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Identifying and predicting data-driven clinical subgroups for cervical cancer prevention using computational phenomaps and machine learning: a large-scale, population-based, observational SCREENing study

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SCREENing

πŸ“– Citation

Lu, Z., Dong, B., Cai, H., Tian, T., Wang, J., Fu, L., Wang, B., Zhang, W., Lin, S., Tuo, X., Wang, J., Yang, T., Huang, X., Zheng, Z., Xue, H., Xu, S., Liu, S., Sun, P., & Zou, H. (2025). Identifying Data-Driven Clinical Subgroups for Cervical Cancer Prevention With Machine Learning: Population-Based, External, and Diagnostic Validation Study. JMIR Public Health Surveill, 11, e67840.

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Identifying and predicting data-driven clinical subgroups for cervical cancer prevention using computational phenomaps and machine learning: a large-scale, population-based, observational SCREENing study

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