Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Brooke L. Fridley is active.

Publication


Featured researches published by Brooke L. Fridley.


Journal of the National Cancer Institute | 2015

Germline Mutations in the BRIP1, BARD1, PALB2, and NBN Genes in Women With Ovarian Cancer

Susan J. Ramus; Honglin Song; Ed Dicks; Jonathan Tyrer; Adam N. Rosenthal; Maria P. Intermaggio; Lindsay Fraser; Aleksandra Gentry-Maharaj; Jane Hayward; Susan Philpott; Christopher E. Anderson; Christopher K. Edlund; David V. Conti; Patricia Harrington; Daniel Barrowdale; David Bowtell; Kathryn Alsop; Gillian Mitchell; Mine S. Cicek; Julie M. Cunningham; Brooke L. Fridley; Jennifer Alsop; Mercedes Jimenez-Linan; Samantha Poblete; S.B. Lele; Lara E. Sucheston-Campbell; Kirsten B. Moysich; Weiva Sieh; Valerie McGuire; Jenny Lester

BACKGROUND Epithelial ovarian cancer (EOC) is the most lethal gynecological malignancy, responsible for 13 000 deaths per year in the United States. Risk prediction based on identifying germline mutations in ovarian cancer susceptibility genes could have a clinically significant impact on reducing disease mortality. METHODS Next generation sequencing was used to identify germline mutations in the coding regions of four candidate susceptibility genes-BRIP1, BARD1, PALB2 and NBN-in 3236 invasive EOC case patients and 3431 control patients of European origin, and in 2000 unaffected high-risk women from a clinical screening trial of ovarian cancer (UKFOCSS). For each gene, we estimated the prevalence and EOC risks and evaluated associations between germline variant status and clinical and epidemiological risk factor information. All statistical tests were two-sided. RESULTS We found an increased frequency of deleterious mutations in BRIP1 in case patients (0.9%) and in the UKFOCSS participants (0.6%) compared with control patients (0.09%) (P = 1 x 10(-4) and 8 x 10(-4), respectively), but no differences for BARD1 (P = .39), NBN1 ( P = .61), or PALB2 (P = .08). There was also a difference in the frequency of rare missense variants in BRIP1 between case patients and control patients (P = 5.5 x 10(-4)). The relative risks associated with BRIP1 mutations were 11.22 for invasive EOC (95% confidence interval [CI] = 3.22 to 34.10, P = 1 x 10(-4)) and 14.09 for high-grade serous disease (95% CI = 4.04 to 45.02, P = 2 x 10(-5)). Segregation analysis in families estimated the average relative risks in BRIP1 mutation carriers compared with the general population to be 3.41 (95% CI = 2.12 to 5.54, P = 7×10(-7)). CONCLUSIONS Deleterious germline mutations in BRIP1 are associated with a moderate increase in EOC risk. These data have clinical implications for risk prediction and prevention approaches for ovarian cancer and emphasize the critical need for risk estimates based on very large sample sizes before genes of moderate penetrance have clinical utility in cancer prevention.


Oncotarget | 2017

Characterization of fusion genes in common and rare epithelial ovarian cancer histologic subtypes

Madalene Earp; Rama Raghavan; Qian Li; Junqiang Dai; Stacey J. Winham; Julie M. Cunningham; Yanina Natanzon; Kimberly R. Kalli; Xiaonan Hou; S. John Weroha; Paul Haluska; Kate Lawrenson; Simon A. Gayther; Chen Wang; Ellen L. Goode; Brooke L. Fridley

Gene fusions play a critical role in some cancers and can serve as important clinical targets. In epithelial ovarian cancer (EOC), the contribution of fusions, especially by histological type, is unclear. We therefore screened for recurrent fusions in a histologically diverse panel of 220 EOCs using RNA sequencing. The Pipeline for RNA-Sequencing Data Analysis (PRADA) was used to identify fusions and allow for comparison with The Cancer Genome Atlas (TCGA) tumors. Associations between fusions and clinical prognosis were evaluated using Cox proportional hazards regression models. Nine recurrent fusions, defined as occurring in two or more tumors, were observed. CRHR1-KANSL1 was the most frequently identified fusion, identified in 6 tumors (2.7% of all tumors). This fusion was not associated with survival; other recurrent fusions were too rare to warrant survival analyses. One recurrent in-frame fusion, UBAP1-TGM7, was unique to clear cell (CC) EOC tumors (in 10%, or 2 of 20 CC tumors). We found some evidence that CC tumors harbor more fusions on average than any other EOC histological type, including high-grade serous (HGS) tumors. CC tumors harbored a mean of 7.4 fusions (standard deviation [sd] = 7.4, N = 20), compared to HGS EOC tumors mean of 2.0 fusions (sd = 3.3, N = 141). Few fusion genes were detected in endometrioid tumors (mean = 0.24, sd = 0.74, N = 55) or mucinous tumors (mean = 0.25, sd = 0.5, N = 4) tumors. To conclude, we identify one fusion at 10% frequency in the CC EOC subtype, but find little evidence for common (> 5% frequency) recurrent fusion genes in EOC overall, or in HGS subtype-specific EOC tumors.


PLOS ONE | 2018

Assessment of data transformations for model-based clustering of RNA-Seq data

Janelle R. Noel-MacDonnell; Joseph Usset; Ellen L. Goode; Brooke L. Fridley

Quality control, global biases, normalization, and analysis methods for RNA-Seq data are quite different than those for microarray-based studies. The assumption of normality is reasonable for microarray based gene expression data; however, RNA-Seq data tend to follow an over-dispersed Poisson or negative binomial distribution. Little research has been done to assess how data transformations impact Gaussian model-based clustering with respect to clustering performance and accuracy in estimating the correct number of clusters in RNA-Seq data. In this article, we investigate Gaussian model-based clustering performance and accuracy in estimating the correct number of clusters by applying four data transformations (i.e., naïve, logarithmic, Blom, and variance stabilizing transformation) to simulated RNA-Seq data. To do so, an extensive simulation study was carried out in which the scenarios varied in terms of: how genes were selected to be included in the clustering analyses, size of the clusters, and number of clusters. Following the application of the different transformations to the simulated data, Gaussian model-based clustering was carried out. To assess clustering performance for each of the data transformations, the adjusted rand index, clustering error rate, and concordance index were utilized. As expected, our results showed that clustering performance was gained in scenarios where data transformations were applied to make the data appear “more” Gaussian in distribution.


Journal of Human Genetics | 2018

Mediation analysis of alcohol consumption, DNA methylation, and epithelial ovarian cancer

Dongyan Wu; Haitao Yang; Stacey J. Winham; Yanina Natanzon; Devin C. Koestler; Tiane Luo; Brooke L. Fridley; Ellen L. Goode; Yanbo Zhang; Yuehua Cui

Epigenetic factors and consumption of alcohol, which suppresses DNA methylation, may influence the development and progression of epithelial ovarian cancer (EOC). However, there is a lack of understanding whether these factors interact to affect the EOC risk. In this study, we aimed to gain insight into this relationship by identifying leukocyte-derived DNA methylation markers acting as potential mediators of alcohol-associated EOC. We implemented a causal inference test (CIT) and the VanderWeele and Vansteelandt multiple mediator model to examine CpG sites that mediate the association between alcohol consumption and EOC risk. We modified one step of the CIT by adopting a high-dimensional inference procedure. The data were based on 196 cases and 202 age-matched controls from the Mayo Clinic Ovarian Cancer Case-Control Study. Implementation of the CIT test revealed two CpG sites (cg09358725, cg11016563), which represent potential mediators of the relationship between alcohol consumption and EOC case–control status. Implementation of the VanderWeele and Vansteelandt multiple mediator model further revealed that these two CpGs were the key mediators. Decreased methylation at both CpGs was more common in cases who drank alcohol at the time of enrollment vs. those who did not. cg11016563 resides in TRPC6 which has been previously shown to be overexpressed in EOC. These findings suggest two CpGs may serve as novel biomarkers for EOC susceptibility.


JAMIA Open | 2018

A Curated Cancer Clinical Outcomes Database (C3OD) for accelerating patient recruitment in cancer clinical trials

Dinesh Pal Mudaranthakam; Jeffrey A. Thompson; Jinxiang Hu; Dong Pei; Shanthan Reddy Chintala; Michele Park; Brooke L. Fridley; Byron J. Gajewski; Devin C. Koestler; Matthew S. Mayo

Abstract Data used to determine patient eligibility for cancer clinical trials often come from disparate sources that are typically maintained by different groups within an institution, use differing technologies, and are stored in different formats. Collecting data and resolving inconsistencies across sources increase the time it takes to screen eligible patients, potentially delaying study completion. To address these challenges, the Biostatistics and Informatics Shared Resource at The University of Kansas Cancer Center developed the Curated Cancer Clinical Outcomes Database (C3OD). C3OD merges data from the electronic medical record, tumor registry, bio-specimen and data registry, and allows querying through a single unified platform. By centralizing access and maintaining appropriate controls, C3OD allows researchers to more rapidly obtain detailed information about each patient in order to accelerate eligibility screening. This case report describes the design of this informatics platform as well as initial assessments of its reliability and usability.


Gynecologic Oncology | 2015

Evaluating the ovarian cancer gonadotropin hypothesis: A candidate gene study - eScholarship

Aw Lee; Jonathan Tyrer; Jennifer A. Doherty; Douglas A. Stram; Jolanta Kupryjanczyk; Agnieszka Dansonka-Mieszkowska; Joanna Plisiecka-Halasa; Beata Spiewankiewicz; Emily J. Myers; Georgia Chenevix-Trench; Peter A. Fasching; Matthias W. Beckmann; Arif B. Ekici; Alexander Hein; Ignace Vergote; E. Van Nieuwenhuysen; Diether Lambrechts; Kristine G. Wicklund; Ursula Eilber; Shan Wang-Gohrke; Jenny Chang-Claude; Anja Rudolph; Lara E. Sucheston-Campbell; Kunle Odunsi; Kirsten B. Moysich; Yurii B. Shvetsov; Pamela J. Thompson; Marc T. Goodman; Lynne R. Wilkens; Thilo Dörk

OBJECTIVE Ovarian cancer is a hormone-related disease with a strong genetic basis. However, none of its high-penetrance susceptibility genes and GWAS-identified variants to date are known to be involved in hormonal pathways. Given the hypothesized etiologic role of gonadotropins, an assessment of how variability in genes involved in the gonadotropin signaling pathway impacts disease risk is warranted. METHODS Genetic data from 41 ovarian cancer study sites were pooled and unconditional logistic regression was used to evaluate whether any of the 2185 SNPs from 11 gonadotropin signaling pathway genes was associated with ovarian cancer risk. A burden test using the admixture likelihood (AML) method was also used to evaluate gene-level associations. RESULTS We did not find any genome-wide significant associations between individual SNPs and ovarian cancer risk. However, there was some suggestion of gene-level associations for four gonadotropin signaling pathway genes: INHBB (p=0.045, mucinous), LHCGR (p=0.046, high-grade serous), GNRH (p=0.041, high-grade serous), and FSHB (p=0.036, overall invasive). There was also suggestive evidence for INHA (p=0.060, overall invasive). CONCLUSIONS Ovarian cancer studies have limited sample numbers, thus fewer genome-wide susceptibility alleles, with only modest associations, have been identified relative to breast and prostate cancers. We have evaluated the majority of ovarian cancer studies with biological samples, to our knowledge, leaving no opportunity for replication. Using both our understanding of biology and powerful gene-level tests, we have identified four putative ovarian cancer loci near INHBB, LHCGR, GNRH, and FSHB that warrant a second look if larger sample sizes and denser genotype chips become available.


American Journal of Epidemiology | 2016

Risk Prediction for Epithelial Ovarian Cancer in 11 United States-Based Case-Control Studies: Incorporation of Epidemiologic Risk Factors and 17 Confirmed Genetic Loci

Merlise A. Clyde; Rachel Palmieri Weber; Edwin S. Iversen; Elizabeth M. Poole; Jennifer A. Doherty; Marc T. Goodman; Roberta B. Ness; Harvey A. Risch; Mary Anne Rossing; Kathryn L. Terry; Nicolas Wentzensen; Alice S. Whittemore; Hoda Anton-Culver; Elisa V. Bandera; Andrew Berchuck; Michael E. Carney; Daniel W. Cramer; Julie M. Cunningham; Kara L. Cushing-Haugen; Robert P. Edwards; Brooke L. Fridley; Ellen L. Goode; Galina Lurie; Valerie McGuire; Francesmary Modugno; Kirsten B. Moysich; Sara H. Olson; Celeste Leigh Pearce; Malcolm C. Pike; Joseph H. Rothstein


Archive | 2016

JayhawksProstateDream: First release (PCDC submission)

Prabhakar Chalise; Junqiang Dai; Devin C. Koestler; Joseph Usset; Richard Meier; Shellie D. Ellis; Brooke L. Fridley; Stefan Graw; Rama Raghavan


Metabolic Changes in Ovarian Cancer | 2018

Abstract A14: TP53 missense mutations associate with different metabolic pathways

Linda E. Kelemen; James D. Brenton; David Bowtell; Brooke L. Fridley


Archive | 2016

Common variants at 19p13 are associated with susceptibility to ovarian cancer (vol 42, pg 880, 2010) - eScholarship

Kelly L. Bolton; J Tyrer; Hyun Kyu Song; Susan J. Ramus; Maria Notaridou; Chris Jones; Tanya Sher; A Gentry-Maharaj; Eva Wozniak; Y-Y Tsai; Joanne B. Weidhaas; Daniel Paik; D. J. Van Den Berg; Daniel O. Stram; Celeste Leigh Pearce; A. H. Wu; Wendy R. Brewster; Hoda Anton-Culver; Argyrios Ziogas; Steven A. Narod; Douglas A. Levine; Stanley B. Kaye; Robert H. Brown; James Paul; James M. Flanagan; Weiva Sieh; McGuire; As Whittemore; Ian G. Campbell; Martin Gore

Collaboration


Dive into the Brooke L. Fridley's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar

J Tyrer

University of Cambridge

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Ellen L. Goode

German Cancer Research Center

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Weiva Sieh

Icahn School of Medicine at Mount Sinai

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Ellen L. Goode

German Cancer Research Center

View shared research outputs
Researchain Logo
Decentralizing Knowledge