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基于视觉可解释深度学习的皮肤癌病理图像诊断框架。

A Visually Interpretable Deep Learning Framework for Histopathological Image-Based Skin Cancer Diagnosis.

出版信息

IEEE J Biomed Health Inform. 2021 May;25(5):1483-1494. doi: 10.1109/JBHI.2021.3052044. Epub 2021 May 11.

DOI:10.1109/JBHI.2021.3052044
PMID:33449890
Abstract

Owing to the high incidence rate and the severe impact of skin cancer, the precise diagnosis of malignant skin tumors is a significant goal, especially considering treatment is normally effective if the tumor is detected early. Limited published histopathological image sets and the lack of an intuitive correspondence between the features of lesion areas and a certain type of skin cancer pose a challenge to the establishment of high-quality and interpretable computer-aided diagnostic (CAD) systems. To solve this problem, a light-weight attention mechanism-based deep learning framework, namely, DRANet, is proposed to differentiate 11 types of skin diseases based on a real histopathological image set collected by us during the last 10 years. The CAD system can output not only the name of a certain disease but also a visualized diagnostic report showing possible areas related to the disease. The experimental results demonstrate that the DRANet obtains significantly better performance than baseline models (i.e., InceptionV3, ResNet50, VGG16, and VGG19) with comparable parameter size and competitive accuracy with fewer model parameters. Visualized results produced by the hidden layers of the DRANet actually highlight part of the class-specific regions of diagnostic points and are valuable for decision making in the diagnosis of skin diseases.

摘要

由于皮肤癌的发病率高且对人体影响严重,精确诊断恶性皮肤肿瘤是一个重要目标,特别是考虑到如果肿瘤早期被发现,通常治疗效果会很好。有限的已发表的组织病理学图像集,以及病变区域的特征与特定类型皮肤癌之间缺乏直观对应关系,这对建立高质量且可解释的计算机辅助诊断 (CAD) 系统提出了挑战。为了解决这个问题,我们提出了一种基于轻量级注意力机制的深度学习框架,即 DRANet,该框架基于我们在过去 10 年中收集的真实组织病理学图像集来区分 11 种皮肤疾病。该 CAD 系统不仅可以输出某种疾病的名称,还可以输出可视化的诊断报告,显示与该疾病相关的可能区域。实验结果表明,与具有可比参数大小的基线模型(即 InceptionV3、ResNet50、VGG16 和 VGG19)相比,DRANet 的性能有显著提升,并且在使用更少模型参数的情况下具有竞争力的准确性。DRANet 隐藏层生成的可视化结果实际上突出了诊断点的部分特定于类的区域,这对于皮肤疾病的诊断决策具有重要价值。

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