AI-generated x-ray images fooled medical experts and improved osteoarthritis classification

Sharing medical data between laboratories and medical experts is important for medical research. However, data sharing is often sufficiently complex and sometimes even impossible due to the strict data regulatory legislation in Europe. Researchers at the Ģֱ Digital Health Intelligence Laboratory addressed the problem and developed an artificial neural network that creates synthetic x-ray images that can fool even medical experts.
Kuvassa ylärivissä olevat kuvat ovat tekoälyn luomia. Alarivin röntgenkuvat ovat aitoja polven röntgenkuvia.
Published
17.11.2022

A group of researchers from Ģֱ's AI Hub Central Finland project developed an AI based method to create synthetic knee x-ray images to replace or complement real x-ray images in knee osteoarthritis classification.

Researchers used synthetically generated X-ray images to complement a data set of real X-ray images from the osteoarthritis study. The authenticity of the images was then assessed together with specialists from the central Finland healthcare district.

Medical experts were asked to rate osteoarthritis severity without knowing that the data set included synthetic images. In the second phase, experts tried to identify authentic and synthetic images. The results showed that on average, it was improbable even for medical experts to distinguish between real and synthetic x-ray images.

“The use of synthetic data is not subject to the same data protection regulations as real data. Using synthetic data can facilitate collaboration between, for example, research groups, companies and educational institutions”, says Sami Äyrämö, Head of Digital Health Intelligence Laboratory at the Ģֱ.

According to Äyrämö, the use of synthetic data also speeds up authorisation processes and thus, among other things, testing of new ideas.

The use of synthetic data can lead to better results in patient care and medical method development





Data-driven AI methods can be used to support doctors in making diagnoses. Even though the technical potential of AI is huge, the amount of medical data is often insufficient This is a key challenge in developing medically effective methods.

“By mixing real and synthetic x-ray images, we improved AI-based osteoarthritis classification systems”, says Fabi Prezja, the Doctoral Researcher responsible for developing the artificial neural network.

In the future, synthetic data can lead to better results in developing medical methods and patient care, especially for medical conditions where real patient data is limited.

“In addition the neural network is capable of modifying synthetic x-ray images to expert specifications. This capability is very powerful and allows potential future use for medical educational applications, and stress testing for other AI systems”, Prezja adds.

The research was carried out in collaboration with the central Finland healthcare district, whose director, a professor of surgery Juha Paloneva sees AI-based diagnostic methods as a valuable way of transferring the know-how of an experienced doctor to support the work of a younger doctor.

Adjacent image show a set of screenshots of an animation showing how a synthetic x-ray can be modified to expert specifications.

“AI can be used to reveal, for example, hard-to-spot signs of early osteoarthritis. However, AI methods for osteoarthritis are still improving, so the work continues”, Paloneva says.

More information

Doctoral Researcher Fabi Prezja
fabi.f.prezja@jyu.fi
+358 44 920 9543

Docent Sami Äyrämö
Head of Digital Health Intelligence Laboratory
sami.ayramo@jyu.fi
+358 50 325 5685

Professor of surgery Juha Paloneva
Director of central Finland healthcare district
+358 50 336 3695

The Digital Health Intelligence Laboratory operates in the Faculty of Information Technology at Ģֱ. The aim of the laboratory is to develop intelligent knowledge-based solutions to real-world problems that are central to promoting human health and wellbeing. The AI Hub Central Finland project has received funding from the European Regional Development Fund (ERDF).

The scientific article was published in Nature Scientific Reports and can be read at