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Электронный каталог: Anitas, E. M. - Integrating Machine Learning with *a-SAS for Enhanced Structural Analysis in Small-Angle Scatteri...
Anitas, E. M. - Integrating Machine Learning with *a-SAS for Enhanced Structural Analysis in Small-Angle Scatteri...
Статья
Автор: Anitas, E. M.
The European Physical Journal E [Electronic resource]: Integrating Machine Learning with *a-SAS for Enhanced Structural Analysis in Small-Angle Scatteri...
б.г.
ISBN отсутствует
Автор: Anitas, E. M.
The European Physical Journal E [Electronic resource]: Integrating Machine Learning with *a-SAS for Enhanced Structural Analysis in Small-Angle Scatteri...
б.г.
ISBN отсутствует
Статья
Anitas, E.M.
Integrating Machine Learning with *a-SAS for Enhanced Structural Analysis in Small-Angle Scattering: Applications in Biological and Artificial Macromolecular Complexes / E.M.Anitas // The European Physical Journal E [Electronic resource]. – 2024. – Vol. 47, No. 6. – P. 39. – URL: https://doi.org/10.1140/epje/s10189-024-00435-6. – Bibliogr.: 43.
Small-Angle Scattering (SAS), encompassing both X-ray (SAXS) and Neutron (SANS) techniques, is a crucial tool for structural analysis at the nanoscale, particularly in the realm of biological macromolecules. This paper explores the intricacies of SAS, emphasizing its application in studying complex biological systems and the challenges associated with sample preparation and data analysis. We highlight the use of neutron-scattering properties of hydrogen isotopes and isotopic labeling in SANS for probing structures within multi-subunit complexes, employing techniques like contrast variation (CV) for detailed structural analysis. However, traditional SAS analysis methods, such as Guinier and Kratky plots, are limited by their partial use of available data and inability to operate without substantial a priori knowledge of the sample’s chemical composition. To overcome these limitations, we introduce a novel approach integrating *a-SAS, a computational method for simulating SANS with CV, with machine learning (ML). This approach enables the accurate prediction of scattering contrast in multicomponent macromolecular complexes, reducing the need for extensive sample preparation and computational resources. *a-SAS, utilizing Monte Carlo methods, generates comprehensive datasets from which structural invariants can be extracted, enhancing our understanding of the macromolecular form factor in dilute systems. The paper demonstrates the effectiveness of this integrated approach through its application to two case studies: Janus particles, an artificial structure with a known *a-SAS intensity and contrast, and a biological system involving RNA polymerase II in complex with Rtt103. These examples illustrate the method’s capability to provide detailed structural insights, showcasing its potential as a powerful tool for advanced SAS analysis in structural biology.
ОИЯИ = ОИЯИ (JINR)2024
Спец.(статьи,препринты) = С 332.8 - Синхротронное излучение. Лазеры на свободных электронах. Получение и использование рентгеновских лучей
Спец.(статьи,препринты) = С 342 г1 - Замедление и диффузия нейтронов. Дифракция
Спец.(статьи,препринты) = Ц 849 - Искусственный интеллект. Теория и практика
Ключевых слов = 40/024
Anitas, E.M.
Integrating Machine Learning with *a-SAS for Enhanced Structural Analysis in Small-Angle Scattering: Applications in Biological and Artificial Macromolecular Complexes / E.M.Anitas // The European Physical Journal E [Electronic resource]. – 2024. – Vol. 47, No. 6. – P. 39. – URL: https://doi.org/10.1140/epje/s10189-024-00435-6. – Bibliogr.: 43.
Small-Angle Scattering (SAS), encompassing both X-ray (SAXS) and Neutron (SANS) techniques, is a crucial tool for structural analysis at the nanoscale, particularly in the realm of biological macromolecules. This paper explores the intricacies of SAS, emphasizing its application in studying complex biological systems and the challenges associated with sample preparation and data analysis. We highlight the use of neutron-scattering properties of hydrogen isotopes and isotopic labeling in SANS for probing structures within multi-subunit complexes, employing techniques like contrast variation (CV) for detailed structural analysis. However, traditional SAS analysis methods, such as Guinier and Kratky plots, are limited by their partial use of available data and inability to operate without substantial a priori knowledge of the sample’s chemical composition. To overcome these limitations, we introduce a novel approach integrating *a-SAS, a computational method for simulating SANS with CV, with machine learning (ML). This approach enables the accurate prediction of scattering contrast in multicomponent macromolecular complexes, reducing the need for extensive sample preparation and computational resources. *a-SAS, utilizing Monte Carlo methods, generates comprehensive datasets from which structural invariants can be extracted, enhancing our understanding of the macromolecular form factor in dilute systems. The paper demonstrates the effectiveness of this integrated approach through its application to two case studies: Janus particles, an artificial structure with a known *a-SAS intensity and contrast, and a biological system involving RNA polymerase II in complex with Rtt103. These examples illustrate the method’s capability to provide detailed structural insights, showcasing its potential as a powerful tool for advanced SAS analysis in structural biology.
ОИЯИ = ОИЯИ (JINR)2024
Спец.(статьи,препринты) = С 332.8 - Синхротронное излучение. Лазеры на свободных электронах. Получение и использование рентгеновских лучей
Спец.(статьи,препринты) = С 342 г1 - Замедление и диффузия нейтронов. Дифракция
Спец.(статьи,препринты) = Ц 849 - Искусственный интеллект. Теория и практика
Ключевых слов = 40/024