A new study by Monash University, together with Alfred Health and The Royal Melbourne Hospital, has uncovered how machine learning technology could be used to automate epilepsy diagnosis.

As part of the study, Monash University researchers applied over 400 electroencephalogram (EEG) recordings of patients with and without epilepsy from Alfred Health and The Royal Melbourne hospital to a machine learning model. Training the model with the various datasets enabled it to automatically detect signs of epilepsy -- or abnormal activities known as "spikes" in EEG recordings.

"The objective of the first stage is to evaluate existing patterns involved in the detection of abnormal electrical recordings among neurons in the brain, called epileptiform activity. These abnormalities are often sharp spikes which stand out from the rhythmic patterns of a patient's EEG scan," explained Levin Kuhlmann, Monash University senior lecturer at the Faculty of IT Department of Data Science and AI.

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Doug Nhu, fellow project researcher and PhD candidate from the faculty said applying machine learning to the process has the potential to free up the time of medical professionals, as the current process to diagnose epilepsy is often a lengthy one.

"Being able to apply a machine learning model across various datasets demonstrates our ability to create an algorithm that is more reliable, adaptive, and intelligent than existing models, making our model more useful when applied in real-world scenarios such as diagnosing patients in a clinic," he said.

In addition to diagnosing epilepsy patients, machine learning technology has the potential to be used as a training tool for graduate neurologists, who can use the technology as a baseline to compare against epilepsy patient records, the university said.

"Our plans for

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