Sarah R Martha, Samuel H Levy, Emma Federico, Michael R Levitt, Melanie Walker
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Machine Learning Analysis of the Cerebrovascular Thrombi Lipidome in Acute Ischemic Stroke.
Abstract: OBJECTIVE: The aim of this study was to identify a signature lipid profile from cerebral thrombi in acute ischemic stroke (AIS) patients at the time of ictus. METHODS: We performed untargeted lipidomics analysis using liquid chromatography-mass spectrometry on cerebral thrombi taken from a nonprobability, convenience sampling of adult subjects (≥18 years old, n = 5) who underwent thrombectomy for acute cerebrovascular occlusion. The data were classified using random forest, a machine learning algorithm. RESULTS: The top 10 metabolites identified from the random forest analysis were of the glycerophospholipid species and fatty acids. CONCLUSION: Preliminary analysis demonstrates feasibility of identification of lipid metabolomic profiling in cerebral thrombi retrieved from AIS patients. Recent advances in omic methodologies enable lipidomic profiling, which may provide insight into the cellular metabolic pathophysiology caused by AIS. Understanding of lipidomic changes in AIS may illuminate specific metabolite and lipid pathways involved and further the potential to develop personalized preventive strategies.
期刊介绍:
The Journal of Neuroscience Nursing (JNN), the official journal of the American Association of Neuroscience Nurses, contains original articles on advances in neurosurgical and neurological techniques as they affect nursing care, theory and research, as well as commentary on the roles of the neuroscience nurse in the health care team.
The journal provides information to nurses and health care professionals working in diverse areas of neuroscience patient care such as multi-specialty and neuroscience intensive care units, general neuroscience units, combination units (neuro/ortho, neuromuscular/rehabilitation, neuropsychiatry, neurogerontology), rehabilitation units, medical-surgical units, pediatric units, emergency and trauma departments, and surgery. The information is applicable to professionals working in clinical, research, administrative, and educational settings.