SPAILGJul 3, 2023

Wearable-based Fair and Accurate Pain Assessment Using Multi-Attribute Fairness Loss in Convolutional Neural Networks

arXiv:2307.05333v21 citationsh-index: 31
Originality Incremental advance
AI Analysis

This addresses fairness issues in clinical pain evaluation, which is crucial for reliable adoption in healthcare, though it appears incremental as it builds on existing mitigation methods.

The paper tackled the problem of bias in AI models for pain assessment by proposing a Multi-attribute Fairness Loss (MAFL) based CNN to ensure fair predictions across groups, achieving accuracy rates of 75-85% on a dataset of 868 individuals.

The integration of diverse health data, such as IoT (Internet of Things), EHR (Electronic Health Record), and clinical surveys, with scalable AI(Artificial Intelligence) has enabled the identification of physical, behavioral, and psycho-social indicators of pain. However, the adoption of AI in clinical pain evaluation is hindered by challenges like personalization and fairness. Many AI models, including machine and deep learning, exhibit biases, discriminating against specific groups based on gender or ethnicity, causing skepticism among medical professionals about their reliability. This paper proposes a Multi-attribute Fairness Loss (MAFL) based Convolutional Neural Network (CNN) model designed to account for protected attributes in data, ensuring fair pain status predictions while minimizing disparities between privileged and unprivileged groups. We evaluate whether a balance between accuracy and fairness is achievable by comparing the proposed model with existing mitigation methods. Our findings indicate that the model performs favorably against state-of-the-art techniques. Using the NIH All-Of-US dataset, comprising data from 868 individuals over 1500 days, we demonstrate our model's effectiveness, achieving accuracy rates between 75% and 85%.

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