6533b838fe1ef96bd12a3e0c

RESEARCH PRODUCT

Automatic fuzzy classification of the washout curves from magnetic resonance first-pass perfusion imaging after myocardial infarction.

Alexandre CochetAlain LalandeFrançois BrunotteAlexandre ComteJean-eric WolfYves CottinPaul Walker

subject

AdultMaleFuzzy classificationfunctional recoveryMyocardial InfarctionContrast MediaMagnetic Resonance Imaging CineMyocardial Reperfusion030204 cardiovascular system & hematologyFuzzy logicStatistics Nonparametric030218 nuclear medicine & medical imaging03 medical and health sciences0302 clinical medicineFuzzy Logicdelayed imagingCardiac magnetic resonance imagingPredictive Value of Tests[INFO.INFO-IM]Computer Science [cs]/Medical ImagingmedicineImage Processing Computer-Assistedmagnetic resonance imagingHumansRadiology Nuclear Medicine and imagingMyocardial infarctionProspective StudiesAgedAged 80 and over[ INFO.INFO-IM ] Computer Science [cs]/Medical Imagingmedicine.diagnostic_testbusiness.industrycontrast-enhanced first-passWashoutMagnetic resonance imagingGeneral MedicineMiddle Agedmedicine.diseasePrognosisFirst pass perfusionFemaleNuclear medicinebusinessPerfusion

description

International audience; Abstract: Objectives: We sought to investigate the diagnostic ability of cardiac magnetic resonance imaging (MRI) perfusion in acute reper-fused myocardial infarction. The study used fuzzy logic to automatically classify signal intensity-time curves from myocardial segments into 3 categories: normal, hypointense, and Hyperintense. Materials and Methods: Thirty-eight patients with myocardial infarction underwent short-axis cine-MRI and contrast-enhanced MRI to provide data on wall thickening and the transmural extent of infarction. Of these, 17 had a second cardiac MRI to ascertain the functional recovery in each segment. Results: The fuzzy logic based classification performs well (kappa = 0.87, P < 0.01) in comparison with a visual approach. Segments providing "hypo" curves do not recover (Delta = 0.11 SD = 0.96) whereas segments demonstrating the other curve types recover (Delta = 1 SD = 1.98 for "hyper" curves and Delta = 1.54 SD = 1.77 for "normal" curves). Conclusions: The proposed automatic signal intensity-time curve classification has a prognostic value when studying the functional recovery of pathologic segments and clearly identifies the no-reflow phenomenon known to induce poor recovery.

10.1097/01.rli.0000170448.31487.1bhttps://pubmed.ncbi.nlm.nih.gov/16024993