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Automated and Interpretable Detection of Hippocampal Sclerosis in Temporal Lobe Epilepsy: AID-HS.

ANNALS OF NEUROLOGY(2025)

30 Guilford St | McGill Univ | UCL Great Ormond St Inst Child Hlth | Amrita Vishwa Vidyapeetham | Beijing Tiantan Hosp | Bristol Royal Hosp Children | Cent Emergency Mil Hosp | Univ Hosp Wales | Childrens Natl Hosp | Cleveland Clin | Clin Las Condes | ERN EpiCARE | Great Ormond St Hosp Sick Children | Ruber Int Hosp | Newcastle Univ | Monash Univ | Birmingham Womens & Childrens NHS Fdn Trust | NYU | UCL Queen Sq Inst Neurol | UNICAMP Univ Campinas | Univ Hosp Bonn | Schulich Sch Med & Dent

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Abstract
OBJECTIVE:Hippocampal sclerosis (HS), the most common pathology associated with temporal lobe epilepsy (TLE), is not always visible on magnetic resonance imaging (MRI), causing surgical delays and reduced postsurgical seizure-freedom. We developed an open-source software to characterize and localize HS to aid the presurgical evaluation of children and adults with suspected TLE. METHODS:We included a multicenter cohort of 365 participants (154 HS; 90 disease controls; 121 healthy controls). HippUnfold was used to extract morphological surface-based features and volumes of the hippocampus from T1-weighted MRI scans. We characterized pathological hippocampi in patients by comparing them to normative growth charts and analyzing within-subject feature asymmetries. Feature asymmetry scores were used to train a logistic regression classifier to detect and lateralize HS. The classifier was validated on an independent multicenter cohort of 275 patients with HS and 161 healthy and disease controls. RESULTS:HS was characterized by decreased volume, thickness, and gyrification alongside increased mean and intrinsic curvature. The classifier detected 90.1% of unilateral HS patients and lateralized lesions in 97.4%. In patients with MRI-negative histopathologically-confirmed HS, the classifier detected 79.2% (19/24) and lateralized 91.7% (22/24). The model achieved similar performances on the independent cohort, demonstrating its ability to generalize to new data. Individual patient reports contextualize a patient's hippocampal features in relation to normative growth trajectories, visualise feature asymmetries, and report classifier predictions. INTERPRETATION:Automated and Interpretable Detection of Hippocampal Sclerosis (AID-HS) is an open-source pipeline for detecting and lateralizing HS and outputting clinically-relevant reports. ANN NEUROL 2024.
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要点】:本研究开发了一种名为AID-HS的开源软件,能自动化且解释性地检测颞叶癫痫中常见病理性改变的海马硬化(HS),提高手术前评估的准确性。

方法】:研究采用HippUnfold工具从T1加权MRI扫描中提取海马形态学特征及体积,通过与正常生长曲线比较以及分析同主体特征不对称性来鉴定病理性海马。

实验】:实验包括来自多中心的365名参与者(154名HS患者;90名疾病对照;121名健康对照),并在独立的多中心队列的275名HS患者和161名健康及疾病对照中进行验证。结果显示,AID-HS分类器在检测单侧HS患者中识别率为90.1%,定位准确率为97.4%。对于MRI阴性但组织学确认的HS患者,检测率为79.2%,定位率为91.7%。该模型在独立数据集上表现相似,证实了其对新数据的泛化能力。