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Convolutional Neural Network for Combined Classification of Fluorescent Biomarkers and Expert Annotations using White Light Images

机译:利用白光图像对荧光生物标志物和专家注释进行组合分类的卷积神经网络

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Fluorescent biomarkers are important indicators of disease, but imaging them can require specialized and often-expensive devices. Periodontal and dental diseases resulting from microbial plaque biofilms, if diagnosed early with biomarker images and expert knowledge, can be treated to prevent occurrences of serious systemic illnesses. We report two convolutional neural network classifiers trained with dentist annotations of disease signatures and fluorescent porphyrin biomarker images to identify dental plaque in white light images as a per-pixel binary classification task. The classifiers were trained and tested with millions of image patches from two datasets collected from 27 consenting adults using handheld intraoral cameras. The areas under the receiver operating characteristic curves for the test sets were calculated to be 0.7694 and 0.8720. Once trained, the classifiers predict the location of plaque in white light images without requiring specialized biomarker imaging devices or expert intervention. This generalized approach can be useful in other domains where diagnostic biomarker predicting can augment expert knowledge using standard white light images.
机译:荧光生物标志物是疾病的重要指标,但对它们进行成像可能需要专门且经常昂贵的设备。如果能够通过生物标志物图像和专家知识尽早诊断出微生物斑块生物膜引起的牙周和牙齿疾病,就可以进行预防,以防止发生严重的全身性疾病。我们报告两个卷积神经网络分类器,由疾病特征的牙医注释和荧光卟啉生物标志物图像进行训练,以将白光图像中的牙菌斑识别为每个像素的二进制分类任务。使用手持式口内摄像头对来自27个同意的成年人的两个数据集中的数百万个图像补丁进行了分类器的训练和测试。测试装置的接收器工作特性曲线下的面积经计算为0.7694和0.8720。一旦训练完成,分类器就可以预测白光图像中的斑块位置,而无需专门的生物标记物成像设备或专家干预。这种通用方法在其他领域中可能很有用,在这些领域中,诊断性生物标志物的预测可以使用标准白光图像增强专家知识。

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