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基于被动感知数据的化疗期间症状严重程度评估:探索性研究

Estimation of Symptom Severity During Chemotherapy From Passively Sensed Data: Exploratory Study.

作者信息

Low Carissa A, Dey Anind K, Ferreira Denzil, Kamarck Thomas, Sun Weijing, Bae Sangwon, Doryab Afsaneh

机构信息

Department of Medicine, University of Pittsburgh, Pittsburgh, PA, United States.

Department of Psychology, University of Pittsburgh, Pittsburgh, PA, United States.

出版信息

J Med Internet Res. 2017 Dec 19;19(12):e420. doi: 10.2196/jmir.9046.

Abstract

BACKGROUND

Physical and psychological symptoms are common during chemotherapy in cancer patients, and real-time monitoring of these symptoms can improve patient outcomes. Sensors embedded in mobile phones and wearable activity trackers could be potentially useful in monitoring symptoms passively, with minimal patient burden.

OBJECTIVE

The aim of this study was to explore whether passively sensed mobile phone and Fitbit data could be used to estimate daily symptom burden during chemotherapy.

METHODS

A total of 14 patients undergoing chemotherapy for gastrointestinal cancer participated in the 4-week study. Participants carried an Android phone and wore a Fitbit device for the duration of the study and also completed daily severity ratings of 12 common symptoms. Symptom severity ratings were summed to create a total symptom burden score for each day, and ratings were centered on individual patient means and categorized into low, average, and high symptom burden days. Day-level features were extracted from raw mobile phone sensor and Fitbit data and included features reflecting mobility and activity, sleep, phone usage (eg, duration of interaction with phone and apps), and communication (eg, number of incoming and outgoing calls and messages). We used a rotation random forests classifier with cross-validation and resampling with replacement to evaluate population and individual model performance and correlation-based feature subset selection to select nonredundant features with the best predictive ability.

RESULTS

Across 295 days of data with both symptom and sensor data, a number of mobile phone and Fitbit features were correlated with patient-reported symptom burden scores. We achieved an accuracy of 88.1% for our population model. The subset of features with the best accuracy included sedentary behavior as the most frequent activity, fewer minutes in light physical activity, less variable and average acceleration of the phone, and longer screen-on time and interactions with apps on the phone. Mobile phone features had better predictive ability than Fitbit features. Accuracy of individual models ranged from 78.1% to 100% (mean 88.4%), and subsets of relevant features varied across participants.

CONCLUSIONS

Passive sensor data, including mobile phone accelerometer and usage and Fitbit-assessed activity and sleep, were related to daily symptom burden during chemotherapy. These findings highlight opportunities for long-term monitoring of cancer patients during chemotherapy with minimal patient burden as well as real-time adaptive interventions aimed at early management of worsening or severe symptoms.

摘要

背景

身体和心理症状在癌症患者化疗期间很常见,对这些症状进行实时监测可改善患者预后。嵌入手机和可穿戴活动追踪器中的传感器可能有助于被动监测症状,且患者负担极小。

目的

本研究旨在探讨被动感知的手机和Fitbit数据是否可用于估计化疗期间的每日症状负担。

方法

共有14名接受胃肠道癌化疗的患者参与了这项为期4周的研究。在研究期间,参与者携带一部安卓手机并佩戴一个Fitbit设备,同时还完成了12种常见症状的每日严重程度评分。将症状严重程度评分相加,得出每天的总症状负担分数,并以个体患者的平均值为中心进行评分,分为低、中、高症状负担日。从原始手机传感器和Fitbit数据中提取日级别特征,包括反映活动能力和活动、睡眠、手机使用情况(如与手机和应用程序交互的时长)以及通信情况(如来电和去电数量及短信数量)的特征。我们使用带有交叉验证和重复抽样的旋转随机森林分类器来评估总体和个体模型的性能,并使用基于相关性的特征子集选择来选择具有最佳预测能力的非冗余特征。

结果

在收集到症状和传感器数据的295天里,许多手机和Fitbit特征与患者报告的症状负担分数相关。我们的总体模型准确率达到了88.1%。准确率最高的特征子集包括久坐行为是最频繁的活动、轻度体力活动时间较少、手机的加速度变化较小且平均加速度较低、屏幕开启时间较长以及与手机应用程序的交互较多。手机特征的预测能力优于Fitbit特征。个体模型的准确率在78.1%至100%之间(平均为88.4%),相关特征子集因参与者而异。

结论

被动传感器数据,包括手机加速度计和使用情况以及Fitbit评估的活动和睡眠,与化疗期间的每日症状负担相关。这些发现凸显了以最小患者负担对癌症患者化疗期间进行长期监测以及针对症状恶化或严重症状进行早期管理的实时适应性干预的机会。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6193/5750420/f8599d100676/jmir_v19i12e420_fig1.jpg

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