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Seaweed-Based Bioplastics: Data Mining Ingredient–Property Relations from the Scientific Literature

Author

Listed:
  • Fernanda Véliz

    (Department of Physics, Universidad de Santiago de Chile, Av Victor Jara 3493, Santiago 9170124, Chile)

  • Thulasi Bikku

    (Department of Physics, Universidad de Santiago de Chile, Av Victor Jara 3493, Santiago 9170124, Chile
    Computer Science and Engineering, Amrita School of Computing Amaravati, Amrita Vishwa Vidyapeetham, Amaravati 522503, India)

  • Davor Ibarra-Pérez

    (Department of Mechanical Engineering, University of Santiago of Chile (USACH), Avenida Libertador Bernardo O’Higgins 3363, Santiago 9170022, Chile)

  • Valentina Hernández-Muñoz

    (Department of Industrial Engineering, University of Santiago of Chile (USACH), Avenida Libertador Bernardo O’Higgins 3363, Santiago 9170022, Chile)

  • Alysia Garmulewicz

    (Department of Management, Faculty of Management and Economics, University of Santiago of Chile (USACH), Avenida Libertador Bernardo O’Higgins 3363, Estación Central 9170022, Chile)

  • Felipe Herrera

    (Department of Physics, Universidad de Santiago de Chile, Av Victor Jara 3493, Santiago 9170124, Chile
    Millennium Institute for Research in Optics, Concepción 4030000, Chile)

Abstract

Automated analysis of the scientific literature using natural language processing (NLP) can accelerate the identification of potentially unexplored formulations that enable innovations in materials engineering with fewer experimentation and testing cycles. This strategy has been successful for specific classes of inorganic materials, but their general application in broader material domains such as bioplastics remains challenging. To begin addressing this gap, we explore correlations between the ingredients and physicochemical properties of seaweed-based biofilms from a corpus of 2000 article abstracts from the scientific literature since 1958, using a supervised word co-occurrence analysis and an unsupervised approach based on the language model MatBERT without fine-tuning. Using known relations between ingredients and properties for test scenarios, we discuss the potential and limitations of these NLP approaches for identifying novel combinations of polysaccharides, plasticizers, and additives that are related to the functionality of seaweed biofilms. The model demonstrates a valuable predictive ability to identify ingredients associated with increased water vapor permeability, suggesting its potential utility in optimizing formulations for future research. Using the model further revealed alternative combinations that are underrepresented in the literature. This automated method facilitates the mapping of relationships between ingredients and properties, guiding the development of seaweed bioplastic formulations. The unstructured and heterogeneous nature of the literature on bioplastics represents a particular challenge that demands ad hoc fine-tuning strategies for state-of-the-art language models for advancing the field of seaweed bioplastics.

Suggested Citation

  • Fernanda Véliz & Thulasi Bikku & Davor Ibarra-Pérez & Valentina Hernández-Muñoz & Alysia Garmulewicz & Felipe Herrera, 2025. "Seaweed-Based Bioplastics: Data Mining Ingredient–Property Relations from the Scientific Literature," Data, MDPI, vol. 10(2), pages 1-16, February.
  • Handle: RePEc:gam:jdataj:v:10:y:2025:i:2:p:20-:d:1581785
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