3,209 research outputs found

    Validation Study of a Passive Image-Assisted Dietary Assessment Method with Automated Image Analysis Process

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    Background: Image-assisted dietary assessment is being developed to enhance accuracy of dietary assessment. This study validated a passive image-assisted dietary assessment method, with an emphasis on examining if food shape and complexity influenced results.Methods: A 2x2x2x2x3 mixed factorial design was used, with a between-subject factor of meal orders, and within-subject factors of food shapes, food complexities, meals, and methods of measurement, to validate the passive image-assisted dietary assessment method. Thirty men and women (22.7 ± 1.6 kg/m2, 25.1 ± 6.6 years, 46.7% White) wore the Sony Smarteyeglass that automatically took images while two meals containing four foods representing four food categories were consumed. Images from the first 5 minutes of each meal were coded and then compared to DietCam for food identification. The comparison produced four outcomes: DietCam identifying food correctly in image (True Positive), DietCam incorrectly identifying food in image (False Positive), DietCam not identifying food in image (False Negative), or DietCam correctly identifying that the food is not in the image (True Negative). Participants’ feedback about the Sony Smarteyeglass was obtained by a survey.Results: A total of 36,412 images were coded by raters and analyzed by DietCam, with raters coding that 92.4% of images contained foods and DietCam coding that 76.3% of images contained foods. Mixed factorial analysis of covariance revealed a significant main effect of percent agreement between DietCam and rater’s coded images [(F (3,48) = 8.5, p \u3c 0.0001]. The overall mean of True Positive was 22.2 ± 3.6 %, False Positive was 1.2 ± 0.4%, False Negative was 19.6 ± 5.0%, and True Negative was 56.8 ± 7.2%. True Negative was significantly (p \u3c 0.0001) different from all other percent agreement categories. No main effects of food shape or complexity were found. Participants reported that they were not willing to wear the Sony Smarteyeglass under different types of dining experiences.Conclusion: DietCam is most accurate in identifying images that do not contain food. The platform from which the images are collected needs to be modified to enhance consumer acceptance

    Advancement in Dietary Assessment and Self-Monitoring Using Technology

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    Although methods to assess or self-monitor intake may be considered similar, the intended function of each is quite distinct. For the assessment of dietary intake, methods aim to measure food and nutrient intake and/or to derive dietary patterns for determining diet-disease relationships, population surveillance or the effectiveness of interventions. In comparison, dietary self-monitoring primarily aims to create awareness of and reinforce individual eating behaviours, in addition to tracking foods consumed. Advancements in the capabilities of technologies, such as smartphones and wearable devices, have enhanced the collection, analysis and interpretation of dietary intake data in both contexts. This Special Issue invites submissions on the use of novel technology-based approaches for the assessment of food and/or nutrient intake and for self-monitoring eating behaviours. Submissions may document any part of the development and evaluation of the technology-based approaches. Examples may include: web adaption of existing dietary assessment or self-monitoring tools (e.g., food frequency questionnaires, screeners) image-based or image-assisted methods mobile/smartphone applications for capturing intake for assessment or self-monitoring wearable cameras to record dietary intake or eating behaviours body sensors to measure eating behaviours and/or dietary intake use of technology-based methods to complement aspects of traditional dietary assessment or self-monitoring, such as portion size estimation

    Home detection of freezing of gait using Support Vector Machines through a single waist-worn triaxial accelerometer

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    Among Parkinson’s disease (PD) symptoms, freezing of gait (FoG) is one of the most debilitating. To assess FoG, current clinical practice mostly employs repeated evaluations over weeks and months based on questionnaires, which may not accurately map the severity of this symptom. The use of a non-invasive system to monitor the activities of daily living (ADL) and the PD symptoms experienced by patients throughout the day could provide a more accurate and objective evaluation of FoG in order to better understand the evolution of the disease and allow for a more informed decision-making process in making adjustments to the patient’s treatment plan. This paper presents a new algorithm to detect FoG with a machine learning approach based on Support Vector Machines (SVM) and a single tri-axial accelerometer worn at the waist. The method is evaluated through the acceleration signals in an outpatient setting gathered from 21 PD patients at their home and evaluated under two different conditions: first, a generic model is tested by using a leave-one-out approach and, second, a personalised model that also uses part of the dataset from each patient. Results show a significant improvement in the accuracy of the personalised model compared to the generic model, showing enhancement in the specificity and sensitivity geometric mean (GM) of 7.2%. Furthermore, the SVM approach adopted has been compared to the most comprehensive FoG detection method currently in use (referred to as MBFA in this paper). Results of our novel generic method provide an enhancement of 11.2% in the GM compared to the MBFA generic model and, in the case of the personalised model, a 10% of improvement with respect to the MBFA personalised model. Thus, our results show that a machine learning approach can be used to monitor FoG during the daily life of PD patients and, furthermore, personalised models for FoG detection can be used to improve monitoring accuracy.Peer ReviewedPostprint (published version

    A Sensing Platform to Monitor Sleep Efficiency

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    Sleep plays a fundamental role in the human life. Sleep research is mainly focused on the understanding of the sleep patterns, stages and duration. An accurate sleep monitoring can detect early signs of sleep deprivation and insomnia consequentially implementing mechanisms for preventing and overcoming these problems. Recently, sleep monitoring has been achieved using wearable technologies, able to analyse also the body movements, but old people can encounter some difficulties in using and maintaining these devices. In this paper, we propose an unobtrusive sensing platform able to analyze body movements, infer sleep duration and awakenings occurred along the night, and evaluating the sleep efficiency index. To prove the feasibility of the suggested method we did a pilot trial in which several healthy users have been involved. The sensors were installed within the bed and, on each day, each user was administered with the Groningen Sleep Quality Scale questionnaire to evaluate the user’s perceived sleep quality. Finally, we show potential correlation between a perceived evaluation with an objective index as the sleep efficiency.</p

    Future bathroom: A study of user-centred design principles affecting usability, safety and satisfaction in bathrooms for people living with disabilities

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    Research and development work relating to assistive technology 2010-11 (Department of Health) Presented to Parliament pursuant to Section 22 of the Chronically Sick and Disabled Persons Act 197

    Wearable Movement Sensors for Rehabilitation: From Technology to Clinical Practice

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    This Special Issue shows a range of potential opportunities for the application of wearable movement sensors in motor rehabilitation. However, the papers surely do not cover the whole field of physical behavior monitoring in motor rehabilitation. Most studies in this Special Issue focused on the technical validation of wearable sensors and the development of algorithms. Clinical validation studies, studies applying wearable sensors for the monitoring of physical behavior in daily life conditions, and papers about the implementation of wearable sensors in motor rehabilitation are under-represented in this Special Issue. Studies investigating the usability and feasibility of wearable movement sensors in clinical populations were lacking. We encourage researchers to investigate the usability, acceptance, feasibility, reliability, and clinical validity of wearable sensors in clinical populations to facilitate the application of wearable movement sensors in motor rehabilitation

    SHELDON Smart habitat for the elderly.

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    An insightful document concerning active and assisted living under different perspectives: Furniture and habitat, ICT solutions and Healthcare
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