Investigation of systemic biases in AI models for the clinical domain have been limited. We re-created a series of models predicting need of wraparound services, and inspected them for biases across age, gender and race using the AI Fairness 360 framework. AI models reported performance metrics which were comparable to original efforts. Investigation of biases using the AI Fairness framework found low likelihood that patient age, gender and sex are introducing bias into our algorithms
Background: There is a growing concern about artificial intelligence (AI) applications in healthcare...
The pervasive application of algorithmic decision-making is raising concerns on the risk of unintend...
Health systems rely on commercial prediction algorithms to identify and help patients with complex h...
BACKGROUND: Although numerous studies have shown the potential of artificial intelligence (AI) syste...
The adoption of artificial intelligence (AI) algorithms is rapidly increasing in healthcare. Such al...
Fairness and bias are crucial concepts in artificial intelligence, yet they are relatively ignored i...
Objective: to analyze which ethically relevant biases have been identified by academic literature in...
Background While artificial intelligence (AI) offers possibilities of advanced clinical predictio...
To analyze which ethically relevant biases have been identified by academic literature in artificial...
Artificial intelligence (AI) has an astonishing potential in assisting clinical decision making and ...
BackgroundWhile artificial intelligence (AI) offers possibilities of advanced clinical prediction an...
Multiple reporting guidelines for artificial intelligence (AI) models in healthcare recommend that m...
Introduction: Artificial intelligence-based modelling has created an opportunity to improve upon exi...
As models based on machine learning continue to be developed for healthcare applications, greater ef...
Abstract The machine learning community has become alert to the ways that predictive algorithms can ...
Background: There is a growing concern about artificial intelligence (AI) applications in healthcare...
The pervasive application of algorithmic decision-making is raising concerns on the risk of unintend...
Health systems rely on commercial prediction algorithms to identify and help patients with complex h...
BACKGROUND: Although numerous studies have shown the potential of artificial intelligence (AI) syste...
The adoption of artificial intelligence (AI) algorithms is rapidly increasing in healthcare. Such al...
Fairness and bias are crucial concepts in artificial intelligence, yet they are relatively ignored i...
Objective: to analyze which ethically relevant biases have been identified by academic literature in...
Background While artificial intelligence (AI) offers possibilities of advanced clinical predictio...
To analyze which ethically relevant biases have been identified by academic literature in artificial...
Artificial intelligence (AI) has an astonishing potential in assisting clinical decision making and ...
BackgroundWhile artificial intelligence (AI) offers possibilities of advanced clinical prediction an...
Multiple reporting guidelines for artificial intelligence (AI) models in healthcare recommend that m...
Introduction: Artificial intelligence-based modelling has created an opportunity to improve upon exi...
As models based on machine learning continue to be developed for healthcare applications, greater ef...
Abstract The machine learning community has become alert to the ways that predictive algorithms can ...
Background: There is a growing concern about artificial intelligence (AI) applications in healthcare...
The pervasive application of algorithmic decision-making is raising concerns on the risk of unintend...
Health systems rely on commercial prediction algorithms to identify and help patients with complex h...