首页> 外文期刊>Breast cancer research and treatment. >Estimation of natural history parameters of breast cancer based on non-randomized organized screening data: subsidiary analysis of effects of inter-screening interval, sensitivity, and attendance rate on reduction of advanced cancer.
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Estimation of natural history parameters of breast cancer based on non-randomized organized screening data: subsidiary analysis of effects of inter-screening interval, sensitivity, and attendance rate on reduction of advanced cancer.

机译:基于非随机的有组织筛查数据估算乳腺癌的自然史参数:辅助筛查间隔,敏感性和出勤率对晚期癌症减少的影响的辅助分析。

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Estimating the natural history parameters of breast cancer not only elucidates the disease progression but also make contributions to assessing the impact of inter-screening interval, sensitivity, and attendance rate on reducing advanced breast cancer. We applied three-state and five-state Markov models to data on a two-yearly routine mammography screening in Finland between 1988 and 2000. The mean sojourn time (MST) was computed from estimated transition parameters. Computer simulation was implemented to examine the effect of inter-screening interval, sensitivity, and attendance rate on reducing advanced breast cancers. In three-state model, the MST was 2.02 years, and the sensitivity for detecting preclinical breast cancer was 84.83%. In five-state model, the MST was 2.21 years for localized tumor and 0.82 year for non-localized tumor. Annual, biennial, and triennial screening programs can reduce 53, 37, and 28% of advanced cancer. The effectiveness of intensive screening with poor attendance is the same as that of infrequent screening with high attendance rate. We demonstrated how to estimate the natural history parameters using a service screening program and applied these parameters to assess the impact of inter-screening interval, sensitivity, and attendance rate on reducing advanced cancer. The proposed method makes contribution to further cost-effectiveness analysis. However, these findings had better be validated by using a further long-term follow-up data.
机译:估计乳腺癌的自然历史参数不仅可以阐明疾病的进展,而且可以帮助评估筛查间隔,敏感性和出勤率对减少晚期乳腺癌的影响。我们将三状态和五状态马尔可夫模型应用于1988年至2000年在芬兰进行的每两年一次的常规乳房X线照片筛查的数据。平均停留时间(MST)由估计的过渡参数计算得出。进行计算机模拟以检查筛查间隔,敏感性和出勤率对减少晚期乳腺癌的影响。在三态模型中,MST为2.02年,检测临床前乳腺癌的敏感性为84.83%。在五态模型中,局部肿瘤的MST为2.21年,非局部肿瘤的MST为0.82年。年度,两年期和三年期筛查计划可以减少53%,37%和28%的晚期癌症。出勤率低的密集筛查的有效性与出勤率高的不频繁筛查的有效性相同。我们展示了如何使用服务筛查程序估算自然史参数,并应用这些参数评估筛查间隔,敏感性和出勤率对减少晚期癌症的影响。所提出的方法有助于进一步的成本效益分析。但是,最好使用进一步的长期随访数据来验证这些发现。

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