Literature DB >> 30951482

A Supervised Approach to Robust Photoplethysmography Quality Assessment.

Tania Pereira, Kais Gadhoumi, Mitchell Ma, Xiuyun Liu, Ran Xiao, Rene A Colorado, Kevin J Keenan, Karl Meisel, Xiao Hu.   

Abstract

Early detection of Atrial Fibrillation (AFib) is crucial to prevent stroke recurrence. New tools for monitoring cardiac rhythm are important for risk stratification and stroke prevention. As many of new approaches to long-term AFib detection are now based on photoplethysmogram (PPG) recordings from wearable devices, ensuring high PPG signal-to-noise ratios is a fundamental requirement for a robust detection of AFib episodes. Traditionally, signal quality assessment is often based on the evaluation of similarity between pulses to derive signal quality indices. There are limitations to using this approach for accurate assessment of PPG quality in the presence of arrhythmia, as in the case of AFib, mainly due to substantial changes in pulse morphology. In this paper, we first tested the performance of algorithms selected from a body of studies on PPG quality assessment using a dataset of PPG recordings from patients with AFib. We then propose machine learning approaches for PPG quality assessment in 30-s segments of PPG recording from 13 stroke patients admitted to the University of California San Francisco (UCSF) neuro intensive care unit and another dataset of 3764 patients from one of the five UCSF general intensive care units. We used data acquired from two systems, fingertip PPG (fPPG) from a bedside monitor system, and radial PPG (rPPG) measured using a wearable commercial wristband. We compared various supervised machine learning techniques including k-nearest neighbors, decisions trees, and a two-class support vector machine (SVM). SVM provided the best performance. fPPG signals were used to build the model and achieved 0.9477 accuracy when tested on the data from the fPPG exclusive to the test set, and 0.9589 accuracy when tested on the rPPG data.

Entities:  

Mesh:

Year:  2019        PMID: 30951482      PMCID: PMC9553283          DOI: 10.1109/JBHI.2019.2909065

Source DB:  PubMed          Journal:  IEEE J Biomed Health Inform        ISSN: 2168-2194            Impact factor:   7.021


  25 in total

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Authors:  Tânia Pereira; Joana S Paiva; Carlos Correia; João Cardoso
Journal:  Med Biol Eng Comput       Date:  2015-09-24       Impact factor: 2.602

2.  Signal quality measures for pulse oximetry through waveform morphology analysis.

Authors:  J Abdul Sukor; S J Redmond; N H Lovell
Journal:  Physiol Meas       Date:  2011-02-18       Impact factor: 2.833

3.  Subject identification via ECG fiducial-based systems: influence of the type of QT interval correction.

Authors:  Francesco Gargiulo; Antonio Fratini; Mario Sansone; Carlo Sansone
Journal:  Comput Methods Programs Biomed       Date:  2015-06-25       Impact factor: 5.428

4.  Dynamic time warping and machine learning for signal quality assessment of pulsatile signals.

Authors:  Q Li; G D Clifford
Journal:  Physiol Meas       Date:  2012-08-17       Impact factor: 2.833

5.  Signal-quality indices for the electrocardiogram and photoplethysmogram: derivation and applications to wireless monitoring.

Authors:  Christina Orphanidou; Timothy Bonnici; Peter Charlton; David Clifton; David Vallance; Lionel Tarassenko
Journal:  IEEE J Biomed Health Inform       Date:  2014-07-23       Impact factor: 5.772

6.  2016 ESC Guidelines for the management of atrial fibrillation developed in collaboration with EACTS.

Authors:  Paulus Kirchhof; Stefano Benussi; Dipak Kotecha; Anders Ahlsson; Dan Atar; Barbara Casadei; Manuel Castella; Hans-Christoph Diener; Hein Heidbuchel; Jeroen Hendriks; Gerhard Hindricks; Antonis S Manolis; Jonas Oldgren; Bogdan Alexandru Popescu; Ulrich Schotten; Bart Van Putte; Panagiotis Vardas
Journal:  Eur Heart J       Date:  2016-08-27       Impact factor: 29.983

7.  A robust deep convolutional neural network for the classification of abnormal cardiac rhythm using single lead electrocardiograms of variable length.

Authors:  Rishikesan Kamaleswaran; Ruhi Mahajan; Oguz Akbilgic
Journal:  Physiol Meas       Date:  2018-03-27       Impact factor: 2.833

8.  Supervised learning methods for pathological arterial pulse wave differentiation: A SVM and neural networks approach.

Authors:  Joana S Paiva; João Cardoso; Tânia Pereira
Journal:  Int J Med Inform       Date:  2017-10-31       Impact factor: 4.046

Review 9.  Atrial Fibrillation and Mechanisms of Stroke: Time for a New Model.

Authors:  Hooman Kamel; Peter M Okin; Mitchell S V Elkind; Costantino Iadecola
Journal:  Stroke       Date:  2016-01-19       Impact factor: 7.914

10.  Rationale and design of a home-based trial using wearable sensors to detect asymptomatic atrial fibrillation in a targeted population: The mHealth Screening To Prevent Strokes (mSToPS) trial.

Authors:  Steven R Steinhubl; Rajesh R Mehta; Gail S Ebner; Marissa M Ballesteros; Jill Waalen; Gregory Steinberg; Percy Van Crocker; Elise Felicione; Chureen T Carter; Shawn Edmonds; Joseph P Honcz; Gines Diego Miralles; Dimitri Talantov; Troy C Sarich; Eric J Topol
Journal:  Am Heart J       Date:  2016-02-23       Impact factor: 4.749

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  9 in total

1.  Deep learning approaches for plethysmography signal quality assessment in the presence of atrial fibrillation.

Authors:  Tania Pereira; Cheng Ding; Kais Gadhoumi; Nate Tran; Rene A Colorado; Karl Meisel; Xiao Hu
Journal:  Physiol Meas       Date:  2019-12-27       Impact factor: 2.833

2.  Optimized Signal Quality Assessment for Photoplethysmogram Signals Using Feature Selection.

Authors:  Fahimeh Mohagheghian; Dong Han; Andrew Peitzsch; Nishat Nishita; Eric Ding; Emily L Dickson; Danielle DiMezza; Edith M Otabil; Kamran Noorishirazi; Jessica Scott; Darleen Lessard; Ziyue Wang; Cody Whitcomb; Khanh-Van Tran; Timothy P Fitzgibbons; David D McManus; Ki H Chon
Journal:  IEEE Trans Biomed Eng       Date:  2022-08-19       Impact factor: 4.756

Review 3.  Photoplethysmography based atrial fibrillation detection: a review.

Authors:  Tania Pereira; Nate Tran; Kais Gadhoumi; Michele M Pelter; Duc H Do; Randall J Lee; Rene Colorado; Karl Meisel; Xiao Hu
Journal:  NPJ Digit Med       Date:  2020-01-10

4.  Explainability Metrics of Deep Convolutional Networks for Photoplethysmography Quality Assessment.

Authors:  Oliver Zhang; Cheng Ding; Tania Pereira; Ran Xiao; Kais Gadhoumi; Karl Meisel; Randall J Lee; Yiran Chen; Xiao Hu
Journal:  IEEE Access       Date:  2021-01-26       Impact factor: 3.367

5.  Identification of Characteristic Points in Multivariate Physiological Signals by Sensor Fusion and Multi-Task Deep Networks.

Authors:  Matteo Rossi; Giulia Alessandrelli; Andra Dombrovschi; Dario Bovio; Caterina Salito; Luca Mainardi; Pietro Cerveri
Journal:  Sensors (Basel)       Date:  2022-03-31       Impact factor: 3.576

6.  Wrist Photoplethysmography Signal Quality Assessment for Reliable Heart Rate Estimate and Morphological Analysis.

Authors:  Serena Moscato; Stella Lo Giudice; Giulia Massaro; Lorenzo Chiari
Journal:  Sensors (Basel)       Date:  2022-08-04       Impact factor: 3.847

7.  Impact of Label Noise on the Learning Based Models for a Binary Classification of Physiological Signal.

Authors:  Cheng Ding; Tania Pereira; Ran Xiao; Randall J Lee; Xiao Hu
Journal:  Sensors (Basel)       Date:  2022-09-21       Impact factor: 3.847

Review 8.  How machine learning is impacting research in atrial fibrillation: implications for risk prediction and future management.

Authors:  Ivan Olier; Sandra Ortega-Martorell; Mark Pieroni; Gregory Y H Lip
Journal:  Cardiovasc Res       Date:  2021-06-16       Impact factor: 10.787

9.  Predicting Prolonged Length of ICU Stay through Machine Learning.

Authors:  Jingyi Wu; Yu Lin; Pengfei Li; Yonghua Hu; Luxia Zhang; Guilan Kong
Journal:  Diagnostics (Basel)       Date:  2021-11-30
  9 in total

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