An Integrated Optimization and Deep Learning Pipeline for Predicting Live Birth Success in IVF Using Feature Optimization and Transformer-Based Models
In vitro fertilization (IVF) is a widely utilized assisted reproductive technology, yet predicting its success remains challenging due to the multifaceted interplay of clinical, demographic, and procedural factors. This study develops a robust artificial intelligence (AI) pipeline aimed at predictin...
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Zusammenfassung: | In vitro fertilization (IVF) is a widely utilized assisted reproductive
technology, yet predicting its success remains challenging due to the
multifaceted interplay of clinical, demographic, and procedural factors. This
study develops a robust artificial intelligence (AI) pipeline aimed at
predicting live birth outcomes in IVF treatments. The pipeline uses anonymized
data from 2010 to 2018, obtained from the Human Fertilization and Embryology
Authority (HFEA). We evaluated the prediction performance of live birth success
as a binary outcome (success/failure) by integrating different feature
selection methods, such as principal component analysis (PCA) and particle
swarm optimization (PSO), with different traditional machine learning-based
classifiers including random forest (RF) and decision tree, as well as deep
learning-based classifiers including custom transformer-based model and a tab
transformer model with an attention mechanism. Our research demonstrated that
the best performance was achieved by combining PSO for feature selection with
the TabTransformer-based deep learning model, yielding an accuracy of 99.50%
and an AUC of 99.96%, highlighting its significant performance to predict live
births. This study establishes a highly accurate AI pipeline for predicting
live birth outcomes in IVF, demonstrating its potential to enhance personalized
fertility treatments. |
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DOI: | 10.48550/arxiv.2412.19696 |