Is Wearable Technology Becoming Part of Us? Developing and Validating a Measurement Scale for Wearable Technology Embodiment
暂无分享,去创建一个
Tibert Verhagen | Elizabeth C. Nelson | Elizabeth C Nelson | Miriam Vollenbroek-Hutten | Matthijs L Noordzij | M. Noordzij | M. Vollenbroek-Hutten | T. Verhagen
[1] Ruth N. Bolton,et al. A Model of Customer Satisfaction with Service Encounters Involving Failure and Recovery , 1999 .
[2] Luca Citi,et al. Restoring Natural Sensory Feedback in Real-Time Bidirectional Hand Prostheses , 2014, Science Translational Medicine.
[3] David F. Larcker,et al. Structural Equation Models with Unobservable Variables and Measurement Error: Algebra and Statistics: , 1981 .
[4] H. Kraemer,et al. Summated Rating Scale Construction An Introduction , 2009 .
[5] Wynne W. Chin. Issues and Opinion on Structural Equation Modeling by , 2009 .
[6] Adam Blood,et al. Visible and invisible , 2002 .
[7] A. Burns,et al. The antecedents of preventive health care behavior: An empirical study , 1998 .
[8] Xianggui Qu,et al. Multivariate Data Analysis , 2007, Technometrics.
[9] 児玉 文雄. Harvard Business Review : 抄録雑誌の概要 , 1987 .
[10] Atsuyuki Okabe,et al. Wayfinding with a GPS-based mobile navigation system: A comparison with maps and direct experience , 2008 .
[11] Terry Anthony Byrd,et al. A methodology for construct development in MIS research , 2005, Eur. J. Inf. Syst..
[12] K. Ball,et al. Usefulness of Wearable Cameras as a Tool to Enhance Chronic Disease Self-Management: Scoping Review , 2019, JMIR mHealth and uHealth.
[13] D. Lupton. Quantifying the body: monitoring and measuring health in the age of mHealth technologies , 2013 .
[14] Feminism, Technology and Body Projects , 2005 .
[15] D. Mohr,et al. Personal Sensing: Understanding Mental Health Using Ubiquitous Sensors and Machine Learning. , 2017, Annual review of clinical psychology.
[16] Timothy R. Hinkin,et al. An Analysis of Variance Approach to Content Validation , 1999 .
[17] Nancy J Wei,et al. Using Google Glass in Surgical Settings: Systematic Review , 2018, JMIR mHealth and uHealth.
[18] Esra Barut,et al. Development and validation of New Media Literacy Scale (NMLS) for university students , 2016, Comput. Hum. Behav..
[19] Miriam M. R. Vollenbroek-Hutten,et al. Design Decisions for a Real Time, Alcohol Craving Study Using Physio- and Psychological Measures , 2017, PERSUASIVE.
[20] Shaun Gallagher,et al. The socially extended mind , 2013, Cognitive Systems Research.
[21] Richard G. Netemeyer,et al. Scaling Procedures: Issues and Applications , 2003 .
[22] M. Swan. Emerging Patient-Driven Health Care Models: An Examination of Health Social Networks, Consumer Personalized Medicine and Quantified Self-Tracking , 2009, International journal of environmental research and public health.
[23] Marion Garaus,et al. Retail shopper confusion: Conceptualization, scale development, and consequences , 2016 .
[24] Matt Bower,et al. What are the educational affordances of wearable technologies? , 2015, Comput. Educ..
[25] R. Dobson,et al. Capturing Rest-Activity Profiles in Schizophrenia Using Wearable and Mobile Technologies: Development, Implementation, Feasibility, and Acceptability of a Remote Monitoring Platform , 2018, JMIR mHealth and uHealth.
[26] I. Ajzen,et al. Predicting and Changing Behavior: The Reasoned Action Approach , 2009 .
[27] Xiao Zhang,et al. Development of a scale to measure skepticism toward electronic word-of-mouth , 2016, Comput. Hum. Behav..
[28] Shuang Xu,et al. Moderating Effects of Task Type on Wireless Technology Acceptance , 2005, J. Manag. Inf. Syst..
[29] Christopher R. Jones,et al. Net generation or Digital Natives: Is there a distinct new generation entering university? , 2010, Comput. Educ..
[30] R. Peterson,et al. Convenience samples of college students and research reproducibility , 2014 .
[31] Andrew J. Rohm,et al. Factors Influencing Consumer Acceptance of Mobile Marketing: A Two-Country Study of Youth Markets , 2009 .
[32] Enno Siemsen,et al. Common Method Bias in Regression Models With Linear, Quadratic, and Interaction Effects , 2010 .
[33] Jean-Yves Reginster,et al. The promise of wearable activity sensors to define patient recovery , 2014, Journal of Clinical Neuroscience.
[34] L. Hogle. ENHANCEMENT TECHNOLOGIES AND THE BODY , 2005 .
[35] Shuk Ying Ho,et al. The Attraction of Internet Personalization to Web Users , 2006, Electron. Mark..
[36] C. Shilling. The Body And Social Theory , 1995 .
[37] Seil Ugur,et al. Wearing Embodied Emotions: A Practice Based Design Research on Wearable Technology , 2013 .
[38] Gozde Goncu-Berk,et al. A Healthcare Wearable for Chronic Pain Management. Design of a Smart Glove for Rheumatoid Arthritis , 2017 .
[39] Brian Caulfield,et al. Patient Involvement With Home-Based Exercise Programs: Can Connected Health Interventions Influence Adherence? , 2018, JMIR mHealth and uHealth.
[40] M. Gilly,et al. eTailQ: dimensionalizing, measuring and predicting etail quality , 2003 .
[41] Anol Bhattacherjee,et al. Understanding Information Systems Continuance: An Expectation-Confirmation Model , 2001, MIS Q..
[42] M. Haghi,et al. Wearable Devices in Medical Internet of Things: Scientific Research and Commercially Available Devices , 2017, Healthcare informatics research.
[43] H. Arksey,et al. Scoping studies: towards a methodological framework , 2005 .
[44] Marios Koufaris,et al. Applying the Technology Acceptance Model and Flow Theory to Online Consumer Behavior , 2002, Inf. Syst. Res..
[45] Seçil Uğur,et al. Wearing Embodied Emotions , 2013, SpringerBriefs in Applied Sciences and Technology.
[46] Chris Van Hoof,et al. Wearable sensors: can they benefit patients with chronic kidney disease? , 2017, Expert review of medical devices.
[47] Amiram Gafni,et al. Designing, Implementing, and Evaluating Mobile Health Technologies for Managing Chronic Conditions in Older Adults: A Scoping Review , 2016, JMIR mHealth and uHealth.
[48] Wonsun Shin,et al. Differential responses of loyal versus habitual consumers towards mobile site personalization on privacy management , 2016, Comput. Hum. Behav..
[49] Hui-Chun Chu,et al. A Mobile Sleep-Management Learning System for Improving Students’ Sleeping Habits by Integrating a Self-Regulated Learning Strategy: Randomized Controlled Trial , 2018, JMIR mHealth and uHealth.
[50] Yanqing Zhang,et al. Fashionable Services for Wearables: Inventing and Investigating a New Design Path for Smart Watches , 2016, NordiCHI.
[51] Tibert Verhagen,et al. Toward a Better Use of the Semantic Differential in IS Research: An Integrative Framework of Suggested Action , 2015, J. Assoc. Inf. Syst..
[52] M. Huby,et al. The application of vignettes in social and nursing research. , 2002, Journal of advanced nursing.
[53] William J. Doll,et al. A Confirmatory Factor Analysis of the End-User Computing Satisfaction Instrument , 1994, MIS Q..
[54] D. Merunka,et al. The use and misuse of student samples: An empirical investigation of European marketing research , 2017 .
[55] S. Kelders,et al. Persuasive System Design Does Matter: A Systematic Review of Adherence to Web-Based Interventions , 2012, Journal of medical Internet research.
[56] M. Noordzij,et al. mHealth in Mental Health: how to efficiently and scientifically create an ambulatory biofeedback e-coaching app for patients with borderline personality disorder , 2017 .
[57] J. Bradshaw,et al. Mechanisms underlying embodiment, disembodiment and loss of embodiment , 2008, Neuroscience & Biobehavioral Reviews.
[58] Rudolf R. Sinkovics,et al. The Use of Partial Least Squares Path Modeling in International Marketing , 2009 .
[59] J. Lucas,et al. Theory-Testing, Generalization, and the Problem of External Validity* , 2003 .
[60] Josette F. Jones,et al. The Impact of Information Technology on Patient Engagement and Health Behavior Change: A Systematic Review of the Literature , 2016, JMIR medical informatics.
[61] Ha Kyung Lee,et al. Understanding usage intention in innovative mobile app service: Comparison between millennial and mature consumers , 2017, Comput. Hum. Behav..
[62] Leslie Marsh. Natural-Born Cyborgs: Minds, Technologies, and the Future of Human Intelligence , 2009 .
[63] E. Seto,et al. Self-Management and Clinical Decision Support for Patients With Complex Chronic Conditions Through the Use of Smartphone-Based Telemonitoring: Randomized Controlled Trial Protocol , 2017, JMIR research protocols.
[64] Dongwon Lee,et al. Antecedents and consequences of mobile phone usability: Linking simplicity and interactivity to satisfaction, trust, and brand loyalty , 2015, Inf. Manag..
[65] Peter M. Steiner,et al. Experimental Vignette Studies in Survey Research , 2010 .
[66] Jane Vincent,et al. Emotional attachment and mobile phones , 2005, Thumb Culture.
[67] Nicole C. Krämer,et al. Investigating the effects of physical and virtual embodiment in task-oriented and conversational contexts , 2013, Int. J. Hum. Comput. Stud..
[68] Willis F Overton,et al. Relationism and relational developmental systems: a paradigm for developmental science in the post-Cartesian era. , 2013, Advances in child development and behavior.
[69] Fred D. Davis. A technology acceptance model for empirically testing new end-user information systems : theory and results , 1985 .
[70] Yulia Silina,et al. New directions in jewelry: a close look at emerging trends & developments in jewelry-like wearable devices , 2015, SEMWEB.
[71] Brian J. Baldus,et al. Online brand community engagement: Scale development and validation , 2015 .
[72] A. Thompson,et al. Medication Adherence and Technology-Based Interventions for Adolescents With Chronic Health Conditions: A Few Key Considerations , 2017, JMIR mHealth and uHealth.
[73] Katie A. Siek,et al. Persuasive wearable technology design for health and wellness , 2012, 2012 6th International Conference on Pervasive Computing Technologies for Healthcare (PervasiveHealth) and Workshops.
[74] Tibert Verhagen,et al. Health empowerment through activity trackers: An empirical smart wristband study , 2016, Comput. Hum. Behav..
[75] Shintaro Okazaki,et al. Perceived Ubiquity in Mobile Services , 2013 .
[76] J. Bernhardt,et al. Designing and Testing an Inventory for Measuring Social Media Competency of Certified Health Education Specialists , 2015, Journal of medical Internet research.
[77] Tibert Verhagen,et al. Understanding users' motivations to engage in virtual worlds: A multipurpose model and empirical testing , 2012, Comput. Hum. Behav..
[78] H. Preester. Technology and the Body: the (Im)Possibilities of Re-embodiment , 2011 .
[79] R. Oliver. A Cognitive Model of the Antecedents and Consequences of Satisfaction Decisions , 1980 .
[80] Marcel Creemers,et al. Understanding online purchase intentions: contributions from technology and trust perspectives , 2003, Eur. J. Inf. Syst..
[81] Thomas Wynn,et al. The Cognitive Life of Things , 2014, Current Anthropology.
[82] Scott B. MacKenzie,et al. Construct Measurement and Validation Procedures in MIS and Behavioral Research: Integrating New and Existing Techniques , 2011, MIS Q..
[83] Hugo Velthuijsen,et al. Key Components in eHealth Interventions Combining Self-Tracking and Persuasive eCoaching to Promote a Healthier Lifestyle: A Scoping Review , 2017, Journal of medical Internet research.
[84] L. Mathew,et al. Increasing trend of wearables and multimodal interface for human activity monitoring: A review. , 2017, Biosensors & bioelectronics.
[85] Cameron D. Norman,et al. eHEALS: The eHealth Literacy Scale , 2006, Journal of medical Internet research.