Exploration of efficacy of gland morphology and architectural features in prostate cancer gleason grading
Clara Mosquera-Lopez(Artificial Intelligence in Medicine (Canada)), Ian M. Thompson, Isaac Sanchez(The University of Texas at San Antonio), Ali Almuntashri(The University of Texas at San Antonio), Amar Al Rikabi(King Saud University), Osman Zin Al-Abdin(King Saud University), Sos С. Agaian(The University of Texas at San Antonio)
Cited by 14
Related Papers
Association analyses of more than 140,000 men identify 63 new prostate cancer susceptibility loci
|Nature Genetics|2018|1k
Intermittent versus Continuous Androgen Deprivation in Prostate Cancer
|New England Journal of Medicine|2013|568
An artificial intelligence decision support system for the management of type 1 diabetes
|Nature Metabolism|2020|157
Computer-Aided Prostate Cancer Diagnosis From Digitized Histopathology: A Review on Texture-Based Systems
|IEEE Reviews in Biomedical Engineering|2014|118
Fine-mapping of prostate cancer susceptibility loci in a large meta-analysis identifies candidate causal variants
|Nature Communications|2018|113