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PO-498 Spliced RNA panels from tumor-educated platelets (TEP) enable detection of early breast cancer

Authors :
Adrienne Vancura
Nik Sol
Esther H. Lips
Bakhos A. Tannous
Gabe S. Sonke
Thomas Wurdinger
Myron G. Best
Lennart Mulder
Jelle Wesseling
Source :
ESMO Open. 3:A424-A425
Publication Year :
2018
Publisher :
Elsevier BV, 2018.

Abstract

Introduction Detection of early-stage breast cancer from blood is a highly desirable screening application of liquid biopsies. Tumor-educated platelets (TEP) contain distinct spliced RNA repertoires and can function as a blood-based biosource for the detection of cancer (Best et al. Cancer Cell 2015). Here, we investigated the potential of TEP RNA profiles as an early breast cancer diagnostics algorithm. Material and methods We sequenced platelets of women with stage I-III breast cancer (n=134) and asymptomatic non-cancer females (n=121). Samples were divided over a training, evaluation and validation set. We developed a TEP RNA-based classification algorithm, which was tailored towards two clinically relevant diagnostic applications. The first application is to rule out breast cancer in women with an abnormal mammography. The second application is to rule in breast cancer in asymptomatic women carrying an elevated baseline breast cancer risk. We examined if classifications depended on patient age, tumour stage, subtype, BRCA mutation status, and breast density. In addition, we tested if the algorithm was breast cancer specific by testing our algorithm in a pan-cancer cohort (n=192). Results and discussions In the evaluation cohort (n=48 of which n=24 early breast cancer cases) the TEP RNA-based breast cancer classification had an accuracy of 90% with an AUC of 0.96 (95% confidence interval (CI) 0.92–1.00; p Conclusion We show that platelet RNA signatures may enable blood-based screening for early breast cancer, and warrant validation in a confirmatory and screening setting.

Details

ISSN :
20597029
Volume :
3
Database :
OpenAIRE
Journal :
ESMO Open
Accession number :
edsair.doi...........97b6ce63976f95b66023ea02b337f0ac
Full Text :
https://doi.org/10.1136/esmoopen-2018-eacr25.999