Executable of trained model presented in Boll&Vázquez Montes de Oca et al. (unpublished).
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Updated
Nov 12, 2024 - Jupyter Notebook
Executable of trained model presented in Boll&Vázquez Montes de Oca et al. (unpublished).
Performing Automatic Identification and Staging of Urothelial Carcinoma in Bladder Cancer Patients Using a Hybrid Deep-Machine Learning Approach, Sarkar et al, MDPI Cancers, 2023.
In-house bladder cancer data analysis from a collaborative project between Dhaka University, Bangladesh and IARC, Lyon, France.
R code used for the master thesis entitled "Germline variants associated with prognosis of patients with non muscle invasive bladder cancer".
Using biological constraints to improve the performance of transcriptomic gene signatures
Analyses and figures related to Mossanen and Carvalho et al Eur Urol 2021 manuscript entitled "Genomic Features of Muscle-Invasive Bladder Cancer Arising After Prostate Radiotherapy"
A new tool to predict early-stage bladder cancer recurrence and progression. The application uses advanced artificial intelligence to combine state-of-the-art scales, outperforms them, and is freely available online.
Image analysis pipelines for double stained urothelial carcinoma samples featuring the watershed-based algorithm and template matching techniques.
This is a group project
Using Keras to build a deep neural network for bladder cancer progression
Creating a Random Forest model to predict the progression of bladder cancer
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