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首页> 外文期刊>Frontiers in Medicine >Artificial Intelligence-Aided Recognition of Pathological Characteristics and Subtype Classification of Superficial Perivascular Dermatitis
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Artificial Intelligence-Aided Recognition of Pathological Characteristics and Subtype Classification of Superficial Perivascular Dermatitis

机译:人工智能 - 援助浅层性血管外皮炎病理特征和亚型分类

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Background: Superficial perivascular dermatitis, an important type of inflammatory dermatosis, comprises various skin diseases, which are difficult to distinguish by clinical manifestations and need pathological imaging observation. Coupled with its complex pathological characteristics, the subtype classification depends to a great extent on dermatopathologists. There is an urgent need to develop an efficient approach to recognize the pathological characteristics and classify the subtypes of superficial perivascular dermatitis. Methods: 3,954 pathological images (4 × and 10 ×) of three subtypes—psoriasiform, spongiotic and interface—of superficial perivascular dermatitis were captured from 327 cases diagnosed both clinically and pathologically. The control group comprised 1,337 pathological images of 85 normal skin tissue slides taken from the edge of benign epidermal cysts. First, senior dermatologists and dermatopathologists followed the structure–pattern analysis method to label the pathological characteristics that significantly contribute to classifying different subtypes on 4 × and 10 × images. A cascaded deep learning algorithm framework was then proposed to establish pixel-level pathological characteristics' masks and classify the subtypes by supervised learning. Results: 13 different pathological characteristics were recognized, and the accuracy of subtype classification was 85.24%. In contrast, the accuracy of the subtype classification model without recognition was 71.35%. Conclusion: Our cascaded deep learning model used small samples to deliver efficient recognition of pathological characteristics and subtype classification simultaneously. Moreover, the proposed method could be applied to both microscopic images and digital scanned images.
机译:背景:肤浅的血管性皮炎,一种重要类型的炎症皮肤病,包括各种皮肤病,这些疾病难以通过临床表现和需要病理成像观察来区分。再加上其复杂的病理特征,亚型分类在很大程度上取决于皮肤病学家。迫切需要开发一种有效的方法来识别病理特征,并分类浅表血管外皮炎的亚型。方法:从临床和病理学诊断的327例捕获3,954个亚型牛皮癣,垂直和界面的浅层血管外形皮炎的3,954个病理图像(4×和10×)。对照组包含来自良性表皮囊肿的边缘的85个正常皮肤组织载玻片的1,337个病理图像。首先,高级皮肤病学家和皮肤病学家遵循结构模式分析方法,标记显着促进4×和10×图像上分类不同亚型的病理特征。然后提出了一种级联的深度学习算法框架来建立像素级病理特征的掩模,并通过监督学习对亚型进行分类。结果:13识别出不同的病理特征,亚型分类的准确性为85.24%。相比之下,没有识别的子类型分类模型的准确性为71.35%。结论:我们级联的深度学习模型使用小型样品同时提供有效识别病理特征和亚型分类。此外,所提出的方法可以应用于微观图像和数字扫描图像。

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