| Literature DB >> 27887656 |
Jonathan R Dry1, Mi Yang2, Julio Saez-Rodriguez3,4.
Abstract
Combinations of therapies are being actively pursued to expand therapeutic options and deal with cancer's pervasive resistance to treatment. Research efforts to discover effective combination treatments have focused on drugs targeting intracellular processes of the cancer cells and in particular on small molecules that target aberrant kinases. Accordingly, most of the computational methods used to study, predict, and develop drug combinations concentrate on these modes of action and signaling processes within the cancer cell. This focus on the cancer cell overlooks significant opportunities to tackle other components of tumor biology that may offer greater potential for improving patient survival. Many alternative strategies have been developed to combat cancer; for example, targeting different cancer cellular processes such as epigenetic control; modulating stromal cells that interact with the tumor; strengthening physical barriers that confine tumor growth; boosting the immune system to attack tumor cells; and even regulating the microbiome to support antitumor responses. We suggest that to fully exploit these treatment modalities using effective drug combinations it is necessary to develop multiscale computational approaches that take into account the full complexity underlying the biology of a tumor, its microenvironment, and a patient's response to the drugs. In this Opinion article, we discuss preliminary work in this area and the needs-in terms of both computational and data requirements-that will truly empower such combinations.Entities:
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Year: 2016 PMID: 27887656 PMCID: PMC5124246 DOI: 10.1186/s13073-016-0379-8
Source DB: PubMed Journal: Genome Med ISSN: 1756-994X Impact factor: 11.117
Fig. 1The tumor microenvironment. Many cells and tissue components interact with cancer cells to influence tumor progression and response. These include cytotoxic (CD8+) T cells and regulatory T (Treg) cells, regulatory B cells (Breg), dendritic cells (DCs), natural killer (NK) cells, myeloid-derived suppressor cells (MDSCs), and mast cells, which are involved in the immune response against the tumor and communicate with tumor cells through receptor–ligand interactions such as those between programmed cell death protein 1 (PD-1) and PD-1 ligand 1 (PD-L1). In addition, the extracellular matrix (ECM), cancer-associated fibroblasts (CAFs), and endothelial cells of the vasculature are critical to tumor growth, transformation, and angiogenesis. In addition to targeting the tumor itself, all of the described components of the tumor microenvironment represent potential therapeutic targets. Figure produced with permission of Acerta Pharma and copyright is reserved
Preclinical and patient data necessary to model drug combination effects across the tumor microenvironmenta
| Data type | Advantages | Limitations | Recommendations | |
|---|---|---|---|---|
| Pre-clinical | Cancer cell-line drug screens | - Cost-effective route to generate a significant amount of data | - Limited to only modeling intracellular effects | - Obtain more data for drug combinations |
| Functional genomic screens (using siRNA, CRISPR, and mutagenesis) | - No limit to the number of combinations of targets testable | - Limited to intracellular mechanisms | - Use a broader range of cell contexts (including non-cancer cells) | |
| Drug or target perturbation screens (post- treatment functional data) | - Provide information about a drug or target’s mechanistic impact and provide pharmacodynamics maps that are likely to be relevant across cell types | - Typically focus on a few cancer cell types and/or global disease processes | - Obtain more data from non-tumor cell types involved in tumor biology | |
| Organoids (three-dimensional buds) or ex vivo screens | Can be used to obtain data about cell–cell interactions (for example, interactions between tumor cells and cells in the microenvironment) and about environmental plasticity | Few established and/or reproducible models | Develop standards to identify non-typical phenotypic parameters that are relevant to the effects of a drug on the tumor microenvironments, for example, cell-type-specific effects and cell–cell communication | |
| Patient-derived tumor xenograft screens | Can model the effects of drugs on components of the tumor microenvironment | - Do not model immune interactions | ||
| In vivo screens in GEM, syngeneic, or humanized models | Can model immune interactions | Cost and ethical considerations need to be taken into account when used as a discovery (versus test) tool | ||
| Patient | Electronic health records | Provide information about environmental exposures, immunological and metabolic measures, diagnostic assays, comorbidities and wellness, and longitudinal follow-up data | - Key data are split across isolated records in primary care and specialist hospitals, claims systems, assay providers, and others | - Address data confidentiality (for example, use honest brokers) and connect disparate records for patients |
| Deconvoluting failed trials | Necessary to follow up from failed drug trials that may overlook responding populations that are mutually exclusive | Investment is rarely available to generate and mine data from failed trials | - Use a retrospective approval route in which the responding population is shown to be distinct from the comparator or standard of care | |
| Profiling of cell types from healthy individuals | Projects are large and well-funded, for example, GTEx [ | - Public references may not capture interpatient (or disease-influenced) variability | - Improve integrative analyses across different types of patient data | |
| Comprehensive profiling of tumor genetics and heterogeneity | Projects are large, well-funded, and include tens of thousands of tumors, for example, projects by TCGA [ | - Exploratory NGS is not routine for patients | - Perform more and deeper spatial single-cell profiling of longitudinal and metastatic samples | |
| Longitudinal and metastatic tumor genomic profiles | Obtaining information about genetic shift after therapy could dramatically change our understanding of tumor drivers and heterogeneity | - Currently only a limited amount of such data is available | Continue to advance non-invasive monitoring approaches | |
| Single-cell sequencing | Provide unprecedented high-resolution information about genotypic and phenotypic heterogeneity of tumors and the tumor microenvironment, including information about cell differentiation and the effects of drugs | - Current technologies require fresh tissue biopsies and obtaining these is often impractical | - Set up central repositories for single-cell omics data from patients and models | |
| Germline genetic variation | Provide information about a patient’s inherent immunological and metabolic competencies, susceptibility to adverse events, and other aspects of wellness | Information is rarely available for patients with cancer as it is removed to avoid the risk of patients being identified and confidentiality being breached | Add functional germline variant information to public databases of tumor genetics | |
| Biosensors and smart wearables | Enable real-time reactive adaptation of therapy to manage response, health, and adverse events | A limited number of devices are currently available and few molecular measures are currently possible | Develop technologies to identify the most important and relevant measures | |
| Know- ledge | Pathway and interaction networks | Able to link drug target to biology | - Typically focus only on intracellular pathways and interactions | Acquire more information about the cell-context specificity of interactions and about cell–cell communication |
| Regulomes | Provide omics information that is indicative of active processes | - Often miss cell-context specificity of regulomes | - Obtain more data on cell-type-specific regulomes (as in, for example, ENCODE [ |
CCLE Cancer Cell Line Encyclopedia, CRISPR clustered regularly interspaced short palindromic repeats, ENCODE The Encyclopedia of DNA Elements, GDSC Genomics of Drug Sensitivity in Cancer, GEM genetically engineered mouse, GTEx Genotype-Tissue Expression Project, ICGC International Cancer Genome Consortium, LINCS Library of Network-Based Cellular Signatures, NGS next-generation sequencing, siRNA small interfering RNA, TCGA The Cancer Genome Atlas
aKey pieces of preclinical and patient data that need to be generated, collected, and shared to achieve the computational ambition of modeling/predicting multimodal combination effects encompassing ECM, immune, angiogenic, and stromal components of tumor biology