Optimizing trigger timing in minimal ovarian stimulation for In Vitro fertilization using machine learning models with random search hyperparameter tuning.

Journal: Computers in biology and medicine
PMID:

Abstract

Various studies have emphasized the importance of identifying the optimal Trigger Timing (TT) for the trigger shot in In Vitro Fertilization (IVF), which is crucial for the successful maturation and release of oocytes, especially in minimal ovarian stimulation treatments. Despite its significance for the ultimate success of IVF, determining the precise TT remains a complex challenge for physicians due to the involvement of multiple variables. This study aims to enhance TT by developing a machine learning multi-output model that predicts the expected number of retrieved oocytes, mature oocytes (MII), fertilized oocytes (2 PN), and useable blastocysts within a 48-h window after the trigger shot in minimal stimulation cycles. By utilizing this model, physicians can identify patients with possible early, late, or on-time trigger shots. The study found that approximately 27 % of treatments administered the trigger shot on a suboptimal day, but optimizing the TT using the developed Artificial Intelligence (AI) model can potentially increase useable blastocyst production by 46 %. These findings highlight the potential of predictive models as a supplementary tool for optimizing trigger shot timing and improving IVF outcomes, particularly in minimal ovarian stimulation. The experimental results underwent statistical validation, demonstrating the accuracy and performance of the model. Overall, this study emphasizes the value of AI prediction models in enhancing TT and making the IVF process safer and more efficient.

Authors

  • Nayeli Areli Pérez-Padilla
    Departamento de Electrónica, Universidad de Guadalajara, CUCEI, Guadalajara, Jal, Mexico.
  • Rodolfo Garcia-Sanchez
    New Hope Fertility Center Mexico, Research and Development, Guadalajara, PC, 44630, Mexico.
  • Omar Avalos
    Departamento de Electrónica, Universidad de Guadalajara, CUCEI, Guadalajara, Jal, Mexico.
  • Jorge Gálvez
    Departamento de Electrónica, Universidad de Guadalajara, CUCEI, Guadalajara, Jal, Mexico.
  • Minglei Bian
    Reproductive Clinical Science, Eastern Virginia Medical School, Norfolk, VA, United States.
  • Liang Yu
    School of Computer Science and Technology, Xidian University, Xi'an, 710071, PR China. Electronic address: lyu@xidian.edu.cn.
  • Yimin Shu
    Life IVF Center, Irvine, CA, United States; Department of Obstetrics and Gynecology, The University of Kansas Health System, Kansas City, KS, United States.
  • Ming Feng
    Department of Neurosurgery, Chinese Academy of Medical Sciences and Peking Union Medical College, Peking Union Medical College Hospital, Beijing, China.
  • Frank D Yelian
    Life IVF Center, Irvine, CA, United States. Electronic address: fyelianmd@gmail.com.