In MRI, image resolution is defined by pixel size and slice thickness. The depiction of visually distinct anatomical structures is dependent upon those spatial factors, as well as noise and apparent image contrast. The higher the spatial resolution of an image (small pixels and thin slices) the better the detail, but the lower the SNR, since the smaller pixels and thin slices contain less signal from protons.
Noise, which manifests itself as graininess in the image, is random and always present in nature. When excessive, noise can diminish the human eye’s ability to detect edge detail and dull contrast between tissue types. A common way to increase SNR while maintaining high resolution is to acquire several signal measurements (“Number of Acquisitions” or “NAQ”) and average them. Because of its random fluctuations, averaged noise in one location does not increase as fast as signal values. Thus, the process of acquiring multiple averages is a robust way to improve image quality at a cost of increased scan time.
Inspired by the architecture of the human brain, AiCE DLR uses a Deep Convolutional Neural Network (DCNN) capable of both learning and performing complex tasks when working with image data
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During the DCNN’s training process, computational models were created by analyzing a large dataset of examinations acquired on several subjects’ brains and knees. These models included the analysis of a wide array of contrast weightings (T
1, T
2, FLAIR, PD), thus ensuring that AiCE DLR would be efficient and robust across multiple clinical contexts.
To perform this training, system input of ideal SNR high resolution datasets with 10 NAQ were defined as “ground truth” and then mixed with Gaussian noise. This data was then processed by the neural network, which was built in such a way as to automatically define the noise level and to propose a denoising solution
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The resulting low noise images were then compared to native images. If there were different, the network learned, adjusted the algorithm weights, and the denoising process repeated. At the end of the training procedure, the denoised images and the ground truth images were considered similar, algorithm weights were saved and the trained database completed.
While the training procedure itself is time-consuming, Canon Medical’s clinical application of DLR algorithm is fast and efficient since the DCNN can simply apply the pre-existing knowledge of high-SNR, high-quality data analyzed during its learning period. Denoising occurs in the spectral domain where only the high frequency content is passed through the network. Adaptive activations automatically adjust to the input image noise level, producing high-quality images across all sequences without requiring any user interaction, thus efficiently optimizing the removal of noise while preserving key MR signals
Figure 2. After denoising, the low-frequency components containing the image-contrast information have remain untouched and are combined with the optimized results in order to maintain native contrasts. Interpolation and distortion/intensity corrections are finally applied following the DLR process, thus completing image reconstruction.
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