract
Molecular docking enables large-scale prediction of whether and how small molecules bind to a macromolecular target. Machine-learning scoring functions are particularly well suited to predict the strength of this interaction. Here we describe how to build RF-Score, a scoring function utilizing the machine-learning technique known as Random Forest (RF). We also point out how to use different data, features, and regression models using either R or Python programming languages.
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- 2019
6. Building Machine-Learning Scoring Functions for Structure-Based Prediction of Intermolecular Binding Affinity
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Maciej Wójcikowski, Pawel Siedlecki, Pedro J. Ballester, Institute of Biochemistry and Biophysics PAS, Ul. Pawinskiego 5A, 02-106 Warsaw, Institute of Biochemistry and Biophysics [Warsaw] (IBB), Centre de Recherche en Cancérologie de Marseille (CRCM), Aix Marseille Université (AMU)-Institut Paoli-Calmettes, Fédération nationale des Centres de lutte contre le Cancer (FNCLCC)-Fédération nationale des Centres de lutte contre le Cancer (FNCLCC)-Institut National de la Santé et de la Recherche Médicale (INSERM)-Centre National de la Recherche Scientifique (CNRS), Institute of Biochemistry and Biophysics, Centre National de la Recherche Scientifique (CNRS)-Institut National de la Santé et de la Recherche Médicale (INSERM)-Institut Paoli-Calmettes, and Fédération nationale des Centres de lutte contre le Cancer (FNCLCC)-Fédération nationale des Centres de lutte contre le Cancer (FNCLCC)-Aix Marseille Université (AMU)
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0303 health sciences ,010304 chemical physics ,Computer science ,business.industry ,[SDV]Life Sciences [q-bio] ,Intermolecular force ,[SDV.BC]Life Sciences [q-bio]/Cellular Biology ,Ligand (biochemistry) ,Machine learning ,computer.software_genre ,01 natural sciences ,Small molecule ,Docking ,03 medical and health sciences ,Binding affinity ,Docking (molecular) ,0103 physical sciences ,Structure based ,Artificial intelligence ,Scoring function ,business ,computer ,030304 developmental biology ,Macromolecule - Abstract
International audience; Molecular docking enables large-scale prediction of whether and how small molecules bind to a macromolecular target. Machine-learning scoring functions are particularly well suited to predict the strength of this interaction. Here we describe how to build RF-Score, a scoring function utilizing the machine-learning technique known as Random Forest (RF). We also point out how to use different data, features, and regression models using either R or Python programming languages.
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- 2019
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7. Development of a protein-ligand extended connectivity (PLEC) fingerprint and its application for binding affinity predictions
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Pawel Siedlecki, Michał Kukiełka, Marta M. Stepniewska-Dziubinska, and Maciej Wójcikowski
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Statistics and Probability ,Computer science ,Protein Data Bank (RCSB PDB) ,Computational biology ,ENCODE ,Ligands ,Biochemistry ,Machine Learning ,03 medical and health sciences ,Molecule ,Databases, Protein ,Molecular Biology ,030304 developmental biology ,0303 health sciences ,Drug discovery ,Ligand ,030302 biochemistry & molecular biology ,Fingerprint (computing) ,A protein ,Proteins ,Construct (python library) ,Ligand (biochemistry) ,Small molecule ,Original Papers ,Structural Bioinformatics ,Computer Science Applications ,Computational Mathematics ,Computational Theory and Mathematics ,Cheminformatics ,Protein Binding - Abstract
Motivation Fingerprints (FPs) are the most common small molecule representation in cheminformatics. There are a wide variety of FPs, and the Extended Connectivity Fingerprint (ECFP) is one of the best-suited for general applications. Despite the overall FP abundance, only a few FPs represent the 3D structure of the molecule, and hardly any encode protein–ligand interactions. Results Here, we present a Protein–Ligand Extended Connectivity (PLEC) FP that implicitly encodes protein–ligand interactions by pairing the ECFP environments from the ligand and the protein. PLEC FPs were used to construct different machine learning models tailored for predicting protein–ligand affinities (pKi∕d). Even the simplest linear model built on the PLEC FP achieved Rp = 0.817 on the Protein Databank (PDB) bind v2016 ‘core set’, demonstrating its descriptive power. Availability and implementation The PLEC FP has been implemented in the Open Drug Discovery Toolkit (https://github.com/oddt/oddt). Supplementary information Supplementary data are available at Bioinformatics online.
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- 2018
8. Tools4miRs – one place to gather all the tools for miRNA analysis
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Piotr Zielenkiewicz, Maciej Wójcikowski, and Anna Lukasik
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0301 basic medicine ,Statistics and Probability ,Models, Molecular ,Computer science ,Databases and Ontologies ,Sequence alignment ,Biochemistry ,Filter (software) ,World Wide Web ,03 medical and health sciences ,0302 clinical medicine ,Software ,microRNA ,Gene expression ,Molecular Biology ,computer.programming_language ,business.industry ,Computational Biology ,Research needs ,Python (programming language) ,Applications Notes ,Computer Science Applications ,Computational Mathematics ,MicroRNAs ,030104 developmental biology ,Computational Theory and Mathematics ,Categorization ,business ,computer ,Sequence Alignment ,030217 neurology & neurosurgery - Abstract
Summary: MiRNAs are short, non-coding molecules that negatively regulate gene expression and thereby play several important roles in living organisms. Dozens of computational methods for miRNA-related research have been developed, which greatly differ in various aspects. The substantial availability of difficult-to-compare approaches makes it challenging for the user to select a proper tool and prompts the need for a solution that will collect and categorize all the methods. Here, we present tools4miRs, the first platform that gathers currently more than 160 methods for broadly defined miRNA analysis. The collected tools are classified into several general and more detailed categories in which the users can additionally filter the available methods according to their specific research needs, capabilities and preferences. Tools4miRs is also a web-based target prediction meta-server that incorporates user-designated target prediction methods into the analysis of user-provided data. Availability and Implementation : Tools4miRs is implemented in Python using Django and is freely available at tools4mirs.org. Contact : piotr@ibb.waw.pl Supplementary information: Supplementary data are available at Bioinformatics online.
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- 2016
9. Performance of machine-learning scoring functions in structure-based virtual screening
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Pedro J. Ballester, Maciej Wójcikowski, Pawel Siedlecki, Institute of Biochemistry and Biophysics PAS, Ul. Pawinskiego 5A, 02-106 Warsaw, Institute of Biochemistry and Biophysics [Warsaw] (IBB), Centre de Recherche en Cancérologie de Marseille (CRCM), Aix Marseille Université (AMU)-Institut Paoli-Calmettes, Fédération nationale des Centres de lutte contre le Cancer (FNCLCC)-Fédération nationale des Centres de lutte contre le Cancer (FNCLCC)-Institut National de la Santé et de la Recherche Médicale (INSERM)-Centre National de la Recherche Scientifique (CNRS), MITOYAN, Louciné, Institute of Biochemistry and Biophysics, Centre National de la Recherche Scientifique (CNRS)-Institut National de la Santé et de la Recherche Médicale (INSERM)-Institut Paoli-Calmettes, and Fédération nationale des Centres de lutte contre le Cancer (FNCLCC)-Fédération nationale des Centres de lutte contre le Cancer (FNCLCC)-Aix Marseille Université (AMU)
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0301 basic medicine ,Computer science ,[SDV]Life Sciences [q-bio] ,Overfitting ,Machine learning ,computer.software_genre ,01 natural sciences ,Article ,Set (abstract data type) ,03 medical and health sciences ,Virtual screening ,[SDV.BIBS] Life Sciences [q-bio]/Quantitative Methods [q-bio.QM] ,Multidisciplinary ,business.industry ,Ligand (biochemistry) ,[SDV.BIBS]Life Sciences [q-bio]/Quantitative Methods [q-bio.QM] ,0104 chemical sciences ,[SDV] Life Sciences [q-bio] ,010404 medicinal & biomolecular chemistry ,030104 developmental biology ,Docking (molecular) ,Test set ,Benchmark (computing) ,Artificial intelligence ,business ,computer - Abstract
Classical scoring functions have reached a plateau in their performance in virtual screening and binding affinity prediction. Recently, machine-learning scoring functions trained on protein-ligand complexes have shown great promise in small tailored studies. They have also raised controversy, specifically concerning model overfitting and applicability to novel targets. Here we provide a new ready-to-use scoring function (RF-Score-VS) trained on 15 426 active and 893 897 inactive molecules docked to a set of 102 targets. We use the full DUD-E data sets along with three docking tools, five classical and three machine-learning scoring functions for model building and performance assessment. Our results show RF-Score-VS can substantially improve virtual screening performance: RF-Score-VS top 1% provides 55.6% hit rate, whereas that of Vina only 16.2% (for smaller percent the difference is even more encouraging: RF-Score-VS top 0.1% achieves 88.6% hit rate for 27.5% using Vina). In addition, RF-Score-VS provides much better prediction of measured binding affinity than Vina (Pearson correlation of 0.56 and −0.18, respectively). Lastly, we test RF-Score-VS on an independent test set from the DEKOIS benchmark and observed comparable results. We provide full data sets to facilitate further research in this area (http://github.com/oddt/rfscorevs) as well as ready-to-use RF-Score-VS (http://github.com/oddt/rfscorevs_binary).
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- 2017
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10. DiSCuS: An Open Platform for (Not Only) Virtual Screening Results Management
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Piotr Zielenkiewicz, Maciej Wójcikowski, and Pawel Siedlecki
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Models, Molecular ,Virtual screening ,Binding Sites ,Open platform ,Source code ,Information retrieval ,Computer science ,General Chemical Engineering ,media_common.quotation_subject ,Drug Evaluation, Preclinical ,Computational Biology ,General Chemistry ,Library and Information Sciences ,Ligands ,High-Throughput Screening Assays ,Computer Science Applications ,User-Computer Interface ,Documentation ,Drug Discovery ,Computer Simulation ,Software ,Simulation ,Selection (genetic algorithm) ,media_common - Abstract
DiSCuS, a "Database System for Compound Selection", has been developed. The primary goal of DiSCuS is to aid researchers in the steps subsequent to generating high-throughput virtual screening (HTVS) results, such as selection of compounds for further study, purchase, or synthesis. To do so, DiSCuS provides (1) a storage facility for ligand-receptor complexes (generated with external programs), (2) a number of tools for validating these complexes, such as scoring functions, potential energy contributions, and med-chem features with ligand similarity estimates, and (3) powerful searching and filtering options with logical operators. DiSCuS supports multiple receptor targets for a single ligand, so it can be used either to evaluate different variants of an active site or for selectivity studies. DiSCuS documentation, installation instructions, and source code can be found at http://discus.ibb.waw.pl .
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- 2014
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11. The Experimental Results of the Functional Tests of the Mole Penetrator KRET in Different Regolith Analogues
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Marek Banaszkiewicz, Maciej Wójcikowski, Stanisław Bednarz, Monika Ciesielska, T. Kuciński, Andrzej Gonet, Roman Wawrzaszek, Łukasz Wisniewski, Mirosław Rzyczniak, Tomasz Rybus, Karol Seweryn, and Jerzy Grygorczuk
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Planetary body ,Robotic systems ,business.industry ,Mole ,Parabolic flight ,Compaction ,Context (language use) ,Aerospace engineering ,business ,Regolith ,Geology ,Astrobiology - Abstract
Depending on the specific region, the unmanned exploration of the planetary bodies can be divided into three groups: operations above the surface, operations on the surface and operations under the surface. In this chapter we will focus on the operations under the surface, connected with them requirements, available technology and possible output from such research. In this context we will present mole KRET device as a one of the possible solutions for low power consuming device which can be treated as a sub-surface end-effector of a more complicated robotic system. The experimental results of the functional tests of the mole in a 5 m test-bed system will be provided for different regolith analogue. The detailed investigation of lunar analogue will show how the progress of the mole depends on the compaction ratio of the material.
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- 2013
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12. Open Drug Discovery Toolkit (ODDT): a new open-source player in the drug discovery field
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Pawel Siedlecki, Piotr Zielenkiewicz, and Maciej Wójcikowski
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Virtual screening ,Source code ,Statistical methods ,Computer science ,media_common.quotation_subject ,Library and Information Sciences ,Software ,Documentation ,Receptor-ligand interactions ,Machine learning ,Use case ,Physical and Theoretical Chemistry ,media_common ,Toolkit ,Drug discovery ,business.industry ,Software development ,Data science ,Computer Graphics and Computer-Aided Design ,Computer Science Applications ,Cheminformatics ,Programming ,Scoring function ,Software engineering ,business - Abstract
Background There has been huge progress in the open cheminformatics field in both methods and software development. Unfortunately, there has been little effort to unite those methods and software into one package. We here describe the Open Drug Discovery Toolkit (ODDT), which aims to fulfill the need for comprehensive and open source drug discovery software. Results The Open Drug Discovery Toolkit was developed as a free and open source tool for both computer aided drug discovery (CADD) developers and researchers. ODDT reimplements many state-of-the-art methods, such as machine learning scoring functions (RF-Score and NNScore) and wraps other external software to ease the process of developing CADD pipelines. ODDT is an out-of-the-box solution designed to be easily customizable and extensible. Therefore, users are strongly encouraged to extend it and develop new methods. We here present three use cases for ODDT in common tasks in computer-aided drug discovery. Conclusion Open Drug Discovery Toolkit is released on a permissive 3-clause BSD license for both academic and industrial use. ODDT’s source code, additional examples and documentation are available on GitHub (https://github.com/oddt/oddt). Electronic supplementary material The online version of this article (doi:10.1186/s13321-015-0078-2) contains supplementary material, which is available to authorized users.
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