LEADER 05506nam 22006735 450 001 9910731465303321 005 20230610082249.0 010 $a3-031-28401-1 024 7 $a10.1007/978-3-031-28401-4 035 $a(MiAaPQ)EBC30591732 035 $a(Au-PeEL)EBL30591732 035 $a(DE-He213)978-3-031-28401-4 035 $a(PPN)272261629 035 $a(CKB)26895859900041 035 $a(EXLCZ)9926895859900041 100 $a20230610d2023 u| 0 101 0 $aeng 135 $aurcnu|||||||| 181 $ctxt$2rdacontent 182 $cc$2rdamedia 183 $acr$2rdacarrier 200 10$aQSPR/QSAR Analysis Using SMILES and Quasi-SMILES /$fedited by Alla P. Toropova, Andrey A. Toropov 205 $a1st ed. 2023. 210 1$aCham :$cSpringer International Publishing :$cImprint: Springer,$d2023. 215 $a1 online resource (470 pages) 225 1 $aChallenges and Advances in Computational Chemistry and Physics,$x2542-4483 ;$v33 311 08$aPrint version: Toropova, Alla P. QSPR/QSAR Analysis Using SMILES and Quasi-SMILES Cham : Springer International Publishing AG,c2023 9783031284007 320 $aIncludes bibliographical references and index. 327 $aPart I - Theoretical conceptions -- Fundamentals of mathematical modeling of chemicals through QSPR/QSAR -- Molecular descriptors in QSPR/QSAR modeling -- Application of SMILES to cheminformatics and generation of optimum SMILES descriptors using CORAL software -- Part II - SMILES based descriptors -- All SMILES Variational Autoencoder for Molecular Property Prediction and Optimization -- SMILES based bioactivity descriptors to model the anti-Dengue virus activity: A case study -- Part III - SMILES for QSPR/QSAR with optimal descriptors -- QSPR models for prediction of redox potentials using optimal descriptors -- Building up QSPR for polymers endpoints by using SMILES-based optimal descriptors -- Part IV - Quasi-SMILES for QSPR/QSAR -- Quasi-SMILES based QSPR/QSAR modeling -- Quasi-SMILES Based Mathematical Model for the Prediction of Percolation Threshold for Conductive Polymer Composites -- On the possibility to build up the QSAR model of different kinds of inhibitory activity for a large list of Human Intestinal Transporter using quasi-SMILES -- Quasi-SMILES as a tool for peptide QSAR modelling -- Part V - SMILES and quasi-SMILES for QSPR/QSAR -- SMILES and quasi-SMILES descriptors in QSAR/QSPR modeling of diverse materials properties in safety and environment application -- SMILES and quasi-SMILES in QSAR Modeling for Prediction of Physicochemical and Biochemical Properties -- Part VI - Possible ways of nano-QSPR/nano-QSAR evolution -- The CORAL software as a tool to develop models for nanomaterials? endpoints -- Employing Quasi-SMILES notation in development of nano-QSPR models for nanofluids -- Part VII - Possible ways of QSPR/QSAR evolution in the future -- On complementary approaches of assessing the predictive potential of QSPR/QSAR-models -- CORAL: Predictions of Quality of Rice based on Retention index using a combination of Correlation intensity index and Consensus modelling. 330 $aThis contributed volume overviews recently presented approaches for carrying out QSPR/QSAR analysis by using a simplifying molecular input-line entry system (SMILES) to represent the molecular structure. In contrast to traditional SMILES, quasi-SMILES is a sequence of special symbols-codes that reflect molecular features and codes of experimental conditions. SMILES and quasi-SMILES serve as a basis to develop QSPR/QSAR as well Nano-QSPR/QSAR via the Monte Carlo calculation that provides the so-called optimal descriptors for QSPR/QSAR models. The book presents a reliable technology for developing Nano-QSPR/QSAR while it also includes the description of the algorithms of the Monte Carlo optimization. It discusses the theory and practice of the technique of variational authodecoders (VAEs) based on SMILES and analyses in detail the index of ideality of correlation (IIC) and the correlation intensity index (CII) which are new criteria for the predictive potential of the model. The mathematical apparatus used is simple so that students of relevant specializations can easily follow. This volume is a valuable contribution to the field and will be of great interest to developers of models of physicochemical properties and biological activity, chemical technologists, and toxicologists involved in the area of drug design. 410 0$aChallenges and Advances in Computational Chemistry and Physics,$x2542-4483 ;$v33 606 $aChemistry?Data processing 606 $aQuantum physics 606 $aComputer simulation 606 $aChemistry, Physical and theoretical 606 $aModel theory 606 $aComputational Chemistry 606 $aQuantum Simulations 606 $aTheoretical Chemistry 606 $aModel Theory 615 0$aChemistry?Data processing. 615 0$aQuantum physics. 615 0$aComputer simulation. 615 0$aChemistry, Physical and theoretical. 615 0$aModel theory. 615 14$aComputational Chemistry. 615 24$aQuantum Simulations. 615 24$aTheoretical Chemistry. 615 24$aModel Theory. 676 $a542.85 702 $aToropova$b Alla P. 702 $aToropov$b Andrey A. 801 0$bMiAaPQ 801 1$bMiAaPQ 801 2$bMiAaPQ 906 $aBOOK 912 $a9910731465303321 996 $aQSPR$93395215 997 $aUNINA