IRLGJul 12, 2024

Multi-Modal Dataset Creation for Federated Learning with DICOM Structured Reports

arXiv:2407.09064v26 citationsh-index: 83
Originality Synthesis-oriented
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This work addresses dataset harmonization for federated learning in clinical multi-modal studies, though it appears incremental as it extends prior work to more data types and streamlines processes.

The paper tackles the problem of heterogeneous datasets hindering federated training in multi-modal learning by developing an open platform using DICOM structured reports for data integration and filtering, demonstrating its applicability across eight university hospitals to create harmonized datasets for predicting outcomes after heart valve replacement.

Purpose: Federated training is often hindered by heterogeneous datasets due to divergent data storage options, inconsistent naming schemes, varied annotation procedures, and disparities in label quality. This is particularly evident in the emerging multi-modal learning paradigms, where dataset harmonization including a uniform data representation and filtering options are of paramount importance. Methods: DICOM structured reports enable the standardized linkage of arbitrary information beyond the imaging domain and can be used within Python deep learning pipelines with highdicom. Building on this, we developed an open platform for data integration and interactive filtering capabilities that simplifies the process of assembling multi-modal datasets. Results: In this study, we extend our prior work by showing its applicability to more and divergent data types, as well as streamlining datasets for federated training within an established consortium of eight university hospitals in Germany. We prove its concurrent filtering ability by creating harmonized multi-modal datasets across all locations for predicting the outcome after minimally invasive heart valve replacement. The data includes DICOM data (i.e. computed tomography images, electrocardiography scans) as well as annotations (i.e. calcification segmentations, pointsets and pacemaker dependency), and metadata (i.e. prosthesis and diagnoses). Conclusion: Structured reports bridge the traditional gap between imaging systems and information systems. Utilizing the inherent DICOM reference system arbitrary data types can be queried concurrently to create meaningful cohorts for clinical studies. The graphical interface as well as example structured report templates will be made publicly available.

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