Davide Ambrosi (Torino)
              
             
              Adhesion forces in T24 cell migration
                The migration of tumor cells is a key aspect of extravasation, 
                when cancer cells exit the capillaries and enter organs. Notwithstanding 
                the relevance to understand the degradation dynamics, the elasticity 
                of the vessel wall and the cell adhesion play a major role. The 
                determination of the mechanical action exerted by a tumor cell 
                on the vessel wall is a specific example of the prediction of 
                the stress field exerted by a cell in a soft environment. In the 
                planar case, this subject has been addressed about ten years ago 
                by Dembo and Wang (1999). They showed how the traction exerted 
                by a cell on a deformable substrate can be indirectly obtained 
                on the basis of the displacement of the underlying layer. The 
                standard approach in this respect is to solve exactly the elasticity 
                problem by Green functions and then minimize the error by discrete 
                optimization, iteratively. One possible alternative strategy to 
                approach this inverse problem is to exploit the adjoint elasticity 
                equations for the substrate, obtained on the basis of the minimization 
                requirement of a suitable functional. In this case the linear 
                elasticity problem is solved in an approximate way, while being 
                intrinsically coupled with the minimization algorithm. In a joint 
                collaboration with the Grenoble University (Claude Verdier, Valentina 
                Peschetola, Alain Duperray) this methodology has been recently 
                applied to determine the force field generated by T24 tumor cells 
                on a polyacrylamide substrate. The shear stress obtained by numerical 
                integration provides quantitative insight of the traction field 
                generated by cells of this line and is a promising tool to investigate 
                the spatial pattern of forces generated in cell motion.
              
            
            Robyn Araujo (George Mason University)
            
             
              Combination Therapies: Insights from Mathematical Modeling 
                
                Realizing the promise of molecularly targeted inhibitors 
                for cancer therapy will require a new level of knowledge about 
                how a drug target is wired into the control circuitry of a complex 
                cellular network. This presentation will review general homeostatic 
                principles of cellular networks that enable the cell to be resilient 
                in the face of molecular perturbations, while at the same time 
                being sensitive to subtle input signals. Insights into such mechanisms 
                may facilitate the development of combination therapies that take 
                advantage of the cellular control circuitry, with the aim of achieving 
                higher efficacy at a lower drug dosage and with a reduced probability 
                of drug-resistance development.
            
            
              Khalid Boushaba (Iowa State)
             
              A mathematical model for cell signaling and endothelial 
                migration in a living zebra fish embryos
                Angiogenesis in the zebrafish embryo begins after the first day 
                of development. During this time the intersegmental vessels in 
                the trunk develop from the dorsal aorta in the first wave of embryonic 
                angiogenesis. Previous work suggests a link between VEGF and Syndecan-2, 
                which may function as a co-receptor for VEGF. We are currently 
                developing equations that include terms expressing reaction, diffusion, 
                and cell movement biased by "convection" like terms 
                to model this interaction. These terms model the chemotactic influences 
                on cells, and hence the interaction of the cells with the extracellular 
                matrix that results in their directed movement towards the diffusible 
                growth factor. Using this approach as a framework, we expect to 
                develop mathematical models for angiogenesis for zebrafish that 
                are both predictive and descriptive of growth factor signaling 
                and extracellular matrix interactions during cell migration. Based 
                on the high degree of conservation of signaling pathways involved 
                in angiogenesis, we expect that modeling these processes in zebrafish 
                will be directly applicable to tumor angiogenesis.
              
            
            
              Lloyd Demetrius (Harvard, Max Planck 
              Institute)
            
             
              Cancer in Mice and Men: a comparison
                Animal models, mostly mice and rats, have contributed 
                to the understanding of growth and control of tumors in humans 
                . I will invoke recent work in evolutionary theory to analyse 
                the extent to which extrapolations from mice models to human systems 
                are justified.
            
            
              James Glazier (Indiana) 
             
              Simple Modeling of Avascular and Vascular Tumors Using 
                the GGH Model and CompuCell3D
                While bioinformatics tools for the analysis of DNA sequences, 
                reaction kinetics models of biomolecular networks and molecular 
                dynamics simulations of biomolecules are all widely used, multi-cell 
                modeling of developmental processes (including tumor growth) at 
                the tissue scale is still relatively undeveloped. A key reason 
                for this neglect has been the lack of widely-accepted modeling 
                approaches and the computational difficulty of building such models. 
                Now, a growing community of modelers has settled on the GGH Model 
                (also known as the CPM) as a convenient methodology to create 
                multi-cell simulations of tissues. I will present sample simulations 
                of the front instabilities of a simple "toy" model of 
                growing avascular tumor spheroids and some slightly more sophisticated 
                models of tumor vascularization to illustrate the capabilities 
                and limitations of the GGH model as implemented in the open-source 
                modeling environment CompuCell3D (see www.compucell3d.org). 
            
            
              Richard Hill (Ontario Cancer Institute)
            
             
              Cancer stem cells in tumours
                A cancer stem (cancer-initiating) cell is defined as a cell within 
                a tumour that possesses the capacity to self-renew and to generate 
                the heterogeneous lineages of cancer cells that comprise the tumour. 
                This definition directly implies that an anti-cancer therapy can 
                cure a tumour only if all cancer stem cells are killed. A recent 
                milestone in cancer research was the introduction of flow sorting 
                techniques to isolate cell populations based on cell surface markers 
                that are differentially expressed in tumour cell subpopulations 
                that are enriched for cancer stem cells. Application of this technology 
                may allow discrimination of stem cells and non-stem cells on an 
                individual basis, although the interpretation of this data in 
                the context of the exact phenotype of a stem cell is currently 
                evolving. The question of whether cancer stem cells represent 
                a (small) subpopulation of tumour cells which may respond differently 
                to treatment (e.g. radiotherapy or chemotherapy) compared to the 
                bulk of non-stem tumour cells has direct implication for understanding 
                the response of tumours to treatment. Changes in tumour volume 
                after therapy, i.e. tumour response, are governed by the changes 
                in the mass of tumour cells, i.e. primarily by the non-stem cells. 
                In contrast, permanent tumour eradication is expected to be dependent 
                on the complete inactivation of the subpopulation of cancer stem 
                cells. This distinction is extremely important for optimization 
                of cancer research methodology. Today the vast majority of preclinical 
                studies in cancer research use volume dependent parameters such 
                as tumour regression or tumour growth delay as experimental endpoints. 
                An often unrecognised assumption in modelling such data is that 
                cancer stem cells have the same treatment response as non-stem 
                cells in the tumour. The validity of this assumption for different 
                tumour types is currently unknown.
            
            
              David Hodgson (PMH) 
             
              Learning from the Fat Man: Modeling Radiation-related Second 
                Cancer Risk for Clinical Use
                Numerous studies have demonstrated increased risks of second malignancy 
                among young cancer survivors, largely attributed to radiation 
                therapy (RT). However, due to the long latency required to observe 
                second solid cancers (SC) and the rapid evolution of RT techniques, 
                many estimates of radiation-related SC risks reflect the outcomes 
                of treatment no longer in use. Moreover, there is large variation 
                in the normal tissue exposure among individuals nominally receiving 
                the same form of RT. Consequently, published risks of SC are not 
                generalizable to contemporary HL patients, and conceal substantial 
                differences in risk among individual patients.
              Ideally, patient-specific radiation exposure data could be used 
                to prospectively
                estimate RT-related SC risk. This approach would have the potential 
                advantage of providing patient-specific SC risk estimates to newly 
                diagnosed patients undergoing treatment, and could aid the development 
                of more effective RT techniques by helping to quantify the reduction 
                in late toxicity expected from changes in RT practice.
              This talk will review studies that have applied methods of modeling 
                cancer risk among atomic-bomb survivors to radiation-related second 
                cancer risk among patients receiving RT. Epidemiologic data are 
                emerging regarding dose-risk relationship following RT that suggest 
                that standard radiobiologic models may not apply to the SC risk 
                seen following RT. Advances in imaging and individual-level dosimetric 
                estimation will facilitate the creation of patient-specific estimates 
                of SC risk, however major challenges exist to create estimates 
                with confidence intervals sufficiently narrow to be clinically 
                interpretable, and to integrate predictive models into a contemporary 
                biologic theory of radiation carcinogenesis. 
              
            
            Yi Jiang (Los Alamos)
             
              Multiscale modeling for tumor angiogenesis
                Tumor angiogenesis, the formation of new blood vessels from existing 
                vasculature in response to chemical signals from a tumor, is a 
                crucial step in cancer invasion and metastasis. Though the detailed 
                processes involved in angiogenesis are well established, the biomechanical 
                and biochemical mechanisms behind the vessel formation are largely 
                unresolved. We have developed a cell-based, multiscale modeling 
                framework that has been successfully applied to study tumor induced 
                angiogenesis. Our multiscale model is the first to incorporate 
                intracellular signaling pathways, cellular dynamics, cell-cell, 
                cell-matrix, cell-environment interactions, as well as chemical 
                dynamics, for tumor-induced angiogenesis. It is also the first 
                to simulate emergent vessel branching, anastomosis, and the brush 
                border effect. I will show that the model has not only reproduced 
                realistic sprout morphogenesis, but also generated testable hypotheses 
                regarding mechanistic role of angiogenic factor (VEGF) and the 
                topography of extracellular matrix, on sprout branching and fusion.
            
            Philip Jones (Cambridge Cancer Ctr.) 
             
              The self assembling stem cell niche: a new model of epidermal 
                homeostasis
                Mammalian epidermis is an ideal system in which to study stem 
                cell behaviour as it is constantly being turned over, has a simple 
                architecture, and is predominantly composed of a single cell lineage, 
                the epidermal keratinocyte. Epidermis consists of layers of keratinocytes. 
                Cells are continually shed from the epidermal surface and replaced 
                by proliferation in the basal cell layer, raising the question 
                of how epidermal homeostasis is achieved.
              It has been argued the epidermis is maintained by long-lived, 
                slowly-cycling stem cells, which in turn generate a short-lived 
                population of transit-amplifying (TA) cells that differentiate 
                after a limited number of cell divisions. We have recently reported 
                that this "classical" stem/TA cell model is inconsistent 
                with clonal fate data obtained through inducible genetic labelling 
                in the tail skin of adult mice, which reveals a different mechanism 
                of epidermal homeostasis. Murine epidermis is maintained by a 
                single population of committed progenitor cells which behave stochastically, 
                dividing to generate, on average, equal numbers of cycling or 
                post-mitotic cells. The discovery of a new paradigm of stem-cell 
                independent tissue maintenance in mouse raises the question as 
                to whether similar rules may govern the behaviour of human keratinocytes. 
              
              In the basal layer of human interfollicular epidermis, near-quiescent 
                stem cells are localised in a niche consisting of stem cell clusters, 
                separated by proliferating and differentiating keratinocytes. 
                Remarkably, this pattern is reconstituted in vitro. Combining 
                a range of existing observations with new experimental data, we 
                have elucidated the origin of patterning and quiescence in homeostatic 
                tissue, and explained the ability of stem cells to reconstitute 
                their niche in culture. Such behaviour points at a simple set 
                of organisational principles controlling stem and progenitor cell 
                fate, and provides a unified model of epidermal maintenance in 
                mouse and human. In particular, we show that epidermis is maintained 
                by a committed progenitor cell population whose stochastic behaviour 
                enables stem cells to remain largely quiescent unless called upon 
                for repair. These results raise questions as to the role of stem 
                cells in other adult tissues.
            
            Rama Khokha (Ontario Cancer Institute)
            
             
              Functional and Biological Variables in Metastasis 
                Metastasis is the multistep process by which cancer cells 
                target and colonize secondary organs. Cancer cells locally invade 
                by breaching extracellular matrix barriers, gaining access to 
                vasculature, and extravasating into the distant organs. This is 
                followed by their growth in the new environment, culminating in 
                metastatic colonization. Lung, liver, brain and bone are common 
                sites of metastasis for many human cancers. There is a considerable 
                debate concerning the identity of rate limiting steps in metastasis, 
                thus modeling individual steps, and gaining molecular understanding 
                of this process presents significant challenges. We will discuss 
                the recent technologies and genetic mouse models which are emerging 
                to meet these challenges.
            
            
              Mike Milosevic (PMH)
             
              Angiogenesis, Interstitial Fluid Dynamics and Hypoxia in 
                Tumors
                It is now well established that the clinical behaviour of many 
                human cancers is determined by molecular interactions between 
                the malignant cells and the environment in which they exist. Abnormal 
                blood vessels that arise from aberrant angiogenesis are an important 
                cause of tumour hypoxia, which stimulates further angiogenesis 
                and leads to radioresistance, altered repair of DNA damage and 
                changes in the expression of genes important in tumour progression 
                and metastasis formation. In addition, the abnormal tumor vessels 
                contribute to high interstitial fluid pressure (IFP), an important 
                predictor of reduced survival in women receiving radiotherapy 
                for cervix cancer and a barrier to drug penetration. These and 
                other aspects of the abnormal microenvironment in tumors, while 
                conferring poor prognosis and impeding the effectiveness of currently 
                available treatments, also present unique opportunities for improving 
                cure rates. Combinations of radiotherapy or chemotherapy with 
                novel molecular treatments that target angiogenesis or hypoxia 
                are the focus of ongoing laboratory and clinical studies. Mathematical 
                models of how these treatments interact can generate new hypotheses 
                for laboratory and clinical testing, inform the design of future 
                studies with respect to important issues such as optimal dosing 
                and sequencing of the various treatments, and help to explain 
                unexpected preclinical or clinical findings.
            
            
              Lance Munn (Harvard)
             
              Multi-scale analyses of tumor physiology and blood vessel 
                dynamics
                Recent cancer therapies have targeted tumor blood vessels with 
                inconsistent results. Some treatments show promise while others 
                fail, underscoring a frustrating lack of understanding of the 
                mechanisms that control blood vessel formation, destruction and 
                function . A major difficulty lies in the fact that the mechanisms 
                of vessel formation and remodeling operate at multiple scales, 
                each with its own set of controls, and each critical to the overall 
                function of the blood vessel network. Most importantly, rare 
                events occurring at the single cell level can dominate overall 
                vessel network function, and therefore, tumor growth. We are developing 
                analytical approaches--both experimental and computational-- that 
                span the size scale from single cells to bulk tumor in order to 
                incorporate the relevant parameters critical for understanding 
                tumor growth. Experimentally, intravital microscopy allows determination 
                of single-vessel hematocrit, blood velocity, permeability as well 
                as vessel and network morphology over time. Mathematical models 
                of blood flow, vessel growth & remodeling, and tumor growth 
                and invasion span the size scale from cells to tissue to elucidate 
                the cellular events that influence tissue-scale physiology. These 
                tools provide a framework for studying the effects of anti-tumor 
                therapies and improving their efficacy.
              
            Leonard M. Sander (Michigan)
            
              Micromechanics of collagen-gels and invasion by glioma 
                cells
                Glioma is a highly invasive form of brain tumor. We have studied 
                the invasion process in a in vitro experiment where tumor spheroids 
                are seeded in collagen gels. We find that invasion involves strong 
                and complex interactions with the gel; the cells deform and align 
                the matrix. In order to better understand this process we study 
                a micromechanical model of collagen-I. We can reproduce the non-linear 
                elasticity of the gel, and we show that deformations are non-affine. 
                We discuss the relationship of the mechanics to the invasive process. 
              
            
             
              Shiladitya Sengupta (MIT)
            
            
              Spatiotemporal targeting of tumor parenchyma and stroma 
                by hybrid nanoparticles 
                The talk shall focus on the design of a novel nanoscale 
                platform that enables the spatiotemporal targeting of tumor stroma 
                and parenchyma with an antiangiogenic agemt followed by a cytotoxic. 
                This enables the intratumoral exposure of the hypoxic tumor to 
                a chemotherapeutic agent resulting in disruption of the HIF1a-autocrine 
                loop and increased antitumor efficacy.
            
            
              Jack Tuszynski (Cross Cancer Inst.)
            
            
              MD and QMMM modeling successfully predict binding and effectiveness 
                of novel colchicine derivatives against multiple cancer cell lines
                Colchicine is a highly toxic plant-derived alkaloid which inhibits 
                microtubule polymerization by binding to tubulin dimers. Currently, 
                the chemotherapeutic value of colchicine is limited by its toxicity 
                against normal cells. Theoretically, this could be remedied by 
                derivatizing colchicine to preferentially bind tubulin isotypes 
                which are more common in cancer cells than in normal body tissues, 
                and particularly in those cancer types which are resistant to 
                conventional therapies. In recent studies, it has been demonstrated 
                that class III ß-Tubulin over-expression is associated with 
                taxane-resistant subsets of non small cell lung cancer, advanced 
                ovarian cancer, breast cancer and cancer of unknown primary origin. 
                Our study investigates the uses of Quantum Mechanics Molecular 
                Mechanics (QMMM) and Molecular Dynamics (MD) modeling to construct 
                derivatives of colchicine which will bind class III ß-Tubulin 
                with increased affinity. Using QMMM and MD modeling techniques, 
                21 colchicine derivatives were designed to increase affinity for 
                class III ß-Tubulin by offering a better steric fit into 
                the binding pocket . Derivatives were designed and tested in silico 
                before being synthesized by organic chemists at Oncovista Inc. 
                of San Antonio, TX. The colchicine derivatives were then tested 
                in MTS cytotoxicity assays against up to seven different cancer 
                cell lines with differing characteristics and morphologies. Results 
                were obtained by graphing the MTS absorbance readings, and calculating 
                an EC50 Value (drug concentration at which 50% of the drug's effects 
                are seen) using sigmoidal dose-response analysis. Colchicine has 
                an EC50 Value in the range of 10-7 M, and several of our novel 
                derivatives (ie. CH-32, CH-34 and CH-35) were found to have EC50 
                Values in the range of 10-9 M, while other derivatives (ie. CH-6, 
                CH-7 and CH-21) were found to have EC50 values in the range of 
                10-5 M to 10-6 M. These results indicate that our derivatives 
                have up to 100X greater and lesser effectiveness than colchicine. 
                Interestingly, comparative derivative cytotoxicity was found to 
                correlate with theoretical QMMM and MD modeling predictions. Successful 
                derivatives warrant continued investigation, screening and development. 
                We propose that our modeling system may be used to design any 
                variety of drugs for specific targets such as vinca alkaloids, 
                taxanes and peloruside.
            
            
              
              Zhihui Wang (Harvard-MIT, HST)
              
            
               Multiscale Lung Cancer Modeling
                Lung cancer accounts for one third of all cancer related deaths 
                worldwide. Computational models simulating cancer cell behavior 
                can provide valuable insights into the quantitative understanding 
                of the inherent complexity of neoplastic systems through an interdisciplinary 
                approach. We have been working on the development and analysis 
                of multiscale agent-based models to investigate the growth dynamics 
                of non-small cell lung cancer (NSCLC). Our proposed innovative 
                methods can be used to help identify biomarkers across different 
                biological levels, thereby generate novel hypotheses and help 
                guide further experiments.
            
            
              Glenn F. Webb (Vanderbilt)
            
              Models of Tumor Growth in vitro
                Two models of in vitro tumor growth will be presented. (1) Transforming 
                growth factor TGF is known to have properties of both tumor suppressor 
                and tumor promoter. While it inhibits cell proliferation, it also 
                increases cell motility. A mathematical model quantifies the growth 
                of MCF10A/HER2 cell cultures in vitro under exposure to TGF. The 
                model supports the hypothesis that TGF increases the tendency 
                of cells and cell clusters to move randomly, while simultaneously 
                diminishing cell proliferation. (2) P-glycoprotein (P-gp) is a 
                protein over-expressed in cancer cells that causes multi-drug 
                resistance to cancer therapy. Recent experimental evidence demonstrates 
                that P-gp is transferred directly cell-to-cell in in vitro tumor 
                cell lines. A mathematical model quantifies the transfer process 
                of P-gp in in vitro cultures of MCF-7 human breast adenocarcinoma 
                cells. The model supports the hypothesis that P-gp is transferred 
                directly cell-to-cell and provides a framework for optimizing 
                chemotherapy regimens. 
              
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