RESULTS

Recommendations based on your choices

You are interested in the technology user Health Care Professional

You selected the axon Digital Health Equity

You are facing the challenge Disparities in System Accuracy

Your choices drive to a risk level that is high

Risk-based Recommendations

Promote awareness of potential biases in existing datasets and tools.

Introduce intermediate tools and workshops for bias analysis.

Establish bias-correction taskforces and high-level AI oversight committees.

General Recommendations

Regularly assess the quality of the data, implement bias detection and mitigation techniques, ensure diverse representation in training data, continuously monitor model performance across demographic groups, prioritize transparency and accountability in model deployment, foster collaboration between stakeholders, and uphold ethical considerations throughout the process. By following these steps, healthcare providers can work towards improving the accuracy and fairness of predictive models, ultimately reducing disparities in healthcare outcomes for all patient populations.

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