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Sequencing and curation strategies for identifying candidate glioblastoma treatments

Authors :
Eli L. Diamond
Phaedra Agius
Minita Shah
Heather Geiger
Vaidehi Jobanputra
Anthony Calabro
Christian Grommes
Anne-Katrin Emde
Kahn Rhrissorrakrai
Ewa A. Bergmann
Jeffrey N. Bruce
Alice Fang
Andrew B. Lassman
Michael C. Zody
Alexis Demopoulos
Kazimierz O. Wrzeszczynski
Vanessa V. Michelini
Cecilia Esteves
Takahiko Koyama
Laxmi Parida
Catherine Reeves
John Anthony Kelly
Nicolas Robine
Mariza Daras
Vladimir Vacic
Christian Stolte
Peter Canoll
Dana E. Orange
Bo-Juen Chen
Antonio Omuro
Sadia Rahman
Julia L. Moore Vogel
Mayu O. Frank
Stephen J. Harvey
Elena Pentsova
Jerome B. Posner
Robert B. Darnell
Duyang Kim
Filippo Utro
Depinder Khaira
Ajay K. Royyuru
Michelle F. Lamendola-Essel
Kanika Arora
Vanessa Felice
John A. Boockvar
Cameron Brennan
Dimitris G. Placantonakis
John G. Golfinos
Esra Dikoglu
Source :
BMC Medical Genomics, BMC Medical Genomics, Vol 12, Iss 1, Pp 1-16 (2019)
Publication Year :
2018

Abstract

Background Prompted by the revolution in high-throughput sequencing and its potential impact for treating cancer patients, we initiated a clinical research study to compare the ability of different sequencing assays and analysis methods to analyze glioblastoma tumors and generate real-time potential treatment options for physicians. Methods A consortium of seven institutions in New York City enrolled 30 patients with glioblastoma and performed tumor whole genome sequencing (WGS) and RNA sequencing (RNA-seq; collectively WGS/RNA-seq); 20 of these patients were also analyzed with independent targeted panel sequencing. We also compared results of expert manual annotations with those from an automated annotation system, Watson Genomic Analysis (WGA), to assess the reliability and time required to identify potentially relevant pharmacologic interventions. Results WGS/RNAseq identified more potentially actionable clinical results than targeted panels in 90% of cases, with an average of 16-fold more unique potentially actionable variants identified per individual; 84 clinically actionable calls were made using WGS/RNA-seq that were not identified by panels. Expert annotation and WGA had good agreement on identifying variants [mean sensitivity = 0.71, SD = 0.18 and positive predictive value (PPV) = 0.80, SD = 0.20] and drug targets when the same variants were called (mean sensitivity = 0.74, SD = 0.34 and PPV = 0.79, SD = 0.23) across patients. Clinicians used the information to modify their treatment plan 10% of the time. Conclusion These results present the first comprehensive comparison of technical and machine augmented analysis of targeted panel and WGS/RNA-seq to identify potential cancer treatments.

Details

ISSN :
17558794
Volume :
12
Issue :
1
Database :
OpenAIRE
Journal :
BMC medical genomics
Accession number :
edsair.doi.dedup.....77e07e83d913ebfdc722f5f1222004cd