Elena Torri, Andrea Smargiassi, Yishai M. Elyada, Nogah Shabshin, Libertario Demi, Ayelet Blass, Eyal Sela, Chedva S. Weiss, Meirav Galun, Oz Frank, Daphna Keidar, Nir Schipper, Tiziano Perrone, Yair Shachar, Naama R. Bogot, Dror Suhami, Amiel A. Dror, Federico Mento, Mordehay Vaturi, Gino Soldati, Shai Bagon, Yonina C. Eldar, Daniel Yaron, Ahuva Grubstein, Riccardo Inchingolo, and Elisha Goldstein
Early detection of COVID-19 is key in containing the pandemic. Disease detection and evaluation based on imaging is fast and cheap and therefore plays an important role in COVID-19 handling. COVID-19 is easier to detect in chest CT, however, it is expensive, non-portable, and difficult to dis-infect, making it unfit as a point-of-care (POC) modality. On the other hand, chest X-ray (CXR) and lung ultrasound (LUS) are widely used, yet, COVID-19 findings in these modalities are not always very clear. Here we train deep neural networks to significantly enhance the capability to detect, grade and monitor COVID-19 patients using CXRs and LUS. Collaborating with several hospitals in Israel we collect a large dataset of CXRs and use this dataset to train a neural network obtaining above 90% detection rate for COVID-19. In addition, in collaboration with ULTRa (Ultrasound Laboratory Trento, Italy) and hospitals in Italy we obtained POC ultrasound data with annotations of the severity of disease and trained a deep network for automatic severity grading.