Light Bladder Net: Non-invasive Bladder Cancer Prediction by Weighted Deep Learning Approaches and Graphical Data Transformation.

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Tác giả: Kai-Po Chang, Yen-Wei Chu, Min-Ling Chuang, Shih-Huan Lin, Chi-Hua Tung, Ya-Wen Xu

Ngôn ngữ: eng

Ký hiệu phân loại: 006.693 Three-dimensional graphics

Thông tin xuất bản: Greece : Anticancer research , 2025

Mô tả vật lý:

Bộ sưu tập: NCBI

ID: 743669

BACKGROUND/AIM: Bladder cancer (BCa) is associated with high recurrence rates, emphasizing the importance of early and accurate detection. This study aimed to develop a lightweight and fast deep learning model, Light-Bladder-Net (LBN), for non-invasive BCa detection using conventional urine data. MATERIALS AND METHODS: We improved LBN's generalization by applying data transformations, adding uniform noise, and employing feature selection methods (mRMR, PCA, SVD, t-SNE) to extract key vectors from its fully connected layer. These vectors were integrated into the original dataset, and multiple machine learning models were trained to enhance classification accuracy. Lastly, weighted voting was used to assign importance across these models. RESULTS: Our approach achieved an accuracy of 0.83, a sensitivity of 0.85, a specificity of 0.80, and a precision of 0.81, indicating robust performance in detecting BCa from urine data. CONCLUSION: This non-invasive diagnostic method offers rapid, cost-effective predictions. A free online tool is available for clinicians and patients to conveniently detect BCa using standard urine samples at http://merlin.nchu.edu.tw/LBN/.
1. Light
2. Bladder
3. Net
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