Literature DB >> 34873056

Predicting patient response with models trained on cell lines and patient-derived xenografts by nonlinear transfer learning.

Soufiane M C Mourragui1,2, Marco Loog2,3, Daniel J Vis1, Kat Moore1, Anna G Manjon4, Mark A van de Wiel5,6, Marcel J T Reinders7,8, Lodewyk F A Wessels9,2.   

Abstract

Preclinical models have been the workhorse of cancer research, producing massive amounts of drug response data. Unfortunately, translating response biomarkers derived from these datasets to human tumors has proven to be particularly challenging. To address this challenge, we developed TRANSACT, a computational framework that builds a consensus space to capture biological processes common to preclinical models and human tumors and exploits this space to construct drug response predictors that robustly transfer from preclinical models to human tumors. TRANSACT performs favorably compared to four competing approaches, including two deep learning approaches, on a set of 23 drug prediction challenges on The Cancer Genome Atlas and 226 metastatic tumors from the Hartwig Medical Foundation. We demonstrate that response predictions deliver a robust performance for a number of therapies of high clinical importance: platinum-based chemotherapies, gemcitabine, and paclitaxel. In contrast to other approaches, we demonstrate the interpretability of the TRANSACT predictors by correctly identifying known biomarkers of targeted therapies, and we propose potential mechanisms that mediate the resistance to two chemotherapeutic agents.

Entities:  

Keywords:  cancer; clinical drug response; model systems; transfer learning; translational medicine

Mesh:

Substances:

Year:  2021        PMID: 34873056      PMCID: PMC8670522          DOI: 10.1073/pnas.2106682118

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   12.779


  78 in total

Review 1.  MDR1 gene expression in solid tumours.

Authors:  L J Goldstein
Journal:  Eur J Cancer       Date:  1996-06       Impact factor: 9.162

2.  STAR: ultrafast universal RNA-seq aligner.

Authors:  Alexander Dobin; Carrie A Davis; Felix Schlesinger; Jorg Drenkow; Chris Zaleski; Sonali Jha; Philippe Batut; Mark Chaisson; Thomas R Gingeras
Journal:  Bioinformatics       Date:  2012-10-25       Impact factor: 6.937

3.  Integration of Tumor Genomic Data with Cell Lines Using Multi-dimensional Network Modules Improves Cancer Pharmacogenomics.

Authors:  James T Webber; Swati Kaushik; Sourav Bandyopadhyay
Journal:  Cell Syst       Date:  2018-11-07       Impact factor: 10.304

4.  The Cancer Genome Atlas Pan-Cancer analysis project.

Authors:  John N Weinstein; Eric A Collisson; Gordon B Mills; Kenna R Mills Shaw; Brad A Ozenberger; Kyle Ellrott; Ilya Shmulevich; Chris Sander; Joshua M Stuart
Journal:  Nat Genet       Date:  2013-10       Impact factor: 38.330

5.  Similarity network fusion for aggregating data types on a genomic scale.

Authors:  Bo Wang; Aziz M Mezlini; Feyyaz Demir; Marc Fiume; Zhuowen Tu; Michael Brudno; Benjamin Haibe-Kains; Anna Goldenberg
Journal:  Nat Methods       Date:  2014-01-26       Impact factor: 28.547

6.  Combination of human tumor necrosis factor-alpha (hTNF-alpha) gene delivery with gemcitabine is effective in models of pancreatic cancer.

Authors:  S R Murugesan; C R King; R Osborn; W R Fairweather; E M O'Reilly; M O Thornton; L L Wei
Journal:  Cancer Gene Ther       Date:  2009-05-15       Impact factor: 5.987

7.  A scaling normalization method for differential expression analysis of RNA-seq data.

Authors:  Mark D Robinson; Alicia Oshlack
Journal:  Genome Biol       Date:  2010-03-02       Impact factor: 13.583

8.  BGJ398, A Pan-FGFR Inhibitor, Overcomes Paclitaxel Resistance in Urothelial Carcinoma with FGFR1 Overexpression.

Authors:  Se Hyun Kim; Haram Ryu; Chan-Young Ock; Koung Jin Suh; Ji Yun Lee; Ji-Won Kim; Jeong-Ok Lee; Jin Won Kim; Yu Jung Kim; Keun-Wook Lee; Soo-Mee Bang; Jee Hyun Kim; Jong Seok Lee; Joong Bae Ahn; Kui-Jin Kim; Sun Young Rha
Journal:  Int J Mol Sci       Date:  2018-10-15       Impact factor: 5.923

Review 9.  Machine learning and feature selection for drug response prediction in precision oncology applications.

Authors:  Mehreen Ali; Tero Aittokallio
Journal:  Biophys Rev       Date:  2018-08-10

10.  Few-shot learning creates predictive models of drug response that translate from high-throughput screens to individual patients.

Authors:  Jianzhu Ma; Samson H Fong; Yunan Luo; Christopher J Bakkenist; John Paul Shen; Soufiane Mourragui; Lodewyk F A Wessels; Marc Hafner; Roded Sharan; Jian Peng; Trey Ideker
Journal:  Nat Cancer       Date:  2021-01-25
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  2 in total

Review 1.  Computational estimation of quality and clinical relevance of cancer cell lines.

Authors:  Lucia Trastulla; Javad Noorbakhsh; Francisca Vazquez; James McFarland; Francesco Iorio
Journal:  Mol Syst Biol       Date:  2022-07       Impact factor: 13.068

Review 2.  Patient-derived cancer models: Valuable platforms for anticancer drug testing.

Authors:  Sofia Genta; Bryan Coburn; David W Cescon; Anna Spreafico
Journal:  Front Oncol       Date:  2022-08-12       Impact factor: 5.738

  2 in total

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