Low Carissa A, Li Meng, Vega Julio, Durica Krina C, Ferreira Denzil, Tam Vernissia, Hogg Melissa, Zeh Iii Herbert, Doryab Afsaneh, Dey Anind K
Mobile Sensing + Health Institute, Center for Behavioral Health, Media, and Technology, University of Pittsburgh, Pittsburgh, PA, United States.
Information Technology and Electrical Engineering, University of Oulu, Oulu, Finland.
JMIR Cancer. 2021 Apr 27;7(2):e27975. doi: 10.2196/27975.
Cancer treatments can cause a variety of symptoms that impair quality of life and functioning but are frequently missed by clinicians. Smartphone and wearable sensors may capture behavioral and physiological changes indicative of symptom burden, enabling passive and remote real-time monitoring of fluctuating symptoms.
The aim of this study was to examine whether smartphone and Fitbit data could be used to estimate daily symptom burden before and after pancreatic surgery.
A total of 44 patients scheduled for pancreatic surgery participated in this prospective longitudinal study and provided sufficient sensor and self-reported symptom data for analyses. Participants collected smartphone sensor and Fitbit data and completed daily symptom ratings starting at least two weeks before surgery, throughout their inpatient recovery, and for up to 60 days after postoperative discharge. Day-level behavioral features reflecting mobility and activity patterns, sleep, screen time, heart rate, and communication were extracted from raw smartphone and Fitbit data and used to classify the next day as high or low symptom burden, adjusted for each individual's typical level of reported symptoms. In addition to the overall symptom burden, we examined pain, fatigue, and diarrhea specifically.
Models using light gradient boosting machine (LightGBM) were able to correctly predict whether the next day would be a high symptom day with 73.5% accuracy, surpassing baseline models. The most important sensor features for discriminating high symptom days were related to physical activity bouts, sleep, heart rate, and location. LightGBM models predicting next-day diarrhea (79.0% accuracy), fatigue (75.8% accuracy), and pain (79.6% accuracy) performed similarly.
Results suggest that digital biomarkers may be useful in predicting patient-reported symptom burden before and after cancer surgery. Although model performance in this small sample may not be adequate for clinical implementation, findings support the feasibility of collecting mobile sensor data from older patients who are acutely ill as well as the potential clinical value of mobile sensing for passive monitoring of patients with cancer and suggest that data from devices that many patients already own and use may be useful in detecting worsening perioperative symptoms and triggering just-in-time symptom management interventions.
癌症治疗会引发多种症状,这些症状会损害生活质量与身体机能,但临床医生常常对此有所忽视。智能手机和可穿戴传感器或许能够捕捉到表明症状负担的行为和生理变化,从而实现对波动症状的被动式远程实时监测。
本研究旨在探究智能手机和Fitbit数据是否可用于估计胰腺手术前后的每日症状负担。
共有44名计划接受胰腺手术的患者参与了这项前瞻性纵向研究,并提供了足够的传感器数据和自我报告的症状数据用于分析。参与者收集智能手机传感器和Fitbit数据,并在手术前至少两周开始,在整个住院康复期间以及术后出院后长达60天内完成每日症状评分。从原始智能手机和Fitbit数据中提取反映活动能力、活动模式、睡眠、屏幕使用时间、心率和通信情况的每日行为特征,并用于将次日分类为高症状负担或低症状负担,同时根据每个人报告症状的典型水平进行调整。除了整体症状负担外,我们还专门研究了疼痛、疲劳和腹泻。
使用轻量级梯度提升机(LightGBM)的模型能够以73.5%的准确率正确预测次日是否为高症状日,超过了基线模型。区分高症状日的最重要传感器特征与体力活动发作、睡眠、心率和位置有关。预测次日腹泻(准确率79.0%)、疲劳(准确率75.8%)和疼痛(准确率79.6%)的LightGBM模型表现类似。
结果表明,数字生物标志物可能有助于预测癌症手术前后患者报告的症状负担。尽管在这个小样本中的模型性能可能不足以用于临床应用,但研究结果支持从急性病老年患者中收集移动传感器数据的可行性,以及移动传感对癌症患者进行被动监测的潜在临床价值,并表明许多患者已经拥有和使用的设备所产生的数据可能有助于检测围手术期症状的恶化并触发及时的症状管理干预措施。