Clinical validation of smartphone-based activity tracking in peripheral artery disease patients

被引:0
|
作者
Raheel Ata
Neil Gandhi
Hannah Rasmussen
Osama El-Gabalawy
Santiago Gutierrez
Alizeh Ahmad
Siddharth Suresh
Roshini Ravi
Kara Rothenberg
Oliver Aalami
机构
[1] Stanford University,Division of Vascular & Endovascular Surgery, Department of Surgery
[2] Veterans Affairs Palo Alto Health Care System,Division of Vascular Surgery
[3] Stanford University,Precision Health and Integrated Diagnostics Center at Stanford
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Peripheral artery disease (PAD) is a vascular disease that leads to reduced blood flow to the limbs, often causing claudication symptoms that impair patients’ ability to walk. The distance walked during a 6-min walk test (6MWT) correlates well with patient claudication symptoms, so we developed the VascTrac iPhone app as a platform for monitoring PAD using a digital 6MWT. In this study, we evaluate the accuracy of the built-in iPhone distance and step-counting algorithms during 6MWTs. One hundred and fourteen (114) participants with PAD performed a supervised 6MWT using the VascTrac app while simultaneously wearing an ActiGraph GT9X Activity Monitor. Steps and distance-walked during the 6MWT were manually measured and used to assess the bias in the iPhone CMPedometer algorithms. The iPhone CMPedometer step algorithm underestimated steps with a bias of −7.2% ± 13.8% (mean ± SD) and had a mean percent difference with the Actigraph (Actigraph-iPhone) of 5.7% ± 20.5%. The iPhone CMPedometer distance algorithm overestimated distance with a bias of 43% ± 42% due to overestimation in stride length. Our correction factor improved distance estimation to 8% ± 32%. The Ankle-Brachial Index (ABI) correlated poorly with steps (R = 0.365) and distance (R = 0.413). Thus, in PAD patients, the iPhone’s built-in distance algorithm is unable to accurately measure distance, suggesting that custom algorithms are necessary for using iPhones as a platform for monitoring distance walked in PAD patients. Although the iPhone accurately measured steps, more research is necessary to establish step counting as a clinically meaningful metric for PAD.
引用
收藏
相关论文
共 50 条
  • [21] Development and validation of a machine learning, smartphone-based tonometer
    Wu, Yue
    Luttrell, Ian
    Feng, Shu
    Chen, Philip P.
    Spaide, Ted
    Lee, Aaron Y.
    Wen, Joanne C.
    BRITISH JOURNAL OF OPHTHALMOLOGY, 2020, 104 (10) : 1394 - 1398
  • [22] Validation of a smartphone-based event recorder for arrhythmia detection
    Narasimha, Deepika
    Hanna, Nader
    Beck, Hiroko
    Chaskes, Michael
    Glover, Robert
    Gatewood, Robert
    Bourji, Mohamad
    Gudleski, Gregory D.
    Danzer, Susan
    Curtis, Anne B.
    PACE-PACING AND CLINICAL ELECTROPHYSIOLOGY, 2018, 41 (05): : 487 - 494
  • [23] Clinical validation of a smartphone-based handheld fundus camera for the evaluation of optic nerve head
    Titoneli, Carolina C.
    Filho, Marcio S.
    Lencione, Diego
    Vieira, Flavio Pascoal
    Stuchi, Jose Augusto
    Paula, Jayter S.
    ARQUIVOS BRASILEIROS DE OFTALMOLOGIA, 2021, 84 (06) : 531 - 537
  • [24] Mobile Forensics: A Smartphone-Based Activity Logger
    Moco, Nuno Freire
    Correia, Paulo Lobato
    2014 21ST INTERNATIONAL CONFERENCE ON TELECOMMUNICATIONS (ICT), 2014, : 462 - 466
  • [25] A Smartphone-based System for Clinical Gait Assessment
    Perez, Andres A.
    Labrador, Miguel A.
    2016 IEEE INTERNATIONAL CONFERENCE ON SMART COMPUTING (SMARTCOMP), 2016, : 39 - 46
  • [26] Smartphone-Based Method for Detecting Periodontal Disease
    Askarian, Behnam
    Tabei, Fatemehsadat
    Tipton, Grace Anne
    Chong, Jo Woon
    2019 IEEE HEALTHCARE INNOVATIONS AND POINT OF CARE TECHNOLOGIES (HI-POCT), 2019, : 53 - 55
  • [27] Smartphone-Based Tracking of Sleep in Depression, Anxiety, and Psychotic Disorders
    Talayeh Aledavood
    John Torous
    Ana Maria Triana Hoyos
    John A. Naslund
    Jukka-Pekka Onnela
    Matcheri Keshavan
    Current Psychiatry Reports, 2019, 21
  • [28] Smartphone-Based Indoor Tracking in Multiple-Floor Scenarios
    Nguyen, Thu L. N.
    Vy, Tuan D.
    Kim, Kwan-Soo
    Lin, Chenxiang
    Shin, Yoan
    IEEE ACCESS, 2021, 9 : 141048 - 141063
  • [29] Smartphone-based colorimetric detection system for portable health tracking
    Balbach, Samira
    Jiang, Nan
    Moreddu, Rosalia
    Dong, Xingchen
    Kurz, Wolfgang
    Wang, Congyan
    Dong, Jie
    Yin, Yixia
    Butt, Haider
    Brischwein, Martin
    Hayden, Oliver
    Jakobi, Martin
    Tasoglu, Savas
    Koch, Alexander W.
    Yetisen, Ali K.
    ANALYTICAL METHODS, 2021, 13 (38) : 4361 - 4369
  • [30] Smartphone-Based Pedestrian Inertial Tracking: Dataset, Model, and Deployment
    Liu, Feng
    Ge, Hongyu
    Tao, Dan
    Gao, Ruipeng
    Zhang, Zhang
    IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2024, 73 : 1 - 13