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Automated detection of orofacial pain from thermograms using machine learning and deep learning approaches

机译:使用机器学习和深度学习方法自动检测热量点热量点的口腔疼痛

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摘要

The main objectives of this study are (i) to perform automated segmentation of facial regions from thermograms using k-means clustering algorithm and to classify the data into normal and orofacial pain (OFP) categories using various machine learning classifiers (ii) to implement the convolutional neural network (CNN) for classification of normal and OFP subjects which involves automated feature extraction and feature selection process. Fifty normal and 50 diseased cases suffering from orofacial pain were included in the study. Facial thermograms were segmented using k-means algorithm, then statistical features were extracted and classified into normal and OFP using various machine learning classifier. Further, the deep learning networks such as VGG-16 and DenseNet-121 were used for automated feature extraction and classification of facial thermograms. The facial temperature variations of 3.46%, 3.4%, and 3.27% were observed in the front, right and left side facial regions respectively between the normal and the OFP subjects. Machine learning classifiers such as support vector machine (SVM) and random forest (RF) classifier provided the highest accuracy of 99%. On the other hand, deep learning models such as modified VGG-16 achieved an average accuracy of 97% compared to modified DenseNet-121 which produced an average accuracy of 68% in classification of normal and OFP thermograms. Thus, computer aided diagnosis of facial thermography could be used as a viable screening device for a reliable identification of tooth pathology before the occurrence of structural changes and complications.
机译:本研究的主要目标是(i)使用K-means聚类算法将面部区域的自动分割进行,并使用各种机器学习分类器(ii)将数据分类为正常和orofial疼痛(OFP)类别来实现卷积神经网络(CNN),用于涉及自动特征提取和特征选择过程的正常和OFP受试者的分类。研究中包括五十个正常和50例患有口腔疼痛的病例。使用K-Means算法进行体析面部热量影,然后使用各种机器学习分类器提取统计特征并分类为正常和OFP。此外,诸如VGG-16和DENSENET-121的深度学习网络用于自动特征提取和面部热图的分类。在正常和OFP受试者之间,在正面,右侧和左侧面部区域中观察到3.46%,3.4%和3.27%的面部温度变化。机器学习分类器,如支持向量机(SVM)和随机林(RF)分类器提供的最高精度为99%。另一方面,与改进的DENSENET-121相比,改变的VGG-16等深度学习模型,其平均精度为97%,其在正常和OFP热图分类中产生了68%的平均精度。因此,计算机辅助诊断面部热成像可以用作可行的筛选装置,以便在结构变化和并发症的发生之前可靠地识别牙齿病理学。

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