Literature DB >> 33747683

Explainability Metrics of Deep Convolutional Networks for Photoplethysmography Quality Assessment.

Oliver Zhang1, Cheng Ding2, Tania Pereira3, Ran Xiao4, Kais Gadhoumi4, Karl Meisel5, Randall J Lee6, Yiran Chen2, Xiao Hu2,4,7,8.   

Abstract

Photoplethysmography (PPG) is a noninvasive way to monitor various aspects of the circulatory system, and is becoming more and more widespread in biomedical processing. Recently, deep learning methods for analyzing PPG have also become prevalent, achieving state of the art results on heart rate estimation, atrial fibrillation detection, and motion artifact identification. Consequently, a need for interpretable deep learning has arisen within the field of biomedical signal processing. In this paper, we pioneer novel explanatory metrics which leverage domain-expert knowledge to validate a deep learning model. We visualize model attention over a whole testset using saliency methods and compare it to human expert annotations. Congruence, our first metric, measures the proportion of model attention within expert-annotated regions. Our second metric, Annotation Classification, measures how much of the expert annotations our deep learning model pays attention to. Finally, we apply our metrics to compare between a signal based model and an image based model for PPG signal quality classification. Both models are deep convolutional networks based on the ResNet architectures. We show that our signal-based one dimensional model acts in a more explainable manner than our image based model; on average 50.78% of the one dimensional model's attention are within expert annotations, whereas 36.03% of the two dimensional model's attention are within expert annotations. Similarly, when thresholding the one dimensional model attention, one can more accurately predict if each pixel of the PPG is annotated as artifactual by an expert. Through this testcase, we demonstrate how our metrics can provide a quantitative and dataset-wide analysis of how explainable the model is.

Entities:  

Keywords:  Deep neural network; PPG signal quality; biomedical informatics

Year:  2021        PMID: 33747683      PMCID: PMC7978398          DOI: 10.1109/access.2021.3054613

Source DB:  PubMed          Journal:  IEEE Access        ISSN: 2169-3536            Impact factor:   3.367


  12 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

Review 2.  Photoplethysmography and its application in clinical physiological measurement.

Authors:  John Allen
Journal:  Physiol Meas       Date:  2007-02-20       Impact factor: 2.833

3.  CorNET: Deep Learning Framework for PPG-Based Heart Rate Estimation and Biometric Identification in Ambulant Environment.

Authors:  Dwaipayan Biswas; Luke Everson; Muqing Liu; Madhuri Panwar; Bram-Ernst Verhoef; Shrishail Patki; Chris H Kim; Amit Acharyya; Chris Van Hoof; Mario Konijnenburg; Nick Van Helleputte
Journal:  IEEE Trans Biomed Circuits Syst       Date:  2019-01-10       Impact factor: 3.833

4.  Passive Detection of Atrial Fibrillation Using a Commercially Available Smartwatch.

Authors:  Geoffrey H Tison; José M Sanchez; Brandon Ballinger; Avesh Singh; Jeffrey E Olgin; Mark J Pletcher; Eric Vittinghoff; Emily S Lee; Shannon M Fan; Rachel A Gladstone; Carlos Mikell; Nimit Sohoni; Johnson Hsieh; Gregory M Marcus
Journal:  JAMA Cardiol       Date:  2018-05-01       Impact factor: 14.676

5.  A Supervised Approach to Robust Photoplethysmography Quality Assessment.

Authors:  Tania Pereira; Kais Gadhoumi; Mitchell Ma; Xiuyun Liu; Ran Xiao; Rene A Colorado; Kevin J Keenan; Karl Meisel; Xiao Hu
Journal:  IEEE J Biomed Health Inform       Date:  2019-04-03       Impact factor: 7.021

6.  Insights into the problem of alarm fatigue with physiologic monitor devices: a comprehensive observational study of consecutive intensive care unit patients.

Authors:  Barbara J Drew; Patricia Harris; Jessica K Zègre-Hemsey; Tina Mammone; Daniel Schindler; Rebeca Salas-Boni; Yong Bai; Adelita Tinoco; Quan Ding; Xiao Hu
Journal:  PLoS One       Date:  2014-10-22       Impact factor: 3.240

7.  Deep Learning Approaches to Detect Atrial Fibrillation Using Photoplethysmographic Signals: Algorithms Development Study.

Authors:  Soonil Kwon; Joonki Hong; Eue-Keun Choi; Euijae Lee; David Earl Hostallero; Wan Ju Kang; Byunghwan Lee; Eui-Rim Jeong; Bon-Kwon Koo; Seil Oh; Yung Yi
Journal:  JMIR Mhealth Uhealth       Date:  2019-06-06       Impact factor: 4.773

8.  Machine learning detection of obstructive hypertrophic cardiomyopathy using a wearable biosensor.

Authors:  Eric M Green; Reinier van Mourik; Charles Wolfus; Stephen B Heitner; Onur Dur; Marc J Semigran
Journal:  NPJ Digit Med       Date:  2019-06-24

9.  Deep PPG: Large-Scale Heart Rate Estimation with Convolutional Neural Networks.

Authors:  Attila Reiss; Ina Indlekofer; Philip Schmidt; Kristof Van Laerhoven
Journal:  Sensors (Basel)       Date:  2019-07-12       Impact factor: 3.576

Review 10.  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
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