Spatiotemporal genomic architecture informs precision oncology in glioblastoma.
Jin-Ku LeeJiguang WangJason K SaErik LadewigHae-Ock LeeIn-Hee LeeHyun Ju KangDaniel I S RosenbloomPablo G CamaraZhaoqi LiuPatrick van NieuwenhuizenSang Won JungSeung Won ChoiJunhyung KimAndrew ChenKyu-Tae KimSang ShinYun Jee SeoJin-Mi OhYong Jae ShinChul-Kee ParkDoo-Sik KongHo Jun SeolAndrew BlumbergJung-Il LeeAntonio IavaroneWoong-Yang ParkRaul RabadanDo-Hyun NamPublished in: Nature genetics (2017)
Precision medicine in cancer proposes that genomic characterization of tumors can inform personalized targeted therapies. However, this proposition is complicated by spatial and temporal heterogeneity. Here we study genomic and expression profiles across 127 multisector or longitudinal specimens from 52 individuals with glioblastoma (GBM). Using bulk and single-cell data, we find that samples from the same tumor mass share genomic and expression signatures, whereas geographically separated, multifocal tumors and/or long-term recurrent tumors are seeded from different clones. Chemical screening of patient-derived glioma cells (PDCs) shows that therapeutic response is associated with genetic similarity, and multifocal tumors that are enriched with PIK3CA mutations have a heterogeneous drug-response pattern. We show that targeting truncal events is more efficacious than targeting private events in reducing the tumor burden. In summary, this work demonstrates that evolutionary inference from integrated genomic analysis in multisector biopsies can inform targeted therapeutic interventions for patients with GBM.