Department of Pathology, University of Ulsan College of Medicine, Asan Medical Center, 88 Olympic-ro 43-gil, Songpa-gu, Seoul, 05505, South Korea.
Department of Biomedical Engineering, Asan Institute of Life Science, University of Ulsan College of Medicine, Asan Medical Center, 88 Olympic-ro 43-gil, Songpa-gu, Seoul, 05505, South Korea.
Mod Pathol. 2020 Aug;33(8):1626-1634. doi: 10.1038/s41379-020-0529-9. Epub 2020 Mar 26.
A deep learning-based image analysis could improve diagnostic accuracy and efficiency in pathology work. Recently, we proposed a deep learning-based detection algorithm for C4d immunostaining in renal allografts. The objective of this study is to assess the diagnostic performance of the algorithm by comparing pathologists' diagnoses and analyzing the associations of the algorithm with clinical data. C4d immunostaining slides of renal allografts were obtained from two different institutions (100 slides from the Asan Medical Center and 86 slides from the Seoul National University Hospital) and scanned using two different slide scanners. Three pathologists and the algorithm independently evaluated each slide according to the Banff 2017 criteria. Subsequently, they jointly reviewed the results for consensus scoring. The result of the algorithm was compared with that of each pathologist and the consensus diagnosis. Clinicopathological associations of the results of the algorithm with allograft survival, histologic evidence of microvascular inflammation, and serologic results for donor-specific antibodies were also analyzed. As a result, the reproducibility between the pathologists was fair to moderate (kappa 0.36-0.54), which is comparable to that between the algorithm and each pathologist (kappa 0.34-0.51). The C4d scores predicted by the algorithm achieved substantial concordance with the consensus diagnosis (kappa = 0.61), and they were significantly associated with remarkable microvascular inflammation (P = 0.001), higher detection rate of donor-specific antibody (P = 0.003), and shorter graft survival (P < 0.001). In conclusion, the deep learning-based C4d detection algorithm showed a diagnostic performance similar to that of the pathologists.
深度学习的图像分析可以提高病理学工作中的诊断准确性和效率。最近,我们提出了一种基于深度学习的肾移植组织中 C4d 免疫染色检测算法。本研究的目的是通过比较病理学家的诊断结果,以及分析算法与临床数据的相关性,来评估该算法的诊断性能。我们从两个不同的机构(一个是 100 个 Asan 医疗中心的肾移植组织 C4d 免疫染色幻灯片,另一个是 86 个首尔国立大学医院的肾移植组织 C4d 免疫染色幻灯片)获取了肾移植组织 C4d 免疫染色的幻灯片,并使用两种不同的扫描仪进行扫描。三位病理学家和算法独立地根据 2017 年 Banff 标准评估每张幻灯片。随后,他们共同对结果进行了共识评分。算法的结果与每位病理学家和共识诊断的结果进行了比较。还分析了算法的结果与移植物存活率、组织学微血管炎症证据和供体特异性抗体的血清学结果之间的临床病理相关性。结果显示,病理学家之间的可重复性为中等至良好(kappa 0.36-0.54),与算法和每位病理学家之间的可重复性(kappa 0.34-0.51)相当。算法预测的 C4d 评分与共识诊断有显著的一致性(kappa = 0.61),与显著的微血管炎症显著相关(P = 0.001)、供体特异性抗体的检测率更高(P = 0.003)和移植物存活率更短(P < 0.001)。总之,基于深度学习的 C4d 检测算法的诊断性能与病理学家相当。