Mayu O. Frank, Takahiko Koyama, et al.
BMC Medical Genomics
Objective: To analyze a glioblastoma tumor specimen with 3 different platforms and compare potentially actionable calls from each. Methods: Tumor DNA was analyzed by a commercial targeted panel. In addition, tumor-normal DNA was analyzed by whole-genome sequencing (WGS) and tumor RNA was analyzed by RNA sequencing (RNA-seq). The WGS and RNA-seq data were analyzed by a team of bioinformaticians and cancer oncologists, and separately by IBM Watson Genomic Analytics (WGA), an automated system for prioritizing somatic variants and identifying drugs. Results: More variants were identified by WGS/RNA analysis than by targeted panels. WGA completed a comparable analysis in a fraction of the time required by the human analysts. Conclusions: The development of an effective human-machine interface in the analysis of deep cancer genomic datasets may provide potentially clinically actionable calls for individual patients in a more timely and efficient manner than currently possible. ClinicalTrials.gov identifier: NCT02725684.
Mayu O. Frank, Takahiko Koyama, et al.
BMC Medical Genomics
Kota Itahashi, Shunsuke Kondo, et al.
Frontiers in Medicine
Kei Miyakawa, Sundararaj Stanleyraj Jeremiah, et al.
Frontiers in Medicine
Mayu O. Frank, Takahiko Koyama, et al.
BMC Medical Genomics