Til hovedinnhold
Norli Bokhandel

Robust Theoretical Models in Medicinal Chemistry - QSAR, Artificial Intelligence, Machine Learning, and Deep Learning

2025, Heftet, Engelsk

2 129,-

Utilgjengelig
  • Ikke tilgjengelig for hent i butikk
Robust Theoretical Models in Medicinal Chemistry: QSAR, Artificial Intelligence, Machine Learning, and Deep Learning serves as a valuable resource chock full of applications extending into multiple knowledge domains. The meticulous construction of a robust model holds significance, not only in drug discovery but also in engineering, chemistry, pharmaceutical, and food-related research, illustrating the broad spectrum of fields where QSAR methodologies can be instrumental. The activities considered in QSAR span chemical measurements and biological assays, making this approach a versatile tool applicable across various scientific domains. Currently, QSAR finds extensive use in diverse disciplines, prominently in drug design and environmental risk assessment. Quantitative Structure-Activity Relationships (QSAR) represent a concerted effort to establish correlations between structural or property descriptors of compounds and their respective activities. These physicochemical descriptors encompass a wide array of parameters, accounting for hydrophobicity, topology, electronic properties, and steric effects, and can be determined empirically or, more recently, through advanced computational methods.

Produktegenskaper

  • Bidragsyter

    Luciana Scotti (Redaktør)
  • Forlag/utgiver

    Elsevier - Health Sciences Division
  • Format

    Heftet
  • Språk

    Engelsk
  • Utgivelsesår

    2025
  • Antall sider

    350
  • EAN

    9780443274206

Kundeanmeldelser

Frakt og levering