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Published in: Hereditary Cancer in Clinical Practice 1/2016

Open Access 01-12-2016 | Research

Assessing biases of information contained in pedigrees for the classification of BRCA-genetic variants: a study arising from the ENIGMA analytical working group

Authors: C. H. H. Kerkhofs, A. B. Spurdle, P. J. Lindsey, D. E. Goldgar, E. B. Gómez-García

Published in: Hereditary Cancer in Clinical Practice | Issue 1/2016

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Abstract

Purpose

One way of evaluating family history (FH) for classifying BRCA1/2 variants of uncertain clinical significance (VUS) is to assess the “BRCA-ness” of a pedigree by comparing it to reference populations. The aim of this study was to assess if prediction of BRCA pathogenic variant (mutation) status based on pedigree information differed due to changes in FH since intake, both in families with a pathogenic variant (BRCAm) and in families with wild-type (BRCAwt).

Patients and methods

We compared the BRCA1/2 pathogenic variant detection probabilities between intake and most recent pedigree for BRCAm families (n = 64) and BRCAwt (n = 118) using the BRCAPRO software program.

Results

Follow-up time between intake and most recent pedigree was significantly longer (p < 0.001) in the BRCAm compared to the BRCAwt families.
Among BRCAwt families, the probability to detect a pathogenic variant did not change over time. Conversely, among the BRCAm, this probability was significantly higher for most recent vs. intake pedigree (p = 0.006).

Conclusion

Clinical scores change significantly over time for BRCAm families. This may be due to differences in follow-up, but also to differences in cancer risks from carrying a pathogenic variant in a highly penetrant gene. To reduce bias, models for VUS classification should incorporate FH collected at intake.
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Metadata
Title
Assessing biases of information contained in pedigrees for the classification of BRCA-genetic variants: a study arising from the ENIGMA analytical working group
Authors
C. H. H. Kerkhofs
A. B. Spurdle
P. J. Lindsey
D. E. Goldgar
E. B. Gómez-García
Publication date
01-12-2016
Publisher
BioMed Central
Published in
Hereditary Cancer in Clinical Practice / Issue 1/2016
Electronic ISSN: 1897-4287
DOI
https://doi.org/10.1186/s13053-016-0050-9

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