Diurnal Pain Classification in Critically Ill Patients using Machine Learning on Accelerometry and Analgesic Data.

Jessica Sena, Sabyasachi Bandyopadhyay, Mohammad Tahsin Mostafiz, Andrea Davidson, Ziyuan Guan, Jesimon Barreto, Tezcan Ozrazgat-Baslanti, Patrick Tighe, Azra Bihorac, William Robson Schwartz, Parisa Rashidi
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Abstract

Quantifying pain in patients admitted to intensive care units (ICUs) is challenging due to the increased prevalence of communication barriers in this patient population. Previous research has posited a positive correlation between pain and physical activity in critically ill patients. In this study, we advance this hypothesis by building machine learning classifiers to examine the ability of accelerometer data collected from daily wearables to predict self-reported pain levels experienced by patients in the ICU. We trained multiple Machine Learning (ML) models, including Logistic Regression, CatBoost, and XG-Boost, on statistical features extracted from the accelerometer data combined with previous pain measurements and patient demographics. Following previous studies that showed a change in pain sensitivity in ICU patients at night, we performed the task of pain classification separately for daytime and nighttime pain reports. In the pain versus no-pain classification setting, logistic regression gave the best classifier in daytime (AUC: 0.72, F1-score: 0.72), and CatBoost gave the best classifier at nighttime (AUC: 0.82, F1-score: 0.82). Performance of logistic regression dropped to 0.61 AUC, 0.62 F1-score (mild vs. moderate pain, nighttime), and CatBoost's performance was similarly affected with 0.61 AUC, 0.60 F1-score (moderate vs. severe pain, daytime). The inclusion of analgesic information benefited the classification between moderate and severe pain. SHAP analysis was conducted to find the most significant features in each setting. It assigned the highest importance to accelerometer-related features on all evaluated settings but also showed the contribution of the other features such as age and medications in specific contexts. In conclusion, accelerometer data combined with patient demographics and previous pain measurements can be used to screen painful from painless episodes in the ICU and can be combined with analgesic information to provide moderate classification between painful episodes of different severities.

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利用加速度测量和镇痛数据的机器学习对重症患者的昼夜疼痛进行分类。
由于重症监护病房(ICU)患者普遍存在沟通障碍,因此量化重症监护病房(ICU)患者的疼痛具有挑战性。以前的研究认为,重症患者的疼痛与体力活动之间存在正相关。在本研究中,我们通过建立机器学习分类器来检验从日常可穿戴设备中收集的加速度计数据预测重症监护室患者自我报告的疼痛程度的能力,从而推进了这一假设。我们根据从加速度计数据中提取的统计特征,结合以前的疼痛测量结果和患者人口统计学特征,训练了多个机器学习(ML)模型,包括逻辑回归、CatBoost 和 XG-Boost。之前的研究表明,ICU 患者夜间的疼痛敏感度会发生变化,因此我们对白天和夜间的疼痛报告分别进行了疼痛分类。在疼痛与无疼痛分类设置中,逻辑回归在白天给出了最佳分类器(AUC:0.72,F1-score:0.72),而 CatBoost 在夜间给出了最佳分类器(AUC:0.82,F1-score:0.82)。逻辑回归的 AUC 值降至 0.61,F1 值降至 0.62(轻度疼痛与中度疼痛,夜间),CatBoost 的 AUC 值为 0.61,F1 值为 0.60(中度疼痛与重度疼痛,日间)。镇痛信息的加入有利于中度和重度疼痛的分类。进行了 SHAP 分析,以找出每种环境中最重要的特征。在所有评估环境中,加速度计相关特征的重要性最高,但也显示出年龄和药物等其他特征在特定环境中的作用。总之,加速度计数据与患者人口统计学特征和先前的疼痛测量结果相结合,可用于筛选重症监护室中的疼痛发作和无痛发作,并可与镇痛剂信息相结合,对不同严重程度的疼痛发作进行适度分类。
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