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A comparative study of 3 deep learning models for Pap smear screening

机译:三种宫颈涂片筛查深度学习模型的比较研究

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This work presents a comparative study of automated screening procedure for Pap smear with deep learning technology. Three convolution neural network models (AlexNet, densenet161 and resnet101) were employed for detecting the presence of cervical precancerous or cancerous cells from Pap smear database. The study compares accuracy, sensitivity, specificity, and computation time for each deep learning model. The best model is the densenet161 due to its high sensitivity and accuracy which are key factors in an automated Pap smear screening procedure to offer the best early detection of cervical cancer to better treatment outcomes.
机译:这项工作提出了使用深度学习技术对巴氏涂片自动筛选程序的比较研究。三种卷积神经网络模型(AlexNet,densednet161和resnet101)用于从子宫颈抹片检查数据库中检测宫颈癌前或癌细胞的存在。该研究比较了每种深度学习模型的准确性,敏感性,特异性和计算时间。最好的模型是densitynet161,因为它具有很高的灵敏度和准确性,这是自动巴氏涂片筛查程序的关键因素,可以提供最佳的子宫颈癌早期检测以达到更好的治疗效果。

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