A novel automated method for comprehensive renal cast quantification from rat kidney sections using QuPath.

Lauren Yunker, Megan Cleland Harwig, Alison J Kriegel
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Abstract

The presence of tubular casts within the kidney serves as an important feature when assessing the degree of renal injury. Quantification of renal tubular casts has been historically difficult due to varying cast morphologies, protein composition, and stain uptake properties, even within the same kidney. Color thresholding remains one of the most common methods of quantification in the laboratory when assessing the percentage of renal casting; however, this method is unable to account for tubule casts stained a variety of colors. We have developed a novel method of automated cast quantification using the machine learning pixel classification tool within QuPath, an open-source software designed for digital pathology. We demonstrated the usability of this method in male and female Dahl salt-sensitive rats fed either low or high salt for 2 wk and male Sprague-Dawley rats treated with podotoxin puromycin aminonucleoside (PAN). Briefly, the pixel classifier was trained to identify kidney tissue, various cast color types, and slide backgrounds. Following the development of the pixel classifier, we applied it to the sample population and compared the results with those of other methods of cast quantification, including color thresholding and manual quantification. We found that the automated pixel classifier designed in QuPath was able to comprehensively quantify metachromatic tubular casts compared with color thresholding. This novel method of cast quantification provides researchers with the ability to reliably automate cast quantification that is both comprehensive and efficient.NEW & NOTEWORTHY We developed a method of automated renal tubule cast quantification using a machine learning-based pixel classifier within QuPath, an open-source image analysis software. The advantages of this approach are demonstrated by rigorous comparison of quantification methods on a set of Masson's trichrome-stained kidney sections from high- and low-salt fed salt-sensitive Dahl rats. Researchers are provided with step-by-step instructions for creating and training a pixel classifier in QuPath for application to image analysis.

一种基于QuPath的大鼠肾切片自动肾铸型定量方法。
肾内管状铸型的存在是评估肾损伤程度的一个重要特征。由于不同的铸型形态、蛋白质组成和染色吸收特性,即使在同一肾脏内,肾小管铸型的定量一直是困难的。颜色阈值仍然是最常见的定量方法之一,在实验室评估肾脏铸造的百分比;然而,这种方法无法解释染色各种颜色的小管铸件。我们已经开发了一种新的自动铸造量化方法,使用QuPath中的机器学习像素分类工具,QuPath是一种为数字病理学设计的开源软件。我们在低盐或高盐喂养两周的雄性和雌性Dahl SS大鼠和用podotoxin puromycin aminonucleoside (PAN)治疗两周的雄性Sprague Dawley大鼠中验证了该方法的有效性。简单地说,像素分类器被训练来识别肾脏组织、各种投色类型和幻灯片背景。随着像素分类器的发展,我们将其应用于样本总体,并将结果与其他cast量化方法(包括颜色阈值和手动量化)的结果进行比较。我们发现,与颜色阈值相比,QuPath设计的自动像素分类器能够全面量化偏色差管状投影。这种新颖的铸态定量方法为研究人员提供了可靠、自动化、全面、高效的铸态定量方法。
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