Development of machine learning models for vital signs monitoring
Blood pressure is an important clinical vital sign nowadays and it is recommended to monitor the blood pressure measurements daily to reduce the risks of high blood pressure. Generally, Blood pressure measurements are made using contact and non-contact methods. This study proposes a non-contact bloo...
Saved in:
Main Author: | |
---|---|
Other Authors: | |
Format: | Thesis-Master by Coursework |
Language: | English |
Published: |
Nanyang Technological University
2023
|
Subjects: | |
Online Access: | https://hdl.handle.net/10356/164024 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Nanyang Technological University |
Language: | English |
id |
sg-ntu-dr.10356-164024 |
---|---|
record_format |
dspace |
spelling |
sg-ntu-dr.10356-1640242023-01-04T06:36:53Z Development of machine learning models for vital signs monitoring Seenivasan Sindhu Barathi Muhammad Faeyz Karim School of Electrical and Electronic Engineering Singapore Centre for Environmental Life Sciences and Engineering (SCELSE) faeyz@ntu.edu.sg Engineering::Electrical and electronic engineering Blood pressure is an important clinical vital sign nowadays and it is recommended to monitor the blood pressure measurements daily to reduce the risks of high blood pressure. Generally, Blood pressure measurements are made using contact and non-contact methods. This study proposes a non-contact blood pressure measurement which uses two frequency modulated continuous wave (FMCW) mm-wave radars to detect the heart rate, and breathing rate, and a cuff-based OMRON device for blood pressure prediction. Databases were created and collected from 53 subjects using mm-wave radar that can extract the chest and neck pulse waveforms. In this experiment, the systolic blood pressure (SBP) and diastolic blood pressure (DBP) data were collected from the subject using an OMRON device. The datasets have been pre-processed with signal processing and a total of 54 features have been extracted. The processed data is trained with a deep neural network model with the Bonobo optimization algorithm for accurate prediction of both SBP and DBP. Moreover, this study compares the other machine learning models and achieves an RMSE value of SBP of 0.3068 and an RMSE value of DBP of 0.2282. The model has been tested for 15 subjects with 5 pulse waveforms (150 seconds) and 1 pulse waveform (30 seconds) at a distance of 0.5-1 metre using radar and blood pressure results are compared with the OMRON device. The tested results achieve a (Mean Absolute error ± Standard deviation) of SBP as 2.267±1.340 mmHg and DBP as 2.433±1.616 mmHg, which meets the AAMI requirements. Hence, while comparing with other models, our proposed study outperforms the results and achieves an overall accuracy of 93%. Master of Science (Computer Control and Automation) 2023-01-04T01:40:01Z 2023-01-04T01:40:01Z 2022 Thesis-Master by Coursework Seenivasan Sindhu Barathi (2022). Development of machine learning models for vital signs monitoring. Master's thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/164024 https://hdl.handle.net/10356/164024 en application/pdf Nanyang Technological University |
institution |
Nanyang Technological University |
building |
NTU Library |
continent |
Asia |
country |
Singapore Singapore |
content_provider |
NTU Library |
collection |
DR-NTU |
language |
English |
topic |
Engineering::Electrical and electronic engineering |
spellingShingle |
Engineering::Electrical and electronic engineering Seenivasan Sindhu Barathi Development of machine learning models for vital signs monitoring |
description |
Blood pressure is an important clinical vital sign nowadays and it is recommended to monitor the blood pressure measurements daily to reduce the risks of high blood pressure. Generally, Blood pressure measurements are made using contact and non-contact methods. This study proposes a non-contact blood pressure measurement which uses two frequency modulated continuous wave (FMCW) mm-wave radars to detect the heart rate, and breathing rate, and a cuff-based OMRON device for blood pressure prediction. Databases were created and collected from 53 subjects using mm-wave radar that can extract the chest and neck pulse waveforms.
In this experiment, the systolic blood pressure (SBP) and diastolic blood pressure (DBP) data were collected from the subject using an OMRON device. The datasets have been pre-processed with signal processing and a total of 54 features have been extracted. The processed data is trained with a deep neural network model with the Bonobo optimization algorithm for accurate prediction of both SBP and DBP. Moreover, this study compares the other machine learning models and achieves an RMSE value of SBP of 0.3068 and an RMSE value of DBP of 0.2282. The model has been tested for 15 subjects with 5 pulse waveforms (150 seconds) and 1 pulse waveform (30 seconds) at a distance of 0.5-1 metre using radar and blood pressure results are compared with the OMRON device. The tested results achieve a (Mean Absolute error ± Standard deviation) of SBP as 2.267±1.340 mmHg and DBP as 2.433±1.616 mmHg, which meets the AAMI requirements. Hence, while comparing with other models, our proposed study outperforms the results and achieves an overall accuracy of 93%. |
author2 |
Muhammad Faeyz Karim |
author_facet |
Muhammad Faeyz Karim Seenivasan Sindhu Barathi |
format |
Thesis-Master by Coursework |
author |
Seenivasan Sindhu Barathi |
author_sort |
Seenivasan Sindhu Barathi |
title |
Development of machine learning models for vital signs monitoring |
title_short |
Development of machine learning models for vital signs monitoring |
title_full |
Development of machine learning models for vital signs monitoring |
title_fullStr |
Development of machine learning models for vital signs monitoring |
title_full_unstemmed |
Development of machine learning models for vital signs monitoring |
title_sort |
development of machine learning models for vital signs monitoring |
publisher |
Nanyang Technological University |
publishDate |
2023 |
url |
https://hdl.handle.net/10356/164024 |
_version_ |
1754611259830960128 |