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RediscMol: Benchmarking Molecular Generation Models in Biological Properties

Gaoqi Weng, Huifeng Zhao, Dou Nie, Haotian Zhang, Liwei Liu, Tingjun Hou, Yu Kang

2024Journal of Medicinal Chemistry15 citationsDOI

Abstract

Deep learning-based molecular generative models have garnered emerging attention for their capability to generate molecules with novel structures and desired physicochemical properties. However, the evaluation of these models, particularly in a biological context, remains insufficient. To address the limitations of existing metrics and emulate practical application scenarios, we construct the RediscMol benchmark that comprises active molecules extracted from 5 kinase and 3 GPCR data sets. A set of rediscovery- and similarity-related metrics are introduced to assess the performance of 8 representative generative models (CharRNN, VAE, Reinvent, AAE, ORGAN, RNNAttn, TransVAE, and GraphAF). Our findings based on the RediscMol benchmark differ from those of previous evaluations. CharRNN, VAE, and Reinvent exhibit a greater ability to reproduce known active molecules, while RNNAttn, TransVAE, and GraphAF struggle in this aspect despite their notable performance on commonly used distribution-learning metrics. Our evaluation framework may provide valuable guidance for advancing generative models in real-world drug design scenarios.

Topics & Concepts

Benchmark (surveying)BenchmarkingGenerative grammarContext (archaeology)Computer scienceSet (abstract data type)Similarity (geometry)Construct (python library)Artificial intelligenceMachine learningGenerative modelComputational biologyBiologyProgramming languagePaleontologyGeographyBusinessImage (mathematics)GeodesyMarketingComputational Drug Discovery MethodsMachine Learning in Materials ScienceProtein Structure and Dynamics
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