Precision oncology for acute myeloid leukemia using a knowledge bank approach Journal Article


Authors: Gerstung, M.; Papaemmanuil, E.; Martincorena, I.; Bullinger, L.; Gaidzik, V. I.; Paschka, P.; Heuser, M.; Thol, F.; Bolli, N.; Ganly, P.; Ganser, A.; McDermott, U.; Dohner, K.; Schlenk, R. F.; Dohner, H.; Campbell, P. J.
Article Title: Precision oncology for acute myeloid leukemia using a knowledge bank approach
Abstract: Underpinning the vision of precision medicine is the concept that causative mutations in a patient's cancer drive its biology and, by extension, its clinical features and treatment response. However, considerable between-patient heterogeneity in driver mutations complicates evidence-based personalization of cancer care. Here, by reanalyzing data from 1,540 patients with acute myeloid leukemia (AML), we explore how large knowledge banks of matched genomic-clinical data can support clinical decision-making. Inclusive, multistage statistical models accurately predicted likelihoods of remission, relapse and mortality, which were validated using data from independent patients in The Cancer Genome Atlas. Comparison of long-term survival probabilities under different treatments enables therapeutic decision support, which is available in exploratory form online. Personally tailored management decisions could reduce the number of hematopoietic cell transplants in patients with AML by 20-25% while maintaining overall survival rates. Power calculations show that databases require information from thousands of patients for accurate decision support. Knowledge banks facilitate personally tailored therapeutic decisions but require sustainable updating, inclusive cohorts and large sample sizes.
Keywords: genome; medicine; stem-cell transplantation; care; 1st remission; cancer
Journal Title: Nature Genetics
Volume: 49
Issue: 3
ISSN: 1061-4036
Publisher: Nature Publishing Group  
Date Published: 2017-03-01
Start Page: 332
End Page: 340
Language: English
ACCESSION: WOS:000394917800006
DOI: 10.1038/ng.3756
PROVIDER: wos
PUBMED: 28092685
PMCID: PMC5764082
Notes: Article -- Source: Wos
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