Patient-Centric In Vitro Fertilization Prognostic Counseling Using Machine Learning for the Pragmatist

被引:1
作者
Yao, Mylene W. M. [1 ]
Jenkins, Julian [2 ]
Nguyen, Elizabeth T. [1 ]
Swanson, Trevor [1 ]
Menabrito, Marco [1 ]
机构
[1] Univfy, R&D Dept, Los Altos, CA USA
[2] Jencap Consulting Ltd, Cardiff, Wales
关键词
prognostic counseling; live birth probability; artificial intelligence; machine learning; precision medicine; INTRACYTOPLASMIC SPERM INJECTION; FOLLICLE-STIMULATING-HORMONE; LIVE BIRTH; ONGOING PREGNANCY; PREDICTION MODEL; PERSONALIZED PREDICTION; REPRODUCTIVE MEDICINE; INVITRO FERTILIZATION; LOGISTIC-REGRESSION; MULTIPLE BIRTHS;
D O I
10.1055/s-0044-1791536
中图分类号
R71 [妇产科学];
学科分类号
100211 ;
摘要
Although in vitro fertilization (IVF) has become an extremely effective treatment option for infertility, there is significant underutilization of IVF by patients who could benefit from such treatment. In order for patients to choose to consider IVF treatment when appropriate, it is critical for them to be provided with an accurate, understandable IVF prognosis. Machine learning (ML) can meet the challenge of personalized prognostication based on data available prior to treatment. The development, validation, and deployment of ML prognostic models and related patient counseling report delivery require specialized human and platform expertise. This review article takes a pragmatic approach to review relevant reports of IVF prognostic models and draws from extensive experience meeting patients' and providers' needs with the development of data and model pipelines to implement validated ML models at scale, at the point-of-care. Requirements of using ML-based IVF prognostics at point-of-care will be considered alongside clinical ML implementation factors critical for success. Finally, we discuss health, social, and economic objectives that may be achieved by leveraging combined human expertise and ML prognostics to expand fertility care access and advance health and social good.
引用
收藏
页码:112 / 129
页数:18
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