Artificial intelligence (AI) will fundamentally change medicine and healthcare: Diagnostic patient data, e.g. from ECG, EEG or X-ray images, can be analyzed with the help of machine learning, so that diseases can be detected at a very early stage based on subtle changes.
From:
Technische Universität Dresden
August 20, 2021 -- Implanting AI within
the human body is still a major technical challenge. Scientists have now
succeeded in developing a bio-compatible implantable AI platform that
classifies in real time healthy and pathological patterns in biological signals
such as heartbeats. It detects pathological changes even without medical
supervision. The research results have
now been published in the journal Science Advances.
In this work, the research team led by
Prof. Karl Leo, Dr. Hans Kleemann and Matteo Cucchi demonstrates an approach
for real-time classification of healthy and diseased bio-signals based on a
biocompatible AI chip. They used polymer-based fiber networks that structurally
resemble the human brain and enable the neuromorphic AI principle of reservoir
computing. The random arrangement of polymer fibers forms a so-called
"recurrent network," which allows it to process data, analogous to
the human brain. The nonlinearity of these networks enables to amplify even the
smallest signal changes, which -- in the case of the heartbeat, for example --
are often difficult for doctors to evaluate. However, the nonlinear
transformation using the polymer network makes this possible without any
problems.
In trials, the AI was able to
differentiate between healthy heartbeats from three common arrhythmias with an
88% accuracy rate. In the process, the polymer network consumed less energy
than a pacemaker. The potential applications for implantable AI systems are
manifold: For example, they could be used to monitor cardiac arrhythmias or
complications after surgery and report them to both doctors and patients via
smartphone, allowing for swift medical assistance.
"The vision of combining modern
electronics with biology has come a long way in recent years with the
development of so-called organic mixed conductors," explains Matteo
Cucchi, PhD student and first author of the paper. "So far, however, successes
have been limited to simple electronic components such as individual synapses
or sensors. Solving complex tasks has not been possible so far. In our
research, we have now taken a crucial step toward realizing this vision. By
harnessing the power of neuromorphic computing, such as reservoir computing
used here, we have succeeded in not only solving complex classification tasks
in real time but we will also potentially be able to do this within the human
body. This approach will make it possible to develop further intelligent
systems in the future that can help save human lives."
https://www.sciencedaily.com/releases/2021/08/210820135346.htm
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