Deep learning versus manual morphology-based embryo selection in IVF: a randomized, double-blind noninferiority trial.
Peter J IllingworthChristos VenetisDavid K GardnerScott M NelsonJørgen BerntsenMark G LarmanFranca AgrestaSaran AhitanAisling AhlströmFleur CattrallSimon CookeKristy DemmersAnette GabrielsenJohnny HindkjærRebecca L KelleyCharlotte KnightLisa LeeRobert LahoudManveen MangatHannah ParkAnthony PriceGeoffrey TrewBettina TroestAnna VincentSusanne WennerströmLyndsey ZujovicThorir HardarsonPublished in: Nature medicine (2024)
To assess the value of deep learning in selecting the optimal embryo for in vitro fertilization, a multicenter, randomized, double-blind, noninferiority parallel-group trial was conducted across 14 in vitro fertilization clinics in Australia and Europe. Women under 42 years of age with at least two early-stage blastocysts on day 5 were randomized to either the control arm, using standard morphological assessment, or the study arm, employing a deep learning algorithm, intelligent Data Analysis Score (iDAScore), for embryo selection. The primary endpoint was a clinical pregnancy rate with a noninferiority margin of 5%. The trial included 1,066 patients (533 in the iDAScore group and 533 in the morphology group). The iDAScore group exhibited a clinical pregnancy rate of 46.5% (248 of 533 patients), compared to 48.2% (257 of 533 patients) in the morphology arm (risk difference -1.7%; 95% confidence interval -7.7, 4.3; P = 0.62). This study was not able to demonstrate noninferiority of deep learning for clinical pregnancy rate when compared to standard morphology and a predefined prioritization scheme. Australian New Zealand Clinical Trials Registry (ANZCTR) registration: 379161 .
Keyphrases
- deep learning
- double blind
- clinical trial
- phase iii
- end stage renal disease
- phase ii
- placebo controlled
- pregnancy outcomes
- early stage
- newly diagnosed
- ejection fraction
- chronic kidney disease
- study protocol
- prognostic factors
- open label
- machine learning
- squamous cell carcinoma
- primary care
- artificial intelligence
- convolutional neural network
- adipose tissue
- insulin resistance
- lymph node
- patient reported outcomes
- preterm birth
- patient reported