QSRR Approach: Application to Retention Mechanism in Liquid Chromatography
Authors
Krmar, Jovana
Svrkota, Bojana

Đajić, Nevena

Stojanović, Jevrem

Protić, Ana

Otašević, Biljana

Book part (Published version)
Metadata
Show full item recordAbstract
One-factor-at-a-time experimentation was used for a long time as gold-standard
optimization for liquid chromatographic (LC) method development. This approach
has two downsides as it requires a needlessly great number of experimental runs and it
is unable to identify possible factor interactions. At the end of the last century,
however, this problem could be solved with the introduction of new chemometric
strategies. This chapter aims at presenting quantitative structure–retention relationship
(QSRR) models with structuring possibilities, from the point of feature selection
through various machine learning algorithms that can be used in model building, for
internal and external validation of the proposed models. The presented strategies of
QSRR model can be a good starting point for analysts to use and adopt them as a good
practice for their applications. QSRR models can be used in predicting the retention
behavior of compounds, to point out the molecular features governing t...he retention,
and consequently to gain insight into the retention mechanisms. In terms of these
applications, special attention was drawn to modified chromatographic systems,
characterized by mobile or stationary phase modifications. Although chromatographic
methods are applied in a wide variety of fields, the greatest attention has been devoted
to the analysis of pharmaceuticals.
Keywords:
liquid chromatography / machine learning algorithms / molecular descriptors / QSRR model building and validation / analyte's retention predictionsSource:
Novel Aspects of Gas Chromatography and Chemometrics, 2023, 113-141Publisher:
- IntechOpen
Funding / projects:
Collections
Institution/Community
PharmacyTY - CHAP AU - Krmar, Jovana AU - Svrkota, Bojana AU - Đajić, Nevena AU - Stojanović, Jevrem AU - Protić, Ana AU - Otašević, Biljana PY - 2023 UR - https://farfar.pharmacy.bg.ac.rs/handle/123456789/4907 AB - One-factor-at-a-time experimentation was used for a long time as gold-standard optimization for liquid chromatographic (LC) method development. This approach has two downsides as it requires a needlessly great number of experimental runs and it is unable to identify possible factor interactions. At the end of the last century, however, this problem could be solved with the introduction of new chemometric strategies. This chapter aims at presenting quantitative structure–retention relationship (QSRR) models with structuring possibilities, from the point of feature selection through various machine learning algorithms that can be used in model building, for internal and external validation of the proposed models. The presented strategies of QSRR model can be a good starting point for analysts to use and adopt them as a good practice for their applications. QSRR models can be used in predicting the retention behavior of compounds, to point out the molecular features governing the retention, and consequently to gain insight into the retention mechanisms. In terms of these applications, special attention was drawn to modified chromatographic systems, characterized by mobile or stationary phase modifications. Although chromatographic methods are applied in a wide variety of fields, the greatest attention has been devoted to the analysis of pharmaceuticals. PB - IntechOpen T2 - Novel Aspects of Gas Chromatography and Chemometrics T1 - QSRR Approach: Application to Retention Mechanism in Liquid Chromatography SP - 113 EP - 141 DO - 10.5772/intechopen.106245 ER -
@inbook{ author = "Krmar, Jovana and Svrkota, Bojana and Đajić, Nevena and Stojanović, Jevrem and Protić, Ana and Otašević, Biljana", year = "2023", abstract = "One-factor-at-a-time experimentation was used for a long time as gold-standard optimization for liquid chromatographic (LC) method development. This approach has two downsides as it requires a needlessly great number of experimental runs and it is unable to identify possible factor interactions. At the end of the last century, however, this problem could be solved with the introduction of new chemometric strategies. This chapter aims at presenting quantitative structure–retention relationship (QSRR) models with structuring possibilities, from the point of feature selection through various machine learning algorithms that can be used in model building, for internal and external validation of the proposed models. The presented strategies of QSRR model can be a good starting point for analysts to use and adopt them as a good practice for their applications. QSRR models can be used in predicting the retention behavior of compounds, to point out the molecular features governing the retention, and consequently to gain insight into the retention mechanisms. In terms of these applications, special attention was drawn to modified chromatographic systems, characterized by mobile or stationary phase modifications. Although chromatographic methods are applied in a wide variety of fields, the greatest attention has been devoted to the analysis of pharmaceuticals.", publisher = "IntechOpen", journal = "Novel Aspects of Gas Chromatography and Chemometrics", booktitle = "QSRR Approach: Application to Retention Mechanism in Liquid Chromatography", pages = "113-141", doi = "10.5772/intechopen.106245" }
Krmar, J., Svrkota, B., Đajić, N., Stojanović, J., Protić, A.,& Otašević, B.. (2023). QSRR Approach: Application to Retention Mechanism in Liquid Chromatography. in Novel Aspects of Gas Chromatography and Chemometrics IntechOpen., 113-141. https://doi.org/10.5772/intechopen.106245
Krmar J, Svrkota B, Đajić N, Stojanović J, Protić A, Otašević B. QSRR Approach: Application to Retention Mechanism in Liquid Chromatography. in Novel Aspects of Gas Chromatography and Chemometrics. 2023;:113-141. doi:10.5772/intechopen.106245 .
Krmar, Jovana, Svrkota, Bojana, Đajić, Nevena, Stojanović, Jevrem, Protić, Ana, Otašević, Biljana, "QSRR Approach: Application to Retention Mechanism in Liquid Chromatography" in Novel Aspects of Gas Chromatography and Chemometrics (2023):113-141, https://doi.org/10.5772/intechopen.106245 . .