Department of Neurological Surgery, Washington University, St. Louis , Missouri , USA.
Department of Psychology and Brain Sciences, Washington University, St. Louis , Missouri , USA.
Neurosurgery. 2024 Sep 1;95(3):617-626. doi: 10.1227/neu.0000000000002911. Epub 2024 Mar 29.
Neurosurgeons and hospitals devote tremendous resources to improving recovery from lumbar spine surgery. Current efforts to predict surgical recovery rely on one-time patient report and health record information. However, longitudinal mobile health (mHealth) assessments integrating symptom dynamics from ecological momentary assessment (EMA) and wearable biometric data may capture important influences on recovery. Our objective was to evaluate whether a preoperative mHealth assessment integrating EMA with Fitbit monitoring improved predictions of spine surgery recovery.
Patients age 21-85 years undergoing lumbar surgery for degenerative disease between 2021 and 2023 were recruited. For up to 3 weeks preoperatively, participants completed EMAs up to 5 times daily asking about momentary pain, disability, depression, and catastrophizing. At the same time, they were passively monitored using Fitbit trackers. Study outcomes were good/excellent recovery on the Quality of Recovery-15 (QOR-15) and a clinically important change in Patient-Reported Outcomes Measurement Information System Pain Interference 1 month postoperatively. After feature engineering, several machine learning prediction models were tested. Prediction performance was measured using the c-statistic.
A total of 133 participants were included, with a median (IQR) age of 62 (53, 68) years, and 56% were female. The median (IQR) number of preoperative EMAs completed was 78 (61, 95), and the median (IQR) number of days with usable Fitbit data was 17 (12, 21). 63 patients (48%) achieved a clinically meaningful improvement in Patient-Reported Outcomes Measurement Information System pain interference. Compared with traditional evaluations alone, mHealth evaluations led to a 34% improvement in predictions for pain interference (c = 0.82 vs c = 0.61). 49 patients (40%) had a good or excellent recovery based on the QOR-15. Including preoperative mHealth data led to a 30% improvement in predictions of QOR-15 (c = 0.70 vs c = 0.54).
Multimodal mHealth evaluations improve predictions of lumbar surgery outcomes. These methods may be useful for informing patient selection and perioperative recovery strategies.
神经外科医生和医院投入了大量资源来提高腰椎手术的恢复效果。目前,预测手术恢复效果的方法依赖于一次性的患者报告和健康记录信息。然而,整合了来自生态瞬时评估(EMA)和可穿戴生物特征数据的症状动态的纵向移动健康(mHealth)评估,可能会捕捉到对恢复有重要影响的因素。我们的目标是评估整合 EMA 和 Fitbit 监测的术前 mHealth 评估是否可以提高脊柱手术恢复效果的预测能力。
招募了 2021 年至 2023 年间因退行性疾病接受腰椎手术的 21-85 岁患者。在术前最多 3 周内,参与者每天最多完成 5 次 EMA,询问瞬时疼痛、残疾、抑郁和灾难化感受。同时,他们使用 Fitbit 追踪器进行被动监测。研究结果是术后 1 个月的 QOR-15 达到良好/优秀水平,以及 Patient-Reported Outcomes Measurement Information System 疼痛干扰的临床重要变化。在进行特征工程后,测试了几个机器学习预测模型。使用 c 统计量来衡量预测性能。
共纳入 133 名参与者,中位(IQR)年龄为 62(53,68)岁,56%为女性。中位(IQR)完成的术前 EMA 数量为 78(61,95),中位(IQR)有可用 Fitbit 数据的天数为 17(12,21)。63 名患者(48%)在 Patient-Reported Outcomes Measurement Information System 疼痛干扰方面取得了有临床意义的改善。与传统评估相比,mHealth 评估可将疼痛干扰的预测准确率提高 34%(c = 0.82 比 c = 0.61)。根据 QOR-15,49 名患者(40%)恢复良好或优秀。纳入术前 mHealth 数据可将 QOR-15 的预测准确率提高 30%(c = 0.70 比 c = 0.54)。
多模态 mHealth 评估可提高腰椎手术结果的预测能力。这些方法可能有助于为患者选择和围手术期恢复策略提供信息。