This study introduces a novel open-source dataset of 10,223 porcine spinal cord ultrasound images, including both healthy and injured spinal cords. The dataset was created to facilitate the development of deep learning models for automatic injury localization and anatomical segmentation, with the aim of enabling continuous monitoring and personalized treatment for spinal cord injury (SCI).
The authors evaluated the performance of several state-of-the-art object detection and semantic segmentation models on this dataset. For injury localization, the YOLOv8 model achieved the highest mean Average Precision (mAP50-95) score of 0.606, outperforming other models. For anatomical segmentation, the DeepLabv3 model achieved the highest Mean Dice score of 0.587 on the porcine dataset, while the SAMed model generalized best to human spinal cord ultrasound images, with a Mean Dice score of 0.445.
The authors also proposed a new "implantability score" metric to assess the suitability of these models for deployment on wearable or implantable ultrasound devices, considering factors such as accuracy, speed, and computational load. Based on this metric, YOLOv8 and DeepLabv3 were identified as the most suitable models for injury localization and anatomical segmentation, respectively, for continuous monitoring applications.
The study highlights the potential of deep learning in automating diagnostics and monitoring for SCI, which can enhance clinical workflows and enable personalized treatment approaches. The released dataset is expected to facilitate further research and development in this domain.
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by Avisha Kumar... alle arxiv.org 09-26-2024
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