Home
Abstract
My Abstract(s)
Login
ePosters
Back
Final Presentation Format
Non-Moderated Poster Abstract
Eposter Presentation
Eposter in PDF Format
https://storage.unitedwebnetwork.com/files/1237/7c756a629ae1990cc0206912c69e2be9.pdf
Accept format: PDF. The file size should not be more than 5MB
Eposter in Image Format
https://storage.unitedwebnetwork.com/files/1237/4b82734c1e9211be427f45cf18540ede.tiff
Accept format: PNG/JPG/WEBP. The file size should not be more than 2MB
Presentation Date / Time
Submission Status
Submitted
Abstract
Abstract Title
Integration of Quantified 3D Morphological Features and Radiomics from T2WI-MRI Could Improve Diagnostic Performance in MIBC
Presentation Type
Podium Abstract
Manuscript Type
Clinical Research
Abstract Category *
Oncology: Bladder and UTUC
Author's Information
Number of Authors (including submitting/presenting author) *
9
No more than 10 authors can be listed (as per the Good Publication Practice (GPP) Guidelines).
Please ensure the authors are listed in the right order.
Country
Japan
Co-author 1
Shunsuke Ikuma s-ikuma@nms.ac.jp Nippon medical school Urology Tokyo Japan *
Co-author 2
Jun Akatsuka s00-001@nms.ac.jp Nippon medical school Urology Tokyo Japan -
Co-author 3
Godai Kaneko g-kaneko@nms.ac.jp Nippon medical school Urology Tokyo Japan -
Co-author 4
Hikaru Mikami h-mikami86@nms.ac.jp Nippon medical school Urology Tokyo Japan -
Co-author 5
Kotaro Obayashi kotaro-o@nms.ac.jp Nippon medical school Urology Tokyo Japan -
Co-author 6
Yuki Endo y-endo1@nms.ac.jp Nippon medical school Urology Tokyo Japan -
Co-author 7
Hayato Takeda s8053@nms.ac.jp Nippon medical school Urology Tokyo Japan -
Co-author 8
Go Kimura gokimura@nms.ac.jp Nippon medical school Urology Tokyo Japan -
Co-author 9
Yukihiro Kondo kondoy@nms.ac.jp Nippon medical school Urology Tokyo Japan -
Co-author 10
Co-author 11
Co-author 12
Co-author 13
Co-author 14
Co-author 15
Co-author 16
Co-author 17
Co-author 18
Co-author 19
Co-author 20
Abstract Content
Introduction
Radiomics has been widely studied and used to predict muscle invasive bladder cancer (MIBC). However, it is not known whether adding manually quantified 3D morphological features to radiomics could improve the diagnostic performance of MIBC. This study aims to examine the diagnostic performance of integrating quantified 3D morphological features with radiomics for MIBC diagnosis.
Materials and Methods
We conducted a study with 106 bladder cancer patients diagnosed pathologically, who underwent preoperative MRI from August 2021 to July 2023. We manually extracted 3D radiomics features from T2WI using 3D Slicer (4.8.1) and PyRadiomics (3.1.0). We also manually quantified the 3D morphological features and added them to the software-extracted radiomics features. The MIBC diagnostic performance of several machine learning models was validated in JMP Pro (18.0.2). The dataset was randomly divided into a training set and a validation set at a ratio of 4:1. Multiple models were applied, and each was trained and evaluated using 10-fold stratified cross-validation with 5 repetitions. For each fold, training and validation AUCs were calculated, and an average ROC curve was generated by interpolating across all folds.
Results
This study included 106 patients (88 men, 18 women; median age: 73.0 years), of whom 32 had MIBC and 74 had NMIBC. Compared to the results using radiomics alone, the integration of manually quantified 3D morphological features improved the diagnostic performance of each model. AUC values increased in Generalized Regression Lasso (0.900 to 0.945), Support Vector Machine (0.865 to 0.904), and Boosted Tree (0.903 to 0.919), indicating enhanced discriminative ability. Neural Boosting (0.939 to 0.951) and Bootstrap Forest (0.951 to 0.963) also showed improvement while maintaining high accuracy.
Conclusions
The integration of software-derived and manually quantified radiomics features from T2WI-MRI demonstrated high diagnostic performance for predicting MIBC using multiple machine learning models.
Keywords
Muscle invasive bladder cancer (MIBC) Radiomics 3D Morphological Features Magnetic Resonance Imaging (MRI) T2-weighted Imaging (T2WI) Machine Learning
Figure 1
Figure 1 Caption
Figure 2
Figure 2 Caption
Figure 3
Figure 3 Caption
Figure 4
Figure 4 Caption
Figure 5
Figure 5 Caption
Character Count
1798
Vimeo Link
Presentation Details
Session
Date
Time
Presentation Order
0