The investigators aim to experiment and implement various deep learning architectures to achieve human-level accuracy in Computer-aided diagnosis (CAD) systems. In particular, the investigators are interested in detecting bladder tumors from CT urography scans and cystoscopies of the bladder in this project.
The investigators aim to experiment and implement various deep learning architectures to achieve human-level accuracy in Computer-aided diagnosis (CAD) systems. In particular, the investigators are interested in detecting bladder tumors from CT urography scans and cystoscopies of the bladder in this project. The investigators want to classify bladder tumors as cancer, non cancer, high grade and low grade, invasive and non-invasive, with high sensitivity and low false positive rate using various convolutional neural networks (CNN). This task can be considered as the first step in building CAD systems for bladder cancer diagnosis. Moreover, by automating this task, the investigator scan significantly reduce the time for the radiologists to create large-scale labeled datasets of CT-urography scans and reduce the false-negative and positive that can happen due to human evaluation cystoscopies.
Study Type
OBSERVATIONAL
Enrollment
5,000
Detection of bladder tumor with help of Artificial intelligence
Zealand University Hospital
Roskilde, Denmark
RECRUITINGComparing standard technique to Machine Learning
The accuracy of Machine learning to detect bladder cancer compared to standard cystoscopy
Time frame: 5 years
Detecting accuracy of subtypes of bladder cancer
The abelity of Machine Learning to identify high grad bladder cancer from low grad bladder cancer
Time frame: 5 years
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