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Multi-Task Learning for Extracting Menstrual Characteristics from Clinical Notes

31 March 2025
Anna Shopova
Cristoph Lippert
Leslee J. Shaw
Eugenia Alleva
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Abstract

Menstrual health is a critical yet often overlooked aspect of women's healthcare. Despite its clinical relevance, detailed data on menstrual characteristics is rarely available in structured medical records. To address this gap, we propose a novel Natural Language Processing pipeline to extract key menstrual cycle attributes -- dysmenorrhea, regularity, flow volume, and intermenstrual bleeding. Our approach utilizes the GatorTron model with Multi-Task Prompt-based Learning, enhanced by a hybrid retrieval preprocessing step to identify relevant text segments. It out- performs baseline methods, achieving an average F1-score of 90% across all menstrual characteristics, despite being trained on fewer than 100 annotated clinical notes. The retrieval step consistently improves performance across all approaches, allowing the model to focus on the most relevant segments of lengthy clinical notes. These results show that combining multi-task learning with retrieval improves generalization and performance across menstrual charac- teristics, advancing automated extraction from clinical notes and supporting women's health research.

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@article{shopova2025_2503.24116,
  title={ Multi-Task Learning for Extracting Menstrual Characteristics from Clinical Notes },
  author={ Anna Shopova and Cristoph Lippert and Leslee J. Shaw and Eugenia Alleva },
  journal={arXiv preprint arXiv:2503.24116},
  year={ 2025 }
}
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