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Data-Driven Design of Polymer-Based Biomaterials: High-throughput Simulation, Experimentation, and Machine Learning

Roshan Patel, Michael A. Webb

2023ACS Applied Bio Materials100 citationsDOI

Abstract

Polymers, with the capacity to tunably alter properties and response based on manipulation of their chemical characteristics, are attractive components in biomaterials. Nevertheless, their potential as functional materials is also inhibited by their complexity, which complicates rational or brute-force design and realization. In recent years, machine learning has emerged as a useful tool for facilitating materials design via efficient modeling of structure-property relationships in the chemical domain of interest. In this Spotlight, we discuss the emergence of data-driven design of polymers that can be deployed in biomaterials with particular emphasis on complex copolymer systems. We outline recent developments, as well as our own contributions and takeaways, related to high-throughput data generation for polymer systems, methods for surrogate modeling by machine learning, and paradigms for property optimization and design. Throughout this discussion, we highlight key aspects of successful strategies and other considerations that will be relevant to the future design of polymer-based biomaterials with target properties.

Topics & Concepts

Rational designComputer scienceThroughputRealization (probability)Domain (mathematical analysis)Property (philosophy)Biochemical engineeringNanotechnologyMaterial DesignSystems engineeringMaterials scienceEngineeringWirelessTelecommunicationsPhilosophyStatisticsMathematicsMathematical analysisEpistemologyWorld Wide WebMachine Learning in Materials ScienceFuel Cells and Related MaterialsAdvanced Polymer Synthesis and Characterization
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