Novel approach for noninvasive pelvic floor muscle strength measurement using extracorporeal surface perineal pressure measurement and machine learning modeling

Objective Accurate measurement of pelvic floor muscle (PFM) strength is crucial for the management of pelvic floor disorders. However, the current methods are invasive, uncomfortable, and lack standardization. This study aimed to introduce a novel noninvasive approach for precise PFM strength quanti...

Full description

Saved in:
Bibliographic Details
Main Authors: Ui-jae Hwang, Sun-hee Ahn, Hyeon-ju Lee, Yurin Jeon, Myung Jae Jeon
Format: Article
Language:English
Published: SAGE Publishing 2025-01-01
Series:Digital Health
Online Access:https://doi.org/10.1177/20552076251316730
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832589718379823104
author Ui-jae Hwang
Sun-hee Ahn
Hyeon-ju Lee
Yurin Jeon
Myung Jae Jeon
author_facet Ui-jae Hwang
Sun-hee Ahn
Hyeon-ju Lee
Yurin Jeon
Myung Jae Jeon
author_sort Ui-jae Hwang
collection DOAJ
description Objective Accurate measurement of pelvic floor muscle (PFM) strength is crucial for the management of pelvic floor disorders. However, the current methods are invasive, uncomfortable, and lack standardization. This study aimed to introduce a novel noninvasive approach for precise PFM strength quantification by leveraging extracorporeal surface perineal pressure (ESPP) measurements and machine learning algorithms. Methods Twenty-one healthy women participated in this study. ESPP measurements were obtained using a 10 × 10 pressure array sensor during maximal voluntary PFM contractions in a seated position. Simultaneously, transabdominal ultrasound was used to measure bladder base displacement (mm) as a reference for PFM contraction strength. Seven ESPP variables were calculated based on ESPP data and intra- and inter-rater reliabilities were assessed. Machine learning algorithms predicted bladder base displacement from ESPP variables. Results The ESPP measurements demonstrated good to excellent intra-rater (ICC = 0.881) and inter-rater (ICC = 0.967) reliability. Significant correlations were observed between bladder base displacement and middle ( r  = .619, P  < .001) and front ( r  = −.379, P  =.002) vectors. The top-performing models for predicting bladder base displacement were the support vector machine [root mean square error (RMSE) = 0.139, R2 = 0.542], random forest (RMSE = 0.123, R2 = 0.367), and AdaBoost (RMSE = 0.123, R2 = 0.320) on the training set, and AdaBoost (RMSE = 0.173, R2 = 0.537), random forest (RMSE = 0.177, R2 = 0.512), and support vector machine (RMSE = 0.178, R2 = 0.508) on the test set. In predicting bladder base displacement, Bland–Altman analysis revealed these models had minimal systematic bias, with mean differences ranging from −0.007 to 0.066, and clinically acceptable limits of agreement. Conclusion This study demonstrates the potential of ESPP measurements and machine learning algorithms as a reliable and valid noninvasive approach for assessing PFM strength by quantifying the directionality of contractions, overcoming the limitations of traditional techniques.
format Article
id doaj-art-a38602d169c84da1bccad00ef4d21bcb
institution Kabale University
issn 2055-2076
language English
publishDate 2025-01-01
publisher SAGE Publishing
record_format Article
series Digital Health
spelling doaj-art-a38602d169c84da1bccad00ef4d21bcb2025-01-24T09:04:01ZengSAGE PublishingDigital Health2055-20762025-01-011110.1177/20552076251316730Novel approach for noninvasive pelvic floor muscle strength measurement using extracorporeal surface perineal pressure measurement and machine learning modelingUi-jae Hwang0Sun-hee Ahn1Hyeon-ju Lee2Yurin Jeon3Myung Jae Jeon4 Department of Physical Therapy, College of Health Science, Laboratory of KEMA AI Research (KAIR), Yonsei University, Wonju, Kangwon-Do, Korea Department of Physical Therapy, College of Health Science, Laboratory of Kinetic Ergocise Based on Movement Analysis, Yonsei University, Wonju, Kangwon-Do, Korea Department of Physical Therapy, College of Health Science, Laboratory of Kinetic Ergocise Based on Movement Analysis, Yonsei University, Wonju, Kangwon-Do, Korea Department of Physical Therapy, College of Health Science, Laboratory of Kinetic Ergocise Based on Movement Analysis, Yonsei University, Wonju, Kangwon-Do, Korea Department of Obstetrics and Gynecology, Seoul National University Hospital, Seoul, KoreaObjective Accurate measurement of pelvic floor muscle (PFM) strength is crucial for the management of pelvic floor disorders. However, the current methods are invasive, uncomfortable, and lack standardization. This study aimed to introduce a novel noninvasive approach for precise PFM strength quantification by leveraging extracorporeal surface perineal pressure (ESPP) measurements and machine learning algorithms. Methods Twenty-one healthy women participated in this study. ESPP measurements were obtained using a 10 × 10 pressure array sensor during maximal voluntary PFM contractions in a seated position. Simultaneously, transabdominal ultrasound was used to measure bladder base displacement (mm) as a reference for PFM contraction strength. Seven ESPP variables were calculated based on ESPP data and intra- and inter-rater reliabilities were assessed. Machine learning algorithms predicted bladder base displacement from ESPP variables. Results The ESPP measurements demonstrated good to excellent intra-rater (ICC = 0.881) and inter-rater (ICC = 0.967) reliability. Significant correlations were observed between bladder base displacement and middle ( r  = .619, P  < .001) and front ( r  = −.379, P  =.002) vectors. The top-performing models for predicting bladder base displacement were the support vector machine [root mean square error (RMSE) = 0.139, R2 = 0.542], random forest (RMSE = 0.123, R2 = 0.367), and AdaBoost (RMSE = 0.123, R2 = 0.320) on the training set, and AdaBoost (RMSE = 0.173, R2 = 0.537), random forest (RMSE = 0.177, R2 = 0.512), and support vector machine (RMSE = 0.178, R2 = 0.508) on the test set. In predicting bladder base displacement, Bland–Altman analysis revealed these models had minimal systematic bias, with mean differences ranging from −0.007 to 0.066, and clinically acceptable limits of agreement. Conclusion This study demonstrates the potential of ESPP measurements and machine learning algorithms as a reliable and valid noninvasive approach for assessing PFM strength by quantifying the directionality of contractions, overcoming the limitations of traditional techniques.https://doi.org/10.1177/20552076251316730
spellingShingle Ui-jae Hwang
Sun-hee Ahn
Hyeon-ju Lee
Yurin Jeon
Myung Jae Jeon
Novel approach for noninvasive pelvic floor muscle strength measurement using extracorporeal surface perineal pressure measurement and machine learning modeling
Digital Health
title Novel approach for noninvasive pelvic floor muscle strength measurement using extracorporeal surface perineal pressure measurement and machine learning modeling
title_full Novel approach for noninvasive pelvic floor muscle strength measurement using extracorporeal surface perineal pressure measurement and machine learning modeling
title_fullStr Novel approach for noninvasive pelvic floor muscle strength measurement using extracorporeal surface perineal pressure measurement and machine learning modeling
title_full_unstemmed Novel approach for noninvasive pelvic floor muscle strength measurement using extracorporeal surface perineal pressure measurement and machine learning modeling
title_short Novel approach for noninvasive pelvic floor muscle strength measurement using extracorporeal surface perineal pressure measurement and machine learning modeling
title_sort novel approach for noninvasive pelvic floor muscle strength measurement using extracorporeal surface perineal pressure measurement and machine learning modeling
url https://doi.org/10.1177/20552076251316730
work_keys_str_mv AT uijaehwang novelapproachfornoninvasivepelvicfloormusclestrengthmeasurementusingextracorporealsurfaceperinealpressuremeasurementandmachinelearningmodeling
AT sunheeahn novelapproachfornoninvasivepelvicfloormusclestrengthmeasurementusingextracorporealsurfaceperinealpressuremeasurementandmachinelearningmodeling
AT hyeonjulee novelapproachfornoninvasivepelvicfloormusclestrengthmeasurementusingextracorporealsurfaceperinealpressuremeasurementandmachinelearningmodeling
AT yurinjeon novelapproachfornoninvasivepelvicfloormusclestrengthmeasurementusingextracorporealsurfaceperinealpressuremeasurementandmachinelearningmodeling
AT myungjaejeon novelapproachfornoninvasivepelvicfloormusclestrengthmeasurementusingextracorporealsurfaceperinealpressuremeasurementandmachinelearningmodeling