Pulmonary embolism (PE) is a cardiovascular disease caused by one or several occlusions
in the pulmonary arteries. Its diagnosis is mainly reliant on imaging, being
computerized tomography pulmonary angiogram the gold standard. Recently, there
has been increasing interest in automatizing PE detection with the use of computeraided
detection systems, aiming to reduce workloads and enhance identification.
Semiquantitative scores of embolic burden have also been proposed to characterize
PE severity ...
Pulmonary embolism (PE) is a cardiovascular disease caused by one or several occlusions
in the pulmonary arteries. Its diagnosis is mainly reliant on imaging, being
computerized tomography pulmonary angiogram the gold standard. Recently, there
has been increasing interest in automatizing PE detection with the use of computeraided
detection systems, aiming to reduce workloads and enhance identification.
Semiquantitative scores of embolic burden have also been proposed to characterize
PE severity for better patient management. Yet, few attempts have been done to
couple both. Here, we propose a system capable of PE detection, which exploits the
visual explanations of the detector part to produce 2D representations of embolic
burden. These are later used to predict right-to-left ventricle diameter (RV/LV)
ratio ≥ 1, a prognosis cardiac feature strongly associated with embolic burden. The
detector part is based on a Squeeze-and-Excitation-ResNet50, trained on a subset of
the RSNA-STR Pulmonary Embolism CT dataset. The model achieves an accuracy
of 0.72, sensitivity of 0.73, and specificity of 0.82 on the test set, which is slightly
below the performance of radiologists. As the cardiac assessment module directly
depends on the detector’s performance, we were unable to predict RV/LV ratio ≥ 1
successfully. Nevertheless, we believe our system is theoretically feasible and could
assist in both PE detection and risk assessment in the future. For that, further
work should focus on improving the performance of the detection model, especially
regarding high false positive rates, and tune the assessment module accordingly.
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