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Artificial intelligence improves detection and classification of pulmonary venous hypertension related to left ventricular diastolic dysfunction by chest radiography.

October 31, 2025pubmed logopapers

Authors

White RD,Demirer M,Sebro RA,Cortopassi IO,Stowell JT,McCann MR,Barry T,Appleton CP,Helgeson SA,Erdal BS

Affiliations (7)

  • Division of Augmented Intelligence in Imaging, Mayo Clinic Florida, Jacksonville, FL, USA. [email protected].
  • Division of Cardiothoracic Imaging, Department of Radiology, Mayo Clinic Florida, Jacksonville, FL, USA. [email protected].
  • Department of Radiology, Mayo Clinic Florida, 4456 San Pablo Road, Jacksonville, FL, 32224, USA. [email protected].
  • Division of Augmented Intelligence in Imaging, Mayo Clinic Florida, Jacksonville, FL, USA.
  • Division of Cardiothoracic Imaging, Department of Radiology, Mayo Clinic Florida, Jacksonville, FL, USA.
  • Department of Cardiovascular Medicine, Mayo Clinic Arizona, Phoenix, AZ, USA.
  • Division of Pulmonary Medicine, Department of Medicine, Mayo Clinic Florida, Jacksonville, FL, USA.

Abstract

Isolated-Left Ventricular Diastolic Dysfunction [LVDD] ranges (and may progress) from preclinical asymptomatic, symptomatic-LVDD, to LVDD-predominate Heart Failure [HF] presentations; if recognized early, LVDD progression might be preventable. Current early-HF screening remains limited, providing opportunities for insights from a standard Chest X-Ray [CXR]. While CXR assessment for "pulmonary congestion" supports suspected-HF evaluation in evidence-based guidelines, the potential for systematic Pulmonary Venous Hypertension [PVH]-Staging to contribute to initial detection and scaling of LVDD is unclear. This study compared CXR-based PVH-Staging to Doppler Echocardiography [DEcho]-based LVDD-Grading in the absence of systolic dysfunction. Questions included: (1) With PVH-Staging performed by cardiothoracic radiologists, what intra-/inter-reader variabilities remain? (2) Does PVH-Staging track LVDD-Grading? and (3) Can AI-assisted PVH prediction of LVDD-Grade match human performance? CXR examinations of 1,682 (including 750 asymptomatic/healthy) subjects, without: (1) Anatomical/physiological confounders of DEcho or CXR examinations (≤ 24 h apart), and (2) AI model-training confounders, were independently assigned 1 of 11 (9 PVH-related) Pulmonary Vasculature Patterns [PVPs] by 4 cardiothoracic radiologists and repeated for reliability evaluation. Expert-consensus Human Ground Truth [HGT] PVH PVPs were correlated with LVDD Grades (0 to 3-4), as were PVH-Rank predictions by a transformer-based AI model ["PVPI"]. Despite experience-dependent intra-/inter-reader reliability in PVP assignment, there was significant (p < 0.001) overall consistency. With increasing HGT PVH Stage, a significant (p < 0.001) trend towards increasing LVDD Grade was found; while PVH-Staging achieved confidence backing Grade 0/No LVDD, confident LVDD Grade recognition was not achieved until Grades 3-4/Restrictive Filling. However, a significantly (p < 0.001) stronger incrementally positive trend in PVPI PVH-Ranking with LVDD-Grading was demonstrated. Although validated, PVH-Staging for LVDD-Grading is limited by reader variabilities. AI-assisted PVH-Ranking may facilitate earlier and widespread objective CXR screening for LVDD which is ubiquitous in HF.

Topics

Ventricular Dysfunction, LeftArtificial IntelligenceRadiography, ThoracicHypertension, PulmonaryJournal Article

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