142 research outputs found
Advances in neuroproteomics for neurotrauma: unraveling insights for personalized medicine and future prospects
Neuroproteomics, an emerging field at the intersection of neuroscience and proteomics, has garnered significant attention in the context of neurotrauma research. Neuroproteomics involves the quantitative and qualitative analysis of nervous system components, essential for understanding the dynamic events involved in the vast areas of neuroscience, including, but not limited to, neuropsychiatric disorders, neurodegenerative disorders, mental illness, traumatic brain injury, chronic traumatic encephalopathy, and other neurodegenerative diseases. With advancements in mass spectrometry coupled with bioinformatics and systems biology, neuroproteomics has led to the development of innovative techniques such as microproteomics, single-cell proteomics, and imaging mass spectrometry, which have significantly impacted neuronal biomarker research. By analyzing the complex protein interactions and alterations that occur in the injured brain, neuroproteomics provides valuable insights into the pathophysiological mechanisms underlying neurotrauma. This review explores how such insights can be harnessed to advance personalized medicine (PM) approaches, tailoring treatments based on individual patient profiles. Additionally, we highlight the potential future prospects of neuroproteomics, such as identifying novel biomarkers and developing targeted therapies by employing artificial intelligence (AI) and machine learning (ML). By shedding light on neurotrauma’s current state and future directions, this review aims to stimulate further research and collaboration in this promising and transformative field
Optical imaging and spectroscopy for the study of the human brain: status report.
This report is the second part of a comprehensive two-part series aimed at reviewing an extensive and diverse toolkit of novel methods to explore brain health and function. While the first report focused on neurophotonic tools mostly applicable to animal studies, here, we highlight optical spectroscopy and imaging methods relevant to noninvasive human brain studies. We outline current state-of-the-art technologies and software advances, explore the most recent impact of these technologies on neuroscience and clinical applications, identify the areas where innovation is needed, and provide an outlook for the future directions
The Application of Computer Techniques to ECG Interpretation
This book presents some of the latest available information on automated ECG analysis written by many of the leading researchers in the field. It contains a historical introduction, an outline of the latest international standards for signal processing and communications and then an exciting variety of studies on electrophysiological modelling, ECG Imaging, artificial intelligence applied to resting and ambulatory ECGs, body surface mapping, big data in ECG based prediction, enhanced reliability of patient monitoring, and atrial abnormalities on the ECG. It provides an extremely valuable contribution to the field
Advanced analyses of physiological signals and their role in Neonatal Intensive Care
Preterm infants admitted to the neonatal intensive care unit (NICU) face an array of life-threatening diseases requiring procedures such as resuscitation and invasive monitoring, and other risks related to exposure to the hospital environment, all of which may have lifelong implications. This thesis examined a range of applications for advanced signal analyses in the NICU, from identifying of physiological patterns associated with neonatal outcomes, to evaluating the impact of certain treatments on physiological variability. Firstly, the thesis examined the potential to identify infants at risk of developing intraventricular haemorrhage, often interrelated with factors leading to preterm birth, mechanical ventilation, hypoxia and prolonged apnoeas. This thesis then characterised the cardiovascular impact of caffeine therapy which is often administered to prevent and treat apnoea of prematurity, finding greater pulse pressure variability and enhanced responsiveness of the autonomic nervous system. Cerebral autoregulation maintains cerebral blood flow despite fluctuations in arterial blood pressure and is an important consideration for preterm infants who are especially vulnerable to brain injury. Using various time and frequency domain correlation techniques, the thesis found acute changes in cerebral autoregulation of preterm infants following caffeine therapy. Nutrition in early life may also affect neurodevelopment and morbidity in later life. This thesis developed models for identifying malnutrition risk using anthropometry and near-infrared interactance features. This thesis has presented a range of ways in which advanced analyses including time series analysis, feature selection and model development can be applied to neonatal intensive care. There is a clear role for such analyses in early detection of clinical outcomes, characterising the effects of relevant treatments or pathologies and identifying infants at risk of later morbidity
Optical imaging and spectroscopy for the study of the human brain: status report
This report is the second part of a comprehensive two-part series aimed at reviewing an extensive and diverse toolkit of novel methods to explore brain health and function. While the first report focused on neurophotonic tools mostly applicable to animal studies, here, we highlight optical spectroscopy and imaging methods relevant to noninvasive human brain studies. We outline current state-of-the-art technologies and software advances, explore the most recent impact of these technologies on neuroscience and clinical applications, identify the areas where innovation is needed, and provide an outlook for the future directions
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Experience-Dependent Development of Amygdala-Prefrontal Cortex Circuitry and Function
Dramatic changes occur across childhood and adolescence in the activity and connectivity of an amygdala-medial prefrontal cortex circuit critical for emotional learning and regulation. However, little is currently known about how neuroplasticity within the circuit changes during development in the human. Experiences that occur during developmental sensitive periods of increased neuroplasticity have the capacity to sculpt neural function with lifelong consequences for cognition and behavior, though. This dissertation will therefore investigate when and how experience may shape amygdala-medial prefrontal cortex functional circuitry (Aim 1) and what the implications of experience-dependent circuitry development are for emotion regulation behaviors (Aim 2) across childhood, adolescence, and adulthood in three studies. Study 1 (previously published as Gabard-Durnam, Gee et al., 2016) posits and tests the long-term phasic molding hypothesis that tonic amygdala-prefrontal cortex functional connectivity, the functional architecture of the brain, is shaped during development by recurring stimulus-elicited connectivity in the circuitry using prospective examination of these connectivities’ development across childhood and adolescence. Study 1 also tests whether the ability of amygdala-prefrontal cortex stimulus-elicited connectivity to shape the amygdala-prefrontal cortex resting-state functional architecture changes across development, reflecting changing plasticity of the circuitry. Study 2 examines how the timing and duration of an early adverse experience, parental deprivation, interacts with genetically-driven differences in neuroplasticity levels indexed by the Brain-Derived Neurotrophic Factor val66met polymorphism to influence the developmental trajectory of amygdala-prefrontal cortex functional architecture using a population of previously-institutionalized children and adolescents and a never-institutionalized comparison sample. Study 2 further examines how the experience- and plasticity-related changes to the functional architecture influence both concurrent and future internalizing symptomatology across childhood and adolescence. Study 3 builds on the first two developmental studies by explicitly testing whether childhood is a sensitive period for medial prefrontal cortex-mediated regulatory signal learning through a retrospective design in adults. Study 3 additionally assesses the effects of developmental experience on adult emotion regulation behavior and physiology. My findings at the levels of brain circuitry, behavior, physiology, and genetics together delineate a period of increased sensitivity to the environment within prefrontal cortex-amygdala functional circuitry from infancy through childhood, modifiable by genetically-conferred variation in plasticity and the nature of the early environment. Moreover, experiences occurring during the sensitive period have consequences for future emotion regulation behavior both during development and lasting into young adulthood. Together, these findings demonstrate how experience-dependent development has enduring effects on amygdala-prefrontal cortex circuitry function and affective behavior
Optical imaging and spectroscopy for the study of the human brain: status report
This report is the second part of a comprehensive two-part series aimed at reviewing an extensive and diverse toolkit of novel methods to explore brain health and function. While the first report focused on neurophotonic tools mostly applicable to animal studies, here, we highlight optical spectroscopy and imaging methods relevant to noninvasive human brain studies. We outline current state-of-the-art technologies and software advances, explore the most recent impact of these technologies on neuroscience and clinical applications, identify the areas where innovation is needed, and provide an outlook for the future directions.
Keywords: DCS; NIRS; diffuse optics; functional neuroscience; optical imaging; optical spectroscop
Translating computational modelling tools for clinical practice in congenital heart disease
Increasingly large numbers of medical centres worldwide are equipped with the means to acquire 3D images of patients by utilising magnetic resonance (MR) or computed tomography (CT) scanners. The interpretation of patient 3D image data has significant implications on clinical decision-making and treatment planning. In their raw form, MR and CT images have become critical in routine practice. However, in congenital heart disease (CHD), lesions are often anatomically and physiologically complex. In many cases, 3D imaging alone can fail to provide conclusive information for the clinical team. In the past 20-30 years, several image-derived modelling applications have shown major advancements. Tools such as computational fluid dynamics (CFD) and virtual reality (VR) have successfully demonstrated valuable uses in the management of CHD. However, due to current software limitations, these applications have remained largely isolated to research settings, and have yet to become part of clinical practice. The overall aim of this project was to explore new routes for making conventional computational modelling software more accessible for CHD clinics. The first objective was to create an automatic and fast pipeline for performing vascular CFD simulations. By leveraging machine learning, a solution was built using synthetically generated aortic anatomies, and was seen to be able to predict 3D aortic pressure and velocity flow fields with comparable accuracy to conventional CFD. The second objective was to design a virtual reality (VR) application tailored for supporting the surgical planning and teaching of CHD. The solution was a Unity-based application which included numerous specialised tools, such as mesh-editing features and online networking for group learning. Overall, the outcomes of this ongoing project showed strong indications that the integration of VR and CFD into clinical settings is possible, and has potential for extending 3D imaging and supporting the diagnosis, management and teaching of CHD
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