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1                                              QSPR estimates verified 4,4',4''-TCPM and 4,4'4,''-TCPMO
2 nt agreement with the experiments using a 3D-QSPR approach.
3 s, artificial neural networks were used in a QSPR study related to the gelling properties measured by
4               Molecular docking analyses and QSPR of pregabalin confirmed its suitability as a new IO
5 t in concert with new molecular descriptors, QSPR classification models were generated to provide imp
6                                The developed QSPR approach showed to be of practical value for distin
7  structures with the purpose of establishing QSPR models.
8 cess to microscopic properties by exploiting QSPR.
9  Additionally, this study provides the first QSPR analysis focused on NAPL-water interfacial adsorpti
10 descriptors can serve as effective tools for QSPR modeling and drug development, offering a bridge be
11  and in tier II, it inherits the fundamental QSPR knowledge from previous steps through a dynamic int
12                                    A general QSPR model including mainly topological descriptors was
13 ading efficiency that were not used by us in QSPR model development were identified in the published
14 , thus enabling the generation of integrated QSPR models, which allow the prediction of chromatograph
15 ining set were predicted from the integrated QSPR models.
16        The predictions from these integrated QSPR models in general showed good agreement with the ex
17 presents the first successful application of QSPR models for the computer-model-driven design of lipo
18 ed structure, we herewith propose the use of QSPR as a support tool for quality control of screening
19                                    Predicted QSPR results were in good agreement with experimental am
20 ructure-activity/property relationship (QSAR/QSPR) modelling.
21 ructure-activity/property relationship (QSAR/QSPR) models, provides exciting opportunities to optimiz
22 uantitative structure property relationship (QSPR) based modeling approaches.
23 uantitative structure-property relationship (QSPR) method.
24 uantitative structure-property relationship (QSPR) model for the prediction of aqueous solubility (at
25 uantitative structure-property relationship (QSPR) model to find the best physicochemical descriptors
26 uantitative structure-property relationship (QSPR) modeling in order to annotate the CN.
27 uantitative structure-property relationship (QSPR) modeling predicts the physical, synthetic, and nat
28 uantitative structure-property relationship (QSPR) modeling to support anti-tuberculosis drug discove
29 uantitative structure-property relationship (QSPR) models implemented in CASI predict three specific
30 uantitative structure-property relationship (QSPR) models of metabolic turnover rate for compounds in
31 uantitative Structure Property Relationship (QSPR) models that correlate drugs' structural, physical
32 uantitative structure-property relationship (QSPR) models that employed a support vector machine regr
33 uantitative Structure-Property Relationship (QSPR) models, using two independent approaches RapidMine
34 uantitative structure-property relationship (QSPR) studies rely on molecular descriptors that link ch
35 uantitative structure-property relationship (QSPR) to support design.
36 uantitative structure property relationship (QSPR) was developed to describe the effects of the penet
37 uantitative structure-property relationship (QSPR), including 216 contaminants of emerging concern (C
38 uantitative structure-property relationship (QSPR)-based model was also built to predict the APCI ion
39 antitative structure-property relationships (QSPR) using MDs to predict solute-dependent parameters i
40 antitative structure-property relationships (QSPR), which led to a further correction of the matrix e
41 rectly classified by our previously reported QSPR models developed with Iterative Stochastic Eliminat
42 dducts was also important to transfer the RF QSPR model reliably.
43  are sequence-dependent; therefore, a second QSPR model for the prediction of the transferability fac
44                             The training set QSPR models were characterized by high internal accuracy
45                   In addition, nonlinear SVM QSPR prediction models were generated and employed as a
46                                          The QSPR results narrow the list to 966 elemental compositio
47 o three predicted parameter matches from the QSPR models to generate a combined CASI Score representi