An Artificial Intelligence Approach for the Detection of Cervical Abnormalities

Evangelos Salamalekis, A. Pouliakis, N. Margari, C. Kottaridi, A. Spathis, Effrosyni Karakitsou, Alina-Roxani Gouloumi, D. Leventakou, G. Chrelias, G. Valasoulis, M. Nasioutziki, M. Kyrgiou, K. Dinas, I. Panayiotides, E. Paraskevaidis, C. Chrelias
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引用次数: 6

Abstract

Numerous ancillary techniques detecting HPV DNA or mRNA are viewed as competitors or ancillary techniques to test Papanicolaou. However, no technique is perfect because sensitivity increases at the cost of specificity. Various methods have been applied to resolve this issue by using many examination results, such as classification and regression trees and supervised artificial neural networks. In this article, 1258 cases with results from test Pap, HPV DNA, HPV mRNA, and p16 were used to evaluate the performance of the self-organizing map (SOM). An artificial neural network has three advantages: it is unsupervised, can tolerate missing data, and produces topographical maps. The results of the SOM application were encouraging and produced maps depicting the important tests.
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一种检测宫颈异常的人工智能方法
许多检测HPV DNA或mRNA的辅助技术被视为检测巴氏杆菌的竞争对手或辅助技术。然而,没有一种技术是完美的,因为灵敏度的增加是以特异性为代价的。通过使用许多检查结果,已经应用了各种方法来解决这个问题,例如分类和回归树以及监督人工神经网络。在这篇文章中,1258例病例的检测结果来自Pap、HPV DNA、HPV mRNA和p16,用于评估自组织映射(SOM)的性能。人工神经网络有三个优点:它是无监督的,可以容忍丢失的数据,并生成地形图。SOM应用程序的结果令人鼓舞,并生成了描述重要测试的地图。
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