Maier Oskar, Wilms Matthias, von der Gablentz Janina, Krämer Ulrike M, Münte Thomas F, Handels Heinz
Institute of Medical Informatics, University of Lübeck, Germany; Graduate School for Computing in Medicine and Live Science, University of Lübeck, Germany.
Institute of Medical Informatics, University of Lübeck, Germany.
J Neurosci Methods. 2015 Jan 30;240:89-100. doi: 10.1016/j.jneumeth.2014.11.011. Epub 2014 Nov 21.
To analyse the relationship between structure and (dys-)function of the brain after stroke, accurate and repeatable segmentation of the lesion area in magnetic resonance (MR) images is required. Manual delineation, the current gold standard, is time consuming and suffers from high intra- and inter-observer differences.
A new approach is presented for the automatic and reproducible segmentation of sub-acute ischemic stroke lesions in MR images in the presence of other pathologies. The proposition is based on an Extra Tree forest framework for voxel-wise classification and mainly intensity derived image features are employed.
A thorough investigation of multi-spectral variants, which combine the information from multiple MR sequences, finds the fluid attenuated inversion recovery sequence to be both required and sufficient for a good segmentation result. The accuracy can be further improved by adding features extracted from the T1-weighted and the diffusion weighted sequences. The use of other sequences is discouraged, as they impact negatively on the results.
Quantitative evaluation was carried out on 37 clinical cases. With a Dice coefficient of 0.65, the method outperforms earlier published methods.
The approach proves especially suitable to differentiate between new stroke and other white matter lesions based on the FLAIR sequence alone. This, and the high overlap, renders it suitable for automatic screening of large databases of MR scans, e.g. for a subsequent neuropsychological investigation. Finally, each feature's importance is assessed in detail and the approach's statistical dependency on clinical and image characteristics is investigated.
为分析中风后脑的结构与(功能)障碍之间的关系,需要对磁共振(MR)图像中的病变区域进行准确且可重复的分割。手动勾勒作为当前的金标准,耗时且观察者内和观察者间差异较大。
提出了一种新方法,用于在存在其他病变的情况下自动且可重复地分割MR图像中的亚急性缺血性中风病变。该方法基于用于逐体素分类的Extra Tree森林框架,主要采用基于强度的图像特征。
对结合多个MR序列信息的多光谱变体进行深入研究,发现液体衰减反转恢复序列对于获得良好的分割结果既是必需的也是足够的。通过添加从T1加权序列和扩散加权序列中提取的特征,准确性可进一步提高。不建议使用其他序列,因为它们会对结果产生负面影响。
对37例临床病例进行了定量评估。该方法的Dice系数为0.65,优于早期发表的方法。
该方法尤其适用于仅基于FLAIR序列区分新的中风和其他白质病变。这一点以及高重叠率使其适用于对MR扫描大型数据库进行自动筛查,例如用于后续的神经心理学研究。最后,详细评估了每个特征的重要性,并研究了该方法对临床和图像特征的统计依赖性。