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Cell-Based Computational Models of Organoids: A Systematic Review.

Monica Neagu1,2, Andreea Robu3, Stelian Arjoca1,2

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Computational organoid models offer insights into organoid development and disease modeling. This systematic review analyzes in silico models, revealing their power to guide experimental work and deepen understanding of organoid biology.

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Area of Science:

  • Biotechnology
  • Computational Biology
  • Developmental Biology

Background:

  • Organoids are in vitro self-organizing multicellular structures mimicking organ architecture and function.
  • Organoid technology enables novel modeling of development and disease, but faces challenges.
  • Computational models are crucial for understanding organoid growth and optimizing cultures.

Purpose of the Study:

  • To systematically review in silico organoid models at single-cell or subcellular resolution.
  • To analyze the insights gained from computational organoid modeling.
  • To identify trends in next-generation computational organoid models.

Main Methods:

  • Systematic literature search of PubMed, Scopus, and Web of Science.
  • Screening of 439 records, with 32 papers meeting inclusion criteria.
  • Categorization of identified models by organoid type (intestinal, airway, pancreas, neural, kidney, tumor, etc.).

Main Results:

  • Computer simulations effectively guided experimental organoid research.
  • Parsimonious models elucidated diverse organoid behaviors (e.g., airway rotation, pancreatic oscillations, neural patterning, kidney nephrogenesis).
  • Combined in silico and in vitro investigations achieved deep understanding of organoid morphogenesis.

Conclusions:

  • Computational organoid models are valuable tools for experimental guidance and biological insight.
  • Future models will likely integrate detailed stem cell regulatory circuits and machine learning with high-throughput imaging.
  • In silico approaches significantly advance the field of organoid research.