Medical Education Research Center, Graduate School of Medical Sciences, Kanazawa University, Kanazawa, Japan.
Department of Rheumatology, Kanazawa University Graduate School of Medicine, Kanazawa, Japan.
PLoS One. 2022 Jul 11;17(7):e0271161. doi: 10.1371/journal.pone.0271161. eCollection 2022.
Renal pathology is essential for diagnosing and assessing the severity and prognosis of kidney diseases. Deep learning-based approaches have developed rapidly and have been applied in renal pathology. However, methods for the automated classification of normal and abnormal renal tubules remain scarce. Using a deep learning-based method, we aimed to classify normal and abnormal renal tubules, thereby assisting renal pathologists in the evaluation of renal biopsy specimens. Consequently, we developed a U-Net-based segmentation model using randomly selected regions obtained from 21 renal biopsy specimens. Further, we verified its performance in multiclass segmentation by calculating the Dice coefficients (DCs). We used 15 cases of tubulointerstitial nephritis to assess its applicability in aiding routine diagnoses conducted by renal pathologists and calculated the agreement ratio between diagnoses conducted by two renal pathologists and the time taken for evaluation. We also determined whether such diagnoses were improved when the output of segmentation was considered. The glomeruli and interstitium had the highest DCs, whereas the normal and abnormal renal tubules had intermediate DCs. Following the detailed evaluation of the tubulointerstitial compartments, the proximal, distal, atrophied, and degenerated tubules had intermediate DCs, whereas the arteries and inflamed tubules had low DCs. The annotation and output areas involving normal and abnormal tubules were strongly correlated in each class. The pathological concordance for the glomerular count, t, ct, and ci scores of the Banff classification of renal allograft pathology remained high with or without the segmented images. However, in terms of time consumption, the quantitative assessment of tubulitis, tubular atrophy, degenerated tubules, and the interstitium was improved significantly when renal pathologists considered the segmentation output. Deep learning algorithms can assist renal pathologists in the classification of normal and abnormal tubules in renal biopsy specimens, thereby facilitating the enhancement of renal pathology and ensuring appropriate clinical decisions.
肾脏病理学对于诊断和评估肾脏疾病的严重程度和预后至关重要。基于深度学习的方法已经迅速发展,并已应用于肾脏病理学。然而,用于自动分类正常和异常肾小管的方法仍然很少。我们使用基于深度学习的方法,旨在对正常和异常肾小管进行分类,从而协助肾脏病理学家评估肾脏活检标本。因此,我们使用从 21 个肾脏活检标本中随机选择的区域开发了基于 U-Net 的分割模型。此外,我们通过计算 Dice 系数 (DC) 来验证其在多类分割中的性能。我们使用 15 例肾小管间质性肾炎来评估其在辅助肾脏病理学家进行常规诊断中的适用性,并计算两位肾脏病理学家之间诊断的一致性比例和评估所需的时间。我们还确定了在考虑分割输出时是否可以改善这些诊断。肾小球和间质的 DC 最高,而正常和异常肾小管的 DC 居中。在对肾小管间质性隔室进行详细评估后,近端、远端、萎缩和退化的肾小管的 DC 居中,而动脉和炎症性肾小管的 DC 较低。在每个类别中,注释和输出区域涉及正常和异常肾小管的区域均具有很强的相关性。无论是否有分割图像,肾小球计数、t、ct 和 ci 评分的 Banff 分类的肾移植病理的病理一致性仍然很高。然而,就时间消耗而言,当肾脏病理学家考虑分割输出时,对肾小管炎、肾小管萎缩、退化肾小管和间质的定量评估得到了显著改善。深度学习算法可以帮助肾脏病理学家对肾脏活检标本中的正常和异常肾小管进行分类,从而促进肾脏病理学的发展并确保做出适当的临床决策。