The unavailability of sufficient information for proper diagnosis, incomplete or miscommunication between patient and the clinician, or among the healthcare professionals, delay or incorrect diagnosis, the fatigue of clinician, or even the high diagnostic complexity in limited time can lead to diagnostic errors. Diagnostic errors have adverse effects on the treatment of a patient. Unnecessary treatments increase the medical bills and deteriorate the health of a patient. Such diagnostic errors that harm the patient in various ways could be minimized using machine learning. Machine learning algorithms could be used to diagnose various diseases with high accuracy. The use of machine learning could assist the doctors in making decisions on time...
Spurred by advances in processing power, memory, storage, and an unprecedented wealth of data, compu...
Machine learning (ML) is a powerful and flexible tool that can be used to analyze and predict outcom...
Rationale: This paper aims to show how the focus on eradicating bias from Machine Learning decision-...
The unavailability of sufficient information for proper diagnosis, incomplete or miscommunication be...
Decision making in case of medical diagnosis is a complicated process. A large number of overlapping...
Computer-aided diagnosis (CAD), a vibrant medical imaging research field, is expanding quickly. Beca...
Human healthcare is one of the most important topics for society. It tries to find the correct effec...
Human healthcare is one of the most important topics for society. It tries to find the correct effec...
Globally, there is a substantial unmet need to diagnose various diseases effectively. The complexity...
Relevance. The current state of medicine is imperfect as in every other field. Some main discrete pr...
The healthcare industry has historically been an early adopter of technology advancements and has re...
The world is currently undergoing a rapid transformation in technology that will drastically change ...
Machine learning techniques are associated with diagnostics systems to apply methods that enable com...
One of the most significant subjects of society is human healthcare. It is looking for the best one ...
The healthcare industry is very different from other industries. It is a high-priority industry and ...
Spurred by advances in processing power, memory, storage, and an unprecedented wealth of data, compu...
Machine learning (ML) is a powerful and flexible tool that can be used to analyze and predict outcom...
Rationale: This paper aims to show how the focus on eradicating bias from Machine Learning decision-...
The unavailability of sufficient information for proper diagnosis, incomplete or miscommunication be...
Decision making in case of medical diagnosis is a complicated process. A large number of overlapping...
Computer-aided diagnosis (CAD), a vibrant medical imaging research field, is expanding quickly. Beca...
Human healthcare is one of the most important topics for society. It tries to find the correct effec...
Human healthcare is one of the most important topics for society. It tries to find the correct effec...
Globally, there is a substantial unmet need to diagnose various diseases effectively. The complexity...
Relevance. The current state of medicine is imperfect as in every other field. Some main discrete pr...
The healthcare industry has historically been an early adopter of technology advancements and has re...
The world is currently undergoing a rapid transformation in technology that will drastically change ...
Machine learning techniques are associated with diagnostics systems to apply methods that enable com...
One of the most significant subjects of society is human healthcare. It is looking for the best one ...
The healthcare industry is very different from other industries. It is a high-priority industry and ...
Spurred by advances in processing power, memory, storage, and an unprecedented wealth of data, compu...
Machine learning (ML) is a powerful and flexible tool that can be used to analyze and predict outcom...
Rationale: This paper aims to show how the focus on eradicating bias from Machine Learning decision-...