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A fuzzy rule based approach to identify brain structures using MRI, in the presence of individual anatomical differences

机译:存在个体解剖差异的基于MRI的基于模糊规则的大脑结构识别方法

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A major limitation to brain imaging studies is experimental noise generated at multiple levels, including the measurement instrument, the individual's responses to a task and anatomical differences that make precise localization difficult. To accommodate these limitations, groups of test subjects are necessary, and anatomical variations among individual brain MRI's are reduced through a geometric "warping" technique that transforms each individual's brain to a standard norm, upon which functional activation patterns are superimposed. In this way, reliability of the data obtained is increased. The disadvantage of such a process is the need to ignore individual differences in the absence of proof that they do not actually constitute noise. A method in which an individual's activation patterns can be reliably superimposed upon their own anatomy prior to being entered into the data analysis would reduce at least one source of error. Because subtle anatomical variations exist even among normals, yet major structures have remarkable consistency between persons, we have begun to explore the potential of establishing fuzzy "maps" by which an individual's activation pattern can be tied directly to their anatomy in an efficient, unbiased way. We have already demonstrated the feasibility of this approach with a fuzzy rule based method to identify the frontal lobes, in which the major landmarks that an expert uses to identify brain structures were translated into rules and identification accomplished when multiple criteria were applied. We have determined that in order to extend this method to more complex structures, additional data needs to be incorporated in a flexible model. An example of a complex structure of interest is the hippocampus, a curved structure without clear identifiable borders. We have turned to the anatomical literature in which individual differences in brain structure are often extensively catalogued, most commonly to aid the surgeon, and in which the range of "normal" variation is presented in statistical form. Our intention is to use membership values derived from the incidence of anatomical variation in the normal population and to assign fuzzy values to borders where landmarks are less distinct. We will determine whether such a process can generate an anatomical segmentation suitable for functional activation studies. Such a process should obviate the need for the extensive data reduction that inevitably occurs in conventional warping technique. The variety of data available and the strategies tested thus far will be presented and discussed.
机译:脑成像研究的主要局限性是在多个级别上产生的实验噪声,包括测量仪器,个体对任务的响应以及解剖学差异,这些都使精确定位变得困难。为了适应这些局限性,有必要对测试对象进行分组,并通过几何“扭曲”技术减少个体大脑MRI之间的解剖学差异,该技术将每个个体的大脑转换为标准规范,并在其上叠加功能激活模式。以这种方式,增加了所获得的数据的可靠性。这种过程的缺点是,在没有证据表明它们实际上不会构成噪声的情况下,需要忽略它们之间的差异。一种方法,在该方法中,可以在将个人的激活模式可靠地叠加到数据分析之前叠加到自己的解剖结构上,这将减少至少一个错误源。由于即使在正常人之间也存在细微的解剖变化,但是主要结构在人与人之间具有显着的一致性,因此我们已经开始探索建立模糊“图”的潜力,通过该图可以将个人的激活模式以有效,无偏见的方式直接与其解剖结构联系起来。 。我们已经用基于模糊规则的方法来识别额叶证明了该方法的可行性,在该方法中,专家用来识别大脑结构的主要标志被转换成规则,并且在应用多个标准时就可以完成识别。我们已经确定,为了将该方法扩展到更复杂的结构,需要在灵活的模型中合并其他数据。感兴趣的复杂结构的一个例子是海马体,这是一种弯曲的结构,没有清晰可辨的边界。我们已经转向解剖学文献,其中经常对脑结构的个体差异进行广泛分类,最常见的是为外科医生提供帮助,并且以统计形式显示“正常”变异的范围。我们的目的是使用从正常人群中解剖变化的发生率得出的隶属度值,并将模糊值分配给界标不太明显的边界。我们将确定这种过程是否可以生成适合功能激活研究的解剖学分割。这样的过程应该消除对传统的整经技术中不可避免发生的大量数据缩减的需求。到目前为止,将介绍和讨论各种可用的数据和测试的策略。

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