Artificial Intelligence-Based Support System for the Diagnosis of Cervical Lesions

I. Deaconescu, D. Popescu, L. Ichim
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引用次数: 0

Abstract

Cervical cancer affects the whole world today, being the fourth most common type of cancer diagnosed. The prevention methods applied standardized to the female population contribute to the reduction of incidence and mortality. Medical approaches include colposcopy, a way of visual inspection of the cervix, and identification of cervical, benign or malignant lesions. Being an analysis that depends entirely on the expertise of the medical professional who performs it, it can be improved by artificial methods. Deep learning has been successfully applied in the field of medical imaging and also in the classification of cervical lesions. In the presented paper, a set of convolutional networks for deep learning was used, consisting of a network with residues and a dense network, pre-trained on an extensive database and applied to a limited dataset. The assembly achieved accuracy on the validation set of 69%, improving the performance of individual models by 2 and 4 percent, respectively. The presented approach classifies 5 types of cervical lesions, the novelty lies in the extensive number of categories, since the literature addresses a more limited number.
基于人工智能的宫颈病变诊断支持系统
如今,子宫颈癌影响着全世界,是第四大最常见的癌症类型。适用于女性人口的标准化预防方法有助于降低发病率和死亡率。医学方法包括阴道镜检查,一种目视检查宫颈的方法,以及宫颈良性或恶性病变的识别。作为一种完全依赖于执行它的医疗专业人员的专业知识的分析,它可以通过人工方法来改进。深度学习已经成功地应用于医学成像领域以及宫颈病变的分类。在本文中,使用了一组用于深度学习的卷积网络,由一个带有残数的网络和一个密集网络组成,在一个广泛的数据库上进行预训练,并应用于有限的数据集。该集合在验证集上实现了69%的准确率,分别将单个模型的性能提高了2%和4%。本文提出的方法将宫颈病变分为5种类型,其新颖之处在于分类的数量广泛,因为文献涉及的数量有限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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