Xie Jing, Alcantara Dan, Amenta Nina, Fletcher Evan, Martinez Oliver, Persianinova Maria, DeCarli Charles, Carmichael Owen
Department of Computer Science, University of California, Davis, California 95618, USA.
Hippocampus. 2009 Jun;19(6):526-32. doi: 10.1002/hipo.20618.
We present a method for generating data-driven, concise, and spatially localized parameterizations of hippocampal (HP) shape, and use the method to analyze HP atrophy in late-life cognitive decline. The method optimizes a set of shape basis vectors (shape components) that strike a balance between spatial locality and compact representation of population shape characteristics. The method can be used for exploratory analysis of localized shape deformations in any population of HP on which point-to-point correspondence mappings have been established via anatomical landmarking or high-dimensional warping. Experiments combine the method with an automated HP to HP mapping method to analyze tracings of 101 elderly subjects with normal cognition, mild cognitive impairment, and Alzheimer's Disease (AD) from an AD Center population. Results suggest that shape components corresponding to atrophy to the CA1 and subiculum HP fields--where early AD pathology is located--correlate strongly with robust measures of the cognitive dysfunction that is typical of early AD. Furthermore, the energy function minimized by the shape component optimization technique is shown to be smooth with few local minima, suggesting that the method may be relatively easy to apply in practice.
我们提出了一种方法,用于生成数据驱动、简洁且空间局部化的海马体(HP)形状参数化,并使用该方法分析晚年认知衰退中的HP萎缩。该方法优化了一组形状基向量(形状分量),这些向量在空间局部性和群体形状特征的紧凑表示之间取得平衡。该方法可用于对任何已通过解剖学地标或高维扭曲建立点对点对应映射的HP群体中的局部形状变形进行探索性分析。实验将该方法与一种自动的HP到HP映射方法相结合,以分析来自一个AD中心群体的101名认知正常、轻度认知障碍和阿尔茨海默病(AD)老年受试者的追踪数据。结果表明,与CA1和海马下托HP区域萎缩相对应的形状分量(早期AD病理所在位置)与早期AD典型的认知功能障碍的可靠测量指标密切相关。此外,形状分量优化技术最小化的能量函数显示出平滑且局部最小值较少,这表明该方法在实践中可能相对容易应用。