Park Kyung-Il, Son Hyoshin, Hwang Sungeun, Moon Jangsup, Lee Soon-Tae, Jung Keun-Hwa, Chu Kon, Jung Ki-Young, Lee Sang Kun
Department of Neurology, Seoul National University College of Medicine, Seoul, Korea.
Division of Neurology, Seoul National University Hospital Healthcare System Gangnam Center, Seoul, Korea.
J Epilepsy Res. 2024 Dec 10;14(2):59-65. doi: 10.14581/jer.24011. eCollection 2024 Dec.
The magnetic resonance images (MRIs) ability of lesion detection in epilepsy is crucial for a diagnosis and surgical outcome. Using automated artificial intelligence (AI)-based tools for measuring cortical thickness and brain volume originally developed for dementia, we aimed to identify whether it could lateralize epilepsy with normal MRIs.
Non-lesional 3-Tesla MRIs of 428 patients diagnosed with focal epilepsy, based on semiology and electroencephalography findings, were analyzed. AI-based segmentation/volumetry software measured the cortical thickness and the hippocampal volume. The laterality index (LI) was calculated.
We classified into temporal lobe epilepsy (TLE, n=294), frontal lobe epilepsy (FLE, n=86), occipital lobe epilepsy (OLE, n=29), and parietal lobe epilepsy (PLE, n=22). Onset age and MRI age were 24.0±16.6 (0-84) and 35.6±14.8 (16-84) years old. In FLE, the LI of frontal thickness was significantly different between the left and right FLE groups, with LIs of the right FLE group being right-shifted and those of the left FLE group being left-shifted, indicating that the lesion side was thinner than the non-lesion side (=0.01). The discriminable group, which included the patients with left FLE and a LI lower than minus one standard deviation, as well as the patients with right FLE and a LI higher than one standard deviation, showed a longer duration of epilepsy than the non-discriminable group (12.7±9.9 vs. 8.3±7.7 years; =0.03). Specifically, the LI of individual regions of interest showed that the rostral middle frontal cortex was significantly different in FLE. However, the TLE, PLE, OLE, and LIs were not significantly different.
AI-based brain segmentation software can be helpful to decide the laterality of non-lesional FLE especially with longer duration of disease.
磁共振成像(MRI)检测癫痫病灶的能力对于诊断和手术结果至关重要。我们使用最初为痴呆症开发的基于人工智能(AI)的自动工具来测量皮质厚度和脑容量,旨在确定其能否对MRI正常的癫痫进行定侧。
分析了428例根据症状学和脑电图结果诊断为局灶性癫痫患者的非病灶性3特斯拉MRI。基于AI的分割/容积测量软件测量皮质厚度和海马体积。计算定侧指数(LI)。
我们将患者分为颞叶癫痫(TLE,n = 294)、额叶癫痫(FLE,n = 86)、枕叶癫痫(OLE,n = 29)和顶叶癫痫(PLE,n = 22)。发病年龄和MRI年龄分别为24.0±16.6(0 - 84)岁和35.6±14.8(16 - 84)岁。在FLE中,左右FLE组之间额叶厚度的LI存在显著差异,右侧FLE组的LI右移,左侧FLE组的LI左移,表明病灶侧比非病灶侧更薄(P = 0.01)。可区分组包括左侧FLE且LI低于负一个标准差的患者,以及右侧FLE且LI高于一个标准差的患者,其癫痫病程比不可区分组更长(12.7±9.9 vs. 8.3±7.7年;P = 0.03)。具体而言,感兴趣区域的个体LI显示,FLE中额中回前部皮质存在显著差异。然而,TLE、PLE、OLE和LI没有显著差异。
基于AI的脑部分割软件有助于确定非病灶性FLE的定侧,尤其是对于病程较长的患者。