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Towards practical federated learning and evaluation for medical prediction models

Kazlouski, Andrei; Montoya, Perez Ileana; Noor, Faiza; Högerman, Mikael; Ettala, Otto; Pahikkala, Tapio; Airola, Antti

Towards practical federated learning and evaluation for medical prediction models

Kazlouski, Andrei
Montoya, Perez Ileana
Noor, Faiza
Högerman, Mikael
Ettala, Otto
Pahikkala, Tapio
Airola, Antti
Katso/Avaa
Kazlouski_etal_towards_practical_2025.pdf (1.336Mb)
Lataukset: 

Elsevier BV
doi:10.1016/j.ijmedinf.2025.106046
URI
https://www.sciencedirect.com/science/article/pii/S1386505625002631?via%3Dihub
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Julkaisun pysyvä osoite on:
https://urn.fi/URN:NBN:fi-fe2025082791627
Tiivistelmä

Background: Federated learning (FL) is a rapidly advancing technique that enables collaborative model training while preserving data privacy. This approach is particularly relevant in healthcare, where privacy concerns and regulatory restrictions often prevent centralized data sharing. FL has shown promise in tasks such as disease detection, achieving performance levels comparable to centralized systems. However, its practical usability in real-world applications remains underexplored.

Methods: We evaluate the practical effectiveness of FL in predicting whether patients suspected of prostate cancer require invasive biopsy procedures. The study uses 14 publicly available prostate cancer datasets from 10 countries. We propose and benchmark a novel FL evaluation strategy, Leave-Silo-Out (LSO), which quantifies the performance gap between federated training and free-riding (utilizing the federated model without contributing data). Additionally, we investigate whether locally trained models can outperform multi-hospital FL models. The results are assessed with a focus on improving the diagnosis of local patients.

Results: Our findings reveal that the benefits of FL vary with the amount of locally available annotated data. Hospitals with very small datasets see negligible improvements from FL compared to free-riding. Institutions with moderate datasets may achieve some gains through FL training. However, hospitals with extensive datasets often experience little to no advantage from FL and, in some cases, observe reduced performance compared to local training.

Conclusion: Federated learning shows potential in scenarios with limited data availability. However, its practical applicability is highly context-dependent, influenced by factors such as data availability and specific task requirements.

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