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Pelvic floor muscle contraction automatic evaluation algorithm for pelvic floor muscle training biofeedback using self-performed ultrasound.
Muta, Miyako; Takahashi, Toshiaki; Tamai, Nao; Suzuki, Motofumi; Kawamoto, Atsuo; Sanada, Hiromi; Nakagami, Gojiro.
Affiliation
  • Muta M; Department of Gerontological Nursing / Wound Care Management, Graduate School of Medicine, The University of Tokyo, 7-3-1, Hongo, Bunkyo-ku, Tokyo, Japan.
  • Takahashi T; Department of Gerontological Nursing / Wound Care Management, Graduate School of Medicine, The University of Tokyo, 7-3-1, Hongo, Bunkyo-ku, Tokyo, Japan.
  • Tamai N; Department of Nursing, Yokohama City University, 3-9, Fukuura, Kanazawa-ku, Yokohama-shi, Kanagawa, Japan.
  • Suzuki M; Department of Urology, Tokyo Metropolitan Bokutoh Hospital, 4-23-15, Kotobashi, Sumida-ku, Tokyo, Japan.
  • Kawamoto A; Department of Urology, The Kikkoman General Hospital, 100, Miyazaki, Noda-shi, Chiba, Japan.
  • Sanada H; Division of Ultrasound, Department of Diagnostic Imaging, Tokyo Medical University Hospital, 6-7-1, Nishishinjuku, Shinjuku-ku, Tokyo, Japan.
  • Nakagami G; Ishikawa Prefectural Nursing University, 1-1, Gakuendai, Kahoku-shi, Ishikawa, Japan.
BMC Womens Health ; 24(1): 219, 2024 Apr 04.
Article in En | MEDLINE | ID: mdl-38575899
ABSTRACT

INTRODUCTION:

Non-invasive biofeedback of pelvic floor muscle training (PFMT) is required for continuous training in home care. Therefore, we considered self-performed ultrasound (US) in adult women with a handheld US device applied to the bladder. However, US images are difficult to read and require assistance when using US at home. In this study, we aimed to develop an algorithm for the automatic evaluation of pelvic floor muscle (PFM) contraction using self-performed bladder US videos to verify whether it is possible to automatically determine PFM contraction from US videos.

METHODS:

Women aged ≥ 20 years were recruited from the outpatient Urology and Gynecology departments of a general hospital or through snowball sampling. The researcher supported the participants in their self-performed bladder US and videos were obtained several times during PFMT. The US videos obtained were used to develop an automatic evaluation algorithm. Supervised machine learning was then performed using expert PFM contraction classifications as ground truth data. Time-series features were generated from the x- and y-coordinate values of the bladder area including the bladder base. The final model was evaluated for accuracy, area under the curve (AUC), recall, precision, and F1. The contribution of each feature variable to the classification ability of the model was estimated.

RESULTS:

The 1144 videos obtained from 56 participants were analyzed. We split the data into training and test sets with 7894 time series features. A light gradient boosting machine model (Light GBM) was selected, and the final model resulted in an accuracy of 0.73, AUC = 0.91, recall = 0.66, precision = 0.73, and F1 = 0.73. Movement of the y-coordinate of the bladder base was shown as the most important.

CONCLUSION:

This study showed that automated classification of PFM contraction from self-performed US videos is possible with high accuracy.
Subject(s)

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Pelvic Floor / Muscle Contraction Limits: Adult / Female / Humans Language: En Journal: BMC Womens Health Journal subject: SAUDE DA MULHER Year: 2024 Type: Article Affiliation country: Japan

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Pelvic Floor / Muscle Contraction Limits: Adult / Female / Humans Language: En Journal: BMC Womens Health Journal subject: SAUDE DA MULHER Year: 2024 Type: Article Affiliation country: Japan