Author:
Carvalho Rafael Lima Rodrigues,Ponce Daniela,Marcolino Milena Soriano
Funder
Conselho Nacional de Desenvolvimento Científico e Tecnológico
Reference15 articles.
1. Artificial intelligence to advance acute and intensive care medicine;Biesheuvel;Curr. Opin. Crit. Care,2024
2. TRIPOD+AI statement: updated guidance for reporting clinical prediction models that use regression or machine learning methods;Collins;BMJ,2024
3. de Paiva, B. B. M., Pereira, P. D., de Andrade, C. M. V., Gomes, V. M. R., Souza-Silva, M. V. R., Martins, K. P. M. P., Sales, T. L. S., de Carvalho, R. L. R., Pires, M. C., Ramos, L. E. F., Silva, R. T., de Freitas Martins Vieira, A., Nunes, A. G. S., de Oliveira Jorge, A., de Oliveira Maurílio, A., Scotton, A. L. B. A., da Silva, C. T. C. A., Cimini, C. C. R., Ponce, D., … Marcolino, M. S. (2023). Potential and limitations of machine meta-learning (ensemble) methods for predicting COVID-19 mortality in a large inhospital Brazilian dataset. Scientific Reports, 13(1), 1–18. https://doi.org/10.1038/s41598-023-28579-z.
4. Figueiredo, F. de A., Ramos, L. E. F., Silva, R. T., Ponce, D., de Carvalho, R. L. R., Schwarzbold, A. V., Maurílio, A. de O., Scotton, A. L. B. A., Garbini, A. F., Farace, B. L., Garcia, B. M., da Silva, C. T. C. A., Cimini, C. C. R., de Carvalho, C. A., Dias, C. D. S., Silveira, D. V., Manenti, E. R. F., Cenci, E. P. de A., Anschau, F., … Marcolino, M. S. (2022). Development and validation of the MMCD score to predict kidney replacement therapy in COVID-19 patients. BMC Medicine, 20(1), 324. https://doi.org/10.1186/s12916-022-02503-0.
5. Hemofiltration compared to hemodialysis for acute kidney injury: systematic review and meta-analysis;Friedrich;Crit. Care,2012