In recent years there has been a lot of interest in using various artificial intelligence (AI) techniques in this process.
During in vitro
fertilisation (IVF), a number of different embryos are produced from eggs and
sperm.
Then, embryologists choose, which one of the
embryos is most likely to lead to a successful pregnancy and transfer it to the
patient.
Embryologists make
this choice by using their expertise to apply a set of widely accepted
principles based on the appearance of the embryo. In recent years there has
been a lot of interest in using various artificial intelligence (AI) techniques
in this process.
We developed one such AI system and tested it in
a study of more than 1,000 IVF patients. Our system chose the same embryo as a
human expert in about two-thirds of cases, and had an overall success rate only
marginally lower. The results are published in Nature Medicine.
Can deep learning help
IVF?
Over the past few years, with colleagues in
Sweden, we have been developing software to identify which embryos will have
the best chance of IVF success. Our system uses deep learning, an AI method for
finding patterns in large amounts of data.
While we were developing our system, we carried
out retrospective studies comparing the system's choices with past real-world
decisions made by embryologists. These early results suggested the deep
learning system might do an even better job than a human expert. So the next
step was to test the system properly with a randomised trial.
Our trial involved 1,066 patients at 14 fertility
clinics in Australia and Europe (Denmark, Sweden and the United Kingdom). For
each patient, both the deep learning system and a human expert selected an
embryo to be implanted. Then, a random choice was made of which of the two to
use.
This study is the first randomised controlled
trial ever performed of a deep learning system in embryo selection. Deep
learning may have many medical applications, but this is so far one of only a
few prospective randomised trials of the technology in any area of healthcare.
What we found
What we found in the study was that there was
virtually no difference between the two approaches. The clinical pregnancy rate
(the likelihood of a fetal heart being seen after transfer of the first embryo)
was 46.5% when the deep learning system chose the embryo and 48.2% when the
embryologist chose the embryo.
In other words, there was very little difference.
Indeed, 65.8% of the time, the deep learning system chose the same embryo as
the embryologist. However, we also found that the artificial intelligence
system did the task of embryo selection ten times more quickly than the
embryologist.
One aim of our study was to prove the
“non-inferiority” of our deep learning system. This is common in medical
research, as we always want to make sure that a proposed new technique doesn't
lead to worse results that the existing standard.
Despite the fact the deep learning system
produced very similar results to those of human experts, our study did not
quite clear the hurdle of proving “non-inferiority”.
As it happened, the overall success rates in the
study were much higher than we had expected. This changed the statistics of the
situation, and meant we would have needed a much larger study – with almost
8,000 patients – to prove the new method is non-inferior.
No significant
differences
A number of ethical concerns have previously been
raised about deep learning in embryo selection. One of these concerns is a
potential alteration of the sex ratio – that is, ending up with more male or
female embryos – through biased selection by the deep learning model.
However, we found no alteration in the sex ratio
as a result of deep learning embryo selection.
We concluded from our study that there is no
significant difference for the pregnancy rate between having an embryo chosen
by a deep learning system or having the embryo chosen by an experienced
embryologist.
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