23 March 2024 Task-based transferable deep-learning scatter correction in cone beam computed tomography: a simulation study
Juan P. Cruz-Bastida, Fernando Moncada, Arnulfo Martínez-Dávalos, Mercedes Rodríguez-Villafuerte
Author Affiliations +
Abstract

Purpose

X-ray scatter significantly affects the image quality of cone beam computed tomography (CBCT). Although convolutional neural networks (CNNs) have shown promise in correcting x-ray scatter, their effectiveness is hindered by two main challenges: the necessity for extensive datasets and the uncertainty regarding model generalizability. This study introduces a task-based paradigm to overcome these obstacles, enhancing the application of CNNs in scatter correction.

Approach

Using a CNN with U-net architecture, the proposed methodology employs a two-stage training process for scatter correction in CBCT scans. Initially, the CNN is pre-trained on approximately 4000 image pairs from geometric phantom projections, then fine-tuned using transfer learning (TL) on 250 image pairs of anthropomorphic projections, enabling task-specific adaptations with minimal data. 2D scatter ratio (SR) maps from projection data were considered as CNN targets, and such maps were used to perform the scatter prediction. The fine-tuning process for specific imaging tasks, like head and neck imaging, involved simulating scans of an anthropomorphic phantom and pre-processing the data for CNN retraining.

Results

For the pre-training stage, it was observed that SR predictions were quite accurate (SSIM0.9). The accuracy of SR predictions was further improved after TL, with a relatively short retraining time (70 times faster than pre-training) and using considerably fewer samples compared to the pre-training dataset (12 times smaller).

Conclusions

A fast and low-cost methodology to generate task-specific CNN for scatter correction in CBCT was developed. CNN models trained with the proposed methodology were successful to correct x-ray scatter in anthropomorphic structures, unknown to the network, for simulated data.

© 2024 Society of Photo-Optical Instrumentation Engineers (SPIE)
Juan P. Cruz-Bastida, Fernando Moncada, Arnulfo Martínez-Dávalos, and Mercedes Rodríguez-Villafuerte "Task-based transferable deep-learning scatter correction in cone beam computed tomography: a simulation study," Journal of Medical Imaging 11(2), 024006 (23 March 2024). https://doi.org/10.1117/1.JMI.11.2.024006
Received: 1 December 2023; Accepted: 7 March 2024; Published: 23 March 2024
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KEYWORDS
Cone beam computed tomography

X-rays

Education and training

Data modeling

Head

Image quality

X-ray imaging

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