CORADS-AI is a freely accessible deep learning algorithm that automatically assigns CO-RADS and CT severity scores to non-contrast CT scans of patients suspected of COVID-19 with high diagnostic performance.
Pulmonary lobe segmentation in computed tomography scans is essential for regional assessment of pulmonary diseases. Recent works based on convolution neural networks have achieved good performance for this task. However, they are still limited in capturing structured relationships due to the nature of convolution. The shape of the pulmonary lobes affect each other and their borders relate to the appearance of other structures, such as vessels, airways, and the pleural wall. We argue that such structural relationships play a critical role in the accurate delineation of pulmonary lobes when the lungs are affected by diseases such as COVID-19 or COPD. In this paper, we propose a relational approach (RTSU-Net) that leverages structured relationships by introducing a novel non-local neural network module. The proposed module learns both visual and geometric relationships among all convolution features to produce self-attention weights. With a limited amount of training data available from COVID-19 subjects, we initially train and validate RTSU-Net on a cohort of 5000 subjects from the COPDGene study (4000 for training and 1000 for evaluation). Using models pre-trained on COPDGene, we apply transfer learning to retrain and evaluate RTSU-Net on 470 COVID-19 suspects (370 for retraining and 100 for evaluation). Experimental results show that RTSU-Net outperforms three baselines and performs robustly on cases with severe lung infection due to COVID-19.
We propose a new method for the construction and visualization of
boxplot-type displays for functional data. We use a recent functional data
analysis framework, based on a representation of functions called square-root
slope functions, to decompose observed variation in functional data into three
main components: amplitude, phase, and vertical translation. We then construct
separate displays for each component, using the geometry and metric of each
representation space, based on a novel definition of the median, the two
quartiles, and extreme observations. The outlyingness of functional data is a
very complex concept. Thus, we propose to identify outliers based on any of the
three main components after decomposition. We provide a variety of
visualization tools for the proposed boxplot-type displays including surface
plots. We evaluate the proposed method using extensive simulations and then
focus our attention on three real data applications including exploratory data
analysis of sea surface temperature functions, electrocardiogram functions and
growth curves.Comment: Journal of the American Statistical Association, 201
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