Improved Segmentation and Detection Sensitivity of Diffusion-Weighted Brain Infarct Lesions with Synthetically Enhanced Deep Learning
Christian Federau, Soren Christensen, Nino Scherrer, Johanna Ospel,, Victor Schulze-Zachau, Noemi Schmidt, Hanns-Christian Breit, Julian Maclaren,, Maarten Lansberg, Sebastian Kozerke

TL;DR
This study demonstrates that augmenting training data with synthetically generated diffusion-weighted stroke lesions significantly improves deep learning models' ability to segment and detect brain infarct lesions, outperforming models trained on real data alone.
Contribution
The paper introduces a synthetic data augmentation method that enhances deep learning performance in brain stroke lesion segmentation and detection.
Findings
Models trained on synthetic data achieved higher Dice scores.
Synthetic data training increased detection sensitivity over human experts.
Deep learning models outperformed radiologists in sensitivity.
Abstract
Purpose: To compare the segmentation and detection performance of a deep learning model trained on a database of human-labelled clinical diffusion-weighted (DW) stroke lesions to a model trained on the same database enhanced with synthetic DW stroke lesions. Methods: In this institutional review board approved study, a stroke database of 962 cases (mean age 65+/-17 years, 255 males, 449 scans with DW positive stroke lesions) and a normal database of 2,027 patients (mean age 38+/-24 years,1088 females) were obtained. Brain volumes with synthetic DW stroke lesions were produced by warping the relative signal increase of real strokes to normal brain volumes. A generic 3D U-Net was trained on four different databases to generate four different models: (a) 375 neuroradiologist-labeled clinical DW positive stroke cases(CDB);(b) 2,000 synthetic cases(S2DB);(c) CDB+2,000 synthetic cases(CS2DB);…
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