Literature DB >> 26174520

Cohort Profile: The Breast Cancer Prospective Family Study Cohort (ProF-SC).

Mary Beth Terry1, Kelly-Anne Phillips2, Mary B Daly3, Esther M John4, Irene L Andrulis5, Saundra S Buys6, David E Goldgar7, Julia A Knight8, Alice S Whittemore9, Wendy K Chung10, Carmel Apicella11, John L Hopper12.   

Abstract

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Mesh:

Year:  2015        PMID: 26174520      PMCID: PMC5005937          DOI: 10.1093/ije/dyv118

Source DB:  PubMed          Journal:  Int J Epidemiol        ISSN: 0300-5771            Impact factor:   7.196


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Why was the cohort established?

For breast cancer, like most other common diseases, having a family history of the disease is associated with an increased risk. There is large heterogeneity in absolute and relative breast cancer risks associated with family history, depending on the age of the woman, the age(s) at diagnosis of her affected relative(s) and the genetic relationship(s). Women with one affected first-degree relative are on average at 2-fold increased risk of breast cancer relative to women with no first-degree family history, and this increases to 4-fold for women with three or more affected first-degree relatives . Under a multiplicative risk model, the underlying risk distribution must be highly skewed, and most women in the population are well below average risk; see Figure 1 , which illustrates the difference between women unselected for familial or genetic risk (blue line) and women enriched for familial/genetic risk (dotted red line). Given that epidemiological studies make inference about risk for the controls, almost all existing knowledge about risk factors is not relevant to ‘women at average risk’, but to women at lower than average risk. It is not known if this knowledge applies to women at increased, if not high, risk. To find evidence relevant to women across the full continuum of risk, with the potential for targeted risk modification and prevention, we have established and genetically-characterised a large prospective family-based cohort enriched for familial risk.
Figure 1.

Comparison of the theoretical distribution of familial risk profile (FRP) for women from the general population (blue line) and for those affected with either early-onset breast cancer or unaffected but with a strong family history of breast cancer, equivalent to a 3-fold increased risk (dotted red line), under a multiplicative, multifactorial, polygenic model. For details see , .

Comparison of the theoretical distribution of familial risk profile (FRP) for women from the general population (blue line) and for those affected with either early-onset breast cancer or unaffected but with a strong family history of breast cancer, equivalent to a 3-fold increased risk (dotted red line), under a multiplicative, multifactorial, polygenic model. For details see , . Over the past two decades, an increasing number of genetic risk factors have been identified. , Nevertheless, the majority of women with a family history of breast cancer, even those with a strong family history, do not have causal mutations in the known genes, and large genome-wide association studies (GWAS) and now next-generation sequencing efforts are identifying additional genetic risk factors. Epidemiological evidence suggests that some environmental factors modify breast cancer risk for women with a family history. Most epidemiology studies, however, record only first-degree family history as a binary factor (e.g. ,, ), which does not capture the potential importance of disease in second-degree and more distant relatives, and rarely take into account the importance of age at diagnosis of affected relatives. The few studies that do , suggest greater environmental and genetic heterogeneity in risk. One approach to studying gene-environment interactions is to consider a woman’s underlying familial risk profile (FRP), representing her inherent lifetime risk due to familial determinants. A woman’s FRP can be predicted from her multi-generational family history including the number of affected relatives and her relationship with each affected relative, their age(s) at diagnosis, and if known, her genetic risk status (including causal variants and markers associated with risk) and the genetic risk status of her relatives. It is not well recognised that there must be very large variation in FRP. Given the increased risks associated with having a family history, mathematical models predict that, as a group, women in the top 25% of FRP must be at least 20 times more likely to develop breast cancer than women in the bottom 25% of FRP. , Nevertheless, unlike matching on age to control for its strong effect on cancer risk, epidemiological studies rarely match well by design or analysis on FRP, even though cases and controls differ greatly by FRP, especially in the upper tail. Environmental and genetic effects may have different effects in women with increased FRP. Studies of such ‘gene-environment interactions’ for which controls are better matched to cases for FRP, and even for mutations in specific genes—either by design or by analyses that use good predictors of FRP—might be more informative, especially if both cases and controls are over-sampled for increased familial risk. They also have greater validity if they are prospective. , Few prospective studies of families exist. They include the Minnesota Breast Cancer Family Study (544 families), established in the 1950s, and the USA-based Sisters Study (50 844 unaffected sisters of affected women aged 35–74 years). Family-based cohorts are also important for novel behavioural, psychosocial and health care utilization research, such as attitudes and practices regarding screening and risk reduction, and for the translation of primary, secondary and tertiary prevention findings into clinical practice. In the mid-1990s,when two major susceptibility genes, BRCA1 and BRCA2 , were discovered, the Breast Cancer Family Registry (BCFR), and the Kathleen Cuningham Foundation Consortium for research into Familial Breast cancer (kConFab) (in 2001 the kConFab FUP started ) were established. Importantly, both the BCFR and the kConFab were designed from the outset so that they could generate cohorts from which data could be pooled; they used the same baseline questionnaire and have conducted regular active follow-up of families. In mid-2014, a systematic follow-up of both the BCFR and kConFab FUP was completed as part of an NIH-funded grant to study the following aims using a prospective family study cohort (ProF-SC) (CA159868): (i) estimate age-specific absolute risks of breast cancer; (ii) estimate relative risks associated with modifiable factors and test whether these associations vary by FRP; and (iii) develop and internally validate comprehensive clinical breast cancer risk assessment models for women across the spectrum of breast cancer risk.

Who is in the cohort?

The ProF-SC includes all female participants in the BCFR or kConFab FUP who were enrolled before 30 June 2011 and completed a baseline questionnaire. A total of 31 640 women from 11 171 families, 11.4% of whom are Ashkenazi Jewish, completed the same baseline questionnaire. The BCFR recruited families from six sites; one in Australia, one in Canada and four in the USA. The Australian, Canadian and Northern Californian sites recruited population-based case families using cancer registries. kConFab and the Australian BCFR recruited cases unselected for family history, over-sampling for early age at diagnosis, whereas the other two population-based sites used a two-stage sampling scheme, over-sampling for early age at diagnosis and/or having a family history or other predictors of a genetic predisposition. The Northern California site over-sampled racial/ethnic minority families. The New York, Philadelphia, Utah, Canadian and Australian sites recruited multiple-case families through family cancer clinics and community outreach. kConFab recruited multi-generational, multiple-case families through cancer family clinics in Australia and New Zealand. , The eligibility criteria for recruitment of families evolved over time and were intended to maximise the number of living potentially high-risk women, including known BRCA1 and BRCA2 mutation carriers, whether or not they had been diagnosed with breast cancer. Although ascertainment issues sometimes require separate analyses of population-based and clinic-ascertained families for retrospective studies, for prospective studies all unaffected family members can be combined into a single cohort because all families are being followed using the same methods and their members have been studied using the same protocol at baseline. A family cohort is in contrast to conventional cohort studies in which the vast majority of incident cases do not have a family history, at least not for first- or second-degree relatives. A large proportion of the ProF-SC cohort was affected at baseline, which also facilitates studies on risk factors for subsequent primary breast cancer, including contralateral disease. Table 1 describes the baseline characteristics of ProF-SC, illustrating wide variation in demographics, family history and other risk factors. Table 2 summarises the distribution of the incident breast cancer cases diagnosed since baseline. There is a wide distribution in age at diagnosis, with cases diagnosed before age 50 years accounting for 34% in the sub-cohort of women unaffected at baseline and 28% in the sub-cohort of women affected at baseline, respectively. For both these sub-cohorts, a high proportion of incident cases have been confirmed through pathology records (78% and 71%, respectively) and a high proportion have DNA available (88% and 95%, respectively).
Table 1.

Baseline characteristics of ProF-SC participants, by breast cancer status at baseline and by loss to follow-up

Total cohort ( n  = 31640)
Affected at baseline ( n  = 12787)
Unaffected at baseline ( n  = 18853)
Lost to follow-up ( n  = 5728) a
N or % or mean ± SD (min, max) N or % or mean ± SD (min, max) N or % or mean ± SD (min, max) N or % or mean ± SD (min, max)
BRCA1 mutation only 1514782732174
BRCA2 mutation only 1219633586138
BRCA1 & BRCA2 mutation 8801
Year at recruitment
 1992–941.71.12.00.6
 1995–9947.147.846.638.0
 2000_0430.229.830.535.0
 2005–0918.317.918.623.3
 2010–30 June 20112.73.32.33.1
Age at baseline (years)49.8 ± 14.852.9 ± 12.147.8 ± 16.148.8 ± 15.5
(18, 101)(21, 98)(18, 101)(18, 97)
Number of first-degree relatives with breast cancer0.9 ± 0.80.6 ± 0.81.1 ± 0.70.9 ± 0.8
(0, 6)(0, 6)(0, 6)(0, 6)
Number of second-degree relatives with breast cancer0.7 ± 0.90.6 ± 0.90.8 ± 1.00.7 ± 0.9
(0, 11)(0, 8)(0, 11)(0, 7)
Body mass index (BMI) (kg/m 2 ) 25.9 ± 5.626.2 ± 5.625.8 ± 5.626.2 ± 5.8
Age at menarche (years)12.8 ± 1.612.7 ± 1.612.9 ± 1.612.8 ± 1.6
Smoking status
 Never60.159.460.561.1
 Former26.928.325.923.3
 Current13.112.313.715.6
Alcohol intake
 Never52.454.451.158.7
 Former14.313.414.914.1
 Current33.332.334.027.2
Menopausal hormone use
 Never75.172.876.779.6
 Former16.924.511.813.9
 Current7.92.711.56.5
Hormonal contraceptive use
 Never27.529.126.433.5
 Former64.169.360.558.5
 Current8.41.613.08.0
Race/ethnicity
 Non-Hispanic White75.968.880.862.7
 Non-Hispanic Black6.28.64.68.7
 Hispanic9.411.28.115.1
 Asian5.88.83.810.2
 Other2.72.72.73.3
Education
 ≤High school graduation / GED34.434.634.340.4
 Vocational or technical school / some college or university36.835.637.733.7
 Bachelor’s or graduate degree28.729.828.026.0
Benign breast disease
 Yes31.036.327.426.7
 No69.063.772.673.3
Parity
 021.117.723.523.2
 111.713.010.813.3
 230.033.427.727.8
 320.320.520.217.8
 ≥416.815.517.717.9
Menopausal status
 Premenopausal45.130.355.349.9
 Postmenopausal54.969.744.750.1

a Includes refusals and not located.

Table 2.

Prospectively ascertained breast cancer cases among ProF-SC participants

Unaffected at baselineAffected at baseline
Number of women with self-reported new breast cancers10931252
New breast cancers confirmed by pathology, n (%) 848 (78%)883 (71%)
New breast cancers with blood/buccalsample collected, n (%) 961 (88%)1184 (95%)
Age at diagnosis of new breast cancer (years), n (%)
 <40117 (11%)103 (8%)
 40–44107 (10%)120 (10%)
 45–49147 (13%)131 (10%)
 50–54128 (12%)205 (16%)
 55–59132 (12%)186 (15%)
 60–64135 (12%)181 (14%)
 65–6998 (9%)129 (10%)
 ≥70199 (18%)185 (15%)
 Unknown30 (3%)12 (1%)
Baseline characteristics of ProF-SC participants, by breast cancer status at baseline and by loss to follow-up a Includes refusals and not located. Prospectively ascertained breast cancer cases among ProF-SC participants

How often have they been followed up?

The family-based design facilitates follow-up primarily through tracing and updates of vital status using multiple informants, thereby increasing the validity of the cohort’s data on outcomes and family cancer history. Since baseline, there has been regular contact with families through BCFR and kConFab newsletters and websites. Vital and cancer statuses have been updated through phone interviews, mailed questionnaires, clinic visits and linkages to cancer registries. In addition, there have been systematic updates of risk factor and clinical outcomes data (see below for details). High participation at follow-up is a critical issue for the validity of cohort studies, and we have demonstrated that this can be achieved by using a family-based design with multiple contacts typically available for each cohort member. Of the 31 640 women in the cohort, after an average of 9 years of follow-up, 11% were no longer living, 5% no longer wished to participate in follow-up and 14% have been lost to follow-up. Table 1 shows that baseline characteristics are similar for those lost to follow-up or no longer participating in active follow-up and those who have remained active. For those lost to follow-up and/or who dropped out of active follow-up, we have information on vital status, including cancer history, for 63% from their participating relatives.

What has been measured?

For all ProF-SC members, the BCFR and kConFab have collected detailed family history, demographic and risk factor data and biospecimens, regardless of their breast cancer history. For all women with breast cancer, pathology records, archived tumour tissue and self-reported information on cancer treatment have been sought ( Table 3 ).
Table 3.

Overview of measurements made for ProF-SC participants

Type of constructWhen collectedDetails
Family history/pedigree

Baseline

Annual follow-up

10-year follow-up

ProF-SC follow-up

Multi-generational pedigree completed at baseline, 10-year and ProF-SC interviews; additional updates collected when families contacted annually
Epidemiological questionnaires

Baseline

10-year follow-up

ProF-SC follow-up

Every 3 years a

Reproductive history; personal medical history; behavioural risk factors
Biospecimen collectionBaselineBlood and/or buccal sample
BRCA1 and BRCA2 genotyping

Baseline

Follow-up as new family mutations are identified

Youngest affected family member tested, other family members tested if youngest affected had mutation
Outcome information

At diagnosis

After identified through personal or family report

Linkage with cancer (Australia, California, Canada) and national death registries

Pathology report; pathology material

Treatment questionnaire

Linkage with cancer registries and linkage with National Death Index

a kConFab FUP only.

Overview of measurements made for ProF-SC participants Baseline Annual follow-up 10-year follow-up ProF-SC follow-up Baseline 10-year follow-up ProF-SC follow-up Every 3 years Baseline Follow-up as new family mutations are identified At diagnosis After identified through personal or family report Linkage with cancer (Australia, California, Canada) and national death registries Pathology report; pathology material Treatment questionnaire Linkage with cancer registries and linkage with National Death Index a kConFab FUP only.

Family history/pedigrees

Pedigree information includes age at diagnosis of all cancers (except non-melanoma skin cancer) and deaths for first- and second-degree relatives of all participants (not just probands). This provides the most comprehensive description of family history of any epidemiological breast cancer study.

Risk factor questionnaires

The BCFR and kConFab used the same baseline questionnaire to collect data on menstrual and reproductive history, medical history and behavioral factors. The BCFR conducted a systematic follow-up beginning in 2007, and collected updated information on personal and family history of cancer, breast and ovarian surgeries and breast cancer risk factors collected at baseline. New items of interest were added, including screening behaviours such as use of magnetic resonance imaging (MRI), use of non-steroidal anti-inflammatory drugs (NSAIDs) and knowledge and understanding of genetic test results. The most recent systematic follow-up of the BCFR, conducted in 2011–14, updated some risk factor data in addition to family history and pedigree information. kConFab FUP surveyed participants every 3 years, using questionnaires that cover the same content as the BCFR follow-up questionnaires, with the exception of diagnostic radiation.

Biospecimen collection

At baseline, depending on relationship to the proband, most women were asked by the BCFR and kConFab to provide either a blood or a buccal sample. As a result, for 83% of ProF-SC there are banked DNA and plasma samples, and for an additional 2% there is DNA from buccal samples. There are no major differences between women who gave blood and those who did not with regard to the characteristics in Table 1 (data not shown).

BRCA1 and BRCA2 genotyping

Screening for germline BRCA1 and BRCA2 mutations and other known or putative susceptibility variations in other genes has been undertaken by the BCFR and kConFab, as previously described. ,, The cohort includes 1508 (844 BRCA1 , 658 BRCA 2, 6 both BRCA1 and BRCA2 ) female carriers from the BCFR, and 1233 (670 BRCA1 , 561 BRCA2, 2 both BRCA1 and BRCA2 ) female carriers from kConFab.

Outcome information

We have collected pathology reports for 74% of prospectively ascertained (incident) cases to date. The BCFR collected self-reported treatment data using a validated questionnaire addressing stage and the type of initial breast cancer treatments (surgery, radiation treatment, endocrine treatment and chemotherapy). , The Australian, Canadian and Utah sites of the BCFR regularly link to population-based cancer registries to validate cancers reported during follow-up. Linkage to death registries in Australia and Canada has been used to update vital status and related information (date and cause of death) as well as the National Death Index for the USA-based sites.

What has it found?

To empirically evaluate the differences in breast cancer risk estimates from different constructs of family history, we compared standard ways of defining family history with estimates using full family history pedigrees ( Table 4 ). For the more than 18 000 women unaffected at baseline, we compared family history as typically defined by cohort studies [any affected first-degree relative(s); yes/no] with that of the number of affected first-degree relatives, and with the more comprehensive family history measure of FRP based on the Breast and Ovarian Analysis of Disease Incidence and Carrier Estimation Algorithm (BOADICEA) model (10-year predicted risk). We fitted an age-adjusted proportional hazards model and found that all measures predicted risk. As we compare binary categorical, ordered categorical and continuous constructs of family history, the χ statistics (based on the change in log likelihood which allows comparisons across constructs) showed that the BOADICEA score was clearly the best predictor of risk (χ = 523 for BOADICEA vs χ = 18 for ever/never family history) in that it captures more information on risk. After fitting the BOADICEA score, the strengths of the associations with the other two predictors were approximately halved, whereas the association with the BOADICEA score was virtually unchanged. Therefore, there is also scope for the BOADICEA model to be improved as a measure of FRP.
Table 4.

Associations of family history measures as predictors of age-adjusted breast cancer incidence for the sub-cohort of 17 403 women in ProF-SC who were unaffected at baseline

Family history measureNumber of eventsPerson-time (yrs) Hazard ratio estimate a95% confidence interval χ 12
Breast cancer in 1st-degree relative(s) (yes/no, binary categorical)10701751861.45(1.22, 1.73)18
Number of 1st-degree relatives with breast cancer (ordered categorical)10701751861.39(1.29, 1.49)81
BOADICEA 10-year risk (per 1% change, continuous)9471548851.12(1.11, 1.14)523
Breast cancer in 1st-degree relative(s) (yes/no, binary categorical)9471548851.22(1.01, 1.47)4
BOADICEA 10-year risk (per 1% change, continuous)1.12(1.11, 1.13)503
Number of 1st-degree relatives with breast cancer (ordered categorical)9471548851.17(1.08, 1.27)14
BOADICEA 10-year risk1.12(1.11, 1.13)428
 (per 1% change, continuous)

a Each row represents a separate age-adjusted model; rows 4 and 5 report models in which two constructs of family history are simultaneously fitted.

Associations of family history measures as predictors of age-adjusted breast cancer incidence for the sub-cohort of 17 403 women in ProF-SC who were unaffected at baseline a Each row represents a separate age-adjusted model; rows 4 and 5 report models in which two constructs of family history are simultaneously fitted. Figure 2 shows the predicted remaining lifetime risk based on BOADICEA for the sub-cohort of women unaffected at baseline. This illustrates the large range in risk and therefore why ProF-SC can be used to develop risk models which consider modification of risk by underlying FRP for women across the risk continuum.
Figure 2.

Remaining lifetime risks according to BOADICEA based on baseline characteristics, including family history, for the sub-cohort of 17 403 women in ProF-SC who were unaffected at baseline.

Remaining lifetime risks according to BOADICEA based on baseline characteristics, including family history, for the sub-cohort of 17 403 women in ProF-SC who were unaffected at baseline. These results suggest that the range of risk across Prof-SC participants is large, which will be essential for prospectively validating many of the retrospective findings from our families, including the importance of biomarkers that change over the life course (such as DNA repair phenotype, telomere length, oxidative stress and DNA methylation markers) in high-risk women. , We have also investigated environmental modifiers of risk for carriers of BRCA1 and BRCA2 mutations using retrospective data, and found a positive association with smoking but no association with alcohol intake, oral contraceptive use , or medical diagnostic radiation. These studies suggest that it might be misleading to extrapolate findings about cancer risk factors from studying the general population to BRCA1 and BRCA2 mutation carriers or other sub-populations of women at increased familial/genetic risk. We are currently working to prospectively validate these finding using ProF-SC, with the aim of identifying modifiable risk factors for women across the full spectrum of risk. A key goal of ProF-SC is to validate and extend risk assessment models that predict breast cancer risk and are used in clinics and elsewhere. Most models, such as the BCRAT or Gail model, have been developed for average risk populations and do not incorporate extensive data on family history of breast cancer or BRCA1 and BRCA2 mutation status. Exceptions are the International Breast Cancer Intervention Study (IBIS, or the Tyrer-Cuzick model) and the BOADICEA. Using data from the New York site of the BCFR, we have observed large discordances across models, , for example predictions from the IBIS model were generally closer to the observed number of events than predictions using BCRAT even for the women considered to be at average risk (e.g. those with no family history and no BRCA1 or BRCA2 mutation). Using data from the Australian site of the BCFR, we have shown that BOADICEA is well calibrated and has good discrimination and accuracy at the individual level.

What are the main strengths and weaknesses?

As shown above, a family-based cohort over-sampled for increased familial risk has many strengths including: (i) enrichment on outcome so that fewer individuals need be followed, and/or for a shorter time, in order to have the same statistical power as a cohort unselected for risk; (ii) ensuring the cohort covers a large range of risk; (iii) ability to identify environmental and genetic modifiers of risk for women at higher than average risk; and (iv) better retention through having multiple family contacts. From a practical perspective, however, family studies can be challenging because additional layers of protocol and privacy need to be considered. Care also has to be taken to ensure that information is not inadvertently passed to other family members. These issues, however, can be handled through study protocols and training, and we strongly believe that the benefits of a family cohort far outweigh its limitations and that this design should be considered when conducting aetiological research focused on environmental modifiers across the risk spectrum.

Can I use the data? Where can I find out more?

For information on how to collaborate with the ProF-SC cohort in making further use of the data and resources, and also with the BCFR, please see [ http://www.bcfamilyregistry.org/ ]. For access to kConFab resources, see [ www.kconfab.org ]. Profile in a nutshell ProF-SC is a prospective cohort study of 31 640 women from 11 171 families ascertained through population-based and clinic-based sampling and who cover the full spectrum of familial risk. The study is designed to use pedigree and genetic data to predict the underlying familial risk profile (FRP) of each participant and determine if risk associations differ according to FRP, thereby informing targeted risk modification and prevention. Recruitment commenced in 1992 and families were from the USA, Canada and Australia. At baseline this cohort of women over the age of 18 years included 18 853 unaffected and 12 787 affected with breast cancer, of whom 2741 are BRCA1 or BRCA2 mutation carriers. The most recent follow-up was completed in 2014 and included updating family cancer histories from multiple sources; 5% have withdrawn and 14% were lost to follow-up. Over on average 9 years, we have identified 1093 and 1252 women with incident breast cancers among those at baseline who were unaffected and affected, respectively. Multi-generational cancer family histories were sought from all participants who were administered the same baseline epidemiology questionnaire. Blood samples have been collected from 83%, and another 2% have DNA available through buccal samples, of participants and used for extensive genetic characterisation. For collaboration with the ProF-SC cohort, see [ http://www.bcfamilyregistry.org/ ] and [ www.kconfab.org ].

Funding

This work was supported by an award from NIH grants R01 CA159868 and UM1 CA164920 from the USA National Cancer Institute. The content of this manuscript does not necessarily reflect the views or policies of the National Cancer Institute or any of the collaborating centres in the BCFR, nor does mention of trade names, commercial products or organisations imply endorsement by the USA Government or the BCFR. K.A.P. is an Australian National Breast Cancer Foundation Fellow. kConFab is supported by grants from the National Breast Cancer Foundation, the National Health and Medical Research Council (NHMRC) and the Queensland Cancer Fund, the Cancer Councils of New South Wales, Victoria, Tasmania and South Australia, and the Cancer Foundation of Western Australia. J.L.H. is an NHMRC Senior Principal Research Fellow. I.L.A. holds the Anne and Max Tanenbaum Chair in Molecular Medicine at Mount Sinai Hospital and the University of Toronto.
  49 in total

1.  Comparison of DNA- and RNA-based methods for detection of truncating BRCA1 mutations.

Authors:  Irene L Andrulis; Hoda Anton-Culver; Jeanne Beck; Betsy Bove; Jeff Boyd; Saundra Buys; Andrew K Godwin; John L Hopper; Frederick Li; Susan L Neuhausen; Hilmi Ozcelik; David Peel; Regina M Santella; Melissa C Southey; Nathalie J van Orsouw; Deon J Venter; Jan Vijg; Alice S Whittemore
Journal:  Hum Mutat       Date:  2002-07       Impact factor: 4.878

2.  Screening behavior in women at increased familial risk for breast cancer.

Authors:  Yoland C Antill; John Reynolds; Mary Anne Young; Judy A Kirk; Katherine M Tucker; Tarli L Bogtstra; Shirley S Wong; Tracy E Dudding; Juliana L Di Iulio; Kelly-Anne Phillips
Journal:  Fam Cancer       Date:  2006-07-07       Impact factor: 2.375

3.  BRCA1 and BRCA2 mutation carriers, oral contraceptive use, and breast cancer before age 50.

Authors:  Robert W Haile; Duncan C Thomas; Valerie McGuire; Anna Felberg; Esther M John; Roger L Milne; John L Hopper; Mark A Jenkins; A Joan Levine; Mary M Daly; Saundra S Buys; Ruby T Senie; Irene L Andrulis; Julia A Knight; Andrew K Godwin; Melissa Southey; Margaret R E McCredie; Graham G Giles; Lesley Andrews; Katherine Tucker; Alexander Miron; Carmel Apicella; Andrea Tesoriero; Anita Bane; Malcolm C Pike; Alice S Whittemore
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2006-10-04       Impact factor: 4.254

4.  Differences in DNA methylation by extent of breast cancer family history in unaffected women.

Authors:  Lissette Delgado-Cruzata; Hui-Chen Wu; Yuyan Liao; Regina M Santella; Mary Beth Terry
Journal:  Epigenetics       Date:  2013-10-29       Impact factor: 4.528

5.  Medical radiation exposure and breast cancer risk: findings from the Breast Cancer Family Registry.

Authors:  Esther M John; Amanda I Phipps; Julia A Knight; Roger L Milne; Gillian S Dite; John L Hopper; Irene L Andrulis; Melissa Southey; Graham G Giles; Dee W West; Alice S Whittemore
Journal:  Int J Cancer       Date:  2007-07-15       Impact factor: 7.396

6.  Family history and risk of breast cancer.

Authors:  R S Houlston; E McCarter; S Parbhoo; J H Scurr; J Slack
Journal:  J Med Genet       Date:  1992-03       Impact factor: 6.318

Review 7.  Familial breast cancer: collaborative reanalysis of individual data from 52 epidemiological studies including 58,209 women with breast cancer and 101,986 women without the disease.

Authors: 
Journal:  Lancet       Date:  2001-10-27       Impact factor: 79.321

8.  BRCA1 and BRCA2 mutation carriers in the Breast Cancer Family Registry: an open resource for collaborative research.

Authors:  Susan L Neuhausen; Hilmi Ozcelik; Melissa C Southey; Esther M John; Andrew K Godwin; Wendy Chung; Jeniffer Iriondo-Perez; Alexander Miron; Regina M Santella; Alice Whittemore; Irene L Andrulis; Saundra S Buys; Mary B Daly; John L Hopper; Daniela Seminara; Ruby T Senie; Mary Beth Terry
Journal:  Breast Cancer Res Treat       Date:  2008-08-14       Impact factor: 4.872

9.  Epidemiologic and genetic follow-up study of 544 Minnesota breast cancer families: design and methods.

Authors:  T A Sellers; V E Anderson; J D Potter; S A Bartow; P L Chen; L Everson; R A King; C C Kuni; L H Kushi; P G McGovern
Journal:  Genet Epidemiol       Date:  1995       Impact factor: 2.135

10.  Genome-wide association studies identify four ER negative-specific breast cancer risk loci.

Authors:  Montserrat Garcia-Closas; Fergus J Couch; Sara Lindstrom; Kyriaki Michailidou; Marjanka K Schmidt; Mark N Brook; Nick Orr; Suhn Kyong Rhie; Elio Riboli; Heather S Feigelson; Loic Le Marchand; Julie E Buring; Diana Eccles; Penelope Miron; Peter A Fasching; Hiltrud Brauch; Jenny Chang-Claude; Jane Carpenter; Andrew K Godwin; Heli Nevanlinna; Graham G Giles; Angela Cox; John L Hopper; Manjeet K Bolla; Qin Wang; Joe Dennis; Ed Dicks; Will J Howat; Nils Schoof; Stig E Bojesen; Diether Lambrechts; Annegien Broeks; Irene L Andrulis; Pascal Guénel; Barbara Burwinkel; Elinor J Sawyer; Antoinette Hollestelle; Olivia Fletcher; Robert Winqvist; Hermann Brenner; Arto Mannermaa; Ute Hamann; Alfons Meindl; Annika Lindblom; Wei Zheng; Peter Devillee; Mark S Goldberg; Jan Lubinski; Vessela Kristensen; Anthony Swerdlow; Hoda Anton-Culver; Thilo Dörk; Kenneth Muir; Keitaro Matsuo; Anna H Wu; Paolo Radice; Soo Hwang Teo; Xiao-Ou Shu; William Blot; Daehee Kang; Mikael Hartman; Suleeporn Sangrajrang; Chen-Yang Shen; Melissa C Southey; Daniel J Park; Fleur Hammet; Jennifer Stone; Laura J Van't Veer; Emiel J Rutgers; Artitaya Lophatananon; Sarah Stewart-Brown; Pornthep Siriwanarangsan; Julian Peto; Michael G Schrauder; Arif B Ekici; Matthias W Beckmann; Isabel Dos Santos Silva; Nichola Johnson; Helen Warren; Ian Tomlinson; Michael J Kerin; Nicola Miller; Federick Marme; Andreas Schneeweiss; Christof Sohn; Therese Truong; Pierre Laurent-Puig; Pierre Kerbrat; Børge G Nordestgaard; Sune F Nielsen; Henrik Flyger; Roger L Milne; Jose Ignacio Arias Perez; Primitiva Menéndez; Heiko Müller; Volker Arndt; Christa Stegmaier; Peter Lichtner; Magdalena Lochmann; Christina Justenhoven; Yon-Dschun Ko; Taru A Muranen; Kristiina Aittomäki; Carl Blomqvist; Dario Greco; Tuomas Heikkinen; Hidemi Ito; Hiroji Iwata; Yasushi Yatabe; Natalia N Antonenkova; Sara Margolin; Vesa Kataja; Veli-Matti Kosma; Jaana M Hartikainen; Rosemary Balleine; Chiu-Chen Tseng; David Van Den Berg; Daniel O Stram; Patrick Neven; Anne-Sophie Dieudonné; Karin Leunen; Anja Rudolph; Stefan Nickels; Dieter Flesch-Janys; Paolo Peterlongo; Bernard Peissel; Loris Bernard; Janet E Olson; Xianshu Wang; Kristen Stevens; Gianluca Severi; Laura Baglietto; Catriona McLean; Gerhard A Coetzee; Ye Feng; Brian E Henderson; Fredrick Schumacher; Natalia V Bogdanova; France Labrèche; Martine Dumont; Cheng Har Yip; Nur Aishah Mohd Taib; Ching-Yu Cheng; Martha Shrubsole; Jirong Long; Katri Pylkäs; Arja Jukkola-Vuorinen; Saila Kauppila; Julia A Knight; Gord Glendon; Anna Marie Mulligan; Robertus A E M Tollenaar; Caroline M Seynaeve; Mieke Kriege; Maartje J Hooning; Ans M W van den Ouweland; Carolien H M van Deurzen; Wei Lu; Yu-Tang Gao; Hui Cai; Sabapathy P Balasubramanian; Simon S Cross; Malcolm W R Reed; Lisa Signorello; Qiuyin Cai; Mitul Shah; Hui Miao; Ching Wan Chan; Kee Seng Chia; Anna Jakubowska; Katarzyna Jaworska; Katarzyna Durda; Chia-Ni Hsiung; Pei-Ei Wu; Jyh-Cherng Yu; Alan Ashworth; Michael Jones; Daniel C Tessier; Anna González-Neira; Guillermo Pita; M Rosario Alonso; Daniel Vincent; Francois Bacot; Christine B Ambrosone; Elisa V Bandera; Esther M John; Gary K Chen; Jennifer J Hu; Jorge L Rodriguez-Gil; Leslie Bernstein; Michael F Press; Regina G Ziegler; Robert M Millikan; Sandra L Deming-Halverson; Sarah Nyante; Sue A Ingles; Quinten Waisfisz; Helen Tsimiklis; Enes Makalic; Daniel Schmidt; Minh Bui; Lorna Gibson; Bertram Müller-Myhsok; Rita K Schmutzler; Rebecca Hein; Norbert Dahmen; Lars Beckmann; Kirsimari Aaltonen; Kamila Czene; Astrid Irwanto; Jianjun Liu; Clare Turnbull; Nazneen Rahman; Hanne Meijers-Heijboer; Andre G Uitterlinden; Fernando Rivadeneira; Curtis Olswold; Susan Slager; Robert Pilarski; Foluso Ademuyiwa; Irene Konstantopoulou; Nicholas G Martin; Grant W Montgomery; Dennis J Slamon; Claudia Rauh; Michael P Lux; Sebastian M Jud; Thomas Bruning; Joellen Weaver; Priyanka Sharma; Harsh Pathak; Will Tapper; Sue Gerty; Lorraine Durcan; Dimitrios Trichopoulos; Rosario Tumino; Petra H Peeters; Rudolf Kaaks; Daniele Campa; Federico Canzian; Elisabete Weiderpass; Mattias Johansson; Kay-Tee Khaw; Ruth Travis; Françoise Clavel-Chapelon; Laurence N Kolonel; Constance Chen; Andy Beck; Susan E Hankinson; Christine D Berg; Robert N Hoover; Jolanta Lissowska; Jonine D Figueroa; Daniel I Chasman; Mia M Gaudet; W Ryan Diver; Walter C Willett; David J Hunter; Jacques Simard; Javier Benitez; Alison M Dunning; Mark E Sherman; Georgia Chenevix-Trench; Stephen J Chanock; Per Hall; Paul D P Pharoah; Celine Vachon; Douglas F Easton; Christopher A Haiman; Peter Kraft
Journal:  Nat Genet       Date:  2013-04       Impact factor: 38.330

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  28 in total

1.  Recreational Physical Activity Is Associated with Reduced Breast Cancer Risk in Adult Women at High Risk for Breast Cancer: A Cohort Study of Women Selected for Familial and Genetic Risk.

Authors:  Rebecca D Kehm; Jeanine M Genkinger; Robert J MacInnis; Esther M John; Kelly-Anne Phillips; Gillian S Dite; Roger L Milne; Nur Zeinomar; Yuyan Liao; Julia A Knight; Melissa C Southey; Wendy K Chung; Graham G Giles; Sue-Anne McLachlan; Kristen D Whitaker; Michael Friedlander; Prue C Weideman; Gord Glendon; Stephanie Nesci; kConFab Investigators; Irene L Andrulis; Saundra S Buys; Mary B Daly; John L Hopper; Mary Beth Terry
Journal:  Cancer Res       Date:  2019-10-02       Impact factor: 12.701

2.  Enrollment and biospecimen collection in a multiethnic family cohort: the Northern California site of the Breast Cancer Family Registry.

Authors:  Esther M John; Meera Sangaramoorthy; Jocelyn Koo; Alice S Whittemore; Dee W West
Journal:  Cancer Causes Control       Date:  2019-03-05       Impact factor: 2.506

3.  Benign breast disease increases breast cancer risk independent of underlying familial risk profile: Findings from a Prospective Family Study Cohort.

Authors:  Nur Zeinomar; Kelly-Anne Phillips; Mary B Daly; Roger L Milne; Gillian S Dite; Robert J MacInnis; Yuyan Liao; Rebecca D Kehm; Julia A Knight; Melissa C Southey; Wendy K Chung; Graham G Giles; Sue-Anne McLachlan; Michael L Friedlander; Prue C Weideman; Gord Glendon; Stephanie Nesci; Irene L Andrulis; Saundra S Buys; Esther M John; John L Hopper; Mary Beth Terry
Journal:  Int J Cancer       Date:  2019-02-20       Impact factor: 7.396

4.  Testing for Gene-Environment Interactions Using a Prospective Family Cohort Design: Body Mass Index in Early and Later Adulthood and Risk of Breast Cancer.

Authors:  Gillian S Dite; Robert J MacInnis; Adrian Bickerstaffe; James G Dowty; Roger L Milne; Antonis C Antoniou; Prue Weideman; Carmel Apicella; Graham G Giles; Melissa C Southey; Mark A Jenkins; Kelly-Anne Phillips; Aung Ko Win; Mary Beth Terry; John L Hopper
Journal:  Am J Epidemiol       Date:  2017-03-15       Impact factor: 4.897

5.  Alcohol Consumption, Cigarette Smoking, and Risk of Breast Cancer for BRCA1 and BRCA2 Mutation Carriers: Results from The BRCA1 and BRCA2 Cohort Consortium.

Authors:  Nadine Andrieu; David E Goldgar; Hongyan Li; Mary Beth Terry; Antonis C Antoniou; Kelly-Anne Phillips; Karin Kast; Thea M Mooij; Christoph Engel; Catherine Noguès; Dominique Stoppa-Lyonnet; Christine Lasset; Pascaline Berthet; Veronique Mari; Olivier Caron; Daniel Barrowdale; Debra Frost; Carole Brewer; D Gareth Evans; Louise Izatt; Lucy Side; Lisa Walker; Marc Tischkowitz; Mark T Rogers; Mary E Porteous; Katie Snape; Hanne E J Meijers-Heijboer; Johan J P Gille; Marinus J Blok; Nicoline Hoogerbrugge; Mary B Daly; Irene L Andrulis; Saundra S Buys; Esther M John; Sue-Anne McLachlan; Michael Friedlander; Yen Y Tan; Ana Osorio; Trinidad Caldes; Anna Jakubowska; Jacques Simard; Christian F Singer; Edith Olah; Marie Navratilova; Lenka Foretova; Anne-Marie Gerdes; Marie-José Roos-Blom; Brita Arver; Håkan Olsson; Rita K Schmutzler; John L Hopper; Roger L Milne; Douglas F Easton; Flora E Van Leeuwen; Matti A Rookus
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2019-12-02       Impact factor: 4.254

6.  Comparing 5-Year and Lifetime Risks of Breast Cancer using the Prospective Family Study Cohort.

Authors:  Robert J MacInnis; Julia A Knight; Wendy K Chung; Roger L Milne; Alice S Whittemore; Richard Buchsbaum; Yuyan Liao; Nur Zeinomar; Gillian S Dite; Melissa C Southey; David Goldgar; Graham G Giles; Allison W Kurian; Irene L Andrulis; Esther M John; Mary B Daly; Saundra S Buys; Kelly-Anne Phillips; John L Hopper; Mary Beth Terry
Journal:  J Natl Cancer Inst       Date:  2021-06-01       Impact factor: 13.506

7.  Identifying Preferred Breast Cancer Risk Predictors: A Holistic Perspective.

Authors:  Ruth Etzioni; Yu Shen; Ya-Chen Tina Shih
Journal:  J Natl Cancer Inst       Date:  2021-06-01       Impact factor: 13.506

8.  Environmental exposures and breast cancer risk in the context of underlying susceptibility: A systematic review of the epidemiological literature.

Authors:  Nur Zeinomar; Sabine Oskar; Rebecca D Kehm; Shamin Sahebzeda; Mary Beth Terry
Journal:  Environ Res       Date:  2020-03-12       Impact factor: 6.498

9.  Simplified Breast Risk Tool Integrating Questionnaire Risk Factors, Mammographic Density, and Polygenic Risk Score: Development and Validation.

Authors:  Bernard Rosner; Rulla M Tamimi; Peter Kraft; Chi Gao; Yi Mu; Christopher Scott; Stacey J Winham; Celine M Vachon; Graham A Colditz
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2020-12-04       Impact factor: 4.090

10.  The Steroid Metabolome and Breast Cancer Risk in Women with a Family History of Breast Cancer: The Novel Role of Adrenal Androgens and Glucocorticoids.

Authors:  Lauren C Houghton; Renata E Howland; Ying Wei; Xinran Ma; Rebecca D Kehm; Wendy K Chung; Jeanine M Genkinger; Regina M Santella; Michaela F Hartmann; Stefan A Wudy; Mary Beth Terry
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2020-09-30       Impact factor: 4.090

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