Abstract
Objective: This study proposes a way of increasing dataset sizes for machine learning tasks in Internet-based Cognitive Behavioral Therapy through pooling interventions. To this end, it (1) examines similarities in user behavior and symptom data among online interventions for patients with depression, social anxiety, and panic disorder and (2) explores whether these similarities suffice to allow for pooling the data together, resulting in more training data when prediction intervention dropout. Methods: A total of 6418 routine care patients from the Internet Psychiatry in Stockholm are analyzed using (1) clustering and (2) dropout prediction models. For the latter, prediction models trained on each individual intervention's data are compared to those trained on all three interventions pooled into one dataset. To investigate if results vary with dataset size, the prediction is repeated using small and medium dataset sizes. Results: The clustering analysis identified three distinct groups that are almost equally spread across interventions and are instead characterized by different activity levels. In eight out of nine settings investigated, pooling the data improves prediction results compared to models trained on a single intervention dataset. It is further confirmed that models trained on small datasets are more likely to overestimate prediction results. Conclusion: The study reveals similar patterns of patients with depression, social anxiety, and panic disorder regarding online activity and intervention dropout. As such, this work offers pooling different interventions’ data as a possible approach to counter the problem of small dataset sizes in psychological research.
| Originalsprache | Englisch |
|---|---|
| Zeitschrift | Digital Health |
| Jahrgang | 10 |
| Seitenumfang | 11 |
| DOIs | |
| Publikationsstatus | Erschienen - 2024 |
Bibliographische Notiz
Publisher Copyright:© The Author(s) 2024.
UN SDGs
Dieser Output leistet einen Beitrag zu folgendem(n) Ziel(en) für nachhaltige Entwicklung
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SDG 3 – Gute Gesundheit und Wohlergehen
Fachgebiete und Schlagwörter
- Informatik
- Wirtschaftsinformatik
ASJC Scopus Sachgebiete
- Health policy
- Gesundheits-Informationsmanagement
- Angewandte Informatik
- Gesundheitsinformatik
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sj-xlsx-3-dhj-10.1177_20552076241248920 - Supplemental material for Dataset size versus homogeneity: A machine learning study on pooling intervention data in e-mental health dropout predictions
Zantvoort, K. (Urheber*in), Funk, B. (Urheber*in) & Kaldo, V. (Urheber*in), SAGE Publications Inc., 2024
DOI: 10.1177/20552076241248920
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sj-xlsx-4-dhj-10.1177_20552076241248920 - Supplemental material for Dataset size versus homogeneity: A machine learning study on pooling intervention data in e-mental health dropout predictions
Zantvoort, K. (Urheber*in), Funk, B. (Urheber*in) & Kaldo, V. (Urheber*in), SAGE Publications Inc., 2024
DOI: 10.1177/20552076241248920
Datensatz
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sj-xlsx-3-dhj-10.1177_20552076241248920 - Supplemental material for Dataset size versus homogeneity: A machine learning study on pooling intervention data in e-mental health dropout predictions
Zantvoort, K. (Urheber*in), Hentati Isacsson, N. (Urheber*in), Funk, B. (Urheber*in) & Kaldo, V. (Urheber*in), SAGE Publications Inc., 16.05.2024
DOI: 10.25384/sage.25836893, https://sage.figshare.com/articles/dataset/sj-xlsx-3-dhj-10_1177_20552076241248920_-_Supplemental_material_for_Dataset_size_versus_homogeneity_A_machine_learning_study_on_pooling_intervention_data_in_e-mental_health_dropout_predictions/25836893
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