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使用深度神经网络对口腔鳞状细胞癌进行自动检测与分类

Automated Detection and Classification of Oral Squamous Cell Carcinoma Using Deep Neural Networks.

作者信息

Ananthakrishnan Balasundaram, Shaik Ayesha, Kumar Soham, Narendran S O, Mattu Khushi, Kavitha Muthu Subash

机构信息

Centre for Cyber Physical Systems, Vellore Institute of Technology, Chennai 600127, India.

School of Computer Science and Engineering, Vellore Institute of Technology, Chennai 600127, India.

出版信息

Diagnostics (Basel). 2023 Feb 28;13(5):918. doi: 10.3390/diagnostics13050918.

Abstract

This work aims to classify normal and carcinogenic cells in the oral cavity using two different approaches with an eye towards achieving high accuracy. The first approach extracts local binary patterns and metrics derived from a histogram from the dataset and is fed to several machine-learning models. The second approach uses a combination of neural networks as a backbone feature extractor and a random forest for classification. The results show that information can be learnt effectively from limited training images using these approaches. Some approaches use deep learning algorithms to generate a bounding box that can locate the suspected lesion. Other approaches use handcrafted textural feature extraction techniques and feed the resultant feature vectors to a classification model. The proposed method will extract the features pertaining to the images using pre-trained convolution neural networks (CNN) and train a classification model using the resulting feature vectors. By using the extracted features from a pre-trained CNN model to train a random forest, the problem of requiring a large amount of data to train deep learning models is bypassed. The study selected a dataset consisting of 1224 images, which were divided into two sets with varying resolutions.The performance of the model is calculated based on accuracy, specificity, sensitivity, and the area under curve (AUC). The proposed work is able to produce a highest test accuracy of 96.94% and an AUC of 0.976 using 696 images of 400× magnification and a highest test accuracy of 99.65% and an AUC of 0.9983 using only 528 images of 100× magnification images.

摘要

这项工作旨在通过两种不同的方法对口腔中的正常细胞和癌细胞进行分类,以期实现高精度。第一种方法从数据集中提取局部二值模式和从直方图导出的指标,并将其输入到几个机器学习模型中。第二种方法使用神经网络的组合作为主干特征提取器,并使用随机森林进行分类。结果表明,使用这些方法可以从有限的训练图像中有效地学习信息。一些方法使用深度学习算法生成一个边界框,该边界框可以定位疑似病变。其他方法使用手工制作的纹理特征提取技术,并将生成的特征向量输入到分类模型中。所提出的方法将使用预训练的卷积神经网络(CNN)提取与图像相关的特征,并使用生成的特征向量训练分类模型。通过使用从预训练的CNN模型中提取的特征来训练随机森林,绕过了训练深度学习模型需要大量数据的问题。该研究选择了一个由1224张图像组成的数据集,这些图像被分为两组,分辨率不同。模型的性能是基于准确率、特异性、敏感性和曲线下面积(AUC)来计算的。所提出的工作使用696张400倍放大的图像能够产生96.94%的最高测试准确率和0.976的AUC,使用仅528张100倍放大的图像能够产生99.65%的最高测试准确率和0.9983的AUC。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f3e6/10001077/48ac67282540/diagnostics-13-00918-g001.jpg

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