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Evaluation of Kidney Histological Images Using Unsupervised Deep Learning

机译:用无监督深度学习评估肾脏组织学图像

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IntroductionEvaluating histopathology via machine learning has gained research and clinical interest, and the performance of supervised learning tasks has been described in various areas of medicine. Unsupervised learning of histological images has the advantage of reproducibility for labeling; however, the relationship between unsupervised evaluation and clinical information remains unclear in nephrology.MethodsWe propose an unsupervised approach combining convolutional neural networks (CNNs) and a visualization algorithm to cluster the histological images and calculate the score for patients. We applied the approach to the entire images or patched images of the glomerulus of kidney biopsy samples stained with hematoxylin and eosin obtained from 68 patients with immunoglobulin A nephropathy. We assessed the relationship between the obtained scores and clinical variables of urinary occult blood, urinary protein, serum creatinine (SCr), systolic blood pressure, and age.ResultsThe glomeruli of the patients were classified into 12 distinct classes and 10 patches. The output of the fine-tuned CNN, which we defined as the histological scores, had significant relationships with assessed clinical variables. In addition, the clustering and visualization results suggested that the defined clusters captured important findings when evaluating renal histopathology. For the score of the patch-based cluster containing crescentic glomeruli, SCr (coefficient?= 0.09,P?= 0.019) had a significant relationship.ConclusionThe proposed approach could successfully extract features that were related to the clinical variables from the kidney biopsy images along with the visualization for interpretability. The approach could aid in the quantified evaluation of renal histopathology.
机译:通过机器学习引入组织病理学已经获得了研究和临床兴趣,并且在各种医学领域描述了监督学习任务的性能。无监督的组织学图像的学习具有标记的重复性的优点;然而,无监督评估和临床信息之间的关系仍不清楚肾脏学。近奇地区提出了一种无监督的方法,将卷积神经网络(CNNS)和可视化算法组合以聚类组织学图像并计算患者的得分。我们将肾脏活检样品的整个图像或修补图像的方法应用于用苏木精和从68例免疫球蛋白的68例肾病患者获得的肾上检样品的肾脏肾脏的肾脏。我们评估了所获得的分数和尿血液,尿蛋白,血清肌酐(SCR),收缩压和年龄的临床变量之间的关系。患者的肾小球血小板被分为12个不同的类和10个斑块。我们定义为组织学评分的微调CNN的输出与评估的临床变量具有显着的关系。此外,聚类和可视化结果表明,在评估肾组织病理学时,所定义的群集捕获了重要发现。对于含有新月形肾小球的基于贴剂的簇的得分,SCR(系数?= 0.09,P?= 0.019)具有显着的关系。结论该方法可以成功提取与肾活检图像的临床变量相关的特征随着可解释性的可视化。该方法可以有助于肾组织病理学的定量评价。

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