Department of Radiology, Emory University, Atlanta, GA.
Albert Einstein College of Medicine, New York, NY.
Tech Vasc Interv Radiol. 2024 Sep;27(3):100990. doi: 10.1016/j.tvir.2024.100990. Epub 2024 Aug 24.
Musculoskeletal (MSK) pain leads to significant healthcare utilization, decreased productivity, and disability globally. Due to its complex etiology, MSK pain is often chronic and challenging to manage effectively. Disparities in pain management-influenced by provider implicit biases and patient race, gender, age, and socioeconomic status-contribute to inconsistent outcomes. Interventional radiology (IR) provides innovative solutions for MSK pain through minimally invasive procedures, which can alleviate symptoms and reduce reliance on opioids. However, IR services may be underutilized, especially due to current treatment paradigms, referral patterns, and in areas with limited access to care. Artificial intelligence (AI) presents a promising avenue to address these inequities by analyzing large datasets to identify disparities in pain management, recognizing implicit biases, improving cultural competence, and enhancing pain assessment through multimodal data analysis. Additionally, patients who may benefit from an IR pain procedure for their MSK pain may then receive more information through their providers after being identified as a candidate by AI sifting through the electronic medical record. By leveraging AI, healthcare providers can potentially mitigate their biases while ensuring more equitable pain management and better overall outcomes for patients.
肌肉骨骼(MSK)疼痛会在全球范围内导致大量医疗保健的利用、生产力下降和残疾。由于其复杂的病因,MSK 疼痛通常是慢性的,难以有效管理。疼痛管理方面的差异——受提供者的隐性偏见以及患者的种族、性别、年龄和社会经济地位的影响——导致结果不一致。介入放射学(IR)通过微创程序为 MSK 疼痛提供创新的解决方案,这些程序可以缓解症状并减少对阿片类药物的依赖。然而,IR 服务可能未得到充分利用,尤其是由于当前的治疗模式、转诊模式以及在获得医疗服务有限的地区。人工智能(AI)通过分析大型数据集来识别疼痛管理方面的差异,识别隐性偏见,提高文化能力,并通过多模态数据分析来增强疼痛评估,为解决这些不平等问题提供了有前途的途径。此外,那些可能因 MSK 疼痛而受益于 IR 疼痛治疗的患者,在通过 AI 筛选电子病历被识别为候选者后,可能会从他们的提供者那里获得更多信息。通过利用人工智能,医疗保健提供者可以潜在地减轻他们的偏见,同时确保更公平的疼痛管理和更好的整体患者结果。