Background: Machine learning models have been reported to assist in the proper management of cancer through accurate prognostication. Integrating such models as a web-based prognostic tool or calculator may help to improve cancer care and assist clinicians in making oral cancer management-related decisions. However, none of these models have been recommended in daily practices of oral cancer due to concerns related to machine learning methodologies and clinical implementation challenges. An instance of the concerns inherent to the science of machine learning is explainability. Objectives: This study measures the usability and explainability of a machine learning-based web prognostic tool that was designed for prediction of oral tongue cance...
Background/Aim: Machine learning analyses of cancer outcomes for oral cancer remain sparse compared ...
Nasopharyngeal cancer (NPC) has a unique histopathology compared with other head and neck cancers. I...
Brain cancer is one of the most deadly cancers, with a very low survival rate. By understanding the ...
Background: Machine learning models have been reported to assist in the proper management of cancer ...
Background: Oral cancer can show heterogenous patterns of behavior. For proper and effective managem...
Background: Machine learning models have shown high performance, particularly in the diagnosis and p...
Background Oral cancer can show heterogenous patterns of behavior. For proper and effective manag...
Objectives: Machine learning platforms are now being introduced into modern oncological practice fo...
Tongue cancer constitutes the majority of the malignancies of the head and neck region. Traditionall...
Background: The natural history of oral squamous cell carcinoma (OSCC) is complicated by progressive...
Background: The prediction of overall survival in tongue cancer is important for planning of persona...
Estimation of risk of recurrence in early-stage oral tongue squamous cell carcinoma (OTSCC) remains ...
Over the years, several machine-learning applications have been suggested to assist in various clini...
Machine-intelligence platforms for the prediction of the probability of malignant transformation of ...
Background/Aim: Machine learning analyses of cancer outcomes for oral cancer remain sparse compared ...
Nasopharyngeal cancer (NPC) has a unique histopathology compared with other head and neck cancers. I...
Brain cancer is one of the most deadly cancers, with a very low survival rate. By understanding the ...
Background: Machine learning models have been reported to assist in the proper management of cancer ...
Background: Oral cancer can show heterogenous patterns of behavior. For proper and effective managem...
Background: Machine learning models have shown high performance, particularly in the diagnosis and p...
Background Oral cancer can show heterogenous patterns of behavior. For proper and effective manag...
Objectives: Machine learning platforms are now being introduced into modern oncological practice fo...
Tongue cancer constitutes the majority of the malignancies of the head and neck region. Traditionall...
Background: The natural history of oral squamous cell carcinoma (OSCC) is complicated by progressive...
Background: The prediction of overall survival in tongue cancer is important for planning of persona...
Estimation of risk of recurrence in early-stage oral tongue squamous cell carcinoma (OTSCC) remains ...
Over the years, several machine-learning applications have been suggested to assist in various clini...
Machine-intelligence platforms for the prediction of the probability of malignant transformation of ...
Background/Aim: Machine learning analyses of cancer outcomes for oral cancer remain sparse compared ...
Nasopharyngeal cancer (NPC) has a unique histopathology compared with other head and neck cancers. I...
Brain cancer is one of the most deadly cancers, with a very low survival rate. By understanding the ...