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Featured researches published by Alexander Chan.
international conference of the ieee engineering in medicine and biology society | 2013
Alexander Chan; Nandakumar Selvaraj; Nima Ferdosi; Ravi Narasimhan
Unobtrusive continuous monitoring of important vital signs and activity metrics has the potential to provide remote health monitoring, at-home screening, and rapid notification of critical events such as heart attacks, falls, or respiratory distress. This paper contains validation results of a wireless Bluetooth Low Energy (BLE) patch sensor consisting of two electrocardiography (ECG) electrodes, a microcontroller, a tri-axial accelerometer, and a BLE transceiver. The sensor measures heart rate, heart rate variability (HRV), respiratory rate, posture, steps, and falls and was evaluated on a total of 25 adult participants who performed breathing exercises, activities of daily living (ADLs), various stretches, stationary cycling, walking/running, and simulated falls. Compared to reference devices, the heart rate measurement had a mean absolute error (MAE) of less than 2 bpm, time-domain HRV measurements had an RMS error of less than 15 ms, respiratory rate had an MAE of 1.1 breaths per minute during metronome breathing, posture detection had an accuracy of over 95% in two of the three patch locations, steps were counted with an absolute error of less than 5%, and falls were detected with a sensitivity of 95.2% and specificity of 100%.
international conference of the ieee engineering in medicine and biology society | 2013
Alexander Chan; Nima Ferdosi; Ravi Narasimhan
Continuous monitoring of respiratory rate in ambulatory conditions has widespread applications for screening of respiratory diseases and remote patient monitoring. Unfortunately, minimally obtrusive techniques often suffer from low accuracy. In this paper, we describe an algorithm with low computational complexity for combining multiple respiratory measurements to estimate breathing rate from an unobtrusive chest patch sensor. Respiratory rates derived from the respiratory sinus arrhythmia (RSA) and modulation of the QRS amplitude of electrocardiography (ECG) are combined with a respiratory rate derived from tri-axial accelerometer data. The three respiration rates are combined by a weighted average using weights based on quality metrics for each signal. The algorithm was evaluated on 15 elderly subjects who performed spontaneous and metronome breathing as well as a variety of activities of daily living (ADLs). When compared to a reference device, the mean absolute error was 1.02 breaths per minute (BrPM) during metronome breathing, 1.67 BrPM during spontaneous breathing, and 2.03 BrPM during ADLs.
Archive | 2012
Ravi Narasimhan; Nima Ferdosi; Alexander Chan
Archive | 2013
Alexander Chan; Nima Ferdosi; Ravi Narasimhan
Archive | 2014
Alexander Chan; Ravi Narasimhan
Archive | 2013
Alexander Chan; Nima Ferdosi; Ravi Narasimhan
Archive | 2013
Alexander Chan; Ravi Narasimhan
Archive | 2016
Alexander Chan; Ravi Narasimhan; Nandakumar Selvaraj; Toai Doan
Archive | 2014
Nima Ferdosi; Ravi Narasimhan; Alexander Chan
Archive | 2014
Alexander Chan; Ravi Narasimhan