TY - JOUR
T1 - Predictive Modelling in pharmacokinetics
T2 - from in-silico simulations to personalized medicine
AU - Paliwal, Ajita
AU - Jain, Smita
AU - Kumar, Sachin
AU - Wal, Pranay
AU - Khandai, Madhusmruti
AU - Khandige, Prasanna Shama
AU - Sadananda, Vandana
AU - Anwer, Md Khalid
AU - Gulati, Monica
AU - Behl, Tapan
AU - Srivastava, Shriyansh
N1 - Publisher Copyright:
© 2024 Informa UK Limited, trading as Taylor & Francis Group.
PY - 2024
Y1 - 2024
N2 - Introduction: Pharmacokinetic parameters assessment is a critical aspect of drug discovery and development, yet challenges persist due to limited training data. Despite advancements in machine learning and in-silico predictions, scarcity of data hampers accurate prediction of drug candidates’ pharmacokinetic properties. Areas Covered: The study highlights current developments in human pharmacokinetic prediction, talks about attempts to apply synthetic approaches for molecular design, and searches several databases, including Scopus, PubMed, Web of Science, and Google Scholar. The article stresses importance of rigorous analysis of machine learning model performance in assessing progress and explores molecular modeling (MM) techniques, descriptors, and mathematical approaches. Transitioning to clinical drug development, article highlights AI (Artificial Intelligence) based computer models optimizing trial design, patient selection, dosing strategies, and biomarker identification. In-silico models, including molecular interactomes and virtual patients, predict drug performance across diverse profiles, underlining the need to align model results with clinical studies for reliability. Specialized training for human specialists in navigating predictive models is deemed critical. Pharmacogenomics, integral to personalized medicine, utilizes predictive modeling to anticipate patient responses, contributing to more efficient healthcare system. Challenges in realizing potential of predictive modeling, including ethical considerations and data privacy concerns, are acknowledged. Expert opinion: AI models are crucial in drug development, optimizing trials, patient selection, dosing, and biomarker identification and hold promise for streamlining clinical investigations.
AB - Introduction: Pharmacokinetic parameters assessment is a critical aspect of drug discovery and development, yet challenges persist due to limited training data. Despite advancements in machine learning and in-silico predictions, scarcity of data hampers accurate prediction of drug candidates’ pharmacokinetic properties. Areas Covered: The study highlights current developments in human pharmacokinetic prediction, talks about attempts to apply synthetic approaches for molecular design, and searches several databases, including Scopus, PubMed, Web of Science, and Google Scholar. The article stresses importance of rigorous analysis of machine learning model performance in assessing progress and explores molecular modeling (MM) techniques, descriptors, and mathematical approaches. Transitioning to clinical drug development, article highlights AI (Artificial Intelligence) based computer models optimizing trial design, patient selection, dosing strategies, and biomarker identification. In-silico models, including molecular interactomes and virtual patients, predict drug performance across diverse profiles, underlining the need to align model results with clinical studies for reliability. Specialized training for human specialists in navigating predictive models is deemed critical. Pharmacogenomics, integral to personalized medicine, utilizes predictive modeling to anticipate patient responses, contributing to more efficient healthcare system. Challenges in realizing potential of predictive modeling, including ethical considerations and data privacy concerns, are acknowledged. Expert opinion: AI models are crucial in drug development, optimizing trials, patient selection, dosing, and biomarker identification and hold promise for streamlining clinical investigations.
KW - In-silico modeling
KW - Personalized medicine
KW - pharmacogenomics
KW - pharmacokinetics
KW - validation
UR - http://www.scopus.com/inward/record.url?scp=85188798111&partnerID=8YFLogxK
U2 - 10.1080/17425255.2024.2330666
DO - 10.1080/17425255.2024.2330666
M3 - Review article
C2 - 38480460
AN - SCOPUS:85188798111
SN - 1742-5255
VL - 20
SP - 181
EP - 195
JO - Expert Opinion on Drug Metabolism and Toxicology
JF - Expert Opinion on Drug Metabolism and Toxicology
IS - 4
ER -