gms | German Medical Science

25. Jahrestagung des Netzwerks Evidenzbasierte Medizin e. V.

Netzwerk Evidenzbasierte Medizin e. V. (EbM-Netzwerk)

13. - 15.03.2024, Berlin

Extending the privacy calculus once more: toward predicting the use of the Electronic Health Record (EHR)

Meeting Abstract

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  • Niklas von Kalckreuth - Technische Universität Berlin, Institut für Psychologie und Arbeitswissenschaft (IPA), Fachgebiet Arbeitswissenschaft, Berlin, Deutschland
  • Marvin Kopka - Technische Universität Berlin, Institut für Psychologie und Arbeitswissenschaft (IPA), Fachgebiet Arbeitswissenschaft, Berlin, Deutschland
  • Markus A. Feufel - Technische Universität Berlin, Institut für Psychologie und Arbeitswissenschaft (IPA), Fachgebiet Arbeitswissenschaft, Berlin, Deutschland

Evidenzbasierte Politik und Gesundheitsversorgung – erreichbares Ziel oder Illusion?. 25. Jahrestagung des Netzwerks Evidenzbasierte Medizin. Berlin, 13.-15.03.2024. Düsseldorf: German Medical Science GMS Publishing House; 2024. Doc24ebmPS4-2-08

doi: 10.3205/24ebm093, urn:nbn:de:0183-24ebm0938

Veröffentlicht: 12. März 2024

© 2024 von Kalckreuth et al.
Dieser Artikel ist ein Open-Access-Artikel und steht unter den Lizenzbedingungen der Creative Commons Attribution 4.0 License (Namensnennung). Lizenz-Angaben siehe http://creativecommons.org/licenses/by/4.0/.


Gliederung

Text

Background/research question: The electronic health record (EHR) promises more effective, safer, and faster treatment, but whether these benefits can be realized, largely depends on individuals actually using it. Models such as the privacy calculus (PC) try to predict people’s intention to use EHRs based on perceived risk and benefits of the technology. To increase the validity of these models, we suggest that (1) its technology focus should be complemented with a focus on the risks and benefits related to disease characteristics [1], [2] and that (2) both intention to use and actual behavior should be considered as outcome criteria. To do so, we investigated whether the influence of disease related stigma and the time course of disease influence the predictions of the PC model [3] and whether this model is a reliable predictor of actual behavior.

Methods: The study (N=241) consisted of two parts: a survey and a user study. In the first part, participants explored an EHR app and read a randomly assigned case vignette describing a medical record, which was varied between-subjects with respect to disease-related stigma (high vs. low) and time course (acute vs. chronic). They then answered a PC questionnaire. In the second part, participants were asked to interact with the medical record mentioned in Part 1 and decide whether they would upload it into the EHR (behavioral measure).

Results: The intention to use was not influenced by the disease-related stigma but by the time course. Chronic diseases increased the influence of perceived benefits, privacy concerns, and trust in the provider on intention to use the EHR when compared to acute diseases, while the influence of social norms was decreased. This impact was reversed when examining uploading behavior. The disease-related stigma and intention to use influenced uploading behavior, whereas time course did not.

Conclusion: Whereas intention to use is increased for chronic diseases despite an increase in privacy concerns, uploading behavior is reduced by disease-related stigma. That is, people are aware that using the EHR is beneficial for managing chronic diseases, but they are concerned about data safety when it comes to actually uploading stigmatized diseases. Conceptually, this suggests ways to extend the PC model to more reliably predict uploading behavior. Practically, EHR advocates may use these insights to improve public knowledge about data security and, ultimately, EHR uptake.

Competing interests: None declared


Literatur

1.
von Kalckreuth N, Prümper AM, Feufel MA. The Influence of Health Data on the Use of the Electronic Health Record (EHR) - a Mixed Methods Approach. AMCIS 2023 Proceedings 2023.
2.
Kus K, Kajüter P, Arlinghaus T, Teuteberg F. Die elektronische Patientenakte als zentraler Bestandteil der digitalen Transformation im deutschen Gesundheitswesen - Eine Analyse von Akzeptanzfaktoren aus Patientensicht. HMD. 2022 Dec;59(6):1577-93. DOI: 10.1365/s40702-022-00921-5 Externer Link
3.
Von Kalckreuth N, Feufel MA. Extending the Privacy Calculus to the mHealth Domain: Survey Study on the Intention to Use mHealth Apps in Germany. JMIR Hum Factors. 2023 Aug 16;10:e45503. DOI: 10.2196/45503 Externer Link