Johns Hopkins University Applied Physics Laboratory, Laurel, Maryland, United States of America.
Department of Engineering Sciences and Applied Mathematics, Northwestern University, Evanston, Illinois, United States of America.
PLoS Comput Biol. 2021 Mar 11;17(3):e1008542. doi: 10.1371/journal.pcbi.1008542. eCollection 2021 Mar.
Patients with sickle cell disease (SCD) experience lifelong struggles with both chronic and acute pain, often requiring medical interventMaion. Pain can be managed with medications, but dosages must balance the goal of pain mitigation against the risks of tolerance, addiction and other adverse effects. Setting appropriate dosages requires knowledge of a patient's subjective pain, but collecting pain reports from patients can be difficult for clinicians and disruptive for patients, and is only possible when patients are awake and communicative. Here we investigate methods for estimating SCD patients' pain levels indirectly using vital signs that are routinely collected and documented in medical records. Using machine learning, we develop both sequential and non-sequential probabilistic models that can be used to infer pain levels or changes in pain from sequences of these physiological measures. We demonstrate that these models outperform null models and that objective physiological data can be used to inform estimates for subjective pain.
患有镰状细胞病 (SCD) 的患者一生都在与慢性和急性疼痛作斗争,通常需要医疗干预。疼痛可以用药物治疗,但剂量必须在减轻疼痛的目标与耐受、成瘾和其他不良反应的风险之间取得平衡。设定适当的剂量需要了解患者的主观疼痛,但从患者那里收集疼痛报告对临床医生来说很困难,而且会干扰患者,只有当患者清醒并能交流时才能进行。在这里,我们研究了使用在医疗记录中常规收集和记录的生命体征间接估计 SCD 患者疼痛程度的方法。我们使用机器学习开发了顺序和非顺序概率模型,可用于从这些生理测量的序列中推断疼痛水平或疼痛变化。我们证明这些模型优于零模型,并且客观的生理数据可用于为主观疼痛提供信息。