LGAICYJun 2, 2023

Navigating Fairness in Radiology AI: Concepts, Consequences,and Crucial Considerations

arXiv:2306.01333v11 citationsh-index: 33Has Code
Originality Synthesis-oriented
AI Analysis

This is an incremental review focusing on fairness concepts and tools for radiology AI to mitigate bias and improve equity in patient outcomes.

The review addresses fairness in radiology AI by discussing bias auditing with the Aequitas toolkit to prevent disparities in disease screening, highlighting its use of statistical theories and key fairness metrics like Equal Parity and False Positive Rate Parity.

Artificial Intelligence (AI) has significantly revolutionized radiology, promising improved patient outcomes and streamlined processes. However, it's critical to ensure the fairness of AI models to prevent stealthy bias and disparities from leading to unequal outcomes. This review discusses the concept of fairness in AI, focusing on bias auditing using the Aequitas toolkit, and its real-world implications in radiology, particularly in disease screening scenarios. Aequitas, an open-source bias audit toolkit, scrutinizes AI models' decisions, identifying hidden biases that may result in disparities across different demographic groups and imaging equipment brands. This toolkit operates on statistical theories, analyzing a large dataset to reveal a model's fairness. It excels in its versatility to handle various variables simultaneously, especially in a field as diverse as radiology. The review explicates essential fairness metrics: Equal and Proportional Parity, False Positive Rate Parity, False Discovery Rate Parity, False Negative Rate Parity, and False Omission Rate Parity. Each metric serves unique purposes and offers different insights. We present hypothetical scenarios to demonstrate their relevance in disease screening settings, and how disparities can lead to significant real-world impacts.

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