Whole-slide Image and CT Radiomics Based Deep Learning System for Prognostication Prediction in Bladder Cancer

Status: Recruiting
Location: See location...
Intervention Type: Other
Study Type: Observational
SUMMARY

Bladder cancer (BLCA), with its diverse histopathological features and varying patient outcomes, poses significant challenges in diagnosis and prognosis. Postoperative survival stratification based on radiomics feature and whole slide image feature may be useful for treatment decisions to improve prognosis. In this research, we aim to develop a deep learning-based prognostic-stratification system for automatic prediction of overall and cancer-specific survival in patients with BLCA.

Eligibility
Participation Requirements
Sex: All
Healthy Volunteers: f
View:

• patients with bladder cancer who had surgery like radical cystectomy or transurethral resection of bladder tumour (TURBT)

• contrast-CT scan less than two weeks before surgery

• complete CT image data and clinical data

• complete whole slide image data

Locations
Other Locations
China
Department of Urology, The First Affiliated Hospital of Chongqing Medical University
RECRUITING
Chongqing
Contact Information
Primary
QuanHao He
2020120460@stu.cqmu.edu.cn
800-555-5555
Backup
Mingzhao Xiao, PHD
2023140134@stu.cqmu.edu.cn
800-555-5555
Time Frame
Start Date: 2024-01-01
Estimated Completion Date: 2025-10-01
Participants
Target number of participants: 1000
Treatments
BLCA
patients with bladder cancer who had surgery like radical cystectomy or transurethral resection of bladder tumour (TURBT).
Related Therapeutic Areas
Sponsors
Leads: Mingzhao Xiao

This content was sourced from clinicaltrials.gov