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A computational tool for pre-surgical evaluation of epilepsy patients

机译:癫痫患者术前评估的计算工具

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Epilepsy is a neurological condition affecting 50 million people worldwide. Patients suffer from recurrent seizures that disrupt various aspects of normal life and lead to brain damage and other comorbidities. Unfortunately, up to 40% of epilepsy patients have medically refractory epilepsy (MRE), which is unresponsive to medication. For these patients, the only solution is surgical removal of the region of the brain causing the seizures, or the epileptogenic zone (EZ). However, surgical resection is contingent upon correct identification of the EZ, a challenging task that is currently done by visual inspection of hundreds of channels of information. Unsurprisingly, resection has a 50% long-term failure rate, largely due to misidentification of the EZ. Repeated invasive monitoring to increase the accuracy of EZ identification is also not a desirable option because it is both dangerous and expensive. We have developed a computational tool, EZTrack, to help clinicians identify a patient's EZ using intracranial EEG data. EZTrack employs a novel algorithm to analyze the brain as a network during different seizure and non-seizure time periods in order to isolate the likely location of the EZ. In preliminary testing of EZTrack on data from 19 patients who underwent surgical resection, we were able to correctly predict all of their outcomes. EZTrack holds far-reaching implications for epilepsy patients, including reduced hospital stays, decreased costs, lowered risk of comorbidities, and better surgical outcomes. With EZTrack, patients who undergo the formidable procedure of surgical resection will have a significantly greater chance of actually living life seizure-free.
机译:癫痫病是一种神经病,影响了全世界五千万人。患者反复发作会破坏正常生活的各个方面,并导致脑部损伤和其他合并症。不幸的是,多达40%的癫痫患者患有药物难治性癫痫(MRE)。对于这些患者,唯一的解决方案是手术切除导致癫痫发作的大脑区域或癫痫发生区(EZ)。但是,手术切除要取决于对EZ的正确识别,这是一项艰巨的任务,目前需要通过目视检查数百条信息通道来完成。毫不奇怪,切除术的长期失败率高达50%,这在很大程度上是由于对EZ的错误识别。重复侵入式监视以提高EZ识别的准确性也是不理想的选择,因为它既危险又昂贵。我们开发了一种计算工具EZTrack,可帮助临床医生使用颅内EEG数据识别患者的EZ。 EZTrack采用一种新颖的算法在不同的癫痫发作时间和非癫痫发作时间段内将大脑分析为网络,以隔离EZ的可能位置。在对EZTrack的初步测试中,该数据来自19位接受了手术切除的患者的数据,我们能够正确预测其所有结局。 EZTrack对癫痫患者具有深远的影响,包括减少住院时间,降低成本,降低合并症风险以及改善手术效果。有了EZTrack,经历了艰巨手术切除过程的患者实际上没有癫痫发作的机会将大大增加。

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