CIRCA: comprehensible online system in support of chest X-rays-based screening by COVID-19 example

Nature — Machine LearningFriday, November 28, 2025 at 12:00:00 AM
  • A new online system named CIRCA has been developed to support chest X-ray-based screening, particularly in the context of COVID-19. This system aims to enhance the interpretability and accessibility of medical imaging, leveraging machine learning to improve diagnostic accuracy and efficiency.
  • The introduction of CIRCA is significant as it addresses the urgent need for effective screening tools during the COVID-19 pandemic, where timely and accurate diagnosis is critical. By utilizing advanced algorithms, CIRCA can potentially streamline the workflow for healthcare professionals and improve patient outcomes.
  • This development reflects a broader trend in healthcare where machine learning and AI are increasingly being integrated into diagnostic processes. The ongoing research in related fields, such as predicting vaccine side effects and enhancing data extraction from clinical reports, underscores the potential of AI to transform medical practices and improve patient care across various conditions.
— via World Pulse Now AI Editorial System

Was this article worth reading? Share it

Recommended apps based on your readingExplore all apps
Continue Readings
A Tutorial on Regression Analysis: From Linear Models to Deep Learning -- Lecture Notes on Artificial Intelligence
NeutralArtificial Intelligence
A recent publication on arXiv presents comprehensive lecture notes on regression analysis, aimed at students with basic university-level mathematics. The notes cover various regression techniques, including linear and logistic regression, and delve into advanced topics such as neural-network-based regression, providing a self-contained resource for understanding these methodologies.
Generalizability of experimental studies
NeutralArtificial Intelligence
A recent study has proposed a formalization of experimental studies in Machine Learning (ML) to better measure generalizability, addressing the challenge of ensuring that results can be replicated under varying conditions. This framework aims to quantify generalizability using rankings and Maximum Mean Discrepancy, providing insights into the necessary number of experiments for reliable outcomes.
Random Feature Spiking Neural Networks
PositiveArtificial Intelligence
Recent advancements in Spiking Neural Networks (SNNs) have led to the development of a novel training algorithm called S-SWIM, which adapts Random Feature Methods from Artificial Neural Networks. This approach allows for efficient training of SNNs without the need for approximating the spike function gradient, addressing a significant challenge in the field of machine learning.
CID: Measuring Feature Importance Through Counterfactual Distributions
PositiveArtificial Intelligence
A new method for assessing feature importance in Machine Learning, called Counterfactual Importance Distribution (CID), has been introduced. This post-hoc local feature importance method generates positive and negative counterfactuals, models their distributions using Kernel Density Estimation, and ranks features based on a distributional dissimilarity measure, enhancing the understanding of model decision-making processes.
A deep learning based radiomics model for differentiating intraparenchymal hematoma induced by cerebral venous thrombosis
NeutralArtificial Intelligence
A new study published in Nature — Machine Learning introduces a deep learning-based radiomics model designed to differentiate intraparenchymal hematoma caused by cerebral venous thrombosis. This model leverages advanced machine learning techniques to enhance diagnostic accuracy in medical imaging, particularly in identifying specific types of brain hemorrhages.
AI is saving time and money in research — but at what cost?
NeutralArtificial Intelligence
Recent advancements in artificial intelligence (AI) are significantly enhancing research efficiency, saving both time and money. However, these developments raise concerns about the potential costs associated with reliance on AI technologies, particularly regarding their reliability and the implications for scientific integrity.
Machine learning-supported framework for the classification of mpox infection and MVA immunization from multiplexed serology data
NeutralArtificial Intelligence
A recent study published in Nature — Machine Learning introduces a machine learning-supported framework for classifying mpox infections and MVA immunization based on multiplexed serology data. This innovative approach aims to enhance diagnostic accuracy and improve public health responses to mpox outbreaks.
Accurate single-domain scaffolding of three nonoverlapping protein epitopes using deep learning
NeutralArtificial Intelligence
A recent study published in Nature — Machine Learning demonstrates the accurate single-domain scaffolding of three nonoverlapping protein epitopes using deep learning techniques. This advancement showcases the potential of machine learning in protein design, which is crucial for various applications in biotechnology and medicine.