Automated Reference Kidney Histomorphometry using a Panoptic Segmentation Neural Network Correlates to Patient Demographics and Creatinine.

Brandon Ginley, Nicholas Lucarelli, Jarcy Zee, Sanjay Jain, Seung Seok Han, Luis Rodrigues, Michelle L Wong, Kuang-Yu Jen, Pinaki Sarder
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Abstract

Reference histomorphometric data of healthy human kidneys are lacking due to laborious quantitation requirements. We leveraged deep learning to investigate the relationship of histomorphometry with patient age, sex, and serum creatinine in a multinational set of reference kidney tissue sections. A panoptic segmentation neural network was developed and used to segment viable and sclerotic glomeruli, cortical and medullary interstitia, tubules, and arteries/arterioles in digitized images of 79 periodic acid-Schiff (PAS)-stained human nephrectomy sections showing minimal pathologic changes. Simple morphometrics (e.g., area, radius, density) were measured from the segmented classes. Regression analysis was used to determine the relationship of histomorphometric parameters with age, sex, and serum creatinine. The model achieved high segmentation performance for all test compartments. We found that the size and density of nephrons, arteries/arterioles, and the baseline level of interstitium vary significantly among healthy humans, with potentially large differences between subjects from different geographic locations. Nephron size in any region of the kidney was significantly dependent on patient creatinine. Slight differences in renal vasculature and interstitium were observed between sexes. Finally, glomerulosclerosis percentage increased and cortical density of arteries/arterioles decreased as a function of age. We show that precise measurements of kidney histomorphometric parameters can be automated. Even in reference kidney tissue sections with minimal pathologic changes, several histomorphometric parameters demonstrated significant correlation to patient demographics and serum creatinine. These robust tools support the feasibility of deep learning to increase efficiency and rigor in histomorphometric analysis and pave the way for future large-scale studies.

使用泛视分割神经网络的自动参考肾脏组织形态测量与患者人口学和肌酐相关。
由于费力的定量要求,缺乏健康人肾脏的参考组织形态计量学数据。我们利用深度学习研究了一组多国参考肾组织切片中组织形态计量学与患者年龄、性别和血清肌酐的关系。开发了一种全景分割神经网络,并用于在79个周期性酸希夫(PAS)染色的人类肾切除术切片的数字化图像中分割活的和硬化的肾小球、皮质和髓质间质、小管以及动脉/小动脉,这些切片显示出最小的病理变化。简单的形态计量学(例如,面积、半径、密度)是从分割的类别中测量的。回归分析用于确定组织形态计量学参数与年龄、性别和血清肌酸酐的关系。该模型实现了所有测试隔间的高分割性能。我们发现,健康人的肾单位、动脉/小动脉的大小和密度以及间质的基线水平存在显著差异,来自不同地理位置的受试者之间可能存在很大差异。肾脏任何区域的肾单位大小都显著依赖于患者的肌酸酐。性别间肾血管系统和间质存在细微差异。最后,肾小球硬化率随着年龄的增长而增加,动脉/小动脉的皮质密度随着年龄的增加而降低。我们表明,肾脏组织形态计量学参数的精确测量可以自动化。即使在病理变化最小的参考肾组织切片中,一些组织形态计量学参数也显示出与患者人口统计学和血清肌酐显著相关。这些强大的工具支持深度学习的可行性,以提高组织形态计量分析的效率和严谨性,并为未来的大规模研究铺平道路。
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