Mette Olufsen - US grants
Affiliations: | Mathematics | North Carolina State University, Raleigh, NC |
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The funding information displayed below comes from the NIH Research Portfolio Online Reporting Tools and the NSF Award Database.The grant data on this page is limited to grants awarded in the United States and is thus partial. It can nonetheless be used to understand how funding patterns influence mentorship networks and vice-versa, which has deep implications on how research is done.
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High-probability grants
According to our matching algorithm, Mette Olufsen is the likely recipient of the following grants.Years | Recipients | Code | Title / Keywords | Matching score |
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2002 | Olufsen, Mette S | R03Activity Code Description: To provide research support specifically limited in time and amount for studies in categorical program areas. Small grants provide flexibility for initiating studies which are generally for preliminary short-term projects and are non-renewable. |
Cerebral Blood Flow Model For Normo/Hypertensive Elderly @ North Carolina State University Raleigh The purpose of this investigation is to determine mechanisms of cerebrovascular autoregulation during orthostatic stress and their alterations due to aging and hypertension using a mathematical model based on principles of fluid dynamics. The specific aim is to develop a lumped parameter model that can reproduce a dynamic changes of pulsatile blood flow velocity (BFV) and pressure (BP) in the middle cerebral artery (MCA) during posture change from sitting to standing, and use this model to unravel differences in regulatory mechanisms governing cerebral blood flow (CBF) in two groups of subjects: (i) normotensive elderly subjects and (ii) elderly subjects with untreated hypertension. Extensive data on pulsatile BFV in the MCA and BP have already been gathered in Dr. Lipsitz's laboratory. We will analyze these data using the mathematical model and extract parameters, such as systemic and peripheral cerebrovascular resistance and compliance. Once differences among the groups of normotensive and untreated hypertensive subjects and between males and females have been established, we will (in a full RO1 proposal) investigate side effects related to vasodilator treatment of hypertension and effects related to vasovagal syncope. This study builds upon previous modeling work by Drs. Olufsen, Nadim, and Lipsitz, showing a biphasic cerebrovascular response to acute posture change in healthy young subjects, characterized by initial (baroreflex-mediated) vasoconstriction (and increased pulsatility), followed by autoregulatory cerebral vasodilation that restores blood flow to normal. Based on these results and preliminary observations of MCA blood flow in hypertensive subjects lack initial increase in cerebral pulsatility during posture change due to impairments in initial (baroreflex-mediated) peripheral cerebral vasoconstriction and cardioacceleration, (ii) this defect is exaggerated in untreated hypertensive elders. This work represents a unique collaboration between a clinical investigator in cardiovascular aging, Dr. Lipsitz and mathematicians specialized in modeling circulatory dynamics in branched arterial systems, Drs. Olufsen and Nadim. The proposed study responds to the goal of the RFA and helps Dr. Olufsen continue to build a successful independent research career in the important areas of cardiovascular physiology and aging. |
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2004 — 2009 | Olufsen, Mette Tran, Hien |
N/AActivity Code Description: No activity code was retrieved: click on the grant title for more information |
@ North Carolina State University 0437037 |
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2006 — 2010 | Olufsen, Mette Gremaud, Pierre (co-PI) [⬀] Tran, Hien |
N/AActivity Code Description: No activity code was retrieved: click on the grant title for more information |
Modeling Autoregulation and Blood Flow in the Cerebral Vasculature @ North Carolina State University Cerebral autoregulation is one of the most critical control systems in the body, as a constant tissue perfusion is necessary for proper functioning of the brain. As a response to changes in blood pressure, this control system modulates cardiovascular parameters to maintain a constant cerebral blood flow. Transcranial Doppler ultrasound measurements are routinely used to measure blood flow velocity in the middle cerebral arteries, one of the largest suppliers of blood to the brain. These measurements are then used to estimate blood flow and assess efficacy of cerebral autoregulation. However, these measurements do not currently provide reliable indicators for early diagnosis of potential impairments in the cerebral arteries, as they lack the necessary accuracy. One problem from basing the estimates derived from measurements is the questionable assumption that regulation only influences the diameter of microvasculature, while the diameter of larger vessels, such as the middle cerebral artery, remains constant. It is now clear that the large arteries are compliant suggesting that the diameter of the middle cerebral artery can indeed change in response to variations in pulsatility. In addition, estimates derived from measurements do not account for topological variations in network of cerebral arteries, such as the main distribution system, the circle of Willis. These questions will be studied using a new one-dimensional fluid dynamic model of the circle of Willis. Geometric data for this model will be obtained from magnetic resonance angiographs. To solve these equations, new numerical methods will be used. Viscoelastic equations describing the compliance of the vascular wall will be introduced and the effects of including non-Newtonian flow will be studied. Additionally, the effects of curvature of the vessel topology will be estimated. In particular, the internal carotid artery, curves about 180 degrees from when it enters the scull to it is attached to the circle of Willis. To validate this model, computed results will be compared with measurements of cerebral blood flow and network topology. The model will be used to predict effects of changes in the topology as well as changes in outflow boundary conditions. For example, plan to study the effects on distribution of blood flow in response to changes in boundary conditions and compare this with changes in diameters of the proximal vessels. Furthermore, we plan to study changes between healthy subjects and in elderly DM patients. Mathematical models have long been used to study fluid dynamic properties of arteries, however no studies have used this approach to design patient specific models to predict CBF and cerebral autoregulation. |
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2010 — 2015 | Olufsen, Mette Tran, Hien |
N/AActivity Code Description: No activity code was retrieved: click on the grant title for more information |
Modeling Autonomic Regulation of the Cardiovascular System @ North Carolina State University The autonomic nervous system is complex with many interacting components. This is why analysis of separate elements does not give a satisfactory view of the syncope mechanisms. In this study, the aim is to achieve a better understanding of the control mechanisms and their dynamics via patient specific mathematical modeling where knowledge of the individual elements and their dynamics is integrated. To this end, a dynamic cardiovascular system model coupled with a control model is developed that allows the investigators to predict the autonomic nervous system's ability to adjust the heart and vessel properties to maintain blood pressure and pumping function of the heart at reference levels. Several control models are considered including a detailed cellular model allowing prediction of the afferent baroreflex firing-rate based on analysis of ionic currents, a lumped model predicting efferent responses (changes in heart and vascular properties) as a function of sympathetic and parasympathetic outflow, and a coarse model directly predicting efferent responses. For the latter model, the applicability of receding horizon control theory is investigated. These models are composed of nonlinear dynamical systems whose solution poses considerable computational challenges. Their application to clinical data involves computational and conceptual complications due to the inherent noise in the model and data. To ensure high fidelity of our model, the investigators employ methodologies allowing computation of parameter sensitivity, identifiability, and estimation. Sensitivity and identifiability analyses are used to formulate guidelines for model calibration including the selection of parameters best suited for estimation. In particular, the nonlinear Kalman filter based approach is considered for the parameter estimation problem. This method possesses several desirable properties, among them: it takes explicitly into account noise in the model and data, it is an efficient and simple to implement computational tool, and it can take into account a priori information. |
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2011 — 2016 | Olufsen, Mette Haider, Mansoor (co-PI) [⬀] |
N/AActivity Code Description: No activity code was retrieved: click on the grant title for more information |
Arterial Wall Viscoelasticity and Cardiovascular Networks @ North Carolina State University This project develops mathematical and computational models of the cardiovascular system that couple dynamics of blood flow to vessel wall viscoelasticity at the scale of individual vessel segments and vessel networks. The project design integrates novel mathematical modeling, new numerical techniques for soft tissue viscoelasticity, and extensive data analysis via collaboration with experimentalists at the Republic University, Montevideo, Uruguay. Models of both individual vessel segments and networks of multiple vessels will be developed in coordination with a systematic analysis of experimental data that employs parameter estimation and sensitivity analysis techniques. The highly integrative and interdisciplinary nature of this study will yield outcomes that can lead to new standards for modeling cardiovascular dynamics in vessel networks. In particular, the importance of arterial wall viscoelasticity will be analyzed according to vessel location and type, species (sheep, humans) and experimental conditions (in-vivo, ex-vivo). In addition, effects of disease will be simulated with an emphasis on variables of clinical relevance. The models developed in this project will facilitate accurate prediction of waveforms for blood flow, blood pressure, and vessel cross-sectional area in cardiovascular networks. |
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2013 — 2018 | Gross, Kevin Lloyd, Alun [⬀] Olufsen, Mette Tran, Hien Banks, H. Thomas |
N/AActivity Code Description: No activity code was retrieved: click on the grant title for more information |
Rtg: Parameter Estimation Methodologies For Mechanistic Biological Models @ North Carolina State University This Research Training Group (RTG) grant will train undergraduate students, graduate students and postdoctoral researchers, in statistical and inverse problem methodologies applied to mathematical models for biological systems. The research component of the RTG will revolve around a number of projects that represent different disciplinary applications of modeling and development of parameter estimation methodologies in the biological sciences. Each project will involve at least four RTG participants, including faculty, students and/or postdoctoral researchers. Some projects will focus more on development of new methodologies, while others aim more at utilizing these methodologies in a particular biological setting. Important cross-cutting themes will include parameter estimation and parameter identifiability, model selection, model robustness, uncertainty quantification and model-based experimental design. Students will receive preparation for research activities in this area through a number of supporting courses, the majority of which will be offered at the graduate level, but will be accessible to advanced undergraduates. Interdisciplinarity and team-working skills will be emphasized and developed through careful mentoring and using a number of activities, such as regular research presentations, both within and between the project groups, and journal clubs. Professional development sessions will help prepare participants for current and future careers in interdisciplinary environments both inside and outside of academia. These will be offered at various levels, designed to cater for the needs of the different participants, in some cases focusing on issues unique to scientists working in the biological realm. An annual RTG workshop, including external speakers, will showcase participants' accomplishments and give opportunity to reflect on the successful (and less successful) aspects of the year's research and training activities. In alternate years, the workshop will be expanded to include a week-long lecture, tutorial and laboratory course, providing a condensed presentation of chosen aspects of the RTG curriculum to external participants, primarily advanced undergraduates and early-stage graduate students. |
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2015 — 2017 | Olufsen, Mette Gremaud, Pierre [⬀] |
N/AActivity Code Description: No activity code was retrieved: click on the grant title for more information |
Qubbd: Classification and Clustering of Medical Time Series Data: the Example of Syncope @ North Carolina State University Syncope or, more colloquially, fainting, is a surprisingly common and little understood condition. The long term goal of the proposed line of work is the identification of the root causes of syncope. Fainting can result from the failure of one or more internal control mechanisms. There are currently no clear causal links between these controls and the observed symptoms. In order to understand the involved mechanisms, this project will start by analyzing clinical data to determine the number and characterization of the different types of syncope. A better understanding hinges on the analysis of clinical data, here time series, and the ability to infer from these, patient classification. Various scenarios will be tested through mathematical modeling to confirm both the soundness of the obtained classification and the nature and source of the pathology for each identified class. The ability to identify subjects as members of a class or group also makes it possible to leverage information about the other members of that group for individual diagnosis purposes. The methodology developed here will contribute to the implementation of this approach, sometimes referred to as "bringing cohort studies to the bedside". This approach will also be applicable to the study of other diseases where similar clinical data are being collected such as epilepsy. |
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2016 — 2019 | Haider, Mansoor (co-PI) [⬀] Olufsen, Mette Qureshi, Muhammad Umar |
N/AActivity Code Description: No activity code was retrieved: click on the grant title for more information |
Remodeling of Pulmonary Cardiovascular Networks in the Presence of Hypertension @ North Carolina State University The research team will develop mathematical and computational models for the study of pulmonary hypertension. This is a rare but rapidly progressing cardiovascular disease with a high mortality rate. Pulmonary hypertension involves both elevated blood pressure and changes in vessel wall stiffness, and thickness within the pulmonary circulation. These issues worsen with the severity of the disease. Diagnostic disease categories are associated with different parts of the pulmonary circulation network, yet pinpointing locations where the disease initiates is challenging. Models will be developed in conjunction with the use of experimental data provided by collaborators. This data will be obtained from non-invasive imaging of vascular blood flow and vessel network structure, and from invasive measurements of blood pressure in pulmonary vessels in mice and humans obtained via catheterization. Effects of the heart chambers, large vessels, small vessel networks and their interactions will be captured based on modeling and methodological approaches from fluid mechanics, solid mechanics, network analysis, inverse problems and parameter estimation. The proposed pulmonary cardiovascular model has potential to be incorporated into diagnostic protocols predicting pressure using non-invasive measurements to reduce the number of the invasive follow-up procedures, and to serve as a vital component for identifying signatures associated with disease diagnostic categories and the degree of disease progression. The overall project also provides a variety of opportunities for integrated training of a postdoc, and graduate and undergraduate students, in data-driven biomedical research. |
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