Using computational ethnography to enhance the curation of real-world data (RWD) for chronic pain and invisible disability use cases

Author:

Moore Rhonda J.1,Smith Ross2,Liu Qi1

Affiliation:

1. Food and Drug Administration

2. Microsoft Corporation/Uniersity College Dublin

Abstract

Chronic pain is a significant source of suffering, disability and societal cost in the US. However, while the ability to detect a person's risk for developing persistent pain is desirable for timely assessment, management, treatment, and reduced health care costs---no objective measure to detect clinical pain intensity exist. Recent Artificial Intelligence (AI) methods have deployed clinical decision- making and assessment tools to enhance pain risk detection across core social and clinical domains. Yet, risk assessment models are only as "good" as the data they are based on. Thus, ensuring fairness is also a critical component of equitable care in both the short and long term. This paper takes an intersectional and public health approach to AI fairness in the context of pain and invisible disability, suggesting that computational ethnography is a multimodal and participatory real-world data (RWD) methodology that can be used to enhance the curation of intersectional knowledge bases, thereby expanding existing boundaries of AI fairness in terms of inclusiveness and transparency for pain and invisible disability use cases.

Publisher

Association for Computing Machinery (ACM)

Reference57 articles.

1. Cheatle MD. Biopsychosocial Approach to Assessing and Managing Patients with Chronic Pain. Med Clin North Am. 2016;100(1):43-53. 10.1016/j.mcna.2015.08.007 Cheatle MD. Biopsychosocial Approach to Assessing and Managing Patients with Chronic Pain. Med Clin North Am. 2016;100(1):43-53. 10.1016/j.mcna.2015.08.007

2. Shanthanna H Strand NH Provenzano DA etal Caring for patients with pain during the COVID-19 pandemic: consensus recommendations from an international expert panel. Anaesthesia. 2020;75(7):935-944. Strand NH Provenzano DA et al. Caring for patients with pain during the COVID-19 pandemic: consensus recommendations from an international expert panel. Anaesthesia. 2020;75(7):935-944. doi:10.1111/anae.15076. 10.1111/anae.15076H Shanthanna H Strand NH Provenzano DA et al. Caring for patients with pain during the COVID-19 pandemic: consensus recommendations from an international expert panel. Anaesthesia. 2020;75(7):935-944. Strand NH Provenzano DA et al. Caring for patients with pain during the COVID-19 pandemic: consensus recommendations from an international expert panel. Anaesthesia. 2020;75(7):935-944. doi:10.1111/anae.15076. 10.1111/anae.15076H

3. Lee P Le Saux M Siegel R etal Racial and ethnic disparities in the management of acute pain in US emergency departments: Meta-analysis and systematic review. Am J Emerg Med. 2019;37(9):1770-1777. 10.1016/j.ajem.2019.06.014 Lee P Le Saux M Siegel R et al. Racial and ethnic disparities in the management of acute pain in US emergency departments: Meta-analysis and systematic review. Am J Emerg Med. 2019;37(9):1770-1777. 10.1016/j.ajem.2019.06.014

4. Pain in low-income older women with disabilities: a qualitative descriptive study

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