Deep learning (DL) has proved successful in medical imaging and, in the wake of the recent COVID-19 pandemic, some works have started to investigate DL-based solutions for the assisted diagnosis of lung diseases. While existing works focus on CT scans, this paper studies the application of DL techniques for the analysis of lung ultrasonography (LUS) images. Specifically, we present a novel fully-annotated dataset of LUS images collected from several Italian hospitals, with labels indicating the degree of disease severity at a frame-level, video-level, and pixel-level (segmentation masks). Leveraging these data, we introduce several deep models that address relevant tasks for the automatic analysis of LUS images. In particular, we present a novel deep network, derived from Spatial Transformer Networks, which simultaneously predicts the disease severity score associated to a input frame and provides localization of pathological artefacts in a weakly-supervised way. Furthermore, we introduce a new method based on uninorms for effective frame score aggregation at a video-level. Finally, we benchmark state of the art deep models for estimating pixel-level segmentations of COVID-19 imaging biomarkers. Experiments on the proposed dataset demonstrate satisfactory results on all the considered tasks, paving the way to future research on DL for the assisted diagnosis of COVID-19 from LUS data.

Download full-text PDF

Source
http://dx.doi.org/10.1109/TMI.2020.2994459DOI Listing

Publication Analysis

Top Keywords

lus images
12
deep learning
8
assisted diagnosis
8
images novel
8
disease severity
8
deep models
8
deep
5
learning classification
4
classification localization
4
covid-19
4

Similar Publications

The Application of Different Pulmonary Ultrasound Scores in Severe Pneumonia Patients.

Curr Med Imaging

December 2024

Department of Ultrasound, The Affiliated Hospital, Southwest Medical University, 319 Zhongshan Road, LuZhou 646000, Sichuan, P.R. China.

Severe pneumonia (SP) is a common cause of septic shock and Acute Respiratory Distress Syndrome (ARDS), leading to multiorgan dysfunction syndrome. Patients with SP often require respiratory support, and SP is associated with high mortality and is a significant economic burden for hospitalized patients. Therefore, early identification and real-time monitoring of the severity of SP are crucial for improving outcomes.

View Article and Find Full Text PDF

Background: Pre-operative pulmonary function testing (PFT) plays a key role in predicting postoperative complications or functional impairment. However, PFT requires the subject and examiner to cooperate and the results are influenced by both technical and personal factors. In contrast, the use of ultrasound (US) for structural and functional assessments of the lungs and diaphragm is on the rise, as it requires minimal patient cooperation.

View Article and Find Full Text PDF

Unlabelled: Diaphragmatic atrophy (DA) and lung injury (LI) have been associated with mechanical ventilation (MV). We aimed to assess the ultrasonographic changes in diaphragmatic thickness and LI during MV and their prediction for extubation failure in preterm infants. In this prospective observational study, mechanically ventilated preterm infants, < 30 weeks gestation, within the first 24 h of life underwent a baseline, within 24 h of MV, and serial diaphragmatic and lung ultrasounds scans until their first extubation attempt.

View Article and Find Full Text PDF
Article Synopsis
  • The study aimed to distinguish between placenta accreta spectrum (PAS) and uterine-scar dehiscence using standardized ultrasound techniques, which is often difficult even for experts.
  • A retrospective cohort study was conducted with women who had previous Cesarean deliveries and current pregnancies with low-lying placenta conditions, analyzing various ultrasound markers to classify cases of PAS and non-PAS.
  • Out of 150 cases reviewed, 144 were included in the analysis, resulting in 89 PAS cases, 23 uterine-scar dehiscence cases, and 32 cases with uncomplicated low-lying placenta or placenta previa.
View Article and Find Full Text PDF

Point-of-care ultrasound (POCUS) stands as a safe, portable, and cost-effective imaging modality for swift bedside patient examinations. Specifically, lung ultrasonography (LUS) has proven useful in evaluating both acute and chronic pulmonary conditions. Despite its clinical value, automatic LUS interpretation remains relatively unexplored, particularly in multi-label contexts.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!