Respiratory behaviors provide useful measures of lung health. The current methods have limited capabilities of continuous characterization of respiratory behaviors, often required to assess respiratory disorders and diseases. This work presents a system equipped with a machine learning algorithm, capable of continuously monitoring respiratory behaviors. The system, consisting of two wireless wearable sensors, accurately extracts and classifies the features of respiratory behaviors of subjects within various postures, wirelessly transmitting the temporal respiratory behaviors to a laptop. The sensors were attached on the midway of the xiphoid process and the costal margin, and 1 cm above the umbilicus, respectively. The wireless wearable sensor, consisting of ultrasound emitter, ultrasound receiver, data acquisition and wireless transmitter, has a small footprint and light weight. The sensors correlate the mechanical strain at wearing sites to lung volume by measuring the local circumference changes of the chest and abdominal walls simultaneously. Eleven subjects were recruited to evaluate the wireless wearable sensors. Three different random forest classifiers, including generic, individual, and weighted-adaptive classifiers, were used to process the wireless data of the subjects at four different postures. The results demonstrate the respiratory behaviors are individual- and posture-dependent. The generic classifier merely reaches the accuracy of classifying postures of 21.9 ± 1.7% while individual and weighted-adaptive classifiers mark substantially high, up to 98.9 ± 0.6% and 98.8 ± 0.6%, respectively. The accurate monitoring of respiratory behaviors can track the progression of respiratory disorders and diseases, including chronic respiratory obstructive disease (COPD), asthma, apnea, and others for timely and objective approaches for control.
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http://dx.doi.org/10.1016/j.bios.2020.112799 | DOI Listing |
Alzheimers Dement
December 2024
Imperial College London, London, United Kingdom; UK Dementia Research Institute, Care Research and Technology Centre, London, United Kingdom.
Background: Close to 23% of unplanned hospital admissions for people living with dementia (PLWD) are due to potentially preventable causes such as severe urinary tract infections (UTIs), falls, and respiratory problems. These affect the well-being of PLWD, cause stress to carers and increase pressure on healthcare services.
Method: We use routinely collected in-home sensory data to monitor nocturnal activity and sleep data.
Alzheimers Dement
December 2024
Sri Sivasubramaniya Nadar College Of Engineering, Chennai, Tamil Nadu, India.
Background: Sleep patterns and disruptions may associate with increased dementia risk and contribute to its progression and cognitive decline. Understanding the complexity of the sleep-dementia relationship is crucial for developing interventions that may delay cognitive decline and enhance the well-being of individuals with dementia. This study seeks to explore how the sleeping patterns of patients with dementia impact them and aims to provide insights to help improve the sleep patterns of individuals affected by dementia.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
University of São Paulo Medical School, São Paulo, Brazil.
Introduction: Patients with severe cognitive impairment, with the progression of the disease, show behavioral impairments, loss of functionality and, in many cases, swallowing changes (dysphagia). Dysphagia comes with serious complications that can cause health damage, such as malnutrition, dehydration and serious lung damage secondary to aspirations. Eating process goes beyond nutritional intake, as it has a social, cultural, behavioral, physical and cognitive component.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
Noesis Cognitive Center & Tech Solutions Ltd, Nicosia, Cyprus.
Background: A 69-year-old retired businessman, born in 1954, with 12 years of education, had been participating in cognitive enhancement sessions for the past 5 years. His medical history included two ischemic strokes, left hemiplegia, as well as disturbances in the left visual field. This study aimed to examine the individual's cognitive performance over the course of these 5 years, including the COVID-19 pandemic period.
View Article and Find Full Text PDFCannabis
December 2024
Firestone Institute for Respiratory Health - Division of Respirology, Department of Medicine, McMaster University.
Objective: The potential impact of cigarette and cannabis smoking on COVID-19 infection outcomes is not well understood. We investigated the association between combustible tobacco use and dried cannabis use with COVID-19 infection in a longitudinal cohort of community adults.
Method: The sample comprised 1,343 participants, originally enrolled in 2018, who reported their cigarette and cannabis use in 11 assessments over 44 months, until 2022.
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