Cancers, Free Full-Text
Por um escritor misterioso
Descrição
Urinary cytology is a useful, essential diagnostic method in routine urological clinical practice. Liquid-based cytology (LBC) for urothelial carcinoma screening is commonly used in the routine clinical cytodiagnosis because of its high cellular yields. Since conventional screening processes by cytoscreeners and cytopathologists using microscopes is limited in terms of human resources, it is important to integrate new deep learning methods that can automatically and rapidly diagnose a large amount of specimens without delay. The goal of this study was to investigate the use of deep learning models for the classification of urine LBC whole-slide images (WSIs) into neoplastic and non-neoplastic (negative). We trained deep learning models using 786 WSIs by transfer learning, fully supervised, and weakly supervised learning approaches. We evaluated the trained models on two test sets, one of which was representative of the clinical distribution of neoplastic cases, with a combined total of 750 WSIs, achieving an area under the curve for diagnosis in the range of 0.984–0.990 by the best model, demonstrating the promising potential use of our model for aiding urine cytodiagnostic processes.
Cancer in Lymph Nodes May Help Tumors Metastasize - NCI
Multimodal analysis of cell-free DNA whole-methylome sequencing for cancer detection and localization
Game Rong Den 5 Get File - Colaboratory
Sotorasib for Lung Cancers with KRAS p.G12C Mutation
Global cancer statistics 2018: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries - Bray - 2018 - CA: A Cancer Journal for Clinicians - Wiley Online Library
Cancer Free Posters for Sale
National Comprehensive Cancer Network - Home
Vag Diagnose Software Version 311 - Colaboratory
Cancers, Free Full-Text
Cancer statistics, 2023 - Siegel - 2023 - CA: A Cancer Journal for Clinicians - Wiley Online Library
Cancers, Free Full-Text
Hallmarks of Cancer: The Next Generation: Cell
Cancer-Free with Food: A Step-by-Step by Werner Gray, Liana
Cancers, Free Full-Text