Epilepsy Society MRI Unit, Department of Clinical and Experimental Epilepsy, UCL Institute of Neurology, London, United Kingdom.
Epilepsia. 2013 Dec;54(12):2166-73. doi: 10.1111/epi.12408. Epub 2013 Oct 23.
Hippocampal sclerosis, a common cause of refractory focal epilepsy, requires hippocampal volumetry for accurate diagnosis and surgical planning. Manual segmentation is time-consuming and subject to interrater/intrarater variability. Automated algorithms perform poorly in patients with temporal lobe epilepsy. We validate and make freely available online a novel automated method.
Manual hippocampal segmentation was performed on 876, 3T MRI scans and 202, 1.5T scans. A template database of 400 high-quality manual segmentations was used to perform automated segmentation of all scans with a multi-atlas-based segmentation propagation method adapted to perform label fusion based on local similarity to ensure accurate segmentation regardless of pathology. Agreement between manual and automated segmentations was assessed by degree of overlap (Dice coefficient) and comparison of hippocampal volumes.
The automated segmentation algorithm provided robust delineation of the hippocampi on 3T scans with no more variability than that seen between different human raters (Dice coefficients: interrater 0.832, manual vs. automated 0.847). In addition, the algorithm provided excellent results with the 1.5T scans (Dice coefficient 0.827), and automated segmentation remained accurate even in small sclerotic hippocampi. There was a strong correlation between manual and automated hippocampal volumes (Pearson correlation coefficient 0.929 on the left and 0.941 on the right in 3T scans).
We demonstrate reliable identification of hippocampal atrophy in patients with hippocampal sclerosis, which is crucial for clinical management of epilepsy, particularly if surgical treatment is being contemplated. We provide a free online Web-based service to enable hippocampal volumetry to be available globally, with consequent greatly improved evaluation of those with epilepsy.
海马硬化是难治性局灶性癫痫的常见原因,需要进行海马体积测量以进行准确诊断和手术规划。手动分割耗时且存在观察者间/观察者内变异性。自动算法在颞叶癫痫患者中表现不佳。我们验证并在线提供了一种新的自动方法。
对 876 例 3T MRI 扫描和 202 例 1.5T 扫描进行了手动海马分割。使用 400 个高质量手动分割的模板数据库,通过基于多图谱的分割传播方法进行所有扫描的自动分割,该方法适用于根据局部相似性进行标签融合以确保无论病理如何都能进行准确分割。通过重叠程度(Dice 系数)和海马体积比较来评估手动和自动分割之间的一致性。
自动分割算法在 3T 扫描上提供了可靠的海马描绘,其变异性与不同人类观察者之间的变异性相同(Dice 系数:观察者间 0.832,手动与自动 0.847)。此外,该算法在 1.5T 扫描中也取得了出色的结果(Dice 系数 0.827),即使是在小的硬化海马中,自动分割仍然准确。手动和自动海马体积之间存在很强的相关性(3T 扫描中左侧的 Pearson 相关系数为 0.929,右侧为 0.941)。
我们证明了该方法能够可靠地识别海马硬化患者的海马萎缩,这对于癫痫的临床管理至关重要,特别是如果考虑手术治疗。我们提供了一个免费的在线网络服务,使全球范围内都可以进行海马体积测量,从而大大改善了对癫痫患者的评估。