Amorphous solid dispersions (ASDs) have emerged as widespread formulations for drug delivery of poorly soluble active pharmaceutical ingredients (APIs). Predicting the API solubility with various carriers in the API–carrier mixture and the principal API–carrier non-bonding interactions are critical factors for…
Amorphous solid dispersions (ASDs) have emerged as widespread formulations for drug delivery of poorly soluble active pharmaceutical ingredients (APIs). Predicting the API solubility with various carriers in the API–carrier mixture and the principal API–carrier non-bonding interactions are critical factors for…
Why Scale Matters At VeriSIM Life, we pride ourselves on solving complex problems. After all, we’re working to simulate the entire human body! At the center of our efforts is the BIOiSIM platform: our core simulation technology that accurately predicts…
Why Scale Matters At VeriSIM Life, we pride ourselves on solving complex problems. After all, we’re working to simulate the entire human body! At the center of our efforts is the BIOiSIM platform: our core simulation technology that accurately predicts…
We have come a long way in human healthcare – from increasing average life expectancy, to controlling infectious diseases like AIDS and tuberculosis. Despite the acceleration in pharmacological and technological advances over the years that contributed to this success, the…
We have come a long way in human healthcare – from increasing average life expectancy, to controlling infectious diseases like AIDS and tuberculosis. Despite the acceleration in pharmacological and technological advances over the years that contributed to this success, the…
Increasing quality and standardization of experimental methods in preclinical testing have created valuable data sets that improve the efficiency and accuracy of preclinical prediction for both pharmacokinetics (PK) and PD. Models of quantitative structure–activity relationships (QSAR), physiologically based pharmacokinetics (PBPK), and PK/PD relationships have also improved efficiency. Founded on a core understanding of biochemistry and physiological interactions of xenobiotics, these in silico methods have the potential to increase the probability of compound success in clinical trials. Integrating machine-learning approaches and new data sets stands to make a fundamental impact on the speed and accuracy of predictions from R&D to approval.
Increasing quality and standardization of experimental methods in preclinical testing have created valuable data sets that improve the efficiency and accuracy of preclinical prediction for both pharmacokinetics (PK) and PD. Models of quantitative structure–activity relationships (QSAR), physiologically based pharmacokinetics (PBPK), and PK/PD relationships have also improved efficiency. Founded on a core understanding of biochemistry and physiological interactions of xenobiotics, these in silico methods have the potential to increase the probability of compound success in clinical trials. Integrating machine-learning approaches and new data sets stands to make a fundamental impact on the speed and accuracy of predictions from R&D to approval.