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Improving IVF Utilization with Patient-Centric Artificial Intelligence-Machine Learning (AI/ML): A Retrospective Multicenter Experience.

Publication ,  Journal Article
Yao, MWM; Nguyen, ET; Retzloff, MG; Gago, LA; Copland, S; Nichols, JE; Payne, JF; Opsahl, M; Cadesky, K; Meriano, J; Donesky, BW; Bird, J ...
Published in: Journal of clinical medicine
June 2024

Objectives: In vitro fertilization (IVF) has the potential to give babies to millions more people globally, yet it continues to be underutilized. We established a globally applicable and locally adaptable IVF prognostics report and framework to support patient-provider counseling and enable validated, data-driven treatment decisions. This study investigates the IVF utilization rates associated with the usage of machine learning, center-specific (MLCS) prognostic reports (the Univfy® report) in provider-patient pre-treatment and IVF counseling. Methods: We used a retrospective cohort comprising 24,238 patients with new patient visits (NPV) from 2016 to 2022 across seven fertility centers in 17 locations in seven US states and Ontario, Canada. We tested the association of Univfy report usage and first intra-uterine insemination (IUI) and/or first IVF usage (a.k.a. conversion) within 180 days, 360 days, and "Ever" of NPV as primary outcomes. Results: Univfy report usage was associated with higher direct IVF conversion (without prior IUI), with odds ratios (OR) 3.13 (95% CI 2.83, 3.46), 2.89 (95% CI 2.63, 3.17), and 2.04 (95% CI 1.90, 2.20) and total IVF conversion (with or without prior IUI), OR 3.41 (95% CI 3.09, 3.75), 3.81 (95% CI 3.49, 4.16), and 2.78 (95% CI 2.59, 2.98) in 180-day, 360-day, and Ever analyses, respectively; p < 0.05. Among patients with Univfy report usage, after accounting for center as a factor, older age was a small yet independent predictor of IVF conversion. Conclusions: Usage of a patient-centric, MLCS-based prognostics report was associated with increased IVF conversion among new fertility patients. Further research to study factors influencing treatment decision making and real-world optimization of patient-centric workflows utilizing the MLCS reports is warranted.

Duke Scholars

Published In

Journal of clinical medicine

DOI

EISSN

2077-0383

ISSN

2077-0383

Publication Date

June 2024

Volume

13

Issue

12

Start / End Page

3560

Related Subject Headings

  • 32 Biomedical and clinical sciences
  • 1103 Clinical Sciences
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Yao, M. W. M., Nguyen, E. T., Retzloff, M. G., Gago, L. A., Copland, S., Nichols, J. E., … Walmer, D. K. (2024). Improving IVF Utilization with Patient-Centric Artificial Intelligence-Machine Learning (AI/ML): A Retrospective Multicenter Experience. Journal of Clinical Medicine, 13(12), 3560. https://doi.org/10.3390/jcm13123560
Yao, Mylene W. M., Elizabeth T. Nguyen, Matthew G. Retzloff, Laura April Gago, Susannah Copland, John E. Nichols, John F. Payne, et al. “Improving IVF Utilization with Patient-Centric Artificial Intelligence-Machine Learning (AI/ML): A Retrospective Multicenter Experience.Journal of Clinical Medicine 13, no. 12 (June 2024): 3560. https://doi.org/10.3390/jcm13123560.
Yao MWM, Nguyen ET, Retzloff MG, Gago LA, Copland S, Nichols JE, et al. Improving IVF Utilization with Patient-Centric Artificial Intelligence-Machine Learning (AI/ML): A Retrospective Multicenter Experience. Journal of clinical medicine. 2024 Jun;13(12):3560.
Yao, Mylene W. M., et al. “Improving IVF Utilization with Patient-Centric Artificial Intelligence-Machine Learning (AI/ML): A Retrospective Multicenter Experience.Journal of Clinical Medicine, vol. 13, no. 12, June 2024, p. 3560. Epmc, doi:10.3390/jcm13123560.
Yao MWM, Nguyen ET, Retzloff MG, Gago LA, Copland S, Nichols JE, Payne JF, Opsahl M, Cadesky K, Meriano J, Donesky BW, Bird J, Peavey M, Beesley R, Neal G, Bird JS, Swanson T, Chen X, Walmer DK. Improving IVF Utilization with Patient-Centric Artificial Intelligence-Machine Learning (AI/ML): A Retrospective Multicenter Experience. Journal of clinical medicine. 2024 Jun;13(12):3560.

Published In

Journal of clinical medicine

DOI

EISSN

2077-0383

ISSN

2077-0383

Publication Date

June 2024

Volume

13

Issue

12

Start / End Page

3560

Related Subject Headings

  • 32 Biomedical and clinical sciences
  • 1103 Clinical Sciences