Learning and non-learning algorithms for cuffless blood pressure measurement: a review
Abstract The machine learning approach has gained a significant attention in the healthcare sector because of the prospect of developing new techniques for medical devices and handling the critical database of chronic diseases. The learning approach has potential to analyze complex medical data, dis...
Ausführliche Beschreibung
Autor*in: |
Agham, Nishigandha Dnyaneshwar [verfasserIn] |
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Artikel |
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Sprache: |
Englisch |
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2021 |
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Anmerkung: |
© International Federation for Medical and Biological Engineering 2021 |
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Übergeordnetes Werk: |
Enthalten in: Medical & biological engineering & computing - Springer Berlin Heidelberg, 1977, 59(2021), 6 vom: Juni, Seite 1201-1222 |
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Übergeordnetes Werk: |
volume:59 ; year:2021 ; number:6 ; month:06 ; pages:1201-1222 |
Links: |
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DOI / URN: |
10.1007/s11517-021-02362-6 |
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OLC2126068811 |
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10.1007/s11517-021-02362-6 doi (DE-627)OLC2126068811 (DE-He213)s11517-021-02362-6-p DE-627 ger DE-627 rakwb eng 610 660 570 VZ 12 ssgn Agham, Nishigandha Dnyaneshwar verfasserin (orcid)0000-0001-6224-9619 aut Learning and non-learning algorithms for cuffless blood pressure measurement: a review 2021 Text txt rdacontent ohne Hilfsmittel zu benutzen n rdamedia Band nc rdacarrier © International Federation for Medical and Biological Engineering 2021 Abstract The machine learning approach has gained a significant attention in the healthcare sector because of the prospect of developing new techniques for medical devices and handling the critical database of chronic diseases. The learning approach has potential to analyze complex medical data, disease diagnosis, and patient monitoring system, and to monitor e-health record. Non-invasive cuffless blood pressure (CLBP) measurement secured a significant position in the patient monitoring system. From a few recent decades, the importance of cuffless technology has been perceived towards continuous monitoring of blood pressure (BP) and supplementary efforts have been made towards its continuous monitoring. However, the optimal method that measures BP unambiguously and continuously has not yet emerged along with issues like calibration time, accuracy and long-term estimation of BP with miniaturizing hardware. The present study provides an insight into several learning algorithms along with their feature selection models. Various challenges and future improvements towards the current state of machine learning in healthcare industries are discussed in the present review. The bottom line of this study is to provide a comprehensive perspective of the machine learning approach of CLBP for the generation of highly precise predictive models for continuous BP measurement. Blood pressure Machine learning Learning algorithm Non-learning algorithm Chaskar, Uttam M. aut Enthalten in Medical & biological engineering & computing Springer Berlin Heidelberg, 1977 59(2021), 6 vom: Juni, Seite 1201-1222 (DE-627)129858552 (DE-600)282327-5 (DE-576)015165507 0140-0118 nnns volume:59 year:2021 number:6 month:06 pages:1201-1222 https://doi.org/10.1007/s11517-021-02362-6 lizenzpflichtig Volltext GBV_USEFLAG_A SYSFLAG_A GBV_OLC SSG-OLC-TEC SSG-OLC-CHE SSG-OPC-MAT GBV_ILN_2018 AR 59 2021 6 06 1201-1222 |
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10.1007/s11517-021-02362-6 doi (DE-627)OLC2126068811 (DE-He213)s11517-021-02362-6-p DE-627 ger DE-627 rakwb eng 610 660 570 VZ 12 ssgn Agham, Nishigandha Dnyaneshwar verfasserin (orcid)0000-0001-6224-9619 aut Learning and non-learning algorithms for cuffless blood pressure measurement: a review 2021 Text txt rdacontent ohne Hilfsmittel zu benutzen n rdamedia Band nc rdacarrier © International Federation for Medical and Biological Engineering 2021 Abstract The machine learning approach has gained a significant attention in the healthcare sector because of the prospect of developing new techniques for medical devices and handling the critical database of chronic diseases. The learning approach has potential to analyze complex medical data, disease diagnosis, and patient monitoring system, and to monitor e-health record. Non-invasive cuffless blood pressure (CLBP) measurement secured a significant position in the patient monitoring system. From a few recent decades, the importance of cuffless technology has been perceived towards continuous monitoring of blood pressure (BP) and supplementary efforts have been made towards its continuous monitoring. However, the optimal method that measures BP unambiguously and continuously has not yet emerged along with issues like calibration time, accuracy and long-term estimation of BP with miniaturizing hardware. The present study provides an insight into several learning algorithms along with their feature selection models. Various challenges and future improvements towards the current state of machine learning in healthcare industries are discussed in the present review. The bottom line of this study is to provide a comprehensive perspective of the machine learning approach of CLBP for the generation of highly precise predictive models for continuous BP measurement. Blood pressure Machine learning Learning algorithm Non-learning algorithm Chaskar, Uttam M. aut Enthalten in Medical & biological engineering & computing Springer Berlin Heidelberg, 1977 59(2021), 6 vom: Juni, Seite 1201-1222 (DE-627)129858552 (DE-600)282327-5 (DE-576)015165507 0140-0118 nnns volume:59 year:2021 number:6 month:06 pages:1201-1222 https://doi.org/10.1007/s11517-021-02362-6 lizenzpflichtig Volltext GBV_USEFLAG_A SYSFLAG_A GBV_OLC SSG-OLC-TEC SSG-OLC-CHE SSG-OPC-MAT GBV_ILN_2018 AR 59 2021 6 06 1201-1222 |
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10.1007/s11517-021-02362-6 doi (DE-627)OLC2126068811 (DE-He213)s11517-021-02362-6-p DE-627 ger DE-627 rakwb eng 610 660 570 VZ 12 ssgn Agham, Nishigandha Dnyaneshwar verfasserin (orcid)0000-0001-6224-9619 aut Learning and non-learning algorithms for cuffless blood pressure measurement: a review 2021 Text txt rdacontent ohne Hilfsmittel zu benutzen n rdamedia Band nc rdacarrier © International Federation for Medical and Biological Engineering 2021 Abstract The machine learning approach has gained a significant attention in the healthcare sector because of the prospect of developing new techniques for medical devices and handling the critical database of chronic diseases. The learning approach has potential to analyze complex medical data, disease diagnosis, and patient monitoring system, and to monitor e-health record. Non-invasive cuffless blood pressure (CLBP) measurement secured a significant position in the patient monitoring system. From a few recent decades, the importance of cuffless technology has been perceived towards continuous monitoring of blood pressure (BP) and supplementary efforts have been made towards its continuous monitoring. However, the optimal method that measures BP unambiguously and continuously has not yet emerged along with issues like calibration time, accuracy and long-term estimation of BP with miniaturizing hardware. The present study provides an insight into several learning algorithms along with their feature selection models. Various challenges and future improvements towards the current state of machine learning in healthcare industries are discussed in the present review. The bottom line of this study is to provide a comprehensive perspective of the machine learning approach of CLBP for the generation of highly precise predictive models for continuous BP measurement. Blood pressure Machine learning Learning algorithm Non-learning algorithm Chaskar, Uttam M. aut Enthalten in Medical & biological engineering & computing Springer Berlin Heidelberg, 1977 59(2021), 6 vom: Juni, Seite 1201-1222 (DE-627)129858552 (DE-600)282327-5 (DE-576)015165507 0140-0118 nnns volume:59 year:2021 number:6 month:06 pages:1201-1222 https://doi.org/10.1007/s11517-021-02362-6 lizenzpflichtig Volltext GBV_USEFLAG_A SYSFLAG_A GBV_OLC SSG-OLC-TEC SSG-OLC-CHE SSG-OPC-MAT GBV_ILN_2018 AR 59 2021 6 06 1201-1222 |
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10.1007/s11517-021-02362-6 doi (DE-627)OLC2126068811 (DE-He213)s11517-021-02362-6-p DE-627 ger DE-627 rakwb eng 610 660 570 VZ 12 ssgn Agham, Nishigandha Dnyaneshwar verfasserin (orcid)0000-0001-6224-9619 aut Learning and non-learning algorithms for cuffless blood pressure measurement: a review 2021 Text txt rdacontent ohne Hilfsmittel zu benutzen n rdamedia Band nc rdacarrier © International Federation for Medical and Biological Engineering 2021 Abstract The machine learning approach has gained a significant attention in the healthcare sector because of the prospect of developing new techniques for medical devices and handling the critical database of chronic diseases. The learning approach has potential to analyze complex medical data, disease diagnosis, and patient monitoring system, and to monitor e-health record. Non-invasive cuffless blood pressure (CLBP) measurement secured a significant position in the patient monitoring system. From a few recent decades, the importance of cuffless technology has been perceived towards continuous monitoring of blood pressure (BP) and supplementary efforts have been made towards its continuous monitoring. However, the optimal method that measures BP unambiguously and continuously has not yet emerged along with issues like calibration time, accuracy and long-term estimation of BP with miniaturizing hardware. The present study provides an insight into several learning algorithms along with their feature selection models. Various challenges and future improvements towards the current state of machine learning in healthcare industries are discussed in the present review. The bottom line of this study is to provide a comprehensive perspective of the machine learning approach of CLBP for the generation of highly precise predictive models for continuous BP measurement. Blood pressure Machine learning Learning algorithm Non-learning algorithm Chaskar, Uttam M. aut Enthalten in Medical & biological engineering & computing Springer Berlin Heidelberg, 1977 59(2021), 6 vom: Juni, Seite 1201-1222 (DE-627)129858552 (DE-600)282327-5 (DE-576)015165507 0140-0118 nnns volume:59 year:2021 number:6 month:06 pages:1201-1222 https://doi.org/10.1007/s11517-021-02362-6 lizenzpflichtig Volltext GBV_USEFLAG_A SYSFLAG_A GBV_OLC SSG-OLC-TEC SSG-OLC-CHE SSG-OPC-MAT GBV_ILN_2018 AR 59 2021 6 06 1201-1222 |
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10.1007/s11517-021-02362-6 doi (DE-627)OLC2126068811 (DE-He213)s11517-021-02362-6-p DE-627 ger DE-627 rakwb eng 610 660 570 VZ 12 ssgn Agham, Nishigandha Dnyaneshwar verfasserin (orcid)0000-0001-6224-9619 aut Learning and non-learning algorithms for cuffless blood pressure measurement: a review 2021 Text txt rdacontent ohne Hilfsmittel zu benutzen n rdamedia Band nc rdacarrier © International Federation for Medical and Biological Engineering 2021 Abstract The machine learning approach has gained a significant attention in the healthcare sector because of the prospect of developing new techniques for medical devices and handling the critical database of chronic diseases. The learning approach has potential to analyze complex medical data, disease diagnosis, and patient monitoring system, and to monitor e-health record. Non-invasive cuffless blood pressure (CLBP) measurement secured a significant position in the patient monitoring system. From a few recent decades, the importance of cuffless technology has been perceived towards continuous monitoring of blood pressure (BP) and supplementary efforts have been made towards its continuous monitoring. However, the optimal method that measures BP unambiguously and continuously has not yet emerged along with issues like calibration time, accuracy and long-term estimation of BP with miniaturizing hardware. The present study provides an insight into several learning algorithms along with their feature selection models. Various challenges and future improvements towards the current state of machine learning in healthcare industries are discussed in the present review. The bottom line of this study is to provide a comprehensive perspective of the machine learning approach of CLBP for the generation of highly precise predictive models for continuous BP measurement. Blood pressure Machine learning Learning algorithm Non-learning algorithm Chaskar, Uttam M. aut Enthalten in Medical & biological engineering & computing Springer Berlin Heidelberg, 1977 59(2021), 6 vom: Juni, Seite 1201-1222 (DE-627)129858552 (DE-600)282327-5 (DE-576)015165507 0140-0118 nnns volume:59 year:2021 number:6 month:06 pages:1201-1222 https://doi.org/10.1007/s11517-021-02362-6 lizenzpflichtig Volltext GBV_USEFLAG_A SYSFLAG_A GBV_OLC SSG-OLC-TEC SSG-OLC-CHE SSG-OPC-MAT GBV_ILN_2018 AR 59 2021 6 06 1201-1222 |
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Abstract The machine learning approach has gained a significant attention in the healthcare sector because of the prospect of developing new techniques for medical devices and handling the critical database of chronic diseases. The learning approach has potential to analyze complex medical data, disease diagnosis, and patient monitoring system, and to monitor e-health record. Non-invasive cuffless blood pressure (CLBP) measurement secured a significant position in the patient monitoring system. From a few recent decades, the importance of cuffless technology has been perceived towards continuous monitoring of blood pressure (BP) and supplementary efforts have been made towards its continuous monitoring. However, the optimal method that measures BP unambiguously and continuously has not yet emerged along with issues like calibration time, accuracy and long-term estimation of BP with miniaturizing hardware. The present study provides an insight into several learning algorithms along with their feature selection models. Various challenges and future improvements towards the current state of machine learning in healthcare industries are discussed in the present review. The bottom line of this study is to provide a comprehensive perspective of the machine learning approach of CLBP for the generation of highly precise predictive models for continuous BP measurement. © International Federation for Medical and Biological Engineering 2021 |
abstractGer |
Abstract The machine learning approach has gained a significant attention in the healthcare sector because of the prospect of developing new techniques for medical devices and handling the critical database of chronic diseases. The learning approach has potential to analyze complex medical data, disease diagnosis, and patient monitoring system, and to monitor e-health record. Non-invasive cuffless blood pressure (CLBP) measurement secured a significant position in the patient monitoring system. From a few recent decades, the importance of cuffless technology has been perceived towards continuous monitoring of blood pressure (BP) and supplementary efforts have been made towards its continuous monitoring. However, the optimal method that measures BP unambiguously and continuously has not yet emerged along with issues like calibration time, accuracy and long-term estimation of BP with miniaturizing hardware. The present study provides an insight into several learning algorithms along with their feature selection models. Various challenges and future improvements towards the current state of machine learning in healthcare industries are discussed in the present review. The bottom line of this study is to provide a comprehensive perspective of the machine learning approach of CLBP for the generation of highly precise predictive models for continuous BP measurement. © International Federation for Medical and Biological Engineering 2021 |
abstract_unstemmed |
Abstract The machine learning approach has gained a significant attention in the healthcare sector because of the prospect of developing new techniques for medical devices and handling the critical database of chronic diseases. The learning approach has potential to analyze complex medical data, disease diagnosis, and patient monitoring system, and to monitor e-health record. Non-invasive cuffless blood pressure (CLBP) measurement secured a significant position in the patient monitoring system. From a few recent decades, the importance of cuffless technology has been perceived towards continuous monitoring of blood pressure (BP) and supplementary efforts have been made towards its continuous monitoring. However, the optimal method that measures BP unambiguously and continuously has not yet emerged along with issues like calibration time, accuracy and long-term estimation of BP with miniaturizing hardware. The present study provides an insight into several learning algorithms along with their feature selection models. Various challenges and future improvements towards the current state of machine learning in healthcare industries are discussed in the present review. The bottom line of this study is to provide a comprehensive perspective of the machine learning approach of CLBP for the generation of highly precise predictive models for continuous BP measurement. © International Federation for Medical and Biological Engineering 2021 |
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title_short |
Learning and non-learning algorithms for cuffless blood pressure measurement: a review |
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https://doi.org/10.1007/s11517-021-02362-6 |
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Chaskar, Uttam M. |
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