Wyttenbach, NicoleNiederquell, AndreasKuentz, Martin2021-05-102021-05-102020-06-041543-83841543-839210.1021/acs.molpharmaceut.0c00355https://irf.fhnw.ch/handle/11654/32432There has been much recent interest in machine learning (ML) and molecular quantitative structure property relationships (QSPR). The present research evaluated modern ML-based methods implemented in commercial software (COSMOquick and Molecular Modeling Pro), compared to a classical group contribution approach (Joback and Reid method), to estimate melting points and enthalpy of fusion values. A broad data set of market compounds was gathered from the literature, together with new data measured by differential scanning calorimetry for drug candidates. The highest prediction accuracy was achieved by QSPR using stochastic gradient boosting. The model deviations were discussed, particularly the implications on thermodynamic solubility modeling, as this typically requires estimation of both melting point and enthalpy of fusion. The results suggested that despite considerable advancement in prediction accuracy, there are still limitations especially with complex drug candidates. It is recommended that in such cases, melting properties obtained in silico should be used carefully as input data for thermodynamic solubility modeling. Future research will show how the prediction limits of thermophysical drug properties can be further advanced by even larger data sets and other ML algorithms or also by using molecular simulations.enquantitative structure property relationshipmachine learningenthalpy of fusionmelting pointdrugMachine Estimation of Drug Melting Properties and Influence on Solubility Prediction01A - Beitrag in wissenschaftlicher Zeitschrift2660-2671