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Computational analysis in epilepsy neuroimaging: A survey of features and methods

机译:癫痫神经成像的计算分析:特征和方法的概述

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摘要

Epilepsy affects 65 million people worldwide, a third of whom have seizures that are resistant to anti-epileptic medications. Some of these patients may be amenable to surgical therapy or treatment with implantable devices, but this usually requires delineation of discrete structural or functional lesion(s), which is challenging in a large percentage of these patients.Advances in neuroimaging and machine learning allow semi-automated detection of malformations of cortical development (MCDs), a common cause of drug resistant epilepsy. A frequently asked question in the field is what techniques currently exist to assist radiologists in identifying these lesions, especially subtle forms of MCDs such as focal cortical dysplasia (FCD) Type I and low grade glial tumors. Below we introduce some of the common lesions encountered in patients with epilepsy and the common imaging findings that radiologists look for in these patients. We then review and discuss the computational techniques introduced over the past 10 years for quantifying and automatically detecting these imaging findings. Due to large variations in the accuracy and implementation of these studies, specific techniques are traditionally used at individual centers, often guided by local expertise, as well as selection bias introduced by the varying prevalence of specific patient populations in different epilepsy centers. We discuss the need for a multi-institutional study that combines features from different imaging modalities as well as computational techniques to definitively assess the utility of specific automated approaches to epilepsy imaging. We conclude that sharing and comparing these different computational techniques through a common data platform provides an opportunity to rigorously test and compare the accuracy of these tools across different patient populations and geographical locations. We propose that these kinds of tools, quantitative imaging analysis methods and open data platforms for aggregating and sharing data and algorithms, can play a vital role in reducing the cost of care, the risks of invasive treatments, and improve overall outcomes for patients with epilepsy.
机译:癫痫病影响全世界6500万人,其中三分之一的癫痫发作对抗癫痫药有抵抗力。这些患者中的一些可能适合进行外科手术治疗或使用植入式设备进行治疗,但这通常需要描述离散的结构或功能性病变,这对这些患者中的很大一部分来说都是具有挑战性的。 -自动检测皮层发育(MCD)的畸形,这是耐药性癫痫的常见原因。在该领域中经常问到的问题是,目前有哪些技术可以帮助放射科医生识别这些病变,尤其是细微形式的MCD,例如I型局灶性皮质发育不良(FCD)和低度神经胶质瘤。下面我们介绍癫痫患者遇到的一些常见病变以及放射科医生在这些患者中寻找的常见影像学发现。然后,我们回顾并讨论过去10年中引入的用于量化和自动检测这些影像学发现的计算技术。由于这些研究的准确性和实施方式的巨大差异,传统上在个别中心使用特定技术,通常受当地专业知识的指导,并且由于不同癫痫中心特定患者人群患病率的不同而导致选择偏倚。我们讨论了对多机构研究的需求,该研究结合了来自不同成像方式的特征以及计算技术,以明确评估癫痫成像的特定自动化方法的实用性。我们得出结论,通过通用数据平台共享和比较这些不同的计算技术,提供了一个机会来严格测试和比较这些工具在不同患者人群和地理位置上的准确性。我们建议,这类工具,定量成像分析方法以及用于汇总和共享数据及算法的开放数据平台,在降低医疗成本,侵入性治疗风险以及改善癫痫患者的总体疗效方面起着至关重要的作用。 。

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