Deep Learning-Based Model Significantly Improves Diagnostic Performance for Assessing Renal Histopathology in Lupus Glomerulonephritis.

IF 3.2 4区 医学 Q1 UROLOGY & NEPHROLOGY
Kidney Diseases Pub Date : 2022-06-07 eCollection Date: 2022-07-01 DOI:10.1159/000524880
Luping Shen, Wenyi Sun, Qixiang Zhang, Mengru Wei, Huanke Xu, Xuan Luo, Guangji Wang, Fang Zhou
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引用次数: 4

Abstract

Background: Assessment of glomerular lesions and structures plays an essential role in understanding the pathological diagnosis of glomerulonephritis and prognostic evaluation of many kidney diseases. Renal pathophysiological assessment requires novel high-throughput tools to conduct quantitative, unbiased, and reproducible analyses representing a central readout. Deep learning may be an effective tool for glomerulonephritis pathological analysis.

Methods: We developed a murine renal pathological system (MRPS) model to objectify the pathological evaluation via the deep learning method on whole-slide image (WSI) segmentation and feature extraction. A convolutional neural network model was used for accurate segmentation of glomeruli and glomerular cells of periodic acid-Schiff-stained kidney tissue from healthy and lupus nephritis mice. To achieve a quantitative evaluation, we subsequently filtered five independent predictors as image biomarkers from all features and developed a formula for the scoring model.

Results: Perimeter, shape factor, minimum internal diameter, minimum caliper diameter, and number of objects were identified as independent predictors and were included in the establishment of the MRPS. The MRPS showed a positive correlation with renal score (r = 0.480, p < 0.001) and obtained great diagnostic performance in discriminating different score bands (Obuchowski index, 0.842 [95% confidence interval: 0.759, 0.925]), with an area under the curve of 0.78-0.98, sensitivity of 58-93%, specificity of 72-100%, and accuracy of 74-94%.

Conclusion: Our MRPS for quantitative assessment of renal WSIs from MRL/lpr lupus nephritis mice enables accurate histopathological analyses with high reproducibility, which may serve as a useful tool for glomerulonephritis diagnosis and prognosis evaluation.

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基于深度学习的模型显著提高狼疮肾小球肾炎肾脏组织病理学评估的诊断性能。
背景:肾小球病变和结构的评估对了解肾小球肾炎的病理诊断和许多肾脏疾病的预后评价起着至关重要的作用。肾脏病理生理评估需要新的高通量工具来进行定量、无偏倚和可重复的分析,代表中心读数。深度学习可能是肾小球肾炎病理分析的有效工具。方法:建立小鼠肾脏病理系统(MRPS)模型,采用深度学习方法对全片图像(WSI)进行分割和特征提取,客观化病理评价。采用卷积神经网络模型对健康小鼠和狼疮性肾炎小鼠肾组织的肾小球和肾小球细胞进行精确分割。为了实现定量评估,我们随后从所有特征中筛选了五个独立的预测因子作为图像生物标志物,并开发了评分模型的公式。结果:周长、形状因子、最小内径、最小卡尺直径和物体数量被确定为独立的预测因素,并被纳入MRPS的建立。MRPS与肾脏评分呈正相关(r = 0.480, p < 0.001),在区分不同评分波段(Obuchowski指数0.842[95%可信区间:0.759,0.925])具有较好的诊断效能,曲线下面积为0.78 ~ 0.98,敏感性为58 ~ 93%,特异性为72 ~ 100%,准确率为74 ~ 94%。结论:MRPS定量评价MRL/lpr狼疮性肾炎小鼠肾wsi的组织病理学分析准确,重现性高,可作为肾小球肾炎诊断和预后评价的有用工具。
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来源期刊
Kidney Diseases
Kidney Diseases UROLOGY & NEPHROLOGY-
CiteScore
6.00
自引率
2.70%
发文量
33
审稿时长
27 weeks
期刊介绍: ''Kidney Diseases'' aims to provide a platform for Asian and Western research to further and support communication and exchange of knowledge. Review articles cover the most recent clinical and basic science relevant to the entire field of nephrological disorders, including glomerular diseases, acute and chronic kidney injury, tubulo-interstitial disease, hypertension and metabolism-related disorders, end-stage renal disease, and genetic kidney disease. Special articles are prepared by two authors, one from East and one from West, which compare genetics, epidemiology, diagnosis methods, and treatment options of a disease.
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