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Dive into the research topics where Mathias J. Wawer is active.

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Featured researches published by Mathias J. Wawer.


Cell | 2013

An Interactive Resource to Identify Cancer Genetic and Lineage Dependencies Targeted by Small Molecules

Amrita Basu; Nicole E. Bodycombe; Jaime H. Cheah; Edmund V. Price; Ke Liu; Giannina Ines Schaefer; Richard Yon Ebright; Michelle L. Stewart; Daisuke Ito; Stephanie Wang; Abigail L. Bracha; Ted Liefeld; Mathias J. Wawer; Joshua C. Gilbert; Andrew J. Wilson; Nicolas Stransky; Gregory V. Kryukov; Vlado Dančík; Jordi Barretina; Levi A. Garraway; C. Suk-Yee Hon; Benito Munoz; Joshua Bittker; Brent R. Stockwell; Dineo Khabele; Paul A. Clemons; Alykhan F. Shamji; Stuart L. Schreiber

The high rate of clinical response to protein-kinase-targeting drugs matched to cancer patients with specific genomic alterations has prompted efforts to use cancer cell line (CCL) profiling to identify additional biomarkers of small-molecule sensitivities. We have quantitatively measured the sensitivity of 242 genomically characterized CCLs to an Informer Set of 354 small molecules that target many nodes in cell circuitry, uncovering protein dependencies that: (1) associate with specific cancer-genomic alterations and (2) can be targeted by small molecules. We have created the Cancer Therapeutics Response Portal (http://www.broadinstitute.org/ctrp) to enable users to correlate genetic features to sensitivity in individual lineages and control for confounding factors of CCL profiling. We report a candidate dependency, associating activating mutations in the oncogene β-catenin with sensitivity to the Bcl-2 family antagonist, navitoclax. The resource can be used to develop novel therapeutic hypotheses and to accelerate discovery of drugs matched to patients by their cancer genotype and lineage.


Cancer Discovery | 2015

Harnessing Connectivity in a Large-Scale Small-Molecule Sensitivity Dataset

Brinton Seashore-Ludlow; Matthew G. Rees; Jaime H. Cheah; Murat Cokol; Edmund V. Price; Matthew E. Coletti; Victor Victor Jones; Nicole E. Bodycombe; Christian K. Soule; Joshua Gould; Benjamin Alexander; Ava Li; Philip Montgomery; Mathias J. Wawer; Nurdan Kuru; Joanne Kotz; C. Suk-Yee Hon; Benito Munoz; Ted Liefeld; Vlado Dančík; Joshua Bittker; Michelle Palmer; James E. Bradner; Alykhan F. Shamji; Paul A. Clemons; Stuart L. Schreiber

UNLABELLED Identifying genetic alterations that prime a cancer cell to respond to a particular therapeutic agent can facilitate the development of precision cancer medicines. Cancer cell-line (CCL) profiling of small-molecule sensitivity has emerged as an unbiased method to assess the relationships between genetic or cellular features of CCLs and small-molecule response. Here, we developed annotated cluster multidimensional enrichment analysis to explore the associations between groups of small molecules and groups of CCLs in a new, quantitative sensitivity dataset. This analysis reveals insights into small-molecule mechanisms of action, and genomic features that associate with CCL response to small-molecule treatment. We are able to recapitulate known relationships between FDA-approved therapies and cancer dependencies and to uncover new relationships, including for KRAS-mutant cancers and neuroblastoma. To enable the cancer community to explore these data, and to generate novel hypotheses, we created an updated version of the Cancer Therapeutic Response Portal (CTRP v2). SIGNIFICANCE We present the largest CCL sensitivity dataset yet available, and an analysis method integrating information from multiple CCLs and multiple small molecules to identify CCL response predictors robustly. We updated the CTRP to enable the cancer research community to leverage these data and analyses.


Cell | 2015

Advancing Biological Understanding and Therapeutics Discovery with Small-Molecule Probes

Stuart L. Schreiber; Joanne Kotz; Min Li; Jeffrey Aubé; Christopher P. Austin; John C. Reed; Hugh Rosen; E. Lucile White; Larry A. Sklar; Craig W. Lindsley; Benjamin Alexander; Joshua Bittker; Paul A. Clemons; Andrea de Souza; Michael Foley; Michelle Palmer; Alykhan F. Shamji; Mathias J. Wawer; Owen B. McManus; Meng Wu; Beiyan Zou; Haibo Yu; Jennifer E. Golden; Frank J. Schoenen; Anton Simeonov; Ajit Jadhav; Michael R. Jackson; Anthony B. Pinkerton; Thomas Dy Chung; Patrick R. Griffin

Small-molecule probes can illuminate biological processes and aid in the assessment of emerging therapeutic targets by perturbing biological systems in a manner distinct from other experimental approaches. Despite the tremendous promise of chemical tools for investigating biology and disease, small-molecule probes were unavailable for most targets and pathways as recently as a decade ago. In 2005, the NIH launched the decade-long Molecular Libraries Program with the intent of innovating in and broadening access to small-molecule science. This Perspective describes how novel small-molecule probes identified through the program are enabling the exploration of biological pathways and therapeutic hypotheses not otherwise testable. These experiences illustrate how small-molecule probes can help bridge the chasm between biological research and the development of medicines but also highlight the need to innovate the science of therapeutic discovery.


Proceedings of the National Academy of Sciences of the United States of America | 2014

Toward performance-diverse small-molecule libraries for cell-based phenotypic screening using multiplexed high-dimensional profiling

Mathias J. Wawer; Kejie Li; Sigrun M. Gustafsdottir; Vebjorn Ljosa; Nicole E. Bodycombe; Melissa A. Marton; Katherine L. Sokolnicki; Mark-Anthony Bray; Melissa M. Kemp; Ellen Winchester; Bradley K. Taylor; George B. Grant; C. Suk-Yee Hon; Jeremy R. Duvall; J. Anthony Wilson; Joshua Bittker; Vlado Dančík; Rajiv Narayan; Aravind Subramanian; Wendy Winckler; Todd R. Golub; Anne E. Carpenter; Alykhan F. Shamji; Stuart L. Schreiber; Paul A. Clemons

Significance A large compound screening collection is usually constructed to be tested in many distinct assays, each one designed to find modulators of a different biological process. However, it is generally not known to what extent a compound collection actually contains molecules with distinct biological effects (or even any effect) until it has been tested for a couple of years. This study explores a cost-effective way of rapidly assessing the biological performance diversity of a screening collection in a single assay. By simultaneously measuring a large number of cellular features, unbiased profiling assays can distinguish compound effects with high resolution and thus measure performance diversity. We show that this approach could be used as a filtering strategy to build effective screening collections. High-throughput screening has become a mainstay of small-molecule probe and early drug discovery. The question of how to build and evolve efficient screening collections systematically for cell-based and biochemical screening is still unresolved. It is often assumed that chemical structure diversity leads to diverse biological performance of a library. Here, we confirm earlier results showing that this inference is not always valid and suggest instead using biological measurement diversity derived from multiplexed profiling in the construction of libraries with diverse assay performance patterns for cell-based screens. Rather than using results from tens or hundreds of completed assays, which is resource intensive and not easily extensible, we use high-dimensional image-based cell morphology and gene expression profiles. We piloted this approach using over 30,000 compounds. We show that small-molecule profiling can be used to select compound sets with high rates of activity and diverse biological performance.


Nature | 2016

Diversity-oriented synthesis yields novel multistage antimalarial inhibitors

Nobutaka Kato; Eamon Comer; Tomoyo Sakata-Kato; Arvind Sharma; Manmohan Sharma; Micah Maetani; Jessica Bastien; Nicolas M. B. Brancucci; Joshua Bittker; Victoria C. Corey; David C. Clarke; Emily R. Derbyshire; Gillian L. Dornan; Sandra Duffy; Sean Eckley; Maurice A. Itoe; Karin M. J. Koolen; Timothy A. Lewis; Ping S. Lui; Amanda K Lukens; Emily Lund; Sandra March; Elamaran Meibalan; Bennett C. Meier; Jacob A. McPhail; Branko Mitasev; Eli L. Moss; Morgane Sayes; Yvonne Van Gessel; Mathias J. Wawer

Antimalarial drugs have thus far been chiefly derived from two sources—natural products and synthetic drug-like compounds. Here we investigate whether antimalarial agents with novel mechanisms of action could be discovered using a diverse collection of synthetic compounds that have three-dimensional features reminiscent of natural products and are underrepresented in typical screening collections. We report the identification of such compounds with both previously reported and undescribed mechanisms of action, including a series of bicyclic azetidines that inhibit a new antimalarial target, phenylalanyl-tRNA synthetase. These molecules are curative in mice at a single, low dose and show activity against all parasite life stages in multiple in vivo efficacy models. Our findings identify bicyclic azetidines with the potential to both cure and prevent transmission of the disease as well as protect at-risk populations with a single oral dose, highlighting the strength of diversity-oriented synthesis in revealing promising therapeutic targets.


Journal of Biomolecular Screening | 2014

Automated Structure–Activity Relationship Mining Connecting Chemical Structure to Biological Profiles

Mathias J. Wawer; David E. Jaramillo; Vlado Dančík; Daniel M. Fass; Stephen J. Haggarty; Alykhan F. Shamji; Bridget K. Wagner; Stuart L. Schreiber; Paul A. Clemons

Understanding the structure–activity relationships (SARs) of small molecules is important for developing probes and novel therapeutic agents in chemical biology and drug discovery. Increasingly, multiplexed small-molecule profiling assays allow simultaneous measurement of many biological response parameters for the same compound (e.g., expression levels for many genes or binding constants against many proteins). Although such methods promise to capture SARs with high granularity, few computational methods are available to support SAR analyses of high-dimensional compound activity profiles. Many of these methods are not generally applicable or reduce the activity space to scalar summary statistics before establishing SARs. In this article, we present a versatile computational method that automatically extracts interpretable SAR rules from high-dimensional profiling data. The rules connect chemical structural features of compounds to patterns in their biological activity profiles. We applied our method to data from novel cell-based gene-expression and imaging assays collected on more than 30,000 small molecules. Based on the rules identified for this data set, we prioritized groups of compounds for further study, including a novel set of putative histone deacetylase inhibitors.


GigaScience | 2017

A dataset of images and morphological profiles of 30 000 small-molecule treatments using the Cell Painting assay

Mark-Anthony Bray; Sigrun M. Gustafsdottir; Mohammad Hossein Rohban; Shantanu Singh; Vebjorn Ljosa; Katherine L. Sokolnicki; Joshua Bittker; Nicole E. Bodycombe; Vlado Dančík; Thomas Hasaka; Cindy Hon; Melissa M. Kemp; Kejie Li; Deepika Walpita; Mathias J. Wawer; Todd R. Golub; Stuart L. Schreiber; Paul A. Clemons; Alykhan F. Shamji; Anne E. Carpenter

Abstract Background Large-scale image sets acquired by automated microscopy of perturbed samples enable a detailed comparison of cell states induced by each perturbation, such as a small molecule from a diverse library. Highly multiplexed measurements of cellular morphology can be extracted from each image and subsequently mined for a number of applications. Findings This microscopy dataset includes 919 265 five-channel fields of view, representing 30 616 tested compounds, available at “The Cell Image Library” (CIL) repository. It also includes data files containing morphological features derived from each cell in each image, both at the single-cell level and population-averaged (i.e., per-well) level; the image analysis workflows that generated the morphological features are also provided. Quality-control metrics are provided as metadata, indicating fields of view that are out-of-focus or containing highly fluorescent material or debris. Lastly, chemical annotations are supplied for the compound treatments applied. Conclusions Because computational algorithms and methods for handling single-cell morphological measurements are not yet routine, the dataset serves as a useful resource for the wider scientific community applying morphological (image-based) profiling. The dataset can be mined for many purposes, including small-molecule library enrichment and chemical mechanism-of-action studies, such as target identification. Integration with genetically perturbed datasets could enable identification of small-molecule mimetics of particular disease- or gene-related phenotypes that could be useful as probes or potential starting points for development of future therapeutics.


Journal of the American Chemical Society | 2016

Real-Time Biological Annotation of Synthetic Compounds.

Christopher J. Gerry; Bruce K. Hua; Mathias J. Wawer; Jonathan P. Knowles; Shawn D. Nelson; Oscar Verho; Sivaraman Dandapani; Bridget K. Wagner; Paul A. Clemons; Kevin I. Booker-Milburn; Zarko V. Boskovic; Stuart L. Schreiber

Organic chemists are able to synthesize molecules in greater number and chemical complexity than ever before. Yet, a majority of these compounds go untested in biological systems, and those that do are often tested long after the chemist can incorporate the results into synthetic planning. We propose the use of high-dimensional “multiplex” assays, which are capable of measuring thousands of cellular features in one experiment, to annotate rapidly and inexpensively the biological activities of newly synthesized compounds. This readily accessible and inexpensive “real-time” profiling method can be used in a prospective manner to facilitate, for example, the efficient construction of performance-diverse small-molecule libraries that are enriched in bioactives. Here, we demonstrate this concept by synthesizing ten triads of constitutionally isomeric compounds via complexity-generating photochemical and thermal rearrangements and measuring compound-induced changes in cellular morphology via an imaging-based “cell painting” assay. Our results indicate that real-time biological annotation can inform optimization efforts and library syntheses by illuminating trends relating to biological activity that would be difficult to predict if only chemical structure were considered. We anticipate that probe and drug discovery will benefit from the use of optimization efforts and libraries that implement this approach.


Cancer Research | 2017

Abstract 3086: Inhibitors of the enzyme dihydroorotate dehydrogenase, overcome the differentiation blockade in acute myeloid leukemia

Andreas Janzer; David B. Sykes; Stefan Gradl; Steven J. Ferrara; Sven Christian; Claudia Merz; Henrik Seidel; Andreas Bernthaler; Ralf Lesche; Mathias J. Wawer; David T. Scadden

The prognosis for adults diagnosed with acute myeloid leukemia (AML) remains poor, with a five-year survival of only 25%. This prognosis is even more dismal in older patients who are not well enough to receive standard induction chemotherapy. Speaking to the need for new therapies is the fact that our therapeutic backbone - a combination of cytarabine and an anthracycline - remains unchanged since 1973. The promise of differentiation therapy was realized in the small subset of patients diagnosed with acute promyelocytic leukemia (APL). Here, treatment in the form of all-trans retinoic acid (ATRA) and arsenic trioxide inverted the survival curve; where APL was once the worst form of myeloid leukemia, it now carries the best prognosis, with a five-year survival exceeding 85%. The goal of this study was thus to develop differentiation therapy for patients with non-promyelocytic AML with the question: “Can we identify small molecules that overcome myeloid differentiation arrest?” A phenotypic differentiation screen in a HOXA9 driven leukemia model followed by target deconvolution, identified DHODH as an unexpected target for overcoming differentiation arrest in AML. We used 2 potent small molecule inhibitors of DHODH to validate this initial finding: Brequinar, a known DHODH inhibitor and an in house compound BAY DHODHi. In several in vitro experiments we demonstrated induction of AML differentiation in a dose dependent fashion. Interestingly, these effects could be completely rescued by addition of uridine, confirming target specificity. Treating mice in multiple genetically diverse AML in vivo models with a DHODH inhibitor led to tumor growth reduction and AML differentiation. Expression analysis of leukemia cells explanted from mice xenografts treated with a DHODH inhibitor demonstrate an early onset of differentiation markers indicating a direct role of DHODH with the onset of differentiation in vivo. The mechanism for selective vulnerability of leukemia cells to DHODH inhibition remains under investigation. Despite the observation that DHODH is expressed in all cells, normal and malignant, mice can tolerate DHODH inhibitor therapy for more than 100 days without weight-loss or other concerning side-effects. Thus, our pre-clinical studies point towards DHODH as a new metabolic target in the differentiation treatment of AML. Hopefully, small molecule DHODH inhibitors will provide a much-needed differentiation therapy for patients with acute myeloid leukemia. Citation Format: Andreas Janzer, David Sykes, Stefan Gradl, Steven Ferrara, Sven Christian, Claudia Merz, Henrik Seidel, Andreas Bernthaler, Ralf Lesche, Mathias Wawer, David T. Scadden. Inhibitors of the enzyme dihydroorotate dehydrogenase, overcome the differentiation blockade in acute myeloid leukemia [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2017; 2017 Apr 1-5; Washington, DC. Philadelphia (PA): AACR; Cancer Res 2017;77(13 Suppl):Abstract nr 3086. doi:10.1158/1538-7445.AM2017-3086


Nature Genetics | 2018

Genome-scale analysis identifies paralog lethality as a vulnerability of chromosome 1p loss in cancer

Srinivas R. Viswanathan; Marina F. Nogueira; Colin G. Buss; John M. Krill-Burger; Mathias J. Wawer; Edyta Malolepsza; Ashton C. Berger; Peter S. Choi; Juliann Shih; Alison M. Taylor; Benjamin Tanenbaum; Chandra Sekhar Pedamallu; Andrew D. Cherniack; Pablo Tamayo; Craig A. Strathdee; Kasper Lage; Steven A. Carr; Monica Schenone; Sangeeta N. Bhatia; Francisca Vazquez; Aviad Tsherniak; William C. Hahn; Matthew Meyerson

Functional redundancy shared by paralog genes may afford protection against genetic perturbations, but it can also result in genetic vulnerabilities due to mutual interdependency1–5. Here, we surveyed genome-scale short hairpin RNA and CRISPR screening data on hundreds of cancer cell lines and identified MAGOH and MAGOHB, core members of the splicing-dependent exon junction complex, as top-ranked paralog dependencies6–8. MAGOHB is the top gene dependency in cells with hemizygous MAGOH deletion, a pervasive genetic event that frequently occurs due to chromosome 1p loss. Inhibition of MAGOHB in a MAGOH-deleted context compromises viability by globally perturbing alternative splicing and RNA surveillance. Dependency on IPO13, an importin-β receptor that mediates nuclear import of the MAGOH/B-Y14 heterodimer9, is highly correlated with dependency on both MAGOH and MAGOHB. Both MAGOHB and IPO13 represent dependencies in murine xenografts with hemizygous MAGOH deletion. Our results identify MAGOH and MAGOHB as reciprocal paralog dependencies across cancer types and suggest a rationale for targeting the MAGOHB-IPO13 axis in cancers with chromosome 1p deletion.Analysis of paralog gene pairs using data from loss-of-function genetic screens in cancer cells identifies MAGOH and MAGOHB as reciprocal paralog dependencies across cancer types.

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Andreas Janzer

Bayer HealthCare Pharmaceuticals

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