Abstract

Organic molecules and polymers have a broad range of applications in biomedical, chemical, and materials science fields. Traditional design approaches for organic molecules and polymers are mainly experimentally-driven, guided by experience, intuition, and conceptual insights. Though they have been successfully applied to discover many important materials, these methods are facing significant challenges due to the tremendous demand of new materials and vast design space of organic molecules and polymers. Accelerated and inverse materials design is an ideal solution to these challenges. With advancements in high-throughput computation, artificial intelligence (especially machining learning, ML), and the growth of materials databases, ML-assisted materials design is emerging as a promising tool to flourish breakthroughs in many areas of materials science and engineering. To date, using ML-assisted approaches, the quantitative structure property/activity relation for material property prediction can be established more accurately and efficiently. In addition, materials design can be revolutionized and accelerated much faster than ever, through ML-enabled molecular generation and inverse molecular design. In this perspective, we review the recent progresses in ML-guided design of organic molecules and polymers, highlight several successful examples, and examine future opportunities in biomedical, chemical, and materials science fields. We further discuss the relevant challenges to solve in order to fully realize the potential of ML-assisted materials design for organic molecules and polymers. In particular, this study summarizes publicly available materials databases, feature representations for organic molecules, open-source tools for feature generation, methods for molecular generation, and ML models for prediction of material properties, which serve as a tutorial for researchers who have little experience with ML before and want to apply ML for various applications. Last but not least, it draws insights into the current limitations of ML-guided design of organic molecules and polymers. We anticipate that ML-assisted materials design for organic molecules and polymers will be the driving force in the near future, to meet the tremendous demand of new materials with tailored properties in different fields.

Highlights

  • Polymeric materials are ubiquitously encountered in our daily life, ranging from familiar synthetic plastics, such as polystyrene, to natural biopolymers, such as DNA and proteins

  • This concept of molecular design for organic molecules and polymers has been widely adopted in many fields, such as organic photovoltaics [4,5,6,7], polymer dielectrics [8,9], metal-organic frameworks (MOFs) [10,11,12,13], organic light-emitting diodes [14,15], high energetic materials [16,17,18], and design of drug-like molecules [19,20,21]

  • The adequacy of data ensures that Machine learning (ML) models sufficiently learn the underlying mapping between structures and properties, which guarantees the accuracy of QSPR/QSAR for forward property prediction

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Summary

Introduction

Polymeric materials are ubiquitously encountered in our daily life, ranging from familiar synthetic plastics, such as polystyrene, to natural biopolymers, such as DNA and proteins. The choice of a specific repeating unit grants the potential of inverse materials design This concept of molecular design for organic molecules and polymers has been widely adopted in many fields, such as organic photovoltaics [4,5,6,7], polymer dielectrics [8,9], metal-organic frameworks (MOFs) [10,11,12,13], organic light-emitting diodes [14,15], high energetic materials [16,17,18], and design of drug-like molecules [19,20,21].

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