ABSTRACT
The clustering of platelet glycoprotein receptors with cytosolic YxxL and YxxM motifs, including GPVI, CLEC-2 and PEAR1, triggers activation via phosphorylation of the conserved tyrosine residues and recruitment of the tandem SH2 (Src homology 2) domain effector proteins, Syk and PI 3-kinase. We have modelled the clustering of these receptors with monovalent, divalent and tetravalent soluble ligands and with transmembrane ligands based on the law of mass action using ordinary differential equations and agent-based modelling. The models were experimentally evaluated in platelets and transfected cell lines using monovalent and multivalent ligands, including novel nanobody-based divalent and tetravalent ligands, by fluorescence correlation spectroscopy. Ligand valency, receptor number, receptor dimerisation, receptor phosphorylation and a cytosolic tandem SH2 domain protein act in synergy to drive receptor clustering. Threshold concentrations of a CLEC-2-blocking antibody and Syk inhibitor act in synergy to block platelet aggregation. This offers a strategy for countering the effect of avidity of multivalent ligands and in limiting off-target effects.
Subject(s)
Platelet Membrane Glycoproteins , src Homology Domains , Computer SimulationABSTRACT
The biological processes that keep us healthy or cause disease, as well as the mechanisms of action of possible drugs are inherently complex. In the face of this complexity, attempts at discovering new drugs to treat diseases have alternated between trial-and-error (typically on experimental systems) and grand simplification, usually based on much too little information. We now have the chance to combine these strategies through establishment of 'virtual patient' models, centred on a detailed molecular characterisation of thousands or even, in the future, millions of patients. In doing so, we lay the foundations for truly personalised therapy, as well as a far-reaching virtualisation of drug discovery and development in oncology and other areas of medicine.
Subject(s)
Drug Design , Drug Discovery/methods , Systems Biology/methods , Animals , Antineoplastic Agents/pharmacology , Computer Simulation , Humans , Neoplasms/drug therapy , Precision Medicine/methodsABSTRACT
Regulation of centrosome structure, duplication and segregation is integrated into cellular pathways that control cell cycle progression and growth. As part of these pathways, numerous proteins with well-established non-centrosomal localization and function associate with the centrosome to fulfill regulatory functions. In turn, classical centrosomal components take up functional and structural roles as part of other cellular organelles and compartments. Thus, although a comprehensive inventory of centrosome components is missing, emerging evidence indicates that its molecular composition reflects the complexity of its functions. We analysed the Drosophila embryonic centrosomal proteome using immunoisolation in combination with mass spectrometry. The 251 identified components were functionally characterized by RNA interference. Among those, a core group of 11 proteins was critical for centrosome structure maintenance. Depletion of any of these proteins in Drosophila SL2 cells resulted in centrosome disintegration, revealing a molecular dependency of centrosome structure on components of the protein translation machinery, actin- and RNA-binding proteins. In total, we assigned novel centrosome-related functions to 24 proteins and confirmed 13 of these in human cells.
Subject(s)
Cell Cycle Proteins/metabolism , Centrosome/chemistry , Chromosomal Proteins, Non-Histone/metabolism , Drosophila/chemistry , Mitosis/physiology , Animals , Cell Cycle Proteins/genetics , Centrosome/physiology , Chromosomal Proteins, Non-Histone/genetics , Drosophila/physiology , Embryo, Nonmammalian/metabolism , Embryo, Nonmammalian/physiology , Mass Spectrometry , Proteomics/methods , RNA InterferenceABSTRACT
BACKGROUND: Modern biomedical research is often organized in collaborations involving labs worldwide. In particular in systems biology, complex molecular systems are analyzed that require the generation and interpretation of heterogeneous data for their explanation, for example ranging from gene expression studies and mass spectrometry measurements to experimental techniques for detecting molecular interactions and functional assays. XML has become the most prominent format for representing and exchanging these data. However, besides the development of standards there is still a fundamental lack of data integration systems that are able to utilize these exchange formats, organize the data in an integrative way and link it with applications for data interpretation and analysis. RESULTS: We have developed DIPSBC, an interactive data integration platform supporting collaborative research projects, based on Foswiki, Solr/Lucene, and specific helper applications. We describe the main features of the implementation and highlight the performance of the system with several use cases. All components of the system are platform independent and open-source developments and thus can be easily adopted by researchers. An exemplary installation of the platform which also provides several helper applications and detailed instructions for system usage and setup is available at http://dipsbc.molgen.mpg.de. CONCLUSIONS: DIPSBC is a data integration platform for medium-scale collaboration projects that has been tested already within several research collaborations. Because of its modular design and the incorporation of XML data formats it is highly flexible and easy to use.
Subject(s)
Computational Biology/methods , Systems Biology , Systems Integration , Cooperative Behavior , Gene Expression Profiling , Genomics , Protein Interaction Maps , ProteomicsABSTRACT
Quantitative dynamic models are widely used to study cellular signal processing. A critical step in modelling is the estimation of unknown model parameters from experimental data. As model sizes and datasets are steadily growing, established parameter optimization approaches for mechanistic models become computationally extremely challenging. Mini-batch optimization methods, as employed in deep learning, have better scaling properties. In this work, we adapt, apply, and benchmark mini-batch optimization for ordinary differential equation (ODE) models, thereby establishing a direct link between dynamic modelling and machine learning. On our main application example, a large-scale model of cancer signaling, we benchmark mini-batch optimization against established methods, achieving better optimization results and reducing computation by more than an order of magnitude. We expect that our work will serve as a first step towards mini-batch optimization tailored to ODE models and enable modelling of even larger and more complex systems than what is currently possible.
Subject(s)
Computational Biology/methods , Machine Learning , Algorithms , Benchmarking , Cell Line, Tumor , Gene Knockout Techniques , Humans , Models, Biological , Neoplasms , Signal Transduction , SoftwareABSTRACT
BACKGROUND: Current large-scale cancer sequencing projects have identified large numbers of somatic mutations covering an increasing number of different cancer tissues and patients. However, the characterization of these mutations at the structural and functional level remains a challenge. RESULTS: We present results from an analysis of the structural impact of frequent missense cancer mutations using an automated method. We find that inactivation of tumor suppressors in cancer correlates frequently with destabilizing mutations preferably in the core of the protein, while enhanced activity of oncogenes is often linked to specific mutations at functional sites. Furthermore, our results show that this alteration of oncogenic activity is often associated with mutations at ATP or GTP binding sites. CONCLUSIONS: With our findings we can confirm and statistically validate the hypotheses for the gain-of-function and loss-of-function mechanisms of oncogenes and tumor suppressors, respectively. We show that the distinct mutational patterns can potentially be used to pre-classify newly identified cancer-associated genes with yet unknown function.
Subject(s)
Mutation, Missense/genetics , Neoplasms/genetics , Neoplasms/pathology , Oncogene Proteins/chemistry , Oncogene Proteins/genetics , Tumor Suppressor Proteins/chemistry , Tumor Suppressor Proteins/genetics , Databases, Genetic , Humans , Models, Genetic , Models, Molecular , Molecular Sequence Annotation , Molecular Structure , Polymorphism, Single Nucleotide/genetics , Protein StabilityABSTRACT
The identification of cell cycle control and signal transduction components on the centrosome has fostered the idea that the centrosome is more than a microtubule-organizing center. Indeed, recent molecular evidence suggests that the centrosome plays an active role not only in the regulation of microtubule nucleation activity, but also in the coordination of centrosome duplication with cell cycle progression, in stress response and in cell cycle checkpoint control. To achieve these roles, it interacts with a multitude of signal transduction molecules. The specificity of the interactions is mediated through anchoring proteins that bring centrosomal components and regulatory proteins into close proximity. The molecular composition and organization of the centrosome thus reflects its multiple functions.
Subject(s)
Centrosome/physiology , Animals , Cell Cycle , Centrosome/chemistry , DNA Damage , Heat-Shock Response , Models, Biological , Signal TransductionABSTRACT
OBJECTIVES: This article examines the challenges for health technology assessment (HTA) in the light of new developments of personalized health care, focusing on European HTA perspectives. METHODS: Using the example of the Integrated Genome Research Network - Mutanom (IG Mutanom) project, with focus on personalized cancer diagnostics and treatment, we assess the scope of current HTA and examine it prospectively in the context of the translation of basic and clinical research into public health genomics and personalized health care. RESULTS: The approaches developed within the IG-Mutanom project are based on innovative technology potentially providing targeted therapies for cancer; making translation into clinical practice requires a novel course of action, however. New models of HTA are needed that can account for the unique types of evidence inherent to individualized targeted therapies. Using constructive health technology assessment (CTA) models is an option, but further suitable models should be developed. CONCLUSIONS: Integrative, systems biology-based approaches toward personalized medicine call for novel assessment methods. The translation of their highly innovative technologies into the practice of health care requires the development of new HTA concepts.
Subject(s)
Genomics/trends , Health Policy , Neoplasms/genetics , Precision Medicine/methods , Technology Assessment, Biomedical/trends , Diffusion of Innovation , Europe , Health Resources , Humans , Precision Medicine/trends , Prospective Studies , Systems BiologyABSTRACT
Every tumour is different. They arise in patients with different genomes, from cells with different epigenetic modifications, and by random processes affecting the genome and/or epigenome of a somatic cell, allowing it to escape the usual controls on its growth. Tumours and patients therefore often respond very differently to the drugs they receive. Cancer precision medicine aims to characterise the tumour (and often also the patient) to be able to predict, with high accuracy, its response to different treatments, with options ranging from the selective characterisation of a few genomic variants considered particularly important to predict the response of the tumour to specific drugs, to deep genome analysis of both tumour and patient, combined with deep transcriptome analysis of the tumour. Here, we compare the expected results of carrying out such analyses at different levels, from different size panels to a comprehensive analysis incorporating both patient and tumour at the DNA and RNA levels. In doing so, we illustrate the additional power gained by this unusually deep analysis strategy, a potential basis for a future precision medicine first strategy in cancer drug therapy. However, this is only a step along the way of increasingly detailed molecular characterisation, which in our view will, in the future, introduce additional molecular characterisation techniques, including systematic analysis of proteins and protein modification states and different types of metabolites in the tumour, systematic analysis of circulating tumour cells and nucleic acids, the use of spatially resolved analysis techniques to address the problem of tumour heterogeneity as well as the deep analyses of the immune system of the patient to, e.g., predict the response of the patient to different types of immunotherapy. Such analyses will generate data sets of even greater complexity, requiring mechanistic modelling approaches to capture enough of the complex situation in the real patient to be able to accurately predict his/her responses to all available therapies.
Subject(s)
Biomarkers, Tumor/genetics , Genomics/methods , Molecular Diagnostic Techniques , Neoplasms/genetics , Precision Medicine/methods , DNA, Neoplasm/analysis , Genetic Markers/genetics , Humans , RNA, Neoplasm/analysisABSTRACT
Every patient and every disease is different. Each patient therefore requires a personalized treatment approach. For technical reasons, a personalized approach is feasible for treatment strategies such as surgery, but not for drug-based therapy or drug development. The development of individual mechanistic models of the disease process in every patient offers the possibility of attaining truly personalized drug-based therapy and prevention. The concept of virtual clinical trials and the integrated use of in silico, in vitro, and in vivo models in preclinical development could lead to significant gains in efficiency and order of magnitude increases in the cost effectiveness of drug development and approval. We have developed mechanistic computational models of large-scale cellular signal transduction networks for prediction of drug effects and functional responses, based on patient-specific multi-level omics profiles. However, a major barrier to the use of such models in a clinical and developmental context is the reliability of predictions. Here we detail how the approach of using "models of models" has the potential to impact cancer treatment and drug development. We describe the iterative refinement process that leverages the flexibility of experimental systems to generate highly dimensional data, which can be used to train and validate computational model parameters and improve model predictions. In this way, highly optimized computational models with robust predictive capacity can be generated. Such models open up a number of opportunities for cancer drug treatment and development, from enhancing the design of experimental studies, reducing costs, and improving animal welfare, to increasing the translational value of results generated.
ABSTRACT
Hypofertility is a risk factor for the development of testicular germ cell tumors (TGCT), but the initiating event linking these pathologies is unknown. We hypothesized that excessive planar division of undifferentiated germ cells promotes their self-renewal and TGCT development. However, our results obtained from mouse models and seminoma patients demonstrated the opposite. Defective planar divisions of undifferentiated germ cells caused their premature exit from the seminiferous tubule niche, resulting in germ cell depletion, hypofertility, intratubular germ cell neoplasias, and seminoma development. Oriented divisions of germ cells, which determine their fate, were regulated by spindle-associated RHAMM-a function we found to be abolished in 96% of human seminomas. Mechanistically, RHAMM expression is regulated by the testis-specific polyadenylation protein CFIm25, which is downregulated in the human seminomas. These results suggested that spindle misorientation is oncogenic, not by promoting self-renewing germ cell divisions within the niche, but by prematurely displacing proliferating cells from their normal epithelial milieu. Furthermore, they suggested RHAMM loss-of-function and spindle misorientation as an initiating event underlying both hypofertility and TGCT initiation. These findings identify spindle-associated RHAMM as an intrinsic regulator of male germ cell fate and as a gatekeeper preventing initiation of TGCTs. Cancer Res; 76(21); 6382-95. ©2016 AACR.
Subject(s)
Extracellular Matrix Proteins/physiology , Fertility , Hyaluronan Receptors/physiology , Neoplasms, Germ Cell and Embryonal/etiology , Seminoma/etiology , Spindle Apparatus/chemistry , Testicular Neoplasms/etiology , Testis/cytology , Animals , Apoptosis , Cell Division , Extracellular Matrix Proteins/analysis , HeLa Cells , Humans , Hyaluronan Receptors/analysis , Male , Mice , Neoplasms, Germ Cell and Embryonal/pathology , Seminoma/pathology , Testicular Neoplasms/pathology , Tumor Suppressor Protein p53/physiologyABSTRACT
Despite a growing body of knowledge on the mechanisms underlying the onset and progression of cancer, treatment success rates in oncology are at best modest. Current approaches use statistical methods that fail to embrace the inherent and expansive complexity of the tumor/patient/drug interaction. Computational modeling, in particular mechanistic modeling, has the power to resolve this complexity. Using fundamental knowledge on the interactions occurring between the components of a complex biological system, large-scale in silico models with predictive capabilities can be generated. Here, we describe how mechanistic virtual patient models, based on systematic molecular characterization of patients and their diseases, have the potential to shift the theranostic paradigm for oncology, both in the fields of personalized medicine and targeted drug development. In particular, we highlight the mechanistic modeling platform ModCell™ for individualized prediction of patient responses to treatment, emphasizing modeling techniques and avenues of application.
ABSTRACT
Centrosome morphology and number are frequently deregulated in cancer cells. Here, to identify factors that are functionally relevant for centrosome abnormalities in cancer cells, we established a protein-interaction network around 23 centrosomal and cell-cycle regulatory proteins, selecting the interacting proteins that are deregulated in cancer for further studies. One of these components, LGALS3BP, is a centriole- and basal body-associated protein with a dual role, triggering centrosome hypertrophy when overexpressed and causing accumulation of centriolar substructures when downregulated. The cancer cell line SK-BR-3 that overexpresses LGALS3BP exhibits hypertrophic centrosomes, whereas in seminoma tissues with low expression of LGALS3BP, supernumerary centriole-like structures are present. Centrosome hypertrophy is reversed by depleting LGALS3BP in cells endogenously overexpressing this protein, supporting a direct role in centrosome aberration. We propose that LGALS3BP suppresses assembly of centriolar substructures, and when depleted, causes accumulation of centriolar complexes comprising CPAP, acetylated tubulin and centrin.
Subject(s)
Antigens, Neoplasm/metabolism , Biomarkers, Tumor/metabolism , Carrier Proteins/metabolism , Centrioles/metabolism , Centrioles/pathology , Glycoproteins/metabolism , Neoplasms/metabolism , Neoplasms/pathology , Animals , Antigens, Neoplasm/genetics , Biomarkers, Tumor/genetics , Carrier Proteins/genetics , Cell Line, Tumor , Centrioles/ultrastructure , Chromatography, Affinity , Extracellular Matrix Proteins/metabolism , Gene Expression Regulation, Neoplastic , Gene Knockdown Techniques , Glycoproteins/genetics , HEK293 Cells , Humans , Hypertrophy , Male , Microtubules/metabolism , Microtubules/ultrastructure , Neoplasms/genetics , Protein Interaction Maps , Protein Serine-Threonine Kinases/metabolism , Protein Transport , RNA, Small Interfering/metabolism , Rats , Rats, Sprague-Dawley , Seminoma/genetics , Seminoma/pathology , Spindle Apparatus/metabolism , Spindle Apparatus/ultrastructureABSTRACT
Phosphorylation is one of the key mechanisms that regulate centrosome biogenesis, spindle assembly, and cell cycle progression. However, little is known about centrosome-specific phosphorylation sites and their functional relevance. Here, we identified phosphoproteins of intact Drosophila melanogaster centrosomes and found previously unknown phosphorylation sites in known and unexpected centrosomal components. We functionally characterized phosphoproteins and integrated them into regulatory signaling networks with the 3 important mitotic kinases, cdc2, polo, and aur, as well as the kinase CkIIß. Using a combinatorial RNA interference (RNAi) strategy, we demonstrated novel functions for P granule, nuclear envelope (NE), and nuclear proteins in centrosome duplication, maturation, and separation. Peptide microarrays confirmed phosphorylation of identified residues by centrosome-associated kinases. For a subset of phosphoproteins, we identified previously unknown centrosome and/or spindle localization via expression of tagged fusion proteins in Drosophila SL2 cells. Among those was otefin (Ote), an NE protein that we found to localize to centrosomes. Furthermore, we provide evidence that it is phosphorylated in vitro at threonine 63 (T63) through Aurora-A kinase. We propose that phosphorylation of this site plays a dual role in controlling mitotic exit when phosphorylated while dephosphorylation promotes G(2)/M transition in Drosophila SL2 cells.
Subject(s)
Cell Cycle , Centrosome/metabolism , Drosophila Proteins/metabolism , Drosophila melanogaster/cytology , Membrane Proteins/metabolism , Nuclear Envelope/metabolism , Nuclear Proteins/metabolism , Protein Serine-Threonine Kinases/metabolism , Animals , Aurora Kinases , CDC2 Protein Kinase/genetics , CDC2 Protein Kinase/metabolism , Casein Kinase II/genetics , Casein Kinase II/metabolism , Cell Line , Drosophila Proteins/genetics , Drosophila melanogaster/genetics , Drosophila melanogaster/metabolism , Membrane Proteins/analysis , Nuclear Proteins/analysis , Phosphorylation , Protein Serine-Threonine Kinases/genetics , RNA InterferenceABSTRACT
Large-scale screens in mammalian cells demand for flexible high-throughput screening platforms that allow to analyze cellular traits on a genome-wide level or to identify small-molecule inhibitors (SMIs) from complex compound libraries. In this study we developed and tested high-density cell arrays made out of polydimethylsiloxane (PDMS) that support cell growth directly on standard glass microscope objective slides. We analyzed the effect of 3 reference inhibitors (MLN-8054, VX-680, and flavopiridol) and 4 exploratory, cell permeable small-molecule kinase inhibitors (two benzothiophene-based and two 4-amino-6-arylpyrimidine-based compounds) on different cell lines, using prototype 5 × 5 and 9 × 9 array carpets. We found that high-density PDMS cell arrays support growth of a broad range of cell types, are well suited for compound screens, and are compatible with high-content screening platforms. This novel array format is of particular advantage for compound screening to identify SMIs, when a combination of flexibility with respect to culture volume, well density, and high-resolution imaging is required. In addition, we demonstrated the suitability of this format for reverse transfection and siRNA experiments.
Subject(s)
Antineoplastic Agents/pharmacology , Drug Screening Assays, Antitumor , High-Throughput Screening Assays , Protein Kinase Inhibitors/pharmacology , Small Molecule Libraries , Animals , COS Cells , Caco-2 Cells , Cell Line, Tumor , Cell Proliferation/drug effects , Cell Survival/drug effects , Centrosome/drug effects , Chlorocebus aethiops , Dimethylpolysiloxanes , Humans , Interphase/drug effects , Microscopy, Fluorescence , Mitotic Index , RNA, Small Interfering/genetics , Tissue Array Analysis , TransfectionABSTRACT
Classical protocols for the isolation of centrosomes from higher eukaryotic cells are based on enrichment of cell organelles by density gradient centrifugation. Various successful protocols have been described that isolate centrosomes from mammalian tissue culture cells, tissue, clam oocytes, Drosophila, and yeast, to mention only some of the more frequently used sources. The material produced is subsequently used in various assays. These include functional tests such as the microtubule nucleation assay, electron microscopic study of centrosome morphology, and antigen localization; the organelles may also be used for the generation of antibodies. Furthermore, centrosomal preparations have been used for the characterization of their protein composition. The method described here focuses on the isolation of centrosomes from the syncytial stages of the early Drosophila embryo. This is a particularly attractive system because these organelles are not bounded by cellular membranes. Moreover, the abundance of pericentriolar material of these centrosomes produces excellent total protein yields.
Subject(s)
Cell Fractionation/methods , Centrifugation, Density Gradient/methods , Centrosome/ultrastructure , Embryo, Nonmammalian/cytology , Animals , Centrosome/immunology , Drosophila melanogaster , Fluorescent Antibody TechniqueABSTRACT
The spindle assembly checkpoint guards the fidelity of chromosome segregation. It requires the close cooperation of cell cycle regulatory proteins and cytoskeletal elements to sense spindle integrity. The role of the centrosome, the organizing center of the microtubule cytoskeleton, in the spindle checkpoint is unclear. We found that the molecular requirements for a functional spindle checkpoint included components of the large gamma-tubulin ring complex (gamma-TuRC). However, their localization at the centrosome and centrosome integrity were not essential for this function. Thus, the spindle checkpoint can be activated at the level of microtubule nucleation.
Subject(s)
Drosophila Proteins/metabolism , Microtubule-Associated Proteins/metabolism , Mitosis , Spindle Apparatus/metabolism , Tubulin/metabolism , Animals , Cell Cycle Proteins/metabolism , Cell Line , Centrosome/physiology , Drosophila Proteins/genetics , Drosophila melanogaster , Homeodomain Proteins/genetics , Homeodomain Proteins/metabolism , Humans , Kinetochores/metabolism , Microtubule-Associated Proteins/genetics , Microtubules/ultrastructure , Protein Kinases/metabolism , Protein Serine-Threonine Kinases , RNA Interference , Spindle Apparatus/ultrastructureABSTRACT
Proteins are the key components of the cellular machinery responsible for processing changes that are ordered by genomic information. Analysis of most human proteins and nucleic acids is important in order to decode the complex networks that are likely to underlie many common diseases. Significant improvements in current technology are also required to dissect the regulatory processes in high-throughtput and with low cost. Miniaturization of biological assays is an important prerequisite to achieve these goals in the near future.
Subject(s)
Genomics/methods , Miniaturization/methods , Proteomics/methods , Biological Assay , Genomics/instrumentation , Humans , Proteomics/instrumentationABSTRACT
Cdc37 has been shown to be required for the activity and stability of protein kinases that regulate different stages of cell cycle progression. However, little is known so far regarding interactions of Cdc37 with kinases that play a role in cell division. Here we show that the loss of function of Cdc37 in Drosophila leads to defects in mitosis and male meiosis, and that these phenotypes closely resemble those brought about by the inactivation of Aurora B. We provide evidence that Aurora B interacts with and requires the Cdc37/Hsp90 complex for its stability. We conclude that the Cdc37/Hsp90 complex modulates the function of Aurora B and that most of the phenotypes brought about by the loss of Cdc37 function can be explained by the inactivation of this kinase. These observations substantiate the role of Cdc37 as an upstream regulatory element of key cell cycle kinases.