Borne Léonie, Rivière Denis, Cachia Arnaud, Roca Pauline, Mellerio Charles, Oppenheim Catherine, Mangin Jean-François
Université Paris-Saclay, CEA, CNRS, Baobab, Neurospin, Gif-sur-Yvette, France; University of Newcastle, HMRI, Systems Neuroscience Group, NSW, Australia.
Université Paris-Saclay, CEA, CNRS, Baobab, Neurospin, Gif-sur-Yvette, France.
Neuroimage. 2021 Sep;238:118208. doi: 10.1016/j.neuroimage.2021.118208. Epub 2021 Jun 2.
The study of local cortical folding patterns showed links with psychiatric illnesses as well as cognitive functions. Despite the tools now available to visualize cortical folds in 3D, manually classifying local sulcal patterns is a time-consuming and tedious task. In fact, 3D visualization of folds helps experts to identify different sulcal patterns but fold variability is so high that the distinction between these patterns sometimes requires the definition of complex criteria, making manual classification difficult and not reliable. However, the assessment of the impact of these patterns on the functional organization of the cortex could benefit from the study of large databases, especially when studying rare patterns. In this paper, several algorithms for the automatic classification of fold patterns are proposed to allow morphological studies to be extended and confirmed on such large databases. Three methods are proposed, the first based on a Support Vector Machine (SVM) classifier, the second on the Scoring by Non-local Image Patch Estimator (SNIPE) approach and the third based on a 3D Convolution Neural Network (CNN). These methods are generic enough to be applicable to a wide range of folding patterns. They are tested on two types of patterns for which there is currently no method to automatically identify them: the Anterior Cingulate Cortex (ACC) patterns and the Power Button Sign (PBS). The two ACC patterns are almost equally present whereas PBS is a particularly rare pattern in the general population. The three models proposed achieve balanced accuracies of approximately 80% for ACC patterns classification and 60% for PBS classification. The CNN-based model is more interesting for the classification of ACC patterns thanks to its rapid execution. However, SVM and SNIPE-based models are more effective in managing unbalanced problems such as PBS recognition.
对局部皮质折叠模式的研究表明,其与精神疾病以及认知功能存在关联。尽管现在有工具可用于三维可视化皮质褶皱,但手动对局部脑沟模式进行分类是一项耗时且繁琐的任务。事实上,褶皱的三维可视化有助于专家识别不同的脑沟模式,但褶皱的变异性非常高,以至于区分这些模式有时需要定义复杂的标准,这使得手动分类既困难又不可靠。然而,研究这些模式对皮质功能组织的影响可能会受益于对大型数据库的研究,尤其是在研究罕见模式时。本文提出了几种用于自动分类折叠模式的算法,以便在这样的大型数据库上扩展和确认形态学研究。提出了三种方法,第一种基于支持向量机(SVM)分类器,第二种基于非局部图像块估计器评分(SNIPE)方法,第三种基于三维卷积神经网络(CNN)。这些方法具有足够的通用性,可适用于广泛的折叠模式。它们针对目前尚无自动识别方法的两种模式进行了测试:前扣带回皮质(ACC)模式和电源按钮征(PBS)。两种ACC模式出现的频率几乎相同,而PBS在普通人群中是一种特别罕见的模式。所提出的三种模型在ACC模式分类中实现了约80%的平衡准确率,在PBS分类中实现了60%的平衡准确率。基于CNN的模型由于执行速度快,在ACC模式分类方面更具优势。然而,基于SVM和SNIPE的模型在处理诸如PBS识别等不平衡问题时更有效。