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1000 Titel
  • Prediction of the acceptance of telemedicine among rheumatic patients: a machine learning-powered secondary analysis of German survey data
1000 Autor/in
  1. Muehlensiepen, Felix |
  2. Petit, Pascal |
  3. Knitza, Johannes |
  4. Welcker, Martin |
  5. VUILLERME, Nicolas |
1000 Verlag
  • Springer Berlin Heidelberg
1000 Erscheinungsjahr 2024
1000 Publikationstyp
  1. Artikel |
1000 Online veröffentlicht
  • 2024-01-11
1000 Erschienen in
1000 Quellenangabe
  • 44(3):523-534
1000 Copyrightjahr
  • 2024
1000 Lizenz
1000 Verlagsversion
  • https://doi.org/10.1007/s00296-023-05518-9 |
  • https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10866795/ |
1000 Publikationsstatus
1000 Begutachtungsstatus
1000 Sprache der Publikation
1000 Abstract/Summary
  • <jats:title>Abstract</jats:title><jats:p>Telemedicine (TM) has augmented healthcare by enabling remote consultations, diagnosis, treatment, and monitoring of patients, thereby improving healthcare access and patient outcomes. However, successful adoption of TM depends on user acceptance, which is influenced by technical, socioeconomic, and health-related factors. Leveraging machine learning (ML) to accurately predict these adoption factors can greatly contribute to the effective utilization of TM in healthcare. The objective of the study was to compare 12 ML algorithms for predicting willingness to use TM (TM try) among patients with rheumatic and musculoskeletal diseases (RMDs) and identify key contributing features. We conducted a secondary analysis of RMD patient data from a German nationwide cross-sectional survey. Twelve ML algorithms, including logistic regression, random forest, extreme gradient boosting (XGBoost), and neural network (deep learning) were tested on a subset of the dataset, with the inclusion of only RMD patients who answered “yes” or “no” to TM try. Nested cross-validation was used for each model. The best-performing model was selected based on area under the receiver operator characteristic (AUROC). For the best-performing model, a multinomial/multiclass ML approach was undertaken with the consideration of the three following classes: “yes”, “no”, “do not know/not answered”. Both one-vs-one and one-vs-rest strategies were considered. The feature importance was investigated using Shapley additive explanation (SHAP). A total of 438 RMD patients were included, with 26.5% of them willing to try TM, 40.6% not willing, and 32.9% undecided (missing answer or “do not know answer”). This dataset was used to train and test ML models. The mean accuracy of the 12 ML models ranged from 0.69 to 0.83, while the mean AUROC ranged from 0.79 to 0.90. The XGBoost model produced better results compared with the other models, with a sensitivity of 70%, specificity of 91% and positive predictive value of 84%. The most important predictors of TM try were the possibility that TM services were offered by a rheumatologist, prior TM knowledge, age, self-reported health status, Internet access at home and type of RMD diseases. For instance, for the yes vs. no classification, not wishing that TM services were offered by a rheumatologist, self-reporting a bad health status and being aged 60–69 years directed the model toward not wanting to try TM. By contrast, having Internet access at home and wishing that TM services were offered by a rheumatologist directed toward TM try. Our findings have significant implications for primary care, in particular for healthcare professionals aiming to implement TM effectively in their clinical routine. By understanding the key factors influencing patients' acceptance of TM, such as their expressed desire for TM services provided by a rheumatologist, self-reported health status, availability of home Internet access, and age, healthcare professionals can tailor their strategies to maximize the adoption and utilization of TM, ultimately improving healthcare outcomes for RMD patients. Our findings are of high interest for both clinical and medical teaching practice to fit changing health needs caused by the growing number of complex and chronically ill patients.</jats:p>
1000 Sacherschließung
lokal Telemedicine [MeSH]
lokal Patient
lokal Deep Learning [MeSH]
lokal Self Report [MeSH]
lokal Rheumatic Diseases [MeSH]
lokal Artificial intelligence
lokal Health Services Research
lokal Acceptance
lokal Machine Learning [MeSH]
lokal Deep learning
lokal Remote Consultation [MeSH]
lokal Patient Opinion
lokal Machine learning
lokal Rheumatology [MeSH]
lokal Primary care
lokal Humans [MeSH]
lokal Cross-Sectional Studies [MeSH]
lokal Prediction
lokal e-health
lokal Artificial Intelligence [MeSH]
lokal Predictors
lokal Telemedicine
lokal Germany [MeSH]
lokal Digital rheumatology
lokal Primary Health Care [MeSH]
1000 Fächerklassifikation (DDC)
1000 Liste der Beteiligten
  1. https://orcid.org/0000-0001-8571-7286|https://orcid.org/0000-0001-9015-5230|https://orcid.org/0000-0001-9695-0657|https://orcid.org/0000-0002-1856-3085|https://orcid.org/0000-0003-3773-393X
1000 Hinweis
  • DeepGreen-ID: 762002d11e344a1f836b22798a733022 ; metadata provieded by: DeepGreen (https://www.oa-deepgreen.de/api/v1/), LIVIVO search scope life sciences (http://z3950.zbmed.de:6210/livivo), Crossref Unified Resource API (https://api.crossref.org/swagger-ui/index.html), to.science.api (https://frl.publisso.de/), ZDB JSON-API (beta) (https://zeitschriftendatenbank.de/api/), lobid - Dateninfrastruktur für Bibliotheken (https://lobid.org/resources/search)
1000 Label
1000 Förderer
  1. Agence Nationale de la Recherche |
  2. Medizinische Hochschule Brandenburg CAMPUS gGmbH |
1000 Fördernummer
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  2. -
1000 Förderprogramm
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  2. -
1000 Dateien
1000 Förderung
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    1000 Förderer Agence Nationale de la Recherche |
    1000 Förderprogramm -
    1000 Fördernummer -
  2. 1000 joinedFunding-child
    1000 Förderer Medizinische Hochschule Brandenburg CAMPUS gGmbH |
    1000 Förderprogramm -
    1000 Fördernummer -
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1000 Erstellt am 2025-02-05T14:14:43.419+0100
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