4.2 Article

Machine learning-assisted imaging analysis of a human epiblast model

Journal

INTEGRATIVE BIOLOGY
Volume 13, Issue 9, Pages 221-229

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/intbio/zyab014

Keywords

human pluripotent stem cells; synthetic embryology; machine learning; image processing

Categories

Funding

  1. National Science Foundation Graduate Research Fellowship [DGE 1256260]
  2. Michigan-Cambridge Collaboration Initiative
  3. University of Michigan Mcubed Fund
  4. 21st Century Jobs Trust Fund through the Michigan Strategic Fund from the State of Michigan [CASE315037]
  5. National Institutes of Health [R21 NS113518, R21 HD100931]
  6. National Science Foundation [CMMI 1917304, CBET 1901718]

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The human embryo is a complex structure that develops through cell-level decisions guided by genetic programs and interactions. Researchers use human stem cells to generate embryo models for studying embryogenic developmental steps, requiring computational and imaging tools for detailed cell-level dynamics. Video analysis pipelines incorporating machine learning methods can characterize the process of self-organization in stem cell-based embryo models, providing insights into key embryonic events for future mechanistic studies.
The human embryo is a complex structure that emerges and develops as a result of cell-level decisions guided by both intrinsic genetic programs and cell-cell interactions. Given limited accessibility and associated ethical constraints of human embryonic tissue samples, researchers have turned to the use of human stem cells to generate embryo models to study specific embryogenic developmental steps. However, to study complex self-organizing developmental events using embryo models, there is a need for computational and imaging tools for detailed characterization of cell-level dynamics at the single cell level. In this work, we obtained live cell imaging data from a human pluripotent stem cell (hPSC)-based epiblast model that can recapitulate the lumenal epiblast cyst formation soon after implantation of the human blastocyst. By processing imaging data with a Python pipeline that incorporates both cell tracking and event recognition with the use of a CNN-LSTM machine learning model, we obtained detailed temporal information of changes in cell state and neighborhood during the dynamic growth and morphogenesis of lumenal hPSC cysts. The use of this tool combined with reporter lines for cell types of interest will drive future mechanistic studies of hPSC fate specification in embryo models and will advance our understanding of how cell-level decisions lead to global organization and emergent phenomena. Insight, innovation, integration: Human pluripotent stem cells (hPSCs) have been successfully used to model and understand cellular events that take place during human embryogenesis. Understanding how cell-cell and cell-environment interactions guide cell actions within a hPSC-based embryo model is a key step in elucidating the mechanisms driving system-level embryonic patterning and growth. In this work, we present a robust video analysis pipeline that incorporates the use of machine learning methods to fully characterize the process of hPSC self-organization into lumenal cysts to mimic the lumenal epiblast cyst formation soon after implantation of the human blastocyst. This pipeline will be a useful tool for understanding cellular mechanisms underlying key embryogenic events in embryo models.

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