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一种预测乳腺癌死亡率的随机模型。

A stochastic model for predicting the mortality of breast cancer.

作者信息

Lee Sandra, Zelen Marvin

机构信息

Dana-Farber Cancer Institute and Harvard School of Public Health, Boston, MA 02115, USA.

出版信息

J Natl Cancer Inst Monogr. 2006(36):79-86. doi: 10.1093/jncimonographs/lgj011.

DOI:10.1093/jncimonographs/lgj011
PMID:17032897
Abstract

Consider a cohort of women, identified by year of birth, some of whom will eventually be diagnosed with breast cancer. A stochastic model is developed for predicting the U.S. breast cancer mortality that depends on advances in therapy and dissemination of mammographic screening. The predicted mortality can be compared with the same cohort having usual care with no screening program and absence of modern therapy, or a cohort in which only a proportion participate in a screening program and have modern therapy. The model envisions that a woman may be in four health states: i.e., 1) no disease or breast cancer that cannot be diagnosed (S0), 2) preclinical state (Sp), 3) clinical state (Sc), and 4) disease-specific death (Sd). The preclinical disease refers to breast cancer that is asymptomatic but that may be diagnosed with a special exam. The clinical state refers to symptomatic disease diagnosed under usual care. One of the basic assumptions of the model is that the disease is progressive; i.e., the transitions for the first three states are S0-->Sp-->Sc. The other basic assumption is that any reduction in mortality associated with earlier diagnosis is due to a stage shift in diagnosis; i.e., early diagnosis results in a larger proportion of earlier stage patients. The model is used to predict changes in female breast cancer mortality in the U.S. women for 1975-2000. The model is general and may predict mortality for other chronic diseases that satisfy the two basic assumptions.

摘要

考虑一组按出生年份确定的女性,其中一些最终会被诊断出患有乳腺癌。开发了一种随机模型来预测美国乳腺癌死亡率,该模型取决于治疗进展和乳腺钼靶筛查的普及情况。可以将预测死亡率与接受常规护理且无筛查计划且缺乏现代治疗的同一组女性进行比较,或者与只有一部分人参与筛查计划并接受现代治疗的一组女性进行比较。该模型设想女性可能处于四种健康状态:即1)无疾病或无法诊断的乳腺癌(S0),2)临床前状态(Sp),3)临床状态(Sc),以及4)疾病特异性死亡(Sd)。临床前疾病是指无症状但可通过特殊检查诊断出的乳腺癌。临床状态是指在常规护理下诊断出的有症状疾病。该模型的一个基本假设是疾病是渐进性的;即前三种状态的转变是S0-->Sp-->Sc。另一个基本假设是与早期诊断相关的死亡率降低是由于诊断阶段的转变;即早期诊断导致早期阶段患者的比例更大。该模型用于预测1975 - 2000年美国女性乳腺癌死亡率的变化。该模型具有通用性,可预测满足这两个基本假设的其他慢性疾病的死亡率。

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A stochastic model for predicting the mortality of breast cancer.一种预测乳腺癌死亡率的随机模型。
J Natl Cancer Inst Monogr. 2006(36):79-86. doi: 10.1093/jncimonographs/lgj011.
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