Literature DB >> 22850901

Estimating prevalence of distant metastatic breast cancer: a means of filling a data gap.

Mark S Clements1, David M Roder, Xue Qin Yu, Sam Egger, Dianne L O'Connell.   

Abstract

PURPOSE: To develop and validate a method for estimating numbers of people with distant cancer metastases, for evidence-based service planning.
METHODS: Estimates were made employing an illness-death model with distant metastatic cancer as the illness state- and site-specific mortality as an outcome, using MIAMOD software. To demonstrate the method, we estimated numbers of females alive in Australia following detection of distant metastatic breast cancer during 1980-2004, using data on patient survival from an Australian population-based cancer registry. We validated these estimates by comparing them with direct prevalence counts.
RESULTS: Relative survival at 10 years following detection of distant metastases was low (5-20 %), with better survival experienced by: (1) females where distant metastatic disease was detected at initial diagnosis rather than subsequently (e.g., at recurrence); (2) those diagnosed in more recent calendar years; and (3) younger age groups. For Australian females aged less than 85 years, the modeled cumulative risk of detection of distant metastatic breast cancer (either at initial diagnosis or subsequently) declined over time, but numbers of cases with this history rose from 71 per 100,000 in 1980 to 84 per 100,000 in 2004. The model indicated that there were approximately 3-4 prevalent distant metastatic breast cancer cases for every breast cancer death. Comparison of estimates with direct prevalence counts showed a reasonable level of agreement.
CONCLUSIONS: The method is straightforward to apply and we recommend its use for breast and other cancers when registry data are insufficient for direct prevalence counts. This will provide estimates of numbers of people who would need ongoing medical surveillance and care following detection of distant metastases.

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Year:  2012        PMID: 22850901     DOI: 10.1007/s10552-012-0040-9

Source DB:  PubMed          Journal:  Cancer Causes Control        ISSN: 0957-5243            Impact factor:   2.506


  8 in total

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2.  Projections of cancer prevalence by phase of care: a potential tool for planning future health service needs.

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5.  Potential inequities in availability of care from breast care nurses: a qualitative study reporting the experiences and perspectives of women with metastatic breast cancer in Australia.

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6.  Platinum-containing regimens for triple-negative metastatic breast cancer.

Authors:  Sam J Egger; Matthew Ming Ki Chan; Qingwei Luo; Nicholas Wilcken
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7.  A population-based study of breast cancer prevalence in Australia: predicting the future health care needs of women living with breast cancer.

Authors:  Xue Qin Yu; Roberta De Angelis; Qingwei Luo; Clare Kahn; Nehmat Houssami; Dianne L O'Connell
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8.  All-trans retinoic acids induce differentiation and sensitize a radioresistant breast cancer cells to chemotherapy.

Authors:  Yunwen Yan; Zhen Li; Xiang Xu; Clark Chen; Wei Wei; Ming Fan; Xufeng Chen; Jian Jian Li; Yuan Wang; Jiaoti Huang
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  8 in total

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