Open-Source Skull Reconstruction with MONAI
Jianning Li, Andr\'e Ferreira, Behrus Puladi, Victor Alves, Michael, Kamp, Moon-Sung Kim, Felix Nensa, Jens Kleesiek, Seyed-Ahmad Ahmadi, Jan, Egger

TL;DR
This paper introduces an open-source deep learning approach for skull reconstruction within the MONAI framework, providing pre-trained models and code to facilitate research and application in medical imaging.
Contribution
It presents a novel skull reconstruction method integrated into MONAI, with publicly available pre-trained models and code, promoting open science and ease of use.
Findings
Pre-trained model achieves accurate skull reconstruction
Code implementation follows MONAI guidelines for accessibility
Open-sourcing enhances reproducibility and collaboration in medical imaging
Abstract
We present a deep learning-based approach for skull reconstruction for MONAI, which has been pre-trained on the MUG500+ skull dataset. The implementation follows the MONAI contribution guidelines, hence, it can be easily tried out and used, and extended by MONAI users. The primary goal of this paper lies in the investigation of open-sourcing codes and pre-trained deep learning models under the MONAI framework. Nowadays, open-sourcing software, especially (pre-trained) deep learning models, has become increasingly important. Over the years, medical image analysis experienced a tremendous transformation. Over a decade ago, algorithms had to be implemented and optimized with low-level programming languages, like C or C++, to run in a reasonable time on a desktop PC, which was not as powerful as today's computers. Nowadays, users have high-level scripting languages like Python, and…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Medical Imaging Techniques and Applications · Dental Radiography and Imaging
