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深度学习方法在甲真菌病组织病理学诊断中的应用:不逊于组织病理学家的模拟诊断。

A Deep Learning Approach for Histopathological Diagnosis of Onychomycosis: Not Inferior to Analogue Diagnosis by Histopathologists.

机构信息

Dermatologikum Hamburg, Stephansplatz 5, DE-20354 Hamburg, Germany. E-mail:

出版信息

Acta Derm Venereol. 2021 Aug 31;101(8):adv00532. doi: 10.2340/00015555-3893.

Abstract

Onychomycosis is common. Diagnosis can be confirmed by various methods; a commonly used method is the histological examination of nail clippings. A deep learning system was developed and its diagnostic accuracy compared with that of human experts. A dataset with annotations for fungal elements was used to train an artificial intelligence (AI) model. In a second dataset (n=199) the diagnostic accuracy of the AI was compared with that of dermatopathologists. The results show a non-inferiority of the deep learning system to that of analogue diagnosis (non-inferiority margin 5%) with respect to specificity and the area under the receiver operating characteristic curve (AUC). The AI achieved an AUC of 0.981. One limitation of this system is the need for a large number of training images. The AI had difficulty recognizing spores and confused serum or aggregated bacteria with fungal elements. Use of this deep learning system in dermatopathology routine might help to diagnose onychomycosis more efficiently.

摘要

甲真菌病很常见。可以通过多种方法确诊;常用的方法是指甲屑的组织学检查。开发了一种深度学习系统,并将其诊断准确性与人类专家进行了比较。使用带有真菌成分注释的数据集来训练人工智能 (AI) 模型。在第二个数据集(n=199)中,比较了 AI 的诊断准确性与皮肤科病理学家的诊断准确性。结果表明,深度学习系统在特异性和接收者操作特征曲线 (AUC) 下的面积方面与模拟诊断(非劣效性边界为 5%)相当。AI 的 AUC 为 0.981。该系统的一个限制是需要大量的训练图像。AI 难以识别孢子,并且将血清或聚集的细菌与真菌成分混淆。在皮肤科病理常规中使用这种深度学习系统可能有助于更有效地诊断甲真菌病。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dedc/9413660/5947756685d4/ActaDV-101-8-107-g001.jpg

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