Wolfgang Pauli Institute (WPI) Vienna

Workshop on "Mathematical Models in Cancer"

Location: OMP 1, Lecture Room 11 (2nd floor) Fri, 20. Jul (Opening: 9:00) - Sat, 21. Jul 18
Organisation(s)
WPI
Organiser(s)
Michael Bergmann (Medical Uni of Vienna)
Marie Doumic (WPI & INRIA)
Doron Levy (U.Maryland)
Norbert J. Mauser (WPI c/o Uni Wien)
Remark: Click here for further information

Registration is free. Please RSVP at ramona.bluma@univie.ac.at

Talks in the framework of this event


Mauser, Norbert J. (WPI Director) Fri, 20. Jul 18, 9:00
Opening Remarks
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Maini, Philip (U. Oxford) Fri, 20. Jul 18, 9:10
Mathematical modelling of angiogenesis
Angiogenesis is the process by which the body generates new blood vessels. This occurs in the context of wound healing where, of course, it is beneficial to the body. However, it can also occur in cancer where it can enhance delivery of nutrients to the cancer and enable cancer cells to infiltrate the blood system and metastasize to vital organs, leading to the often fatal secondary tumours. Understanding this process is a challenge for both experimentalists and theoreticians. I will review some recent work we have done on this problem which includes generating a new partial differential equation model for the so-called ``snail-trail'' movement of blood vessel cells to the tumour (Pillay et al, 2017), by developing a continuuum model of the process from a discrete description. I will then present a computational multiscale model for a key experimental assay that is used by experimentalists to measure the efficacy of anti-angiogenesis drugs and use it to make predictions (Grogan et al, 2018; 2017).
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Bergmann, Michael (Med. Uni Vienna) Fri, 20. Jul 18, 9:50
Understanding and modulation of the immune infiltrate in solid tumors
TBA
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Grebien, Florian (LBI Cancer Research) Fri, 20. Jul 18, 11:00
Identification of actionable nodes in cancer-specific protein networks
Oncogenes perturb molecular mechanisms to drive neoplastic initiation and progression. Chromosomal rearrangements are frequent events in cancer, and can result in the expression of fusion proteins. Fusion proteins represent neomorphic protein variants with aberrant activities and are often drivers of oncogenesis. Acute myeloid leukemia (AML) is an aggressive cancer of the white blood cell lineage that is associated with poor prognosis. While AML features a particular high prevalence of fusion proteins, it is largely unknown how the majority of AML fusion proteins rewire the molecular machinery of normal blood cells to induce leukemia. We hypothesize that oncogenic mechanisms of AML fusion proteins are hard-wired in specific networks of physical, genetic and epigenetic interactions with key effector proteins. Functional exploration of these networks by systematic comparative approaches will provide new insights into cellular processes that depend on critical effector proteins among these networks. The goal of our research is a comprehensive systems-level investigation of oncogenic mechanisms employed by AML fusion proteins. We have established a robust experimental pipeline for the rapid characterization of fusion oncoproteins in a multilayered, global fashion. We use modern genetic tools to generate advanced cell and animal models for tunable expression of AML fusion proteins. Fusion protein-dependent changes in cellular topologies are charted by proteomic and transcriptomic approaches. In parallel, genome-scale loss-of function CRISPR/Cas9 screening is used to identify critical effectors of leukemogenesis. High-confidence candidates are validated using a wide array of different approaches, including studies in primary patient-derived leukemia cells. Results from this pipeline provide evidence for its robust validity, but also for its translational impact, strongly implying that this approach will contribute to an improved understanding of oncogenesis.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Benzekry, Sebastien (INRIA) Fri, 20. Jul 18, 11:40
Mathematical modeling and prediction of clinical metastasis
In the majority of cancers, secondary tumors (metastases) and associated complications are the main cause of death. To design the best therapy for a given patient, one of the major current challenge is to estimate, at diagnosis, the eventual burden of invisible metastases and the future time of emergence of these, as well as their growth speed. In this talk, I will present the current state of research efforts towards the establishment of a predictive computational tool for this aim. I will first shortly present the model used, which is based on a physiologically-structured partial differential equation for the time dynamics of the population of metastases, combined to a nonlinear mixed-effects model for statistical representation of the parameters’ distribution in the population. Then, I will show results about the descriptive power of the model on data from clinically relevant ortho-surgical animal models of metastasis (breast and kidney tumors). The main part of my talk will further be devoted to the translation of this modeling approach toward the clinical reality. Using clinical imaging data of brain metastasis from non-small cell lung cancer, several biological processes will be investigated to establish a minimal and biologically realistic model able to describe the data. Integration of this model into a biostatistical approach for individualized prediction of the model’s parameters from data only available at diagnosis will also be discussed. Together, these results represent a step forward towards the integration of mathematical modeling as a predictive tool for personalized medicine in oncology.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Peurichard, Diane (INRIA) Fri, 20. Jul 18, 14:00
A multi-scale approach for models of tumor growth: from short-range repulsion to Hele-Shaw problems
In this talk, we investigate the link between multi-scale models for tumor growth. We start from a microscopic model where cells are modelled as 2D spheres undergoing short range repulsion and cell division. We derive the associated macroscopic dynamics leading to a porous media type equation. As the macroscopic equation obtained through usual derivation method fails at providing the correct qualitative behavior, we propose a modified version of the macroscopic equation introducing a density threshold for the repulsion. We numerically validate the new formulation by comparing the solutions of the micro- and macro- dynamics. Moreover, we study the asymptotic behavior of the dynamics as the repulsion between cells becomes singular (leading to non-overlapping constraints in the microscopic model). We show formally that such asymptotic limit leads to a Hele-Shaw type problem for the macroscopic dynamics. The numerical simulations reveal an excellent agreement between the micro- and macro- descriptions, validating the formal derivation of the macroscopic model. The macroscopic model derived here therefore enables to overcome the problem of large computational time raised by the microscopic model, but stays closely linked to the microscopic dynamics.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Mayerhöfer, Marius (Med. Uni Wien) Fri, 20. Jul 18, 14:40
Novel trends in cancer imaging: from hybrid techniques to radiomics
Cancer imaging has undergone major paradigm shifts within the last decade. Hybrid imaging techniques, and in particular, PET/CT (positron emission tomography / computed tomography) with the glucose analogue radiotracer [18F]FDG is now an integral part of the management guidelines for patients with different cancers, with a particular emphasis on the early detection of treatment effects on the tumor. Novel PET radiotracers that are specific for certain types of cancer – such as [68Ga]PSMA for prostate cancer – are currently being evaluated in clinical trials. Notably, though visual image interpretation is still the clinical standard, there is now a trend towards the use of quantitative data extracted from diagnostic images. The recently introduced PET/MRI (magnetic resonance imaging) is of particular interest in that regard, because it offers information on tissue properties such as cell density and blood flow in addition to the metabolic information provided by PET. The combination of quantitative parameters extracted from MRI and PET may not only improve non-invasive, image-based characterization of tumor heterogeneity, but may also improve evaluation of the effects of novel types of treatment. This multi-parametric approach also provides an ideal basis for radiomics – i.e., computer-assisted image analysis, and based on it, recognition of mathematical image patterns that are related to tumor characteristics. This novel approach to image interpretation, which is aided by advanced techniques such as artificial neural networks, has the potential to contribute significantly to the success of precision medicine, and the welfare of patients.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Seoane Sepúlveda, Jesús M. (U. Rey Juan Carlos) Fri, 20. Jul 18, 15:45
Dynamics of tumor and immune cell aggregates
In this talk we present our work on the dynamics of tumor and immune cell interactions [1-4]. A hybrid probabilistic cellular automaton model describing the spatio-temporal evolution of tumor growth and its interaction with the cell-mediated immune response is developed. The model parameters are adjusted to an ordinary differential equation model, which has been previously validated [1] with in vivo experiments and chromium release assays. The cellular automaton is used to perform in silico experiments which, together with mathematical analyses, allow us to characterize the rate at which a tumor is lysed by a population of cytotoxic immune cells [2-3]. Finally, the transient and asymptotic dynamics of the cell-mediated immune response to tumor growth is considered [4]. The cellular automaton model is used to investigate and discuss the capacity of the cytotoxic cells to sustain long periods of tumor mass dormancy, as commonly observed in recurrent metastatic disease. This is a joint work with Alvaro G. López and Miguel A. F. Sanjuán.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Nenning, Karl Heinz (Med. Uni Vienna) Fri, 20. Jul 18, 16:25
The changing global functional connectivity structure in patients with glioblastoma
Glioblastoma may have wide-spread effects on the cortical organization and cognitive function since even focal lesions impact the brains’ functional network architecture. Currently, our understanding of the interaction between tumor lesions and their impact on the functional connectome is limited. Hence, we used 3 Tesla resting-state functional magnetic resonance imaging to evaluate the functional connectivity structure of 15 patients with glioblastoma. We further tracked the functional characteristics of six patients over time using bimonthly follow-up examinations. We found changes in resting-state networks to be highly symmetric and mirrored by changes in the cerebellum. Patients shared a pattern of network deterioration after surgery, with subsequent recovery at the first follow-up examination. Additionally, we showed that glioblastoma has a global effect on the functional connectivity structure of the individual patient, which might serve as sensitive early marker of tumor recurrence. Of note, local tumor recurrence coincided with network deterioration before structural changes were apparent upon imaging. In summary, our results demonstrate how the functional connectome is affected by focal lesions, and that it might be exploited as an early predictor of local tumor recurrence. This renders the individual patient’s functional connectome a promising novel biomarker for the longitudinal patient follow-up in order to support early informed treatment decisions.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Clairambault, Jean (INRIA) Sat, 21. Jul 18, 9:00
Evolutionary viewpoint on drug resistance in cancer cell populations with perspectives in therapeutic control, and open general questions on cancer with respect to evolution
To tackle the question of drug resistance in cancer, I will present an adaptive dynamic framework to represent the evolution in phenotype of cell populations, that allows to follow the instantaneous distribution and asymptotic behaviour of drug resistance phenotype(s) in the cell population. Such phenotypes evolve under drug pressure towards either established or transient, possibly reversible, drug tolerance, a behaviour taken into account by the models we design to allow for therapeutic control. Optimal control strategies describing the combination of different categories of drugs on specified cell functional targets (thus far cytotoxics, that act on death terms, and cytostatics, that act on proliferation terms) are proposed, aiming at minimising a tumour cell population while limiting both unwanted toxic side effects on healthy cell populations and occurrence of drug resistance in cancer cell populations. The models used for these representations, their asymptotic properties and their theoretical therapeutic control are integro-differential (non-local Lotka-Volterra-like) or PDE models (reaction-diffusion models with or without advection). Finally, I will present some transdisciplinary challenges of cancer modelling that should concern mathematicians, cell biologists, evolutionary biologists and oncologists, aiming to go beyond the present state of the art in the treatments of cancer.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Klingmüller, Ursula (U. Heidelberg) Sat, 21. Jul 18, 9:40
Model-based optimization of personalized anemia treatment in chronic diseases
Anemia associated with chronic diseases is the second most prevalent anemia in the world after anemia caused by iron deficiency. Advanced stages of diseases such as chronic kidney disease (CKD) and cancer coincide with a high prevalence of severe anemia that results in fatigue, reduced quality of life and decreased treatment responses in patients. Two therapeutic options are available to manage anemia: blood transfusion and treatment with erythropoiesis stimulating agents (ESAs) in combination with iron supplementation. However, adverse events and increased risk of mortality have been reported for blood transfusions and ESAs. Decisions on the clinical treatment should be based on the specific benefit-to-risk ratio of each patient, which is complicated to assess due to the heterogeneity of the patients, the lack of prognostic markers and the dynamics of comorbidities associated with the diseases. We developed a multiscale mathematical model that links mechanistic insights at the cellular scale to response at the body level to guide clinical decisions based on the prediction of the response to the available therapeutic options. The mathematical model stratifies patients based on the estimation of two patient specific dynamic parameters. These parameters are estimated by the mathematical model based on the time-course of the haemoglobin (Hb) values, CRP, iron values and scheduled chemotherapy in each patient. These two patient specific parameters reflect the anaemic status of the patient as well as the capability to respond to treatment with ESAs. The model is capable to propose optimized personalized interventions for anaemia management in lung cancer and CKD patients.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Cordero, Francesca (U. Turin) Sat, 21. Jul 18, 10:40
Multiscale models to investigate IntraTumor Heterogeneity
In cancer research most efforts are devoted on the decipher of the IntraTumoral Heterogeneity (ITH). In ITH the action of the evolutionary forces of mutation and selection are essential to determinant the tumor progression, diagnosis and treatment. ITH gives rise to cancer cell populations with distinct genotypic and metabolic characteristics contributing to the failure of cure, by initiating phenotypic diversity and enabling more aggressive and drug resistant clones. I will present multi-scale models of cancer linking the tumor growth to the intracellullar signalling and metabolic events to genomic profiles. The models consider several heterogenous omics data (metabolomics, proteomics, transcriptomics, genomics) to investigate the ITH associated with different genomic and metabolic traits.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Gevertz, Jana (New Jersey College) Sat, 21. Jul 18, 11:20
Identifying robust optimal cancer treatment protocols from small experimental
Mathematical models of biological systems are often validated by fitting the model to the average of an (often small) experimental dataset. Here we ask the question of whether predictions made from a model fit to the average of a dataset are actually applicable in samples that deviate from the average. We will explore this in the context of a murine model of melanoma treated with oncolytic viruses and dendritic cell injections. We have hierarchically developed a system of ordinary different equations to describe the average of this experimental data, and optimized treatment subject to clinical constraints. Using a virtual population method, we explore the robustness of treatment response to the predicted optimal protocol; that is, we quantify the extent to which the optimal treatment protocol elicits the same qualitative response in virtual populations that deviate from the average. We find that our predicted optimal is not robust and in fact is potentially a dangerous protocol for a fraction of the virtual populations. However, if we consider a different drug dose than used in the experiments, we are able to identify an optimal protocol that elicits a robust anti-tumor response across virtual populations.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Kicheva, Anna (IST Austria) Sat, 21. Jul 18, 14:00
Coordination of progenitor specification and growth in the developing spinal cord
As the spinal cord grows during embryonic development, an elaborate pattern of molecularly distinct neuronal precursor cells forms along the DV axis. This pattern depends both on the dynamics of a morphogen-regulated gene regulatory network, and on tissue growth. We study how these processes are coordinated. Our data revealed that during mouse and chick development the gene expression pattern changes but does not scale with the overall tissue size. These changes in the pattern are sequentially controlled by distinct mechanisms. Initially, neural progenitors integrate signaling from opposing morphogen gradients to determine their identity by using a mechanism equivalent to maximum likelihood decoding. This strategy allows accurate assignment of position along the patterning axis and can account for the observed precision and shifts of pattern. During the subsequent developmental phase, cell-type specific regulation of differentiation rate, but not proliferation, elaborates the pattern.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Kefurt, Ronald (Med. Uni Vienna) Sat, 21. Jul 18, 14:40
TBA
TBA
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Lorz, Alexander (KAUST) Sat, 21. Jul 18, 15:45
Mathematics meets oncology: from Adaptive evolution to Zebrafish
In this talk, I focus on current biological problems and on how to use mathematical modeling to analyze a variety of pressing questions arising from oncology, developmental pattern formation and population ecology. I first discuss novel mathematical models for cancer growth dynamics and heterogeneity. These studies rely on evolutionary principles and shed light on 3D hepatic tumor dynamics, spatial heterogeneity and tumor invasion, and single cancer cell responses to antimitotic therapies. We also develop mathematical models that quantitatively demonstrate how the interplay between non-genetic instability, stress-induced adaptation, and selection leads to the transient and reversible phenotypic evolution of cancer cell populations exposed to therapy. Finally, we study control techniques for optimal therapeutic administration.
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

Levy, Doron (U. Maryland) Sat, 21. Jul 18, 16:25
Closing Remarks
  • Thematic program: Mathematical models in Biology and Medicine (2018/2019)
  • Event: Workshop on "Mathematical Models in Cancer" (2018)

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