Background: Oral cancer can show heterogenous patterns of behavior. For proper and effective management of oral cancer, early diagnosis and accurate prediction of prognosis are important. To achieve this, artificial intelligence (AI) or its subfield, machine learning, has been touted for its potential to revolutionize cancer management through improved diagnostic precision and prediction of outcomes. Yet, to date, it has made only few contributions to actual medical practice or patient care. Objectives: This study provides a systematic review of diagnostic and prognostic application of machine learning in oral squamous cell carcinoma (OSCC) and also highlights some of the limitations and concerns of clinicians towards the implementation of ...
This systematic review analyses and describes the application and diagnostic accuracy of Artificial ...
This systematic review analyses and describes the application and diagnostic accuracy of Artificial ...
Patients that are diagnosed with oral cancer has more than an 83% survival chance if it is detected ...
Background: Oral cancer can show heterogenous patterns of behavior. For proper and effective managem...
Background Oral cancer can show heterogenous patterns of behavior. For proper and effective manag...
The application of deep machine learning, a subfield of artificial intelligence, has become a growin...
Background: The natural history of oral squamous cell carcinoma (OSCC) is complicated by progressive...
Objectives: Machine learning platforms are now being introduced into modern oncological practice fo...
Over the years, several machine-learning applications have been suggested to assist in various clini...
Background/Aim: Machine learning analyses of cancer outcomes for oral cancer remain sparse compared ...
Background: Machine learning models have shown high performance, particularly in the diagnosis and p...
Oral squamous cell carcinoma (OSCC) is one of the most prevalent cancers worldwide and its incidence...
Oral Squamous Cell Carcinoma (OSCC) is an aggressive tumor with a poor prognosis. Accurate and timel...
Background: In Sweden around 1400 people are affected by head and neck cancer each year, and around ...
IntroductionSeveral studies have emphasized the potential of artificial intelligence (AI) and its su...
This systematic review analyses and describes the application and diagnostic accuracy of Artificial ...
This systematic review analyses and describes the application and diagnostic accuracy of Artificial ...
Patients that are diagnosed with oral cancer has more than an 83% survival chance if it is detected ...
Background: Oral cancer can show heterogenous patterns of behavior. For proper and effective managem...
Background Oral cancer can show heterogenous patterns of behavior. For proper and effective manag...
The application of deep machine learning, a subfield of artificial intelligence, has become a growin...
Background: The natural history of oral squamous cell carcinoma (OSCC) is complicated by progressive...
Objectives: Machine learning platforms are now being introduced into modern oncological practice fo...
Over the years, several machine-learning applications have been suggested to assist in various clini...
Background/Aim: Machine learning analyses of cancer outcomes for oral cancer remain sparse compared ...
Background: Machine learning models have shown high performance, particularly in the diagnosis and p...
Oral squamous cell carcinoma (OSCC) is one of the most prevalent cancers worldwide and its incidence...
Oral Squamous Cell Carcinoma (OSCC) is an aggressive tumor with a poor prognosis. Accurate and timel...
Background: In Sweden around 1400 people are affected by head and neck cancer each year, and around ...
IntroductionSeveral studies have emphasized the potential of artificial intelligence (AI) and its su...
This systematic review analyses and describes the application and diagnostic accuracy of Artificial ...
This systematic review analyses and describes the application and diagnostic accuracy of Artificial ...
Patients that are diagnosed with oral cancer has more than an 83% survival chance if it is detected ...