基于深度学习和GPU的子宫颈类型检测

Bijoy M B, V. Shilimkar, J. B
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引用次数: 3

摘要

子宫颈癌是所有年龄组妇女中发病率第二高的癌症。它会导致子宫颈上的细胞生长失控。宫颈癌是由一种叫做人乳头瘤病毒(HPV)的病毒引起的。在癌症的早期阶段,几乎没有什么症状,因此很难被发现。如果在早期发现癌症,那么就可以在合适的时间开始适当有效的药物治疗。检测子宫颈癌的常用方法在很大程度上依赖于人类的专业知识。随着医学影像技术的进步,计算机化的方法也在早期发现癌细胞。子宫颈癌的治疗方式主要取决于患者的子宫颈类型,因此检测子宫颈类型非常重要。因此,我们提出了一种使用深度学习技术对子宫颈类型进行分类的方法。从头开始创建和训练CNN模型,以及使用迁移学习技术训练的其他两个模型。实验结果表明,该方法的验证精度为0.6523。我们还使用GPU训练并行模型,并实现了大约6倍(x6)的速度
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Cervix Type Using Deep learning and GPU
Cervical cancer is the second most occurring cancer in women of all age groups. It causes cells on the cervix to grow out of control. Cervical cancer is caused by a virus called human papillomavirus aka HPV. In the early stages of cancer, there will be very little symptoms which make it difficult to detect. If cancer is detected at an early stage, then proper and effective medication can be started at the right time. Usual methods available for detection of cervical cancer largely depend on human expertise. With the advancements in medical imaging technology, computerized methods were also developed to detect the cancerous cells at an early stage. The type of treatment for cervical cancer is primarily determined by the cervix type of the patient and hence its type detection is very important. Thus, we have proposed a method to classify the cervix type using deep learning technology. A CNN model is created and trained from the scratch, along with two other models which are trained using transfer learning technology. From the experimental results, a validation accuracy of 0.6523 is achieved. We also trained the parallel models using GPU and speed of about six fold (x6) is achieved
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