Distributed deep learning across multisite datasets for generalized CT hemorrhage segmentation

Purpose As deep neural networks achieve more success in the wide field of computer vision, greater emphasis is being placed on the generalizations of these models for production deployment. With sufficiently large training datasets, models can typically avoid overfitting their data; however, for med...

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Veröffentlicht in:Medical physics (Lancaster) 2020-01, Vol.47 (1), p.89-98
Hauptverfasser: Remedios, Samuel W., Roy, Snehashis, Bermudez, Camilo, Patel, Mayur B., Butman, John A., Landman, Bennett A., Pham, Dzung L.
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Sprache:eng
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Zusammenfassung:Purpose As deep neural networks achieve more success in the wide field of computer vision, greater emphasis is being placed on the generalizations of these models for production deployment. With sufficiently large training datasets, models can typically avoid overfitting their data; however, for medical imaging it is often difficult to obtain enough data from a single site. Sharing data between institutions is also frequently nonviable or prohibited due to security measures and research compliance constraints, enforced to guard protected health information (PHI) and patient anonymity. Methods In this paper, we implement cyclic weight transfer with independent datasets from multiple geographically disparate sites without compromising PHI. We compare results between single‐site learning (SSL) and multisite learning (MSL) models on testing data drawn from each of the training sites as well as two other institutions. Results The MSL model attains an average dice similarity coefficient (DSC) of 0.690 on the holdout institution datasets with a volume correlation of 0.914, respectively corresponding to a 7% and 5% statistically significant improvement over the average of both SSL models, which attained an average DSC of 0.646 and average correlation of 0.871. Conclusions We show that a neural network can be efficiently trained on data from two physically remote sites without consolidating patient data to a single location. The resulting network improves model generalization and achieves higher average DSCs on external datasets than neural networks trained on data from a single source.
ISSN:0094-2405
2473-4209
DOI:10.1002/mp.13880