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The Algorithmic Lung Detective: Artificial Intelligence in the Diagnosis of Pulmonary Embolism

Nishant Allena, Sneha Khanal

2023Cureus16 citationsDOIOpen Access PDF

Abstract

Pulmonary embolism (PE) poses a significant threat as the third leading cause of cardiovascular death, prompting the widespread use of CT pulmonary angiogram for rapid detection. Despite its prevalence, diagnostic accuracy remains variable among radiologists. The emergence of artificial intelligence (AI), notably through convolutional neural networks and deep learning reconstruction, offers a promising avenue to enhance PE detection. AI demonstrates superior sensitivity and negative predictive values, reducing the risk of missed diagnoses. Implementation of AI-based worklist prioritization substantially shortens detection and notification times, streamlining radiological workflows. However, it is crucial to underscore that AI acts as a complement, not a replacement, for radiologists, synergizing with human expertise. As AI integration progresses, it holds the potential to significantly improve diagnostic accuracy and efficiency in pulmonary embolism detection while maintaining the essential role of human judgment in medical decision-making.

Topics & Concepts

MedicinePulmonary embolismMedical diagnosisConvolutional neural networkWorkflowArtificial intelligencePrioritizationDeep learningDiagnostic accuracyRadiologyIntensive care medicineMachine learningInternal medicineComputer scienceEconomicsDatabaseManagement scienceVenous Thromboembolism Diagnosis and ManagementRadiology practices and educationRadiation Dose and Imaging
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