Federated Data Analytics for Cancer Immunotherapy: A Privacy-Preserving Collaborative Platform for Patient Management
- URL: http://arxiv.org/abs/2510.09155v1
- Date: Fri, 10 Oct 2025 08:57:41 GMT
- Title: Federated Data Analytics for Cancer Immunotherapy: A Privacy-Preserving Collaborative Platform for Patient Management
- Authors: Mira Raheem, Michael Papazoglou, Bernd Krämer, Neamat El-Tazi, Amal Elgammal,
- Abstract summary: Connected health is a multidisciplinary approach focused on health management.<n>Data analytics can provide critical insights for informed decision-making and health co-creation.<n>This paper contributes with a collaborative digital framework integrating stakeholders across the care continuum.
- Score: 0.03262230127283451
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Connected health is a multidisciplinary approach focused on health management, prioritizing pa-tient needs in the creation of tools, services, and treatments. This paradigm ensures proactive and efficient care by facilitating the timely exchange of accurate patient information among all stake-holders in the care continuum. The rise of digital technologies and process innovations promises to enhance connected health by integrating various healthcare data sources. This integration aims to personalize care, predict health outcomes, and streamline patient management, though challeng-es remain, particularly in data architecture, application interoperability, and security. Data analytics can provide critical insights for informed decision-making and health co-creation, but solutions must prioritize end-users, including patients and healthcare professionals. This perspective was explored through an agile System Development Lifecycle in an EU-funded project aimed at developing an integrated AI-generated solution for managing cancer patients undergoing immunotherapy. This paper contributes with a collaborative digital framework integrating stakeholders across the care continuum, leveraging federated big data analytics and artificial intelligence for improved decision-making while ensuring privacy. Analytical capabilities, such as treatment recommendations and adverse event predictions, were validated using real-life data, achieving 70%-90% accuracy in a pilot study with the medical partners, demonstrating the framework's effectiveness.
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