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Open AccessJournal ArticleDOI

Non-contact physiological monitoring of preterm infants in the Neonatal Intensive Care Unit.

TLDR
A clinical study to evaluate the accuracy and the proportion of time that heart rate and respiratory rate can be estimated from preterm infants using only a video camera in a clinical environment, without interfering with regular patient care and proposes signal quality assessment algorithms to discriminate between clinically acceptable and noisy signals.
Abstract
The implementation of video-based non-contact technologies to monitor the vital signs of preterm infants in the hospital presents several challenges, such as the detection of the presence or the absence of a patient in the video frame, robustness to changes in lighting conditions, automated identification of suitable time periods and regions of interest from which vital signs can be estimated. We carried out a clinical study to evaluate the accuracy and the proportion of time that heart rate and respiratory rate can be estimated from preterm infants using only a video camera in a clinical environment, without interfering with regular patient care. A total of 426.6 h of video and reference vital signs were recorded for 90 sessions from 30 preterm infants in the Neonatal Intensive Care Unit (NICU) of the John Radcliffe Hospital in Oxford. Each preterm infant was recorded under regular ambient light during daytime for up to four consecutive days. We developed multi-task deep learning algorithms to automatically segment skin areas and to estimate vital signs only when the infant was present in the field of view of the video camera and no clinical interventions were undertaken. We propose signal quality assessment algorithms for both heart rate and respiratory rate to discriminate between clinically acceptable and noisy signals. The mean absolute error between the reference and camera-derived heart rates was 2.3 beats/min for over 76% of the time for which the reference and camera data were valid. The mean absolute error between the reference and camera-derived respiratory rate was 3.5 breaths/min for over 82% of the time. Accurate estimates of heart rate and respiratory rate could be derived for at least 90% of the time, if gaps of up to 30 seconds with no estimates were allowed.

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Multi-Task Temporal Shift Attention Networks for On-Device Contactless Vitals Measurement

TL;DR: This work presents a video-based and on-device optical cardiopulmonary vital sign measurement approach that leverages a novel multi-task temporal shift convolutional attention network (MTTS-CAN) and enables real-time cardiovascular and respiratory measurements on mobile platforms.
Proceedings ArticleDOI

MetaPhys: few-shot adaptation for non-contact physiological measurement

TL;DR: A novel meta-learning approach for personalized video-based cardiac measurement for non-contact pulse and heart rate monitoring called MetaPhys, which uses only 18-seconds of video for customization and works effectively in both supervised and unsupervised manners.
Proceedings ArticleDOI

A Meta-Analysis of the Impact of Skin Type and Gender on Non-contact Photoplethysmography Measurements.

TL;DR: A meta-analysis across three datasets, including 73 people and over 400 videos featuring a broad range of skin types, finds that average performance drops significantly for the darkest skin type and there is a slight drop in the performance for females.
Journal ArticleDOI

A Review of Deep Learning-Based Contactless Heart Rate Measurement Methods.

TL;DR: In this article, a comparison of the deep learning methods whose codes are publicly available is conducted in order to compare the performance of these DNN methods for heart rate measurement, and the results obtained show that the DNN method PhysNet generates the best heart-rate measurement outcome among these methods, with a mean absolute error value of 2.57 beats per minute and a mean square error values of 7.56 beats perminute.
Journal ArticleDOI

Non-Contact Automatic Vital Signs Monitoring of Infants in a Neonatal Intensive Care Unit Based on Neural Networks.

TL;DR: A single-center study to remotely monitor the heart rate (HR) and respiratory rate (RR) of seven infants in NICU using a digital camera and a close correlation between measured data and reference data for both HR and RR is presented.
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Pattern Recognition and Machine Learning

Radford M. Neal
- 01 Aug 2007 - 
TL;DR: This book covers a broad range of topics for regular factorial designs and presents all of the material in very mathematical fashion and will surely become an invaluable resource for researchers and graduate students doing research in the design of factorial experiments.
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