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基于深度学习的智能手机图像口腔癌自动检测用于早期诊断。

Automatic detection of oral cancer in smartphone-based images using deep learning for early diagnosis.

机构信息

Zhejiang University School of Medicine, First Affiliated Hospital, Department of Stomatology, Hangzh, China.

Zhejiang Institute of Communications, College of Intelligent Transportation, Hangzhou, China.

出版信息

J Biomed Opt. 2021 Aug;26(8). doi: 10.1117/1.JBO.26.8.086007.

Abstract

SIGNIFICANCE

Oral cancer is a quite common global health issue. Early diagnosis of cancerous and potentially malignant disorders in the oral cavity would significantly increase the survival rate of oral cancer. Previously reported smartphone-based images detection methods for oral cancer mainly focus on demonstrating the effectiveness of their methodology, yet it still lacks systematic study on how to improve the diagnosis accuracy on oral disease using hand-held smartphone photographic images.

AIM

We present an effective smartphone-based imaging diagnosis method, powered by a deep learning algorithm, to address the challenges of automatic detection of oral diseases.

APPROACH

We conducted a retrospective study. First, a simple yet effective centered rule image-capturing approach was proposed for collecting oral cavity images. Then, based on this method, a medium-sized oral dataset with five categories of diseases was created, and a resampling method was presented to alleviate the effect of image variability from hand-held smartphone cameras. Finally, a recent deep learning network (HRNet) was introduced to evaluate the performance of our method for oral cancer detection.

RESULTS

The performance of the proposed method achieved a sensitivity of 83.0%, specificity of 96.6%, precision of 84.3%, and F1 of 83.6% on 455 test images. The proposed "center positioning" method was about 8% higher than that of a simulated "random positioning" method in terms of F1 score, the resampling method had additional 6% of performance improvement, and the introduced HRNet achieved slightly better performance than VGG16, ResNet50, and DenseNet169, with respect to the metrics of sensitivity, specificity, precision, and F1.

CONCLUSIONS

Capturing oral images centered on the lesion, resampling the cases in training set, and using the HRNet can effectively improve the performance of deep learning algorithm on oral cancer detection. The smartphone-based imaging with deep learning method has good potential for primary oral cancer diagnosis.

摘要

意义

口腔癌是一个相当普遍的全球健康问题。早期诊断口腔癌和潜在恶性疾病将显著提高口腔癌的生存率。以前报道的基于智能手机的口腔癌图像检测方法主要集中在展示其方法的有效性上,但仍然缺乏关于如何使用手持智能手机拍摄的照片来提高口腔疾病诊断准确性的系统研究。

目的

我们提出了一种基于智能手机的有效成像诊断方法,该方法由深度学习算法提供支持,以解决口腔疾病自动检测的挑战。

方法

我们进行了一项回顾性研究。首先,提出了一种简单而有效的基于中心规则的图像采集方法来采集口腔图像。然后,基于该方法,创建了一个包含五类疾病的中等规模口腔数据集,并提出了一种重采样方法,以减轻手持智能手机相机图像变化的影响。最后,引入了一种新的深度学习网络(HRNet)来评估我们的口腔癌检测方法的性能。

结果

在 455 张测试图像上,所提出方法的性能达到了 83.0%的敏感性、96.6%的特异性、84.3%的精确性和 83.6%的 F1 值。所提出的“中心定位”方法在 F1 评分方面比模拟的“随机定位”方法高出约 8%,重采样方法的性能提高了 6%,引入的 HRNet 在敏感性、特异性、精确性和 F1 等指标方面略优于 VGG16、ResNet50 和 DenseNet169。

结论

以病变为中心采集口腔图像、在训练集中重采样病例以及使用 HRNet 可以有效提高深度学习算法在口腔癌检测中的性能。基于智能手机的深度学习方法在初步口腔癌诊断方面具有良好的应用前景。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/efb2/8397787/ed1cec270da2/JBO-026-086007-g001.jpg

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