Classify and assess severity of lung conditions from chest X-rays
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Covid Classifier is an AI-powered medical imaging tool designed to classify and assess the severity of lung conditions from chest X-rays. It leverages advanced machine learning algorithms to provide accurate and reliable insights, aiding healthcare professionals in diagnosing and managing respiratory diseases, including COVID-19.
• AI-Powered Analysis: Utilizes deep learning models to analyze chest X-rays for signs of lung conditions.
• Severity Assessment: Provides a severity score to help determine the extent of lung involvement.
• Multi-Modal Compatibility: Works with various types of chest X-ray images, ensuring versatility in clinical settings.
• User-Friendly Interface: Designed for ease of use, allowing healthcare professionals to upload images and receive results quickly.
• Data Privacy Compliance: Ensures patient data security and compliance with healthcare regulations.
• Clinical Decision Support: Offers actionable insights to support medical decision-making.
What types of images can Covid Classifier process?
Covid Classifier is compatible with standard chest X-ray images in formats such as JPEG, PNG, and DICOM.
How accurate is the Covid Classifier?
The Covid Classifier is trained on a large dataset of chest X-rays and has demonstrated high accuracy in classifying lung conditions. However, it is intended as a diagnostic aid and should be used in conjunction with clinical judgment.
Can Covid Classifier be used in real-time?
Yes, Covid Classifier is designed for real-time analysis, providing quick results to support timely medical decisions.