Background/Aim: Machine learning analyses of cancer outcomes for oral cancer remain sparse compared to other types of cancer like breast or lung. The purpose of the present study was to compare the performance of machine learning algorithms in the prediction of global, recurrence‐free five‐year survival in oral cancer patients based on clinical and histopathological data.Methods: Data were gathered retrospectively from 416 patients with oral squamous cell carcinoma. The data set was divided into training and test data set (75:25 split). Training performance of five machine learning algorithms (Logistic regression, K‐nearest neighbours, Naïve Bayes, Decision tree and Random forest classifiers) for prediction was assessed by k‐fold cross‐vali...
Using the prediction of cancer outcome as a model, we have tested the hypothesis that through analys...
Over the years, several machine-learning applications have been suggested to assist in various clini...
Prognostication for cancer patients is integral for patient counseling and treatment planning, yet p...
Background/Aim: Machine learning analyses of cancer outcomes for oral cancer remain sparse compared ...
Background: The natural history of oral squamous cell carcinoma (OSCC) is complicated by progressive...
Background/Aim: Machine learning (ML) models are often modelled to predict cancer prognosis but rare...
Background: Oral cancer can show heterogenous patterns of behavior. For proper and effective managem...
Objectives: Machine learning platforms are now being introduced into modern oncological practice fo...
Background Oral cancer can show heterogenous patterns of behavior. For proper and effective manag...
Abstract Background: The proper estimate of the risk of recurrences in early-stage oral tongue squa...
Abstract Objective We aimed to develop a 5-year overall survival prediction model for patients with ...
The Cox proportional hazards model commonly used to evaluate prognostic variables in survival of can...
The application of deep machine learning, a subfield of artificial intelligence, has become a growin...
BackgroundAccurately predicting the survival rate of breast cancer patients is a major issue for can...
Background: The prediction of overall survival in tongue cancer is important for planning of persona...
Using the prediction of cancer outcome as a model, we have tested the hypothesis that through analys...
Over the years, several machine-learning applications have been suggested to assist in various clini...
Prognostication for cancer patients is integral for patient counseling and treatment planning, yet p...
Background/Aim: Machine learning analyses of cancer outcomes for oral cancer remain sparse compared ...
Background: The natural history of oral squamous cell carcinoma (OSCC) is complicated by progressive...
Background/Aim: Machine learning (ML) models are often modelled to predict cancer prognosis but rare...
Background: Oral cancer can show heterogenous patterns of behavior. For proper and effective managem...
Objectives: Machine learning platforms are now being introduced into modern oncological practice fo...
Background Oral cancer can show heterogenous patterns of behavior. For proper and effective manag...
Abstract Background: The proper estimate of the risk of recurrences in early-stage oral tongue squa...
Abstract Objective We aimed to develop a 5-year overall survival prediction model for patients with ...
The Cox proportional hazards model commonly used to evaluate prognostic variables in survival of can...
The application of deep machine learning, a subfield of artificial intelligence, has become a growin...
BackgroundAccurately predicting the survival rate of breast cancer patients is a major issue for can...
Background: The prediction of overall survival in tongue cancer is important for planning of persona...
Using the prediction of cancer outcome as a model, we have tested the hypothesis that through analys...
Over the years, several machine-learning applications have been suggested to assist in various clini...
Prognostication for cancer patients is integral for patient counseling and treatment planning, yet p...