2月学内共同研究促進トーク
2月の学内共同研究促進トークは、Andrea Mastropietro 先生にご講演いただきました。
タイトルと概要は以下になります。
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Andrea Mastropietro 特任助教
TITLE:
Graph Learning and Explainable Artificial Intelligence in the Life Sciences
ABSTRACT:
Deep learning has become a widely used tool in chemoinformatics and bioinformatics. Graph-based models, such as graph neural networks, can be applied to molecular graphs to predict chemical properties or biochemical activity with high accuracy. However, deep learning models often lack transparency, which is undesirable in applications such as drug design, where model outputs must be interpretable to be trusted. To address this limitation, explainable artificial intelligence strategies have been extensively developed and applied. This seminar will discuss how graph neural networks can be used and explained in the context of chemoinformatics and drug design, covering applications ranging from predictive to generative artificial intelligence. We will examine whether graph deep learning models are capable of extracting and learning meaningful chemical knowledge from data, or whether they mainly rely on memorizing statistical patterns. Finally, we will highlight current challenges and outline opportunities for future research in this field.
