Application of a Denoising High-Resolution Deep Convolutional Neural Network to Improve Conspicuity of CSF-Venous Fistulas on Photon-Counting CT Myelography.
Ajay A MadhavanJeremy K Cutsforth-GregoryBrinjikji WJohn C BensonFelix E DiehnIan T MarkJared T VerdoornZhongxing ZhouLifeng YuPublished in: AJNR. American journal of neuroradiology (2023)
Photon-counting detector CT myelography is a recently described technique that has several advantages for the detection of CSF-venous fistulas, one of which is improved spatial resolution. To maximally leverage the high spatial resolution of photon-counting detector CT, a sharp kernel and a thin section reconstruction are needed. Sharp kernels and thin slices often result in increased noise, degrading image quality. Here, we describe a novel deep-learning-based algorithm used to denoise photon-counting detector CT myelographic images, allowing the sharpest and thinnest quantitative reconstruction available on the scanner to be used to enhance diagnostic image quality. Currently, the algorithm requires 4-6 hours to create diagnostic, denoised images. This algorithm has the potential to increase the sensitivity of photon-counting detector CT myelography for detecting CSF-venous fistulas, and the technique may be valuable for institutions attempting to optimize photon-counting detector CT myelography imaging protocols.
Keyphrases
- image quality
- deep learning
- convolutional neural network
- computed tomography
- dual energy
- high resolution
- machine learning
- living cells
- artificial intelligence
- magnetic resonance
- positron emission tomography
- magnetic resonance imaging
- optical coherence tomography
- risk assessment
- contrast enhanced
- neural network
- photodynamic therapy
- real time pcr