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A decision support system based on an ensemble of random forests for improving the management of women with abnormal findings at cervical cancer screening

机译:一个基于随机森林集合的决策支持系统,用于改善宫颈癌筛查中发现异常女性的管理

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In most cases, cervical cancer (CxCa) develops due to underestimated abnormalities in the Pap test. Today, there are ancillary molecular biology techniques available that provide important information related to CxCa and the Human Papillomavirus (HPV) natural history, including HPV DNA tests, HPV mRNA tests and immunocytochemistry techniques such as overexpression of p16. These techniques are either highly sensitive or highly specific, however not both at the same time, thus no perfect method is available today. In this paper we present a decision support system (DSS) based on an ensemble of Random Forests (RFs) for the intelligent combination of the results of classic and ancillary techniques that are available for CxCa detection, in order to exploit the benefits of each technique and produce more accurate results. The proposed system achieved both, high sensitivity (86.1%) and high specificity (93.3%), as well as high overall accuracy (91.8%), in detecting cervical intraepithelial neoplasia grade 2 or worse (CIN2+). The system's performance was better than any other single test involved in this study. Moreover, the proposed architecture of employing an ensemble of RFs proved to be better than the single classifier approach. The presented system can handle cases with missing tests and more importantly cases with inadequate cytological outcome, thus it can also produce accurate results in the case of stand-alone HPV-based screening, where Pap test is not applied. The proposed system may identify women at true risk of developing CxCa and guide personalised management and therapeutic interventions.
机译:在大多数情况下,子宫颈癌(CxCa)是由于巴氏试验中被低估的异常而发展的。如今,有可用的辅助分子生物学技术提供与CxCa和人类乳头瘤病毒(HPV)自然史相关的重要信息,包括HPV DNA检测,HPV mRNA检测和免疫细胞化学技术,例如p16的过表达。这些技术要么高度敏感,要么高度专一,但是不能同时使用,因此,当今没有完美的方法可用。在本文中,我们提出了一种基于随机森林(RF)集合的决策支持系统(DSS),用于将CxCa检测可用的经典技术和辅助技术的结果进行智能组合,以利用每种技术的优势并产生更准确的结果。拟议的系统在检测宫颈上皮内瘤样变2级或更严重(CIN2 +)时,实现了高灵敏度(86.1%)和高特异性(93.3%)以及高总体准确性(91.8%)。该系统的性能优于本研究中涉及的任何其他单个测试。此外,事实证明,所提出的采用射频集合的体系结构比单一分类器方法更好。提出的系统可以处理缺少检测的病例,更重要的是细胞学结果不足的病例,因此,在不使用Pap检测的基于HPV的独立筛查中,它也可以产生准确的结果。拟议的系统可以确定有发展CxCa风险的女性,并指导个性化管理和治疗干预。

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