A stacked machine learning-based classification model for endometriosis and adenomyosis: a retrospective cohort study utilizing peripheral blood and coagulation markers

  • Wang W
  • Zeng W
  • Yang S
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Wang, W., Zeng, W., & Yang, S. (2024). A stacked machine learning-based classification model for endometriosis and adenomyosis: a retrospective cohort study utilizing peripheral blood and coagulation markers. Frontiers in Digital Health, 6. https://doi.org/10.3389/fdgth.2024.1463419

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