Treffer: A Systematic Review of Federated and Cloud Computing Approaches for Predicting Mental Health Risks.

Title:
A Systematic Review of Federated and Cloud Computing Approaches for Predicting Mental Health Risks.
Authors:
Fiaz I; School of Computer Science and Mathematics, Keele University, Newcastle ST5 5BG, UK., Kanwal N; School of Computer Science and Mathematics, Keele University, Newcastle ST5 5BG, UK., Al-Said Ahmad A; School of Computer Science and Mathematics, Keele University, Newcastle ST5 5BG, UK.
Source:
Sensors (Basel, Switzerland) [Sensors (Basel)] 2025 Dec 30; Vol. 26 (1). Date of Electronic Publication: 2025 Dec 30.
Publication Type:
Journal Article; Systematic Review
Language:
English
Journal Info:
Publisher: MDPI Country of Publication: Switzerland NLM ID: 101204366 Publication Model: Electronic Cited Medium: Internet ISSN: 1424-8220 (Electronic) Linking ISSN: 14248220 NLM ISO Abbreviation: Sensors (Basel) Subsets: MEDLINE
Imprint Name(s):
Original Publication: Basel, Switzerland : MDPI, c2000-
References:
Biosensors (Basel). 2025 Mar 21;15(4):. (PMID: 40277515)
Sci Rep. 2024 Oct 9;14(1):23553. (PMID: 39384909)
J Med Internet Res. 2023 Oct 30;25:e46547. (PMID: 37902833)
BMJ. 2024 May 9;385:e078384. (PMID: 38724089)
J Cloud Comput (Heidelb). 2022;11(1):94. (PMID: 36536803)
Bull World Health Organ. 2022 Oct 1;100(10):583. (PMID: 36188024)
Sensors (Basel). 2022 Dec 20;23(1):. (PMID: 36616629)
Syst Rev. 2016 Dec 5;5(1):210. (PMID: 27919275)
IEEE J Biomed Health Inform. 2023 Feb;27(2):778-789. (PMID: 35696470)
Neural Netw. 2025 Jan;181:106768. (PMID: 39383677)
Risk Manag Healthc Policy. 2024 May 21;17:1339-1348. (PMID: 38799612)
Patterns (N Y). 2024 May 13;5(7):100990. (PMID: 39081573)
BMJ. 2021 Mar 29;372:n71. (PMID: 33782057)
Front Digit Health. 2024 Nov 27;6:1495999. (PMID: 39664400)
Complex Intell Systems. 2023;9(1):115-131. (PMID: 35761865)
Multimed Tools Appl. 2021;80(30):36361-36400. (PMID: 34512110)
Comput Biol Med. 2023 Nov;166:107539. (PMID: 37804778)
Contributed Indexing:
Keywords: cloud computing; edge computing; federated learning; machine learning; mental health; privacy preserving
Entry Date(s):
Date Created: 20260110 Date Completed: 20260110 Latest Revision: 20260120
Update Code:
20260120
PubMed Central ID:
PMC12788194
DOI:
10.3390/s26010229
PMID:
41516665
Database:
MEDLINE

Weitere Informationen

Mental health disorders affect large numbers of people worldwide and are a major cause of long-term disability. Digital health technologies such as mobile apps and wearable devices now generate rich behavioural data that could support earlier detection and more personalised care. However, these data are highly sensitive and distributed across devices and platforms, which makes privacy protection and scalable analysis challenging; federated learning offers a way to train models across devices while keeping raw data local. When combined with edge, fog, or cloud computing, federated learning offers a way to support near-real-time mental health analysis while keeping raw data local. This review screened 1104 records, assessed 31 full-text articles using a five-question quality checklist, and retained 17 empirical studies that achieved a score of at least 7/10 for synthesis. The included studies were compared in terms of their FL and edge/cloud architectures, data sources, privacy and security techniques, and evidence for operation in real-world settings. The synthesis highlights innovative but fragmented progress, with limited work on comorbidity modelling, deployment evaluation, and common benchmarks, and identifies priorities for the development of scalable, practical, and ethically robust FL systems for digital mental health.