Ultrasound Diagnosis of Pelvic Organ Prolapse Using Artificial Intelligence

被引:0
作者
Garcia-Mejido, Jose Antonio [1 ]
Galan-Paez, Juan [2 ]
Solis-Martin, David [2 ]
Fernandez-Palacin, Fernando [3 ]
Fernandez-Palacin, Ana [4 ]
Sainz-Bueno, Jose Antonio [1 ]
机构
[1] Univ Seville, Fac Med, Dept Surg, Seville 41009, Spain
[2] Univ Seville, Fac Comp Engn, Dept Comp Sci & Artificial Intelligence, Seville 41080, Spain
[3] Univ Cadiz, Dept Stat & Operat Res, Cadiz 11510, Spain
[4] Univ Seville, Dept Prevent Med & Publ Hlth, Biostat Unit, Seville 41009, Spain
关键词
machine learning; pelvic floor; ultrasonography; gradient boosting; XGBoost; artificial intelligence; pelvic organ prolapse; FLOOR DISORDERS; CLASSIFICATION; EPIDEMIOLOGY; PREVALENCE; SURGERY; RISK;
D O I
10.3390/jcm14113634
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background/Objectives: The aim of this study was to design a fully automated hybrid AI-based method, combining a convolutional neural network (CNN) and a tree-based model (XGBoost), which was capable of diagnosing different pelvic organ prolapses (POPs) in a dynamic two-dimensional ultrasound study from the midsagittal plane. Methods: This was a prospective observational study with 188 patients (99 with POP and 89 without POP). Transperineal pelvic floor ultrasound videos were performed, and normality or POP was defined. These videos were subsequently labeled, and an algorithm was designed to detect POP based on three phases: 1. Segmentation-a CNN was used to locate and identify the visible pelvic organs in each frame of the ultrasound video. The output had a very high dimensionality. 2. Feature engineering and dataset construction-new features related to the position and shape of the organs detected using the CNN were generated. 3. The POP predictive model-this was created from the dataset generated in the feature engineering phase. To evaluate diagnostic performance, accuracy, precision, recall, and F1-score were considered, along with the degree of agreement with the expert examiner. Results: The best agreements were observed in the diagnosis of cystocele and uterine prolapse (88.1%) and enterocoele (81.4%). The proposed methodology showed an accuracy of 96.43%, an overall accuracy of 98.31%, a recall of 100%, and an F1-score of 98.18% in detecting the presence of POP. However, when differentiating between the various types of POP, we observed that the precision, accuracy, recall, and F1-score were higher when detecting cystocele and uterine prolapse. Conclusions: We have developed the first predictive model capable of diagnosing POP in a dynamic, bi-dimensional ultrasound study from the midsagittal plane using deep learning and machine learning techniques.
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页数:14
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共 37 条
[1]   Epidemiology and outcome assessment of pelvic organ prolapse [J].
Barber, Matthew D. ;
Maher, Christopher .
INTERNATIONAL UROGYNECOLOGY JOURNAL, 2013, 24 (11) :1783-1790
[2]   Automatic segmentation method of pelvic floor levator hiatus in ultrasound using a self-normalizing neural network [J].
Bonmati, Ester ;
Hu, Yipeng ;
Sindhwani, Nikhil ;
Dietz, Hans Peter ;
D'hooge, Jan ;
Barratt, Dean ;
Deprest, Jan ;
Vercauteren, Tom .
JOURNAL OF MEDICAL IMAGING, 2018, 5 (02)
[3]   The standardization of terminology of female pelvic organ prolapse and pelvic floor dysfunction [J].
Bump, RC ;
Mattiasson, A ;
Bo, K ;
Brubaker, LP ;
DeLancey, JOL ;
Klarskov, P ;
Shull, BL ;
Smith, ARB .
AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 1996, 175 (01) :10-17
[4]   XGBoost: A Scalable Tree Boosting System [J].
Chen, Tianqi ;
Guestrin, Carlos .
KDD'16: PROCEEDINGS OF THE 22ND ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2016, :785-794
[5]   Ultrasound Assessment in Polycystic Ovary Syndrome Diagnosis: From Origins to Future Perspectives-A Comprehensive Review [J].
Di Michele, Stefano ;
Fulghesu, Anna Maria ;
Pittui, Elena ;
Cordella, Martina ;
Sicilia, Gilda ;
Mandurino, Giuseppina ;
D'Alterio, Maurizio Nicola ;
Vitale, Salvatore Giovanni ;
Angioni, Stefano .
BIOMEDICINES, 2025, 13 (02)
[6]   Ultrasound assessment of pelvic organ prolapse: the relationship between prolapse severity and symptoms [J].
Dietz, H. P. ;
Lekskulchai, O. .
ULTRASOUND IN OBSTETRICS & GYNECOLOGY, 2007, 29 (06) :688-691
[7]   Association between ICS POP-Q coordinates and translabial ultrasound findings: implications for definition of 'normal pelvic organ support' [J].
Dietz, H. P. ;
Atan, I. Kamisan ;
Salita, A. .
ULTRASOUND IN OBSTETRICS & GYNECOLOGY, 2016, 47 (03) :363-368
[8]   Introduction to artificial intelligence in ultrasound imaging in obstetrics and gynecology [J].
Drukker, L. ;
Noble, J. A. ;
Papageorghiou, A. T. .
ULTRASOUND IN OBSTETRICS & GYNECOLOGY, 2020, 56 (04) :498-505
[9]   Exploring the clinical diagnostic value of pelvic floor ultrasound images for pelvic organ prolapses through deep learning [J].
Duan, Li ;
Wang, Yangyun ;
Li, Juxiang ;
Zhou, Ningming .
JOURNAL OF SUPERCOMPUTING, 2021, 77 (09) :10699-10720
[10]   Convolutional neural network-based pelvic floor structure segmentation using magnetic resonance imaging in pelvic organ prolapse [J].
Feng, Fei ;
Ashton-Miller, James A. ;
DeLancey, John O. L. ;
Luo, Jiajia .
MEDICAL PHYSICS, 2020, 47 (09) :4281-4293