Imaging Biomarkers as Predictors for Breast Cancer Death

Background. To differentiate the risk of breast cancer death in a longitudinal cohort using imaging biomarkers of tumor extent and biology, specifically, the mammographic appearance, basal phenotype, histologic tumor distribution, and conventional tumor attributes. Methods. Using a prospective cohor...

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Main Authors: Wendy Yi-Ying Wu, Laszlo Tabar, Tibor Tot, Ching-Yuan Fann, Amy Ming-Fang Yen, Sam Li-Sheng Chen, Sherry Yueh-Hsia Chiu, May Mei-Sheng Ku, Chen-Yang Hsu, Kerri R. Beckmann, Robert A. Smith, Stephen W. Duffy, Hsiu-Hsi Chen
Format: Article
Language:English
Published: Hindawi Limited 2019-01-01
Series:Journal of Oncology
Online Access:http://dx.doi.org/10.1155/2019/2087983
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spelling doaj-0d4751fdc8e8466f9a714e6143b9871f2020-11-25T02:51:25ZengHindawi LimitedJournal of Oncology1687-84501687-84692019-01-01201910.1155/2019/20879832087983Imaging Biomarkers as Predictors for Breast Cancer DeathWendy Yi-Ying Wu0Laszlo Tabar1Tibor Tot2Ching-Yuan Fann3Amy Ming-Fang Yen4Sam Li-Sheng Chen5Sherry Yueh-Hsia Chiu6May Mei-Sheng Ku7Chen-Yang Hsu8Kerri R. Beckmann9Robert A. Smith10Stephen W. Duffy11Hsiu-Hsi Chen12Department of Radiation Sciences, Oncology, Umeå University, SwedenDepartment of Mammography, County Hospital Falun, Falun, SwedenDepartment of Pathology, Laboratory Medicine Dalarna, County Hospital Falun, Falun, SwedenKainan University, TaiwanTaipei Medical University, TaiwanTaipei Medical University, TaiwanChang Gung University, TaiwanNational Taiwan University, Taipei, TaiwanNational Taiwan University, Taipei, TaiwanUniversity of South Australia, Adelaide, AustraliaAmerican Cancer Society, Atlanta, GA, USAQueen Mary University of London, UKNational Taiwan University, Taipei, TaiwanBackground. To differentiate the risk of breast cancer death in a longitudinal cohort using imaging biomarkers of tumor extent and biology, specifically, the mammographic appearance, basal phenotype, histologic tumor distribution, and conventional tumor attributes. Methods. Using a prospective cohort study design, 498 invasive breast cancer patients diagnosed between 1996 and 1998 were used as the test cohort to assess the independent effects of the imaging biomarkers and other predictors on the risk of breast cancer death. External validation was performed with a cohort of 848 patients diagnosed between 2006 and 2010. Results. Mammographic tumor appearance was an independent predictor of risk of breast cancer death (P=0.0003) when conventional tumor attributes and treatment modalities were controlled. The casting type calcifications and architectural distortion were associated with 3.13-fold and 3.19-fold risks of breast cancer death, respectively. The basal phenotype independently conferred a 2.68-fold risk compared with nonbasal phenotype. The observed deaths did not differ significantly from expected deaths in the validation cohort. The application of imaging biomarkers together with other predictors classified twelve categories of risk for breast cancer death. Conclusion. Combining imaging biomarkers such as the mammographic appearance of the tumor with the histopathologic distribution and basal phenotype, accurately predicted long-term risk of breast cancer death. The information may be relevant for determining the need for molecular testing, planning treatment, and determining the most appropriate clinical surveillance schedule for breast cancer patients.http://dx.doi.org/10.1155/2019/2087983
collection DOAJ
language English
format Article
sources DOAJ
author Wendy Yi-Ying Wu
Laszlo Tabar
Tibor Tot
Ching-Yuan Fann
Amy Ming-Fang Yen
Sam Li-Sheng Chen
Sherry Yueh-Hsia Chiu
May Mei-Sheng Ku
Chen-Yang Hsu
Kerri R. Beckmann
Robert A. Smith
Stephen W. Duffy
Hsiu-Hsi Chen
spellingShingle Wendy Yi-Ying Wu
Laszlo Tabar
Tibor Tot
Ching-Yuan Fann
Amy Ming-Fang Yen
Sam Li-Sheng Chen
Sherry Yueh-Hsia Chiu
May Mei-Sheng Ku
Chen-Yang Hsu
Kerri R. Beckmann
Robert A. Smith
Stephen W. Duffy
Hsiu-Hsi Chen
Imaging Biomarkers as Predictors for Breast Cancer Death
Journal of Oncology
author_facet Wendy Yi-Ying Wu
Laszlo Tabar
Tibor Tot
Ching-Yuan Fann
Amy Ming-Fang Yen
Sam Li-Sheng Chen
Sherry Yueh-Hsia Chiu
May Mei-Sheng Ku
Chen-Yang Hsu
Kerri R. Beckmann
Robert A. Smith
Stephen W. Duffy
Hsiu-Hsi Chen
author_sort Wendy Yi-Ying Wu
title Imaging Biomarkers as Predictors for Breast Cancer Death
title_short Imaging Biomarkers as Predictors for Breast Cancer Death
title_full Imaging Biomarkers as Predictors for Breast Cancer Death
title_fullStr Imaging Biomarkers as Predictors for Breast Cancer Death
title_full_unstemmed Imaging Biomarkers as Predictors for Breast Cancer Death
title_sort imaging biomarkers as predictors for breast cancer death
publisher Hindawi Limited
series Journal of Oncology
issn 1687-8450
1687-8469
publishDate 2019-01-01
description Background. To differentiate the risk of breast cancer death in a longitudinal cohort using imaging biomarkers of tumor extent and biology, specifically, the mammographic appearance, basal phenotype, histologic tumor distribution, and conventional tumor attributes. Methods. Using a prospective cohort study design, 498 invasive breast cancer patients diagnosed between 1996 and 1998 were used as the test cohort to assess the independent effects of the imaging biomarkers and other predictors on the risk of breast cancer death. External validation was performed with a cohort of 848 patients diagnosed between 2006 and 2010. Results. Mammographic tumor appearance was an independent predictor of risk of breast cancer death (P=0.0003) when conventional tumor attributes and treatment modalities were controlled. The casting type calcifications and architectural distortion were associated with 3.13-fold and 3.19-fold risks of breast cancer death, respectively. The basal phenotype independently conferred a 2.68-fold risk compared with nonbasal phenotype. The observed deaths did not differ significantly from expected deaths in the validation cohort. The application of imaging biomarkers together with other predictors classified twelve categories of risk for breast cancer death. Conclusion. Combining imaging biomarkers such as the mammographic appearance of the tumor with the histopathologic distribution and basal phenotype, accurately predicted long-term risk of breast cancer death. The information may be relevant for determining the need for molecular testing, planning treatment, and determining the most appropriate clinical surveillance schedule for breast cancer patients.
url http://dx.doi.org/10.1155/2019/2087983
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