Literature DB >> 8477229

Development of a neural network screening aid for diagnosing lower limb peripheral vascular disease from photoelectric plethysmography pulse waveforms.

J Allen1, A Murray.   

Abstract

An artificial neural network (ANN) was trained to classify photoelectric plethysmographic (PPG) pulse waveforms for the diagnosis of lower limb peripheral vascular disease (PVD). PPG pulses from the lower limbs, and pre- and post-exercise Doppler ultrasound ankle to brachial systolic blood pressure ratio measurements were obtained from patients referred to a vascular investigation laboratory. A single PPG pulse from the big toe of each leg was processed and normalized, and used as input data to the ANN. The ANN outputs represented the diagnostic classifications (normal, significant PVD and major PVD) and the ANN was trained with the ankle to brachial pressure indices (ABPI). The ANN structure consisted of an input layer (50 neuron units from the PPG pulse input), a single hidden layer (15 neurons) and an output layer (3 neurons for the PVD diagnoses). The back-propagation learning algorithm was used to train the ANN for 500 epochs with a PPG training set of pulses from 100 legs. Test data for network assessment comprised pulses from a further 50 legs (20 normal and 30 PVD, of which 15 were categorized as having major disease). A network sensitivity of 93% and specificity of 85% was achieved with respect to the Doppler ABPI standard, giving a diagnostic accuracy of 90%. The results of this study indicate that a neural network can be trained to distinguish between PPG pulses from normal and diseased lower limb arteries. The simplicity of PPG measurement and neural network classification holds promise for the screening of lower limb arterial PVD.

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Year:  1993        PMID: 8477229     DOI: 10.1088/0967-3334/14/1/003

Source DB:  PubMed          Journal:  Physiol Meas        ISSN: 0967-3334            Impact factor:   2.833


  8 in total

1.  Neural network for photoplethysmographic respiratory rate monitoring.

Authors:  A Johansson
Journal:  Med Biol Eng Comput       Date:  2003-05       Impact factor: 2.602

2.  A feed forward neural network for classification of bull's-eye myocardial perfusion images.

Authors:  D Hamilton; P J Riley; U J Miola; A A Amro
Journal:  Eur J Nucl Med       Date:  1995-02

3.  Quantification the effect of ageing on characteristics of the photoplethysmogram using an optimized windkessel model.

Authors:  H Doostdar; Ma Khalilzadeh
Journal:  J Biomed Phys Eng       Date:  2014-09-01

4.  Feasibility study for the non-invasive blood pressure estimation based on ppg morphology: normotensive subject study.

Authors:  Hangsik Shin; Se Dong Min
Journal:  Biomed Eng Online       Date:  2017-01-10       Impact factor: 2.819

Review 5.  Photoplethysmogram Analysis and Applications: An Integrative Review.

Authors:  Junyung Park; Hyeon Seok Seok; Sang-Su Kim; Hangsik Shin
Journal:  Front Physiol       Date:  2022-03-01       Impact factor: 4.566

6.  Multimodal Finger Pulse Wave Sensing: Comparison of Forcecardiography and Photoplethysmography Sensors.

Authors:  Emilio Andreozzi; Riccardo Sabbadini; Jessica Centracchio; Paolo Bifulco; Andrea Irace; Giovanni Breglio; Michele Riccio
Journal:  Sensors (Basel)       Date:  2022-10-06       Impact factor: 3.847

7.  Accuracy of Peripheral Arterial Disease Registers in UK General Practice: Case-Control Study.

Authors:  Daniel Kyle; Luke Boylan; Lesley Wilson; Shona Haining; Crispian Oates; Andrew Sims; Ina Guri; John Allen; Scott Wilkes; Gerry Stansby
Journal:  J Prim Care Community Health       Date:  2020 Jan-Dec

8.  Artificial Intelligence for Detection of Cardiovascular-Related Diseases from Wearable Devices: A Systematic Review and Meta-Analysis.

Authors:  Solam Lee; Yuseong Chu; Jiseung Ryu; Young Jun Park; Sejung Yang; Sang Baek Koh
Journal:  Yonsei Med J       Date:  2022-01       Impact factor: 2.759

  8 in total

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