Novos métodos para determinar a qualidade da representação quiral em modelos baseados em GNN
Abstract
How do graph neural networks, especially models such as SphereNet and ChIRo, in-
corporate the perception of molecular chirality? This study aimed to analyze and evaluate
the capacity of graph neural networks to incorporate the perception of molecular chirality,
focusing on specific models such as SphereNet and ChIRo. We hypothesized that current
graph neural networks, including SphereNet and ChIRo, exhibit limitations in fully in-
corporating the perception of molecular chirality, particularly in complex and continuous
cases. To test this concept, we conducted tests and developed datasets that more com-
prehensively reflect chiral incorporation, including (I) RSA classification as an alternative
to traditional RS classification; (II) classification of complex chiralities; and (III) creation
and use of a continuous chirality dataset (CCM). We conclude that RSA classification
demonstrated potential to improve model accuracy, while the CCM dataset revealed the
importance of geometry as a determining factor in chiral classification. Furthermore, we
identified limitations in current models for classifying complex chiralities. Scientifically,
this work points to the need for developing new neural network architectures that better
incorporate the properties of molecular chirality. Socially, there is potential for improved
prediction and design of chiral molecules, impacting areas such as drug development and
materials science.
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