Megalooikonomou V, Ford J, Shen L, Makedon F, Saykin A
Department of Computer Science, Dartmouth Experimental Visualization Laboratory, Dartmouth College, Hanover, New Hampshire, USA.
Stat Methods Med Res. 2000 Aug;9(4):359-94. doi: 10.1177/096228020000900404.
Data mining in brain imaging is proving to be an effective methodology for disease prognosis and prevention. This, together with the rapid accumulation of massive heterogeneous data sets, motivates the need for efficient methods that filter, clarify, assess, correlate and cluster brain-related information. Here, we present data mining methods that have been or could be employed in the analysis of brain images. These methods address two types of brain imaging data: structural and functional. We introduce statistical methods that aid the discovery of interesting associations and patterns between brain images and other clinical data. We consider several applications of these methods, such as the analysis of task-activation, lesion-deficit, and structure morphological variability; the development of probabilistic atlases; and tumour analysis. We include examples of applications to real brain data. Several data mining issues, such as that of method validation or verification, are also discussed.
事实证明,脑成像中的数据挖掘是一种用于疾病预后和预防的有效方法。这一点,再加上海量异构数据集的迅速积累,促使人们需要高效的方法来过滤、澄清、评估、关联和聚类与大脑相关的信息。在此,我们介绍已经或可能用于脑图像分析的数据挖掘方法。这些方法处理两种类型的脑成像数据:结构数据和功能数据。我们引入了有助于发现脑图像与其他临床数据之间有趣关联和模式的统计方法。我们考虑了这些方法的几种应用,例如任务激活分析、病变缺陷分析和结构形态变异性分析;概率图谱的开发;以及肿瘤分析。我们还列举了应用于实际脑数据的示例。此外,还讨论了一些数据挖掘问题,例如方法验证或核实问题。