Journal of Ovarian Research (Nov 2023)

Progress of the application clinical prediction model in polycystic ovary syndrome

  • Guan Guixue,
  • Pu Yifu,
  • Gao Yuan,
  • Liu Xialei,
  • Shi Fan,
  • Sun Qian,
  • Xu Jinjin,
  • Zhang Linna,
  • Zhang Xiaozuo,
  • Feng Wen,
  • Yang Wen

DOI
https://doi.org/10.1186/s13048-023-01310-2
Journal volume & issue
Vol. 16, no. 1
pp. 1 – 9

Abstract

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Abstract Clinical prediction models play an important role in the field of medicine. These can help predict the probability of an individual suffering from disease, complications, and treatment outcomes by applying specific methodologies. Polycystic ovary syndrome (PCOS) is a common disease with a high incidence rate, huge heterogeneity, short- and long-term complications, and complex treatments. In this systematic review study, we reviewed the progress of clinical prediction models in PCOS patients, including diagnosis and prediction models for PCOS complications and treatment outcomes. We aimed to provide ideas for medical researchers and clues for the management of PCOS. In the future, models with poor accuracy can be greatly improved by adding well-known parameters and validations, which will further expand our understanding of PCOS in terms of precision medicine. By developing a series of predictive models, we can make the definition of PCOS more accurate, which can improve the diagnosis of PCOS and reduce the likelihood of false positives and false negatives. It will also help discover complications earlier and treatment outcomes being known earlier, which can result in better outcomes for women with PCOS.

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