Scottish Health Innovations Ltd
Scottish Health Innovations Ltd
6 Projects, page 1 of 2
assignment_turned_in Project2020 - 2025Partners:Terumo Vascutek, Massachusetts Institute of Technology, SIEMENS PLC, MIT, Polytechnic University of Milan +33 partnersTerumo Vascutek,Massachusetts Institute of Technology,SIEMENS PLC,MIT,Polytechnic University of Milan,Kirkstall Ltd,University of Glasgow,Massachusetts Institute of Technology,NHS Research Scotland,NHS GREATER GLASGOW AND CLYDE,Scottish Health Innovations Ltd,InSilicoTrials Technologies,GSK,BTL,GlaxoSmithKline PLC,Siemens plc (UK),Boston Scientific,Humanitas University,Kirkstall Ltd,3DS,NHS Research Scotland,University of Glasgow,Dassault Systèmes (United Kingdom),InnoScot Health,Vascular Flow Technologies,Biomer Technology Ltd,BSC,Translumina GmbH,NHS Greater Glasgow and Clyde,GlaxoSmithKline (Harlow),Vascular Flow Technologies,Humanitas University,NHS Greater Glasgow and Clyde,Terumo Vascutek,Translumina GmbH,3DS,InSilicoTrials Technologies,Dassault Systemes UK LtdFunder: UK Research and Innovation Project Code: EP/S030875/1Funder Contribution: 1,599,530 GBPSoft tissue related diseases (heart, cancer, eyes) are among the leading causes of death worldwide. Despite extensive biomedical research, a major challenge is a lack of mathematical models that predict soft tissue mechanics across subcellular to whole organ scales during disease progression. Given the tremendous scope, the unmet clinical needs, our limited manpower, and the existence of complementary expertise, we seek to forge NEW collaborations with two world-leading research centres: MIT and POLIMI, to embark on two challenging themes that will significantly stretch the initial SofTMech remit: A) Test-based microscale modelling and upscaling, and B) Beyond static hyperelastic material to include viscoelasticity, nonlinear poroelasticity, tissue damage and healing. Our research will lead to a better understanding of how our bodies work, and this knowledge will be applied to help medical researchers and clinicians in developing new therapies to minimise the damage caused by disease progression and implants, and to develop more effective treatments. The added value will be a major leap forward in the UK research. It will enable us to model soft tissue damage and healing in many clinical applications, to study the interaction between tissue and implants, and to ensure model reproducibility through in vitro validations. The two underlying themes will provide the key feedback between tissue and cells and the response of cells to dynamic local environments. For example, advanced continuum mechanics approaches will shed new light on the influence of cell adhesion, angiogenesis and stromal cell-tumour interactions in cancer growth and spread, and on wound healing implant insertion that can be tested with in vitro and in vivo systems. Our theoretical framework will provide insight for the design of new experiments. Our proposal is unique, timely and cost-effectively because advances in micro- and nanotechnology from MIT and POLIMI now enable measurements of sub-cellular, single cell, and cell-ECM dynamics, so that new theories of soft tissue mechanics at the nano- and micro-scales can be tested using in vitro prototypes purposely built for SofTMech. Bridging the gaps between models at different scales is beyond the ability of any single centre. SofTMech-MP will cluster the critical mass to develop novel multiscale models that can be experimentally tested by biological experts within the three world-leading Centres. SofTMech-MP will endeavour to unlock the chain of events leading from mechanical factors at subcellular nanoscales to cell and tissue level biological responses in healthy and pathological states by building a new mathematics capacity. Our novel multiscale modelling will lead to new mathematics including new numerical methods, that will be informed and validated by the design and implementation of experiments at the MIT and POLIMI centres. This will be of enormous benefit in attacking problems involving large deformation poroelasticity, nonlinear viscoelasticity, tissue dissection, stent-related tissue damage, and wound healing development. We will construct and analyse data-based models of cellular and sub-cellular mechanics and other responses to dynamic local anisotropic environments, test hypotheses in mechanistic models, and scale these up to tissue-level models (evolutionary equations) for growth and remodelling that will take into account the dynamic, inhomogeneous, and anisotropic movement of the tissue. Our models will be simulated in the various projects by making use of the scientific computing methodologies, including the new computer-intensive methods for learning the parameters of the differential equations directly from noisy measurements of the system, and new methods for assessing alternative structures of the differential equations, corresponding to alternative hypotheses about the underlying biological mechanisms.
more_vert assignment_turned_in Project2019 - 2027Partners:Cell Guidance Systems Ltd, Royal Orthopaedic Hospital NHS Fdn Trust, Atelerix Ltd, Dr JD Sinden, Nissan Chemical Corporation +94 partnersCell Guidance Systems Ltd,Royal Orthopaedic Hospital NHS Fdn Trust,Atelerix Ltd,Dr JD Sinden,Nissan Chemical Corporation,InnoScot Health,Canniesburn Plastic Surgery Unit,BASF AG (International),The Scar Free Foundation,Cytonome/ST LLC,N8 Research Partnership,NHS Research Scotland,Medicines & Healthcare pdts Reg Acy MHRA,Scottish National Blood Transfusion Serv,Sygnature Discovery Limited,Animal Free Research UK,Astrazeneca,Tianjin M Innovative Traditional Chinese,Sygnature Discovery Limited,QUANTUMDX Group Limited,InSphero AG,Sphere Fluidics Limited,Charles River Laboratories,Cell Therapy Catapult (replace),CPI,InSphero AG,University of Glasgow,Find A Better Way,Terumo Vascutek,Golden Jubilee National Hospital,Terumo Vascutek,Entrepreneur Business School Ltd,Cytochroma Limited,Glasgow Royal Infirmary,Celentyx,OxSyBio Ltd,Reneuron Ltd,UCG,Nissan Chemical Corporation,Canniesburn Plastic Surgery Unit,NC3Rs,Cell Guidance Systems Ltd,NHS Research Scotland,Queen Elizabeth University Hospital,ASTRAZENECA UK LIMITED,Sphere Fluidics,Cytochroma Limited,Animal Free Research UK,BASF,Queen Elizabeth University Hospital,ADUMAtech Ltd,LGC,Georgia Institute of Technology,Cyprotex Discovery Ltd,NC3Rs,NHS Golden Jubilee,The Electrospinning Company,Find A Better Way,QMDx,University of Glasgow,Reprocell Europe Ltd,Biogelx Ltd,N8 Research Partnership,Celentyx,Cytonome/ST LLC,Reneuron Ltd,Cyprotex Discovery Ltd,SpheriTech Ltd,Scottish Health Innovations Ltd,ADUMAtech Ltd,MHRA Medicines & Health Care Products Re,GT,Entrepreneur Business School Ltd,LGC Ltd,Biolamina,SpheriTech Ltd,BASF,GRI,Atelerix Ltd,The Scar Free Foundation,Charles River Laboratories,NHSGGC,Scottish National Blood Transfusion Serv,Centre for Process Innovation CPI (UK),TECL,Strathroslin,NIHR Surgical Recon and Microbio res cen,Strathroslin,OxSyBio Ltd,Catapult Cell Therapy,Royal Centre for Defence Medicine,Imperial College London,Dr JD Sinden,CPI Ltd,AstraZeneca plc,Reprocell Europe Ltd,Biolamina,Royal Orthopaedic Hospital NHS Fdn Trust,Biogelx LtdFunder: UK Research and Innovation Project Code: EP/S02347X/1Funder Contribution: 7,289,680 GBPThe lifETIME CDT will focus on the development of non-animal technologies (NATs) for use in drug development, toxicology and regenerative medicine. The industrial life sciences sector accounts for 22% of all business R&D spend and generates £64B turnover within the UK with growth expected at 10% pa over the next decade. Analysis from multiple sources [1,2] have highlighted the limitations imposed on the sector by skills shortages, particularly in the engineering and physical sciences area. Our success in attracting pay-in partners to invest in training of the skills to deliver next-generation drug development, toxicology and regenerative medicine (advanced therapeutic medicine product, ATMP) solutions in the form of NATs demonstrates UK need in this growth area. The CDT is timely as it is not just the science that needs to be developed, but the whole NAT ecosystem - science, manufacture, regulation, policy and communication. Thus, the CDT model of producing a connected community of skilled field leaders is required to facilitate UK economic growth in the sector. Our stakeholder partners and industry club have agreed to help us deliver the training needed to achieve our goals. Their willingness, again, demonstrates the need for our graduates in the sector. This CDT's training will address all aspects of priority area 7 - 'Engineering for the Bioeconomy'. Specifically, we will: (1) Deliver training that is developed in collaboration with and is relevant to industry. - We align to the needs of the sector by working with our industrial partners from the biomaterials, cell manufacture, contract research organisation and Pharma sectors. (2) Facilitate multidisciplinary engineering and physical sciences training to enable students to exploit the emerging opportunities. - We build in multidisciplinarity through our supervisor pool who have backgrounds ranging from bioengineering, cell engineering, on-chip technology, physics, electronic engineering, -omic technologies, life sciences, clinical sciences, regenerative medicine and manufacturing; the cohort community will share this multidisciplinarity. Each student will have a physical science, a biomedical science and a stakeholder supervisor, again reinforcing multidisciplinarity. (3) Address key challenges associated with medicines manufacturing. - We will address medicines manufacturing challenges through stakeholder involvement from Pharma and CROs active in drug screening including Astra Zeneca, Charles River Laboratories, Cyprotex, LGC, Nissan Chemical, Reprocell, Sygnature Discovery and Tianjin. (4) Embed creative approaches to product scale-up and process development. - We will embed these approaches through close working with partners including the Centre for Process Innovation, the Cell and Gene Therapy Catapult and industrial partners delivering NATs to the marketplace e.g. Cytochroma, InSphero and OxSyBio. (5) Ensure students develop an understanding of responsible research and innovation (RRI), data issues, health economics, regulatory issues, and user-engagement strategies. - To ensure students develop an understanding of RRI, data issues, economics, regulatory issues and user-engagement strategies we have developed our professional skills training with the Entrepreneur Business School to deliver economics and entrepreneurship, use of TERRAIN for RRI, links to NC3Rs, SNBTS and MHRA to help with regulation training and involvement of the stakeholder partners as a whole to help with user-engagement. The statistics produced by Pharma, UKRI and industry, along with our stakeholder willingness to engage with the CDT provides ample proof of need in the sector for highly skilled graduates. Our training has been tailored to deliver these graduates and build an inclusive, cohesive community with well-developed science, professional and RRI skills. [1] https://goo.gl/qNMTTD [2] https://goo.gl/J9u9eQ
more_vert assignment_turned_in Project2021 - 2026Partners:Golden Jubilee National Hospital, XJTLU, NHS Research Scotland, University of Glasgow, North Carolina State University +30 partnersGolden Jubilee National Hospital,XJTLU,NHS Research Scotland,University of Glasgow,North Carolina State University,3DS,NHS Golden Jubilee,GlaxoSmithKline PLC,NHS Greater Glasgow and Clyde,Royal Papworth Hospital NHS Fdn Trust,University of Glasgow,Xi'an Jiaotong University,InfraredX,BSC,South Warwickshire Hospitals NHS Trust,Dassault Systèmes (United Kingdom),Xi'an Jiatong University,NHS Research Scotland,Boston Scientific,GlaxoSmithKline (Harlow),NCSU,Royal Papworth Hospital NHS Fdn Trust,3DS,NHS Greater Glasgow and Clyde,GSK,Insigneo Institute,Translumina GmbH,InnoScot Health,Scottish Health Innovations Ltd,NHS GREATER GLASGOW AND CLYDE,South Warwickshire Hospitals NHS Trust,Insigneo Institute,Dassault Systemes UK Ltd,Translumina GmbH,InfraredXFunder: UK Research and Innovation Project Code: EP/T017899/1Funder Contribution: 1,225,130 GBPThere have recently been impressive developments in the mathematical modelling of physiological processes. As part of a previously EPSRC-funded research centre (SofTMech), we have developed mathematical models for the mechanical and electrophysiological processes of the heart, and the flow in the blood vessel network. This allows us to gain deeper insight into the state of a variety of serious cardiovascular diseases, like hypoxia (a condition in which a region of the body is deprived of adequate oxygen supply), angina (reduced blood flow to the heart), pulmonary hypertension (high blood pressure in the lungs) and myocardial infarction (heart attack). A more recent extension of this work to modelling blood flow in the eye also provides novel indicators to assess the degree of traumatic brain injury. What all these models have in common is a complex mathematical description of the physiological processes in terms of differential equations that depend on various material parameters, related e.g. to the stiffness of the blood vessels or the contractility of the muscle fibres. While knowledge of these parameters would be of substantial benefit to the clinical practitioner to help them improve their diagnosis of the disease status, most of the parameters cannot be measured in vivo, i.e. in a living patient. For instance, the determination of the stiffness and contractility of the cardiac tissue would require the extraction of the heart from a patient and its inspection in a laboratory, which can only be done in a post mortem autopsy. It is here that our mathematical models reveal their diagnostic potential. Our equations of the mechanical processes in the heart predict the movement of the heart muscle and how its deformations change in time. These movements can also be observed with magnetic resonance image (MRI) scans, and they depend on the physiological parameters. We can thus compare the predictions from our model with the patterns found in the MRI scans, and search for the parameters that provide the best agreement. In a previous proof-of-concept study we have demonstrated that the physiological parameters identified in this way lead to an improved understanding of the cardiac disease status, which is important for deciding on appropriate treatment options. Unfortunately, the calibration procedure described above faces enormous computational costs. We typically have a large number of physiological parameters, and an exhaustive search in a high-dimensional parameter space is a challenging problem. In addition, every time we change the parameters, our mathematical equations need to be solved again. This requires the application of complex numerical procedures, which take several minutes to converge. The consequence is that even with a high-performance computer, it takes several weeks to determine the physiological parameters in the way described above. It therefore appears that despite their enormous potential, state of the art mathematical modelling techniques can never be practically applied in the clinical practice, where diagnosis and decisions on alternative treatment option have to be made in real time. Addressing this difficulty is the objective of our proposed research. The idea is to approximate the computationally expensive mathematical model by a computationally cheap surrogate model called an emulator. To create this emulator, we cover the parameter space with an appropriate design, solve the mathematical equations in parallel numerically for the chosen parameters, and then fit a non-linear statistical regression model to this training set. After this initial computational investment, the emulator thus created gives predictions for new parameter values practically instantaneously, allowing us to carry out the calibration procedure described above in real time. This will open the doors to harnessing the diagnostic potential of state-of-the art mathematical models for improved decision support in the clinic.
more_vert assignment_turned_in Project2019 - 2025Partners:GlaxoSmithKline PLC, Ecole Polytechnique, Terumo Vascutek, NHS Golden Jubilee, University of Glasgow +19 partnersGlaxoSmithKline PLC,Ecole Polytechnique,Terumo Vascutek,NHS Golden Jubilee,University of Glasgow,University of Glasgow,Scottish Health Innovations Ltd,NHS Scotland,NHS,InnoScot Health,Ecole Polytechnique,Terumo Vascutek,Golden Jubilee National Hospital,Dassault Systemes Simulia Corp,Dassault Systemes Simulia Corp,Royal Hospital for Sick Children (Glas),KCL,École Polytechnique,Royal Hospital for Sick Children (Glas),GSK,Medical University of Graz,Medical University of Graz,NHS Health Scotland,GlaxoSmithKline (Harlow)Funder: UK Research and Innovation Project Code: EP/S020950/1Funder Contribution: 1,304,760 GBPHeart disease is the leading cause of disability and death in the UK and worldwide, resulting in enormous health care costs. Risk prediction on an individual patient basis is imperfect. Advanced medical development has already saved many lives, particularly in systolic heart failure. However, there is currently no treatment option for diastolic heart failure (with preserved ejection fraction) due to its complexity of multiple mechanisms and co-modality. Structural heart diseases, such as myocardial infarction (MI- commonly known as heart attack) and mitral regurgitation (MR, a leakage of blood through the mitral valve to left atrium in systole), where biomechanical factors are crucial, are often precursors to heart failure. MI can eventually lead to dilated heart failure despite immediate treatments post-MI. MR can induce pulmonary hypertension and oedema and subsequently, right heart overload and heart failure. The grand challenge is for these situations the heart simply cannot be modelled as an isolated left ventricle (as in most of the current studies); flow-structure interaction (FSI), heart-valve interaction, multiscale soft tissue mechanics, and tissue growth and remodelling (G&R) all play important roles in the progression of the structural diseases. This project is set up to meet this challenge by delivering a multiscale computational framework to include Whole-Heart FSI with G&R. Making use of the novel mathematical tools (constitutive laws, G&R, upscaling and statistical inference) developed by SofTMech, I will build a realistic four-chamber heart model that include heart-valve, chamber-chamber, heart-blood, and heart-circulation interactions, which will be powerful enough to model MI, MR and their pathological consequences. This work will be in close collaboration with my clinical, industrial and academic collaborators. The model will quantify which factors lead to adverse G&R and what variations are to be expected as the disease progresses. We will also identify significant biomechanical markers (e.g. constitutive parameters, energy indices, stress/strain evolution). The predictive values of these biomechanical parameters will be assessed against other established predictors of adverse remodellings, such as duration of ischaemia, final coronary flow grade after a primary percutaneous coronary intervention, and microvascular obstruction revealed by MRI. Thus, this project will generate new testable hypotheses and will be a significant step up towards more consistent decision-support for clinicians, since increasingly the pace and complexity of medical advances outstrip the ability of individual clinicians to cope with. Due to the statistical emulation and uncertainty quantification built into the project, the model predictions will be fast and quantified with error bounds on the outcome of alternative treatments. Consequently, we will also address the critical aspect of convincing clinicians that information obtained from simulations will be correct and relevant to their daily practice. The proposed research is right within the Healthcare Technologies "Optimising Treatment" and "Developing Future Therapies" priority areas, as well as targeting "New Connections from Mathematical Sciences", and "Statistics and Applied Probability" of Mathematical Sciences.
more_vert assignment_turned_in Project2022 - 2025Partners:Skills for Care, CENSIS, PAL Robotics, Bristol Health Partners, Digital Health and Care Institute +30 partnersSkills for Care,CENSIS,PAL Robotics,Bristol Health Partners,Digital Health and Care Institute,Barnsley Hospital NHS Foundation Trust,Skills for Care,Medical Device Manufacturing Centre,Blackwood Homes and Care,Johnnie Johnson Housing and Astraline,Cyberselves Universal Limited,NHS Lothian,Barnsley Hospital NHS Foundation Trust,Sheffield Teaching Hospitals NHS Trust,The Blackwood Foundation,University of Nottingham,Scottish Health Innovations Ltd,InnoScot Health,Bristol Health Partners,Medical Device Manufacturing Centre,Johnnie Johnson Housing and Astraline,Blackwood Homes and Care,Digital Health and Care Institute,North Bristol NHS Trust,Consequential Robotics (to be replaced),NHS Lothian,Sheffield Teaching Hospitals NHS Trust,Consequential Robotics Ltd,National Rehabilitation Center,NTU,National Rehabilitation Center,UBC,North Bristol NHS Trust,CENSIS,Cyberselves Universal LimitedFunder: UK Research and Innovation Project Code: EP/W000741/1Funder Contribution: 708,125 GBPThe EMERGENCE network aims to create a sustainable eco-system of researchers, businesses, end-users, health and social care commissioners and practitioners, policy makers and regulatory bodies in order to build knowledge and capability needed to enable healthcare robots to support people living with frailty in the community. By adopting a person-centred approach to developing healthcare robotics technology we seek to improve the quality of life and independence of older people at risk of, and living with frailty, whilst helping to contain spiralling care costs. Individuals with frailty have different needs but, commonly, assistance is needed in activities related to mobility, self-care and domestic life, social activities and relationships. Healthcare can be enhanced by supporting people to better self-manage the conditions resulting from frailty, and improving information and data flow between individuals and healthcare practitioners, enabling more timely interventions. Providing cost-effective and high-quality support for an aging population is a high priority issue for the government. The lack of adequate social care provisions in the community and funding cuts have added to the pressures on an already overstretched healthcare system. The gaps in ability to deliver the requisite quality of care, in the face of a shrinking care workforce, have been particularly exposed during the ongoing Covid-19 crisis. Healthcare robots are increasingly recognised as solutions in helping people improve independent living, by having the ability to offer physical assistance as well as supporting complex self-management and healthcare tasks when integrated with patient data. The EMERGENCE network will foster and facilitate innovative research and development of healthcare robotic solutions so that they can be realised as pragmatic and sustainable solutions providing personalised, affordable and inclusive health and social care in the community. We will work with our clinical partners and user groups to translate the current health and social care challenges in assessing, reducing and managing frailty into a set of clear and actionable requirements that will inspire novel research and enable engineers to develop appropriate healthcare robotics solutions. We will also establish best practice guidelines for informing the design and development of healthcare robotics solutions, addressing assessment, reduction and self-management of frailty and end-user interactions for people with age-related sensory, physical and cognitive impairments. This will help the UK develop cross-cutting research capabilities in ethical design, evaluation and production of healthcare robots. To enable the design and evaluation of healthcare robotic solutions we will utilize the consortium's living lab test beds. These include the Assisted Living Studio in the Bristol Robotics Lab covering the South West, the National Robotarium in Edinburgh together with the Health Innovation South East Scotland's Midlothian test bed, the Advanced Wellbeing Research Centre and HomeLab in Sheffield, and the Robot House at the University of Hertfordshire covering the South East. Up to 10 funded feasibility studies will drive co-designed, high quality research that will lead to technologies capable of transforming community health and care. The network will also establish safety and regulatory requirements to ensure that healthcare robotic solutions can be easily deployed and integrated as part of community-based frailty care packages. In addition, we will identify gaps in the skills set of carers and therapists that might prevent them from using robotic solutions effectively and inform the development of training content to address these gaps. This will foster the regulatory, political and commercial environments and the workforce skills needed to make the UK a global leader in the use of robotics to support the government's ageing society grand challenge.
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