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Kyle T.S. Pattinson

Researcher at University of Oxford

Publications -  122
Citations -  4327

Kyle T.S. Pattinson is an academic researcher from University of Oxford. The author has contributed to research in topics: Cerebral blood flow & Remifentanil. The author has an hindex of 28, co-authored 119 publications receiving 3414 citations. Previous affiliations of Kyle T.S. Pattinson include Oxford Research Group & Hospital of the University of Pennsylvania.

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Opioids and the control of respiration

TL;DR: The mechanisms of opioid-induced respiratory depression, from the cellular to the systems level, are reviewed to highlight gaps in current understanding, and to suggest avenues for further research.
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Medium-term effects of SARS-CoV-2 infection on multiple vital organs, exercise capacity, cognition, quality of life and mental health, post-hospital discharge

TL;DR: A significant proportion of COVID-19 patients discharged from hospital experience ongoing symptoms of breathlessness, fatigue, anxiety, depression and exercise limitation at 2-3 months from disease-onset.
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The role of the nitric oxide pathway in brain injury and its treatment--from bench to bedside.

TL;DR: Current evidence regarding the role of NO in the regulation of cerebral blood flow at rest, under physiological conditions, and after brain injury is summarized, focusing on subarachnoid haemorrhage, traumatic brain injury, and ischaemic stroke and following cardiac arrest.
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Delayed cerebral ischaemia after subarachnoid haemorrhage: looking beyond vasospasm

TL;DR: Recent advances in research into delayed cerebral ischaemia are appraised, relate them to current clinical practice, and suggest potential novel avenues for future research.
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Physiological noise in brainstem FMRI.

TL;DR: This Methods Article will provide a practical introduction to the techniques used to correct for the presence of physiological noise in time series fMRI data, and advice on modeling noise sources is given.