Wakasaki Rumie, Eiwaz Mahaba, McClellan Nicholas, Matsushita Katsuyuki, Golgotiu Kirsti, Hutchens Michael P
Anesthesiology and Perioperative Medicine, Oregon Health and Science University, Portland, OR, USA.
Portland Veterans Affairs Medical Center, Portland, OR, USA.
Histol Histopathol. 2018 Nov;33(11):1227-1234. doi: 10.14670/HH-18-012. Epub 2018 Jun 14.
A technical challenge in translational models of kidney injury is determination of the extent of cell death. Histologic sections are commonly analyzed by area morphometry or unbiased stereology, but stereology requires specialized equipment. Therefore, a challenge to rigorous quantification would be addressed by an unbiased stereology tool with reduced equipment dependence. We hypothesized that it would be feasible to build a novel software component which would facilitate unbiased stereologic quantification on scanned slides, and that unbiased stereology would demonstrate greater precision and decreased bias compared with 2D morphometry.
We developed a macro for the widely used image analysis program, Image J, and performed cardiac arrest with cardiopulmonary resuscitation (CA/CPR, a model of acute cardiorenal syndrome) in mice. Fluorojade-B stained kidney sections were analyzed using three methods to quantify cell death: gold standard stereology using a controlled stage and commercially-available software, unbiased stereology using the novel ImageJ macro, and quantitative 2D morphometry also using the novel macro.
There was strong agreement between both methods of unbiased stereology (bias -0.004±0.006 with 95% limits of agreement -0.015 to 0.007). 2D morphometry demonstrated poor agreement and significant bias compared to either method of unbiased stereology.
Unbiased stereology is facilitated by a novel macro for ImageJ and results agree with those obtained using gold-standard methods. Automated 2D morphometry overestimated tubular epithelial cell death and correlated modestly with values obtained from unbiased stereology. These results support widespread use of unbiased stereology for analysis of histologic outcomes of injury models.
肾损伤转化模型中的一项技术挑战是确定细胞死亡的程度。组织学切片通常通过面积形态测量法或无偏体视学进行分析,但体视学需要专门的设备。因此,一种减少设备依赖性的无偏体视学工具将解决严格定量的挑战。我们假设构建一个新型软件组件是可行的,该组件将有助于对扫描切片进行无偏体视学定量,并且与二维形态测量相比,无偏体视学将显示出更高的精度和更低的偏差。
我们为广泛使用的图像分析程序Image J开发了一个宏,并在小鼠中进行了心脏骤停并心肺复苏(CA/CPR,急性心肾综合征模型)。使用三种方法分析氟玉红-B染色的肾脏切片以定量细胞死亡:使用可控载物台和商用软件的金标准体视学、使用新型ImageJ宏的无偏体视学以及同样使用新型宏的定量二维形态测量法。
两种无偏体视学方法之间具有很强的一致性(偏差-0.004±0.006,95%一致性界限为-0.015至0.007)。与任何一种无偏体视学方法相比,二维形态测量法显示出较差的一致性和显著偏差。
ImageJ的新型宏有助于进行无偏体视学分析,结果与使用金标准方法获得的结果一致。自动化二维形态测量法高估了肾小管上皮细胞死亡,并且与从无偏体视学获得的值相关性一般。这些结果支持广泛使用无偏体视学来分析损伤模型的组织学结果。