一种新的定量分析纳米颗粒在不同组织和细胞内分布的方法。

Christian Mühlfeld, Terry M Mayhew, Peter Gehr, Barbara Rothen-Rutishauser
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引用次数: 50

摘要

超细颗粒和纳米颗粒在组织和细胞中的渗透、转运和分布是气溶胶研究中的一个具有挑战性的问题。本文描述了一套新的定量显微方法,通过解决以下问题来评估组织和细胞截面图像中的颗粒分布:(1)观察到的空间间隔之间的颗粒分布是随机的吗?(2)哪些隔室优先被颗粒靶向?(3)观察到的粒子分布在不同实验组之间是否发生了移位?这些问题都可以通过检验一个适当的零假设来解决。这些方法都需要通过计算与每个定义的隔室相关的粒子数来估计观察到的粒子分布。为了研究隔室的优先标记,还必须通过计算随机叠加的测试网格命中不同隔室的点数来估计每个隔室的大小。后者提供了关于粒子随机分布时所期望的粒子分布的信息,即粒子的期望数目。从这些数据中,我们可以计算出相对沉积指数(RDI),即用观察到的颗粒数除以期望的颗粒数。RDI表示观察到的颗粒数量是否与单独由隔室大小(RDI = 1)预测的颗粒数量相对应。在一组中,观察到的和预期的颗粒分布通过卡方分析进行比较。总卡方值表示观察到的分布是否随机。如果不是,部分卡方值有助于识别那些是颗粒优先目标的隔室(RDI > 1)。不同组之间的颗粒分布可以通过列联表分析以类似的方式进行比较。我们首先描述了这些方法的前提条件和实现方法,然后提供了三个工作示例,最后讨论了该方法的优点、缺陷和局限性。
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A novel quantitative method for analyzing the distributions of nanoparticles between different tissue and intracellular compartments.

The penetration, translocation, and distribution of ultrafine and nanoparticles in tissues and cells are challenging issues in aerosol research. This article describes a set of novel quantitative microscopic methods for evaluating particle distributions within sectional images of tissues and cells by addressing the following questions: (1) is the observed distribution of particles between spatial compartments random? (2) Which compartments are preferentially targeted by particles? and (3) Does the observed particle distribution shift between different experimental groups? Each of these questions can be addressed by testing an appropriate null hypothesis. The methods all require observed particle distributions to be estimated by counting the number of particles associated with each defined compartment. For studying preferential labeling of compartments, the size of each of the compartments must also be estimated by counting the number of points of a randomly superimposed test grid that hit the different compartments. The latter provides information about the particle distribution that would be expected if the particles were randomly distributed, that is, the expected number of particles. From these data, we can calculate a relative deposition index (RDI) by dividing the observed number of particles by the expected number of particles. The RDI indicates whether the observed number of particles corresponds to that predicted solely by compartment size (for which RDI = 1). Within one group, the observed and expected particle distributions are compared by chi-squared analysis. The total chi-squared value indicates whether an observed distribution is random. If not, the partial chi-squared values help to identify those compartments that are preferential targets of the particles (RDI > 1). Particle distributions between different groups can be compared in a similar way by contingency table analysis. We first describe the preconditions and the way to implement these methods, then provide three worked examples, and finally discuss the advantages, pitfalls, and limitations of this method.

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