TY - JOUR AU - Ziegler, Jasmin AU - Erpenbeck, Marcel Pascal AU - Fuchs, Timo AU - Saibold, Anna AU - Volkmer, Paul-Christian AU - Schmidt, Guenter AU - Eicher, Johanna AU - Pallaoro, Peter AU - De Souza Falguera, Renata AU - Aubele, Fabio AU - Hagedorn, Marlien AU - Vansovich, Ekaterina AU - Raffler, Johannes AU - Ringshandl, Stephan AU - Kerscher, Alexander AU - Maurer, Julia Karolin AU - Kühnel, Brigitte AU - Schenkirsch, Gerhard AU - Kampf, Marvin AU - Kapsner, Lorenz A AU - Ghanbarian, Hadieh AU - Spengler, Helmut AU - Soto-Rey, Iñaki AU - Albashiti, Fady AU - Hellwig, Dirk AU - Ertl, Maximilian AU - Fette, Georg AU - Kraska, Detlef AU - Boeker, Martin AU - Prokosch, Hans-Ulrich AU - Gulden, Christian PY - 2025 DA - 2025/4/15 TI - Bridging Data Silos in Oncology with Modular Software for Federated Analysis on Fast Healthcare Interoperability Resources: Multisite Implementation Study JO - J Med Internet Res SP - e65681 VL - 27 KW - real-world data KW - real-world evidence KW - oncology KW - electronic health records KW - federated analysis KW - HL7 FHIR KW - cancer registries KW - interoperability KW - observational research network AB - Background: Real-world data (RWD) from sources like administrative claims, electronic health records, and cancer registries offer insights into patient populations beyond the tightly regulated environment of randomized controlled trials. To leverage this and to advance cancer research, 6 university hospitals in Bavaria have established a joint research IT infrastructure. Objective: This study aimed to outline the design, implementation, and deployment of a modular data transformation pipeline that transforms oncological RWD into a Health Level 7 (HL7) Fast Healthcare Interoperability Resources (FHIR) format and then into a tabular format in preparation for a federated analysis (FA) across the 6 Bavarian Cancer Research Center university hospitals. Methods: To harness RWD effectively, we designed a pipeline to convert the oncological basic dataset (oBDS) into HL7 FHIR format and prepare it for FA. The pipeline handles diverse IT infrastructures and systems while maintaining privacy by keeping data decentralized for analysis. To assess the functionality and validity of our implementation, we defined a cohort to address two specific medical research questions. We evaluated our findings by comparing the results of the FA with reports from the Bavarian Cancer Registry and the original data from local tumor documentation systems. Results: We conducted an FA of 17,885 cancer cases from 2021/2022. Breast cancer was the most common diagnosis at 3 sites, prostate cancer ranked in the top 2 at 4 sites, and malignant melanoma was notably prevalent. Gender-specific trends showed larynx and esophagus cancers were more common in males, while breast and thyroid cancers were more frequent in females. Discrepancies between the Bavarian Cancer Registry and our data, such as higher rates of malignant melanoma (3400/63,771, 5.3% vs 1921/17,885, 10.7%) and lower representation of colorectal cancers (8100/63,771, 12.7% vs 1187/17,885, 6.6%) likely result from differences in the time periods analyzed (2019 vs 2021/2022) and the scope of data sources used. The Bavarian Cancer Registry reports approximately 3 times more cancer cases than the 6 university hospitals alone. Conclusions: The modular pipeline successfully transformed oncological RWD across 6 hospitals, and the federated approach preserved privacy while enabling comprehensive analysis. Future work will add support for recent oBDS versions, automate data quality checks, and integrate additional clinical data. Our findings highlight the potential of federated health data networks and lay the groundwork for future research that can leverage high-quality RWD, aiming to contribute valuable knowledge to the field of cancer research. SN - 1438-8871 UR - https://www.jmir.org/2025/1/e65681 UR - https://doi.org/10.2196/65681 DO - 10.2196/65681 ID - info:doi/10.2196/65681 ER -