about
The impact of a panel of 18 SNPs on breast cancer risk in women attending a UK familial screening clinic: a case-control study.Improvement in risk prediction, early detection and prevention of breast cancer in the NHS Breast Screening Programme and family history clinics: a dual cohort studyUse of the concordance index for predictors of censored survival data.Estimating efficacy in trials with selective crossover.Therapeutic targeting of integrin αvβ6 in breast cancer.A DNA methylation classifier of cervical precancer based on human papillomavirus and human genesMammographic breast density refines Tyrer-Cuzick estimates of breast cancer risk in high-risk women: findings from the placebo arm of the International Breast Cancer Intervention Study I.Mammographic density adds accuracy to both the Tyrer-Cuzick and Gail breast cancer risk models in a prospective UK screening cohortValidation of a DNA methylation HPV triage classifier in a screening sampleHPV16 L1 and L2 DNA methylation predicts high-grade cervical intraepithelial neoplasia in women with mildly abnormal cervical cytology.Breast cancer risk feedback to women in the UK NHS breast screening population.A comparison of methylation levels in HPV18, HPV31 and HPV33 genomes reveals similar associations with cervical precancersCredentialing of DNA methylation assays for human genes as diagnostic biomarkers of cervical intraepithelial neoplasia in high-risk HPV positive women.C-Met in invasive breast cancer: is there a relationship with the basal-like subtype?Clinical and functional significance of α9β1 integrin expression in breast cancer: a novel cell-surface marker of the basal phenotype that promotes tumour cell invasion.Role of quantitative p16INK4A mRNA assay and digital reading of p16INK4A immunostained sections in diagnosis of cervical intraepithelial neoplasia.On standardized relative survival.HPV33 DNA methylation measurement improves cervical pre-cancer risk estimation of an HPV16, HPV18, HPV31 and \textit{EPB41L3} methylation classifier.Absolute quantitation of DNA methylation of 28 candidate genes in prostate cancer using pyrosequencing.Relationship of ZNF423 and CTSO with breast cancer risk in two randomised tamoxifen prevention trials.Distribution of breast cancer risk from SNPs and classical risk factors in women of routine screening age in the UK.A novel and fully automated mammographic texture analysis for risk prediction: results from two case-control studiesMammographic features of breast cancers at single reading with computer-aided detection and at double reading in a large multicenter prospective trial of computer-aided detection: CADET II.A concordance index for matched case-control studies with applications in cancer risk.SNPs for breast cancer risk assessment.RAZOR: A Phase II Open Randomized Trial of Screening Plus Goserelin and Raloxifene Versus Screening Alone in Premenopausal Women at Increased Risk of Breast Cancer.Impact of a Panel of 88 Single Nucleotide Polymorphisms on the Risk of Breast Cancer in High-Risk Women: Results From Two Randomized Tamoxifen Prevention Trials.Breast cancer risk in a screening cohort of Asian and white British/Irish women from Manchester UK.A comparison of five methods of measuring mammographic density: a case-control study.Use of Single-Nucleotide Polymorphisms and Mammographic Density Plus Classic Risk Factors for Breast Cancer Risk Prediction.Breast cancer risk in young women in the national breast screening programme: implications for applying NICE guidelines for additional screening and chemoprevention.Exploring the prediction performance for breast cancer risk based on volumetric mammographic density at different thresholds.Novel 18-gene signature for predicting relapse in ER-positive, HER2-negative breast cancerThe impact of using weight estimated from mammographic images vs. self-reported weight on breast cancer risk calculationBreast cancer risk assessment in 8,824 women attending a family history evaluation and screening programmeAddition of ultrasound to mammography in the case of dense breast tissue: systematic review and meta-analysisReply to 'Comment on 'Addition of ultrasound to mammography in the case of dense breast tissue: systematic review and meta-analysis"Evaluation of a validated methylation triage signature for human papillomavirus positive women in the HPV FOCAL cervical cancer screening trialPolygenic Risk Scores for Prediction of Breast Cancer and Breast Cancer SubtypesBreast cancer pathology and stage are better predicted by risk stratification models that include mammographic density and common genetic variants
P50
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P50
description
hulumtues
@sq
onderzoeker
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researcher
@en
հետազոտող
@hy
name
Adam R Brentnall
@ast
Adam R Brentnall
@en
Adam R Brentnall
@es
type
label
Adam R Brentnall
@ast
Adam R Brentnall
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Adam R Brentnall
@es
altLabel
Adam Brentnall
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prefLabel
Adam R Brentnall
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Adam R Brentnall
@en
Adam R Brentnall
@es
P106
P21
P31
P496
0000-0001-6327-4357