TY - CHAP
T1 - Molecular Fingerprint Based and Machine Learning Driven QSAR for Bioconcentration Pathways Determination
AU - Nascimben, Mauro
AU - Spriano, Silvia
AU - Rimondini, Lia
AU - Venturin, Manolo
N1 - Publisher Copyright:
© 2023, The Author(s), under exclusive license to Springer Nature Switzerland AG.
PY - 2023
Y1 - 2023
N2 - Quantitative structure-activity relationship associates molecules’ structural characteristics to their bio-activity, and it can be performed via machine learning to find risky chemicals that accumulate in living organisms. The present analysis focused on investigating how structural information of molecules encoded by molecular fingerprints can be used to predict bioaccumulation pathways. Numerical experiments involved extreme gradient boosting, support vector machines, and neural networks, including spiking neural networks. This investigation might be the first attempt to apply this particular kind of biologically inspired neural network for predicting molecules’ functions from their fingerprints. The computational models forecasted three possible bioaccumulation processes, with support vector machines obtaining the mean peak accuracy and the spiking neural network architectures achieving satisfactory results: the leaky neuron spiking neural network range of outcomes was not statistically different from the accuracies of the support vector machine algorithms. In addition, an algorithm broadly found in chemoinformatics literature as the extreme gradient boosting algorithm fulfilled compatible accuracies with spiking neural networks and support vector machines. This three-class machine learning-driven bioconcentration modeling of chemicals established a foundation for future analysis pipelines focusing on predicting bioaccumulation in biological tissues by investigating molecules’ structures.
AB - Quantitative structure-activity relationship associates molecules’ structural characteristics to their bio-activity, and it can be performed via machine learning to find risky chemicals that accumulate in living organisms. The present analysis focused on investigating how structural information of molecules encoded by molecular fingerprints can be used to predict bioaccumulation pathways. Numerical experiments involved extreme gradient boosting, support vector machines, and neural networks, including spiking neural networks. This investigation might be the first attempt to apply this particular kind of biologically inspired neural network for predicting molecules’ functions from their fingerprints. The computational models forecasted three possible bioaccumulation processes, with support vector machines obtaining the mean peak accuracy and the spiking neural network architectures achieving satisfactory results: the leaky neuron spiking neural network range of outcomes was not statistically different from the accuracies of the support vector machine algorithms. In addition, an algorithm broadly found in chemoinformatics literature as the extreme gradient boosting algorithm fulfilled compatible accuracies with spiking neural networks and support vector machines. This three-class machine learning-driven bioconcentration modeling of chemicals established a foundation for future analysis pipelines focusing on predicting bioaccumulation in biological tissues by investigating molecules’ structures.
UR - https://www.scopus.com/pages/publications/85169030561
U2 - 10.1007/978-3-031-35715-2_7
DO - 10.1007/978-3-031-35715-2_7
M3 - Chapter
AN - SCOPUS:85169030561
T3 - SEMA SIMAI Springer Series
SP - 193
EP - 215
BT - SEMA SIMAI Springer Series
PB - Springer Science and Business Media Deutschland GmbH
ER -