首页> 外文期刊>International Journal of Cancer =: Journal International du Cancer >Risk stratification in cervical cancer screening by complete screening history: Applying bioinformatics to a general screening population
【24h】

Risk stratification in cervical cancer screening by complete screening history: Applying bioinformatics to a general screening population

机译:完全筛查史上宫颈癌筛查风险分层:将生物信息学应用于一般筛查人群

获取原文
获取原文并翻译 | 示例
       

摘要

Women screened for cervical cancer in Sweden are currently treated under a one-size-fits-all programme, which has been successful in reducing the incidence of cervical cancer but does not use all of the participants' available medical information. This study aimed to use women's complete cervical screening histories to identify diagnostic patterns that may indicate an increased risk of developing cervical cancer. A nationwide case-control study was performed where cervical cancer screening data from 125,476 women with a maximum follow-up of 10 years were evaluated for patterns of SNOMED diagnoses. The cancer development risk was estimated for a number of different screening history patterns and expressed as Odds Ratios (OR), with a history of 4 benign cervical tests as reference, using logistic regression. The overall performance of the model was moderate (64% accuracy, 71% area under curve) with 61-62% of the study population showing no specific patterns associated with risk. However, predictions for high-risk groups as defined by screening history patterns were highly discriminatory with ORs ranging from 8 to 36. The model for computing risk performed consistently across different screening history lengths, and several patterns predicted cancer outcomes. The results show the presence of risk-increasing and risk-decreasing factors in the screening history. Thus it is feasible to identify subgroups based on their complete screening histories. Several high-risk subgroups identified might benefit from an increased screening density. Some low-risk subgroups identified could likely have a moderately reduced screening density without additional risk.
机译:瑞典哺乳癌癌的女性目前在一定规模适合的所有计划下进行治疗,这一直在降低宫颈癌的发病率,但不使用所有参与者的可用医疗信息。本研究旨在使用女性完整的宫颈筛查历史来鉴定可能表明患有宫颈癌风险增加的诊断模式。进行了全国性案例对照研究,其中评估了125,476名患有最大随访10年的妇女的宫颈癌筛查数据,用于SnoMed诊断的模式。估计癌症发展风险估计了许多不同的筛查历史模式,并表达为使用Logistic回归的4个良性宫颈试验的历史,作为参考。该模型的整体性能适度(精度为64%,曲线71%面积),61-62%的研究人群显示没有与风险相关的特定模式。然而,通过筛选历史模式定义的高风险群体的预测是高度鉴别的或者从8到36的范围内的歧视性。用于计算风险的模型在不同的筛选历史长度上一致地进行,以及几种模式预测癌症结果。结果表明,在筛选历史中存在风险增长和风险降低因素。因此,基于完整的筛查历史识别亚组是可行的。鉴定的几个高风险亚组可能受益于增加的筛选密度。鉴定的一些低风险亚组可能具有中度降低的筛选密度而无需额外的风险。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号