Detecting Medication-Taking Gestures Using Machine Learning and Accelerometer Data Collected via Smartwatch Technology: Instrument Validation Study

被引:4
|
作者
Odhiambo, Chrisogonas Odero [1 ]
Ablonczy, Lukacs [2 ]
Wright, Pamela J. [3 ]
Corbett, Cynthia F. [3 ]
Reichardt, Sydney [2 ]
Valafar, Homayoun [1 ,4 ]
机构
[1] Univ South Carolina, Dept Comp Sci & Engn, Columbia, SC USA
[2] Univ South Carolina, Honors Coll, Columbia, SC USA
[3] Univ South Carolina, Coll Nursing, Adv Chron Care Outcomes Res & iNnovat Ctr, Columbia, SC USA
[4] Univ South Carolina, Dept Comp Sci & Engn, 315 Main St, Columbia, SC 29208 USA
来源
JMIR HUMAN FACTORS | 2023年 / 10卷
关键词
machine learning; neural networks; automated pattern recognition; medication adherence; ecological momentary assessment; digital signal processing; digital biomarkers; FALL-DETECTION; ADHERENCE; CLASSIFICATION; RECOGNITION; PERSISTENCE; OUTCOMES; SENSORS; FUSION; SYSTEM; IMPACT;
D O I
10.2196/42714
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Medication adherence is a global public health challenge, as only approximately 50% of people adhere to their medication regimens. Medication reminders have shown promising results in terms of promoting medication adherence. However, practical mechanisms to determine whether a medication has been taken or not, once people are reminded, remain elusive. Emerging smartwatch technology may more objectively, unobtrusively, and automatically detect medication taking than currently available methods.Objective: This study aimed to examine the feasibility of detecting natural medication-taking gestures using smartwatches.Methods: A convenience sample (N=28) was recruited using the snowball sampling method. During data collection, each participant recorded at least 5 protocol-guided (scripted) medication-taking events and at least 10 natural instances of medication-taking events per day for 5 days. Using a smartwatch, the accelerometer data were recorded for each session at a sampling rate of 25 Hz. The raw recordings were scrutinized by a team member to validate the accuracy of the self-reports. The validated data were used to train an artificial neural network (ANN) to detect a medication-taking event. The training and testing data included previously recorded accelerometer data from smoking, eating, and jogging activities in addition to the medication-taking data recorded in this study. The accuracy of the model to identify medication taking was evaluated by comparing the ANN's output with the actual output.Results: Most (n=20, 71%) of the 28 study participants were college students and aged 20 to 56 years. Most individuals were Asian (n=12, 43%) or White (n=12, 43%), single (n=24, 86%), and right-hand dominant (n=23, 82%). In total, 2800 medication-taking gestures (n=1400, 50% natural plus n=1400, 50% scripted gestures) were used to train the network. During the testing session, 560 natural medication-taking events that were not previously presented to the ANN were used to assess the network. The accuracy, precision, and recall were calculated to confirm the performance of the network. The trained ANN exhibited an average true-positive and true-negative performance of 96.5% and 94.5%, respectively. The network exhibited <5% error in the incorrect classification of medication-taking gestures.Conclusions: Smartwatch technology may provide an accurate, nonintrusive means of monitoring complex human behaviors such as natural medication-taking gestures. Future research is warranted to evaluate the efficacy of using modern sensing devices and machine learning algorithms to monitor medication-taking behavior and improve medication adherence.
引用
收藏
页数:16
相关论文
共 28 条
  • [1] Detecting Smoking Events Using Accelerometer Data Collected Via Smartwatch Technology: Validation Study
    Cole, Casey A.
    Anshari, Dien
    Lambert, Victoria
    Thrasher, James F.
    Valafar, Homayoun
    JMIR MHEALTH AND UHEALTH, 2017, 5 (12):
  • [2] Using data mining technology to predict medication-taking behaviour in women with breast cancer: A retrospective study
    Kuo, Chen-Chen
    Wang, Hsiu-Hung
    Tseng, Li-Ping
    NURSING OPEN, 2022, 9 (06): : 2646 - 2656
  • [3] MACHINE LEARNING-BASED PREDICTION OF ICU COMPLICATIONS USING MEDICATION DATA: A VALIDATION STUDY
    Smith, Susan
    Zhao, Bokai
    Deng, Shiyuan
    Hu, Mengxuan
    Zhang, Tianyi
    Kong, Yanlei
    Shen, Ye
    Li, Sheng
    Murphy, David
    Murray, Brian
    Kamaleswaran, Rishikesan
    Chen, Xianyan
    Devlin, John
    Sikora, Andrea
    CRITICAL CARE MEDICINE, 2025, 53 (01)
  • [4] Using Machine Learning and Smartphone and Smartwatch Data to Detect Emotional States and Transitions: Exploratory Study
    Sultana, Madeena
    Al-Jefri, Majed
    Lee, Joon
    JMIR MHEALTH AND UHEALTH, 2020, 8 (09):
  • [5] Assessing the International Transferability of a Machine Learning Model for Detecting Medication Error in the General Internal Medicine Clinic: Multicenter Preliminary Validation Study
    Chin, Yen Po Harvey
    Song, Wenyu
    Lien, Chia En
    Yoon, Chang Ho
    Wang, Wei-Chen
    Liu, Jennifer
    Nguyen, Phung Anh
    Feng, Yi Ting
    Zhou, Li
    Li, Yu Chuan Jack
    Bates, David Westfall
    JMIR MEDICAL INFORMATICS, 2021, 9 (01)
  • [6] EUCLID: A New Approach to Constrain Nuclear Data via Optimized Validation Experiments using Machine Learning
    Hutchinson, J.
    Alwin, J.
    Clark, A. R.
    Cutler, T.
    Grosskopf, M. J.
    Haeck, W.
    Herman, M. W.
    Kleedtke, N.
    Lamproe, J.
    Little, R. C.
    Michaud, I. J.
    Neudecker, D.
    Rising, M. E.
    Smith, T.
    Thompson, N.
    Wiel, S. Vander
    Wynne, N.
    15TH INTERNATIONAL CONFERENCE ON NUCLEAR DATA FOR SCIENCE AND TECHNOLOGY, ND2022, 2023, 284
  • [7] IMPROVING THE FAST TEST USING MACHINE LEARNING AND LASSO REGRESSION ON ROUTINELY COLLECTED PRE-HOSPITAL DATA, WITH INTERNAL AND EXTERNAL VALIDATION
    Sammut-Powell, C.
    Ashton, C.
    Sperrin, M.
    McClelland, G.
    Parry-Jones, A.
    INTERNATIONAL JOURNAL OF STROKE, 2020, 15 (1_SUPPL) : 22 - 22
  • [8] A Pilot Study of Detecting Individual Sleep Apnea Events Using Noncontact Radar Technology, Pulse Oximetry, and Machine Learning
    Toften, Stale
    Kjellstadli, Jonas T.
    Tyvold, Stig S.
    Moxness, Mads H. S.
    JOURNAL OF SENSORS, 2021, 2021
  • [9] A Pilot Study of Detecting Individual Sleep Apnea Events Using Noncontact Radar Technology, Pulse Oximetry, and Machine Learning
    Toften, Ståle
    Kjellstadli, Jonas T.
    Tyvold, Stig S.
    Moxness, Mads H. S.
    Journal of Sensors, 2021, 2021
  • [10] Using machine learning to investigate self- medication purchasing in England via high street retailer loyalty card data
    Davies, Alec
    Green, Mark A.
    Singleton, Alex D.
    PLOS ONE, 2018, 13 (11):