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An evaluation of the construction of the device along with the software for digital archiving sending the data and supporting the diagnosis of cervical cancer

机译:评估设备的构造以及用于数字存档发送数据和支持宫颈癌诊断的软件

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摘要

Cervical cancer is still an important cause of mortality among women in a number of countries. There are effective methods of prevention and early diagnosis, but they require well-trained medical professionals including cytologists. Within this project, we built a prototype of a new device together with implemented software using U-NET and CNN architectures of neural networks (ANN), to convert the currently used optical microscopes into fully independent scanning and evaluating systems for cytological samples. To evaluate the specificity and sensitivity of the system, 2058 (2000 normal and 58 abnormal samples) consecutive liquid-based cytology (LBC) samples were analysed. The observed sensitivity and specificity to distinguish normal and abnormal samples was 100%. We observed slight incompatibility in the evaluation of the type of abnormality. The use of ANN is promising for increasing the effectiveness of cervical screening. The low cost of neural network usage further increases the potential areas of application of the presented method. Further refinement of neural networks on a larger sample size is required to evaluate the software.
机译:宫颈癌仍然是许多国家妇女死亡的重要原因。有预防和早期诊断的有效方法,但是它们需要训练有素的医学专业人员,包括细胞学家。在该项目中,我们使用U-NET和神经网络的CNN架构(ANN)构建了新设备的原型以及已实现的软件,以将当前使用的光学显微镜转换为细胞样本的完全独立的扫描和评估系统。为了评估系统的特异性和敏感性,分析了2058个连续的液基细胞学(LBC)样品(2000个正常样品和58个异常样品)。观察到的区分正常和异常样品的敏感性和特异性为100%。我们在异常类型的评估中观察到轻微的不兼容性。使用人工神经网络有望提高子宫颈筛查的有效性。神经网络使用的低成本进一步增加了所提出方法的潜在应用领域。为了评估软件,需要在更大的样本量上进一步完善神经网络。

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