<?xml version="1.0" encoding="UTF-8" standalone="yes"?><oembed><version><![CDATA[1.0]]></version><provider_name><![CDATA[TBI Rehabilitation]]></provider_name><provider_url><![CDATA[https://tbirehabilitation.wordpress.com]]></provider_url><author_name><![CDATA[Kostas Pantremenos]]></author_name><author_url><![CDATA[https://tbirehabilitation.wordpress.com/author/onganalop/]]></author_url><title><![CDATA[[WEB PAGE] Wearable system designed to predict&nbsp;seizures]]></title><type><![CDATA[link]]></type><html><![CDATA[
<p>By <a href="https://newatlas.com/author/ben-coxworth/">Ben Coxworth</a>, September 29, 2020</p>



<figure class="wp-block-image"><img src="https://assets.newatlas.com/dims4/default/6cf6eb7/2147483647/strip/true/crop/7595x5063+0+0/resize/1200x800!/quality/90/?url=http%3A%2F%2Fnewatlas-brightspot.s3.amazonaws.com%2Fbb%2F17%2F3a5a01d44c88bef24cebf710af37%2Fdepositphotos-61421789-xl-2015.jpeg" alt="Unexpected epileptic seizures are not only unsettling, but they can also result in injuries" /><figcaption>Unexpected epileptic seizures are not only unsettling, but they can also result in injuries dmn/Depositphotos</figcaption></figure>



<p>Although medication does help control seizures in some epilepsy patients, it doesn&#8217;t have much of an effect on others. A new system is designed to help the latter group, by at least letting them know when seizures are about to occur.</p>



<p>Created by scientists at Israel&#8217;s Ben-Gurion University of the Negev, the Epiness system consists of two parts – an array of scalp-mounted EEG (electroencephalography) electrodes that monitor the electrical activity of their brain, and a linked microprocessor running machine learning-based algorithms. Those algorithms were trained on EEG data from a &#8220;large dataset&#8221; of epilepsy patients, which was gathered when they both were and were not experiencing seizures.</p>



<p>By learning which patterns consistently occurred in the electrical activity that immediately preceded seizures, the algorithms were ultimately able to predict their onset with a 97-percent rate of accuracy. The algorithms are additionally able to differentiate between the brain&#8217;s electrical signals and distracting background &#8220;noise.&#8221; This means that only a few electrodes need to ultimately be used, with the system reportedly remaining 95-percent accurate.</p>



<p>&#8220;Epileptic seizures expose epilepsy patients to various preventable hazards, including falls, burns and other injuries,&#8221; says the lead scientist, Dr. Oren Shriki. &#8220;We are therefore very excited that the machine-learning algorithms that we developed enable accurate prediction of impending seizures up to one hour prior to their occurrence.&#8221;</p>



<p>The Epiness technology has been licensed to Ben-Gurion spinoff company NeuroHelp, which is developing it further. Plans call for a prototype to be assessed in clinical trials later this year.</p>



<p>A German consortium is also working on a&nbsp;<a href="https://newatlas.com/epitect-epilepsy-sensor/42692/?itm_source=newatlas&amp;itm_medium=article-body">seizure-predicting earpiece</a>, that detects telltale increases in the wearer&#8217;s pulse.</p>



<p>Source:&nbsp;<a href="https://aabgu.org/" target="_blank" rel="noreferrer noopener">American Associates, Ben-Gurion University of the Negev</a></p>
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