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Erschienen in: Breast Cancer Research and Treatment 2/2017

10.03.2017 | Brief Report

Using ePrognosis to estimate 2-year all-cause mortality in older women with breast cancer: Cancer and Leukemia Group B (CALGB) 49907 and 369901 (Alliance A151503)

verfasst von: Gretchen G. Kimmick, Brittny Major, Jonathan Clapp, Jeff Sloan, Brandelyn Pitcher, Karla Ballman, Myra Barginear, Rachel A. Freedman, Andrew Artz, Heidi D. Klepin, Jacqueline M. Lafky, Judith Hopkins, Eric Winer, Clifford Hudis, Hyman Muss, Harvey Cohen, Aminah Jatoi, Arti Hurria, Jeanne Mandelblatt

Erschienen in: Breast Cancer Research and Treatment | Ausgabe 2/2017

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Abstract

Purpose

Tools to estimate survival, such as ePrognosis (http://​eprognosis.​ucsf.​edu/​carey2.​php), were developed for general, not cancer, populations. In older patients with breast cancer, accurate overall survival estimates would facilitate discussions about adjuvant therapies.

Methods

Secondary analyses were performed of data from two parallel breast cancer studies (CALGB/Alliance 49907/NCT000224102 and CALGB/Alliance 369901/NCT00068328). We included patients (n = 971) who were age 70 years and older with complete baseline quality of life data (194 from 49907; 777 from 369901). Estimated versus observed all-cause two-year mortality rates were compared. ePrognosis score was calculated based on age, sex, and daily function (derived from EORTC QLQ-C30). ePrognosis scores range from 0 to 10, with higher scores indicating worse prognosis based on mortality of community-dwelling elders and were categorized into three groups (0–2, 3–6, 7–10). Observed mortality rates were estimated using Kaplan–Meier methods.

Results

Patient mean age was 75.8 years (range 70–91) and 73% had stage I–IIA disease. Most patients were classified by ePrognosis as good prognosis (n = 562, 58% 0–2) and few (n = 18, 2% 7–10) poor prognosis. Two-year observed mortality rates were significantly lower than ePrognosis estimates for patients scoring 0–2 (2% vs 5%, p = 0.001) and 3–6 (8% vs 12%, p = 0.01). The same trend was seen with scores of 7–10 (23% vs 36%, p = 0.25).

Conclusions

ePrognosis tool only modestly overestimates mortality rate in older breast cancer patients enrolled in two cooperative group studies. This tool, which estimates non-cancer mortality risk based on readily available clinical information may inform adjuvant therapy decisions but should be validated in non-clinical trial populations.
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Metadaten
Titel
Using ePrognosis to estimate 2-year all-cause mortality in older women with breast cancer: Cancer and Leukemia Group B (CALGB) 49907 and 369901 (Alliance A151503)
verfasst von
Gretchen G. Kimmick
Brittny Major
Jonathan Clapp
Jeff Sloan
Brandelyn Pitcher
Karla Ballman
Myra Barginear
Rachel A. Freedman
Andrew Artz
Heidi D. Klepin
Jacqueline M. Lafky
Judith Hopkins
Eric Winer
Clifford Hudis
Hyman Muss
Harvey Cohen
Aminah Jatoi
Arti Hurria
Jeanne Mandelblatt
Publikationsdatum
10.03.2017
Verlag
Springer US
Erschienen in
Breast Cancer Research and Treatment / Ausgabe 2/2017
Print ISSN: 0167-6806
Elektronische ISSN: 1573-7217
DOI
https://doi.org/10.1007/s10549-017-4188-6

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