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首页> 外文期刊>Kidney International Reports >Association of Pathological Fibrosis With Renal Survival Using Deep Neural Networks
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Association of Pathological Fibrosis With Renal Survival Using Deep Neural Networks

机译:深度神经网络将病理性纤维化与肾脏存活联系起来

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Introduction Chronic kidney damage is routinely assessed semiquantitatively by scoring the amount of fibrosis and tubular atrophy in a renal biopsy sample. Although image digitization and morphometric techniques can better quantify the extent of histologic damage, we need more widely applicable ways to stratify kidney disease severity. Methods We leveraged a deep learning architecture to better associate patient-specific histologic images with clinical phenotypes (training classes) including chronic kidney disease (CKD) stage, serum creatinine, and nephrotic-range proteinuria at the time of biopsy, and 1-, 3-, and 5-year renal survival. Trichrome-stained images processed from renal biopsy samples were collected on 171 patients treated at the Boston Medical Center from 2009 to 2012. Six convolutional neural network (CNN) models were trained using these images as inputs and the training classes as outputs, respectively. For comparison, we also trained separate classifiers using the pathologist-estimated fibrosis score (PEFS) as input and the training classes as outputs, respectively. Results CNN models outperformed PEFS across the classification tasks. Specifically, the CNN model predicted the CKD stage more accurately than the PEFS model (κ?= 0.519 vs. 0.051). For creatinine models, the area under curve (AUC) was 0.912 (CNN) versus 0.840 (PEFS). For proteinuria models, AUC was 0.867 (CNN) versus 0.702 (PEFS). AUC values for the CNN models for 1-, 3-, and 5-year renal survival were 0.878, 0.875, and 0.904, respectively, whereas the AUC values for PEFS model were 0.811, 0.800, and 0.786, respectively. Conclusion The study demonstrates a proof of principle that deep learning can be applied to routine renal biopsy images.
机译:简介慢性肾脏损害通常通过对肾脏活检样本中的纤维化和肾小管萎缩程度进行评分,进行半定量评估。尽管图像数字化和形态计量技术可以更好地量化组织学损害的程度,但我们需要更广泛适用的方法来对肾脏疾病的严重程度进行分层。方法我们利用深度学习架构,将患者特定的组织学图像与临床表型(培训课程)更好地关联,包括活检时的慢性肾病(CKD)分期,血清肌酐和肾病范围蛋白尿,以及1、3 -和5年肾脏生存。从2009年至2012年在波士顿医学中心接受治疗的171例患者中收集了由肾脏活检样本处理的三色染色图像。分别使用这些图像作为输入和训练类别作为输出来训练六个卷积神经网络(CNN)模型。为了进行比较,我们还分别使用病理学家估计的纤维化评分(PEFS)作为输入和训练类别作为输出来训练单独的分类器。结果在分类任务中,CNN模型的性能优于PEFS。具体而言,CNN模型比PEFS模型更准确地预测CKD阶段(κ= 0.519 vs. 0.051)。对于肌酸酐模型,曲线下面积(AUC)为0.912(CNN)对0.840(PEFS)。对于蛋白尿模型,AUC为0.867(CNN)对0.702(PEFS)。 CNN模型的1年,3年和5年肾存活率的AUC值分别为0.878、0.875和0.904,而PEFS模型的AUC值分别为0.811、0.800和0.786。结论该研究证明了将深度学习应用于常规肾活检图像的原理性证明。

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