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RESEARCH PRODUCT

Deep Learning Techniques for Automatic MRI Cardiac Multi-Structures Segmentation and Diagnosis: Is the Problem Solved?

Frederick CervenanskyGerard SanromaJay PatravaliSandy EngelhardtPheng-ann HengGeorgios TziritasClement ZottiElias GriniasPaul F. JägerMahendra KhenedKlaus H. Maier-heinGanapathy KrishnamurthiKarim LekadirYoonmi HongXin YangSteffen E. PetersenIvo WolfChristian F. BaumgartnerXavier PennecOlivier BernardSandy NapelJelmer M. WolterinkMiguel ÁNgel González BallesterMarc-michel RohéPeter M. FullIvana IšgumLisa M. KochFabian IsenseeVarghese Alex KollerathuAlain LalandeOlivier HumbertYeonggul JangMaxime SermesantIrem CetinOscar CamaraShubham JainPierre-marc Jodoin

subject

MaleDatabases FactualHeart DiseasesComputer science[SDV]Life Sciences [q-bio]Lleft and right ventricles030218 nuclear medicine & medical imagingTask (project management)Cardiac segmentation and diagnosis03 medical and health sciences0302 clinical medicineDeep LearningImage Interpretation Computer-AssistedmedicineMedical imagingHumansSegmentationElectrical and Electronic EngineeringRadiological and Ultrasound Technologymedicine.diagnostic_testbusiness.industryMyocardiumDeep learningMagnetic resonance imagingPattern recognitionHeartImage segmentationMagnetic Resonance ImagingComputer Science ApplicationsCardiac Imaging Techniquesmedicine.anatomical_structureVentricleFemaleArtificial intelligencebusinessCardiac magnetic resonanceLeft and right ventricles030217 neurology & neurosurgerySoftwareMRI

description

Delineation of the left ventricular cavity, myocardium, and right ventricle from cardiac magnetic resonance images (multi-slice 2-D cine MRI) is a common clinical task to establish diagnosis. The automation of the corresponding tasks has thus been the subject of intense research over the past decades. In this paper, we introduce the “Automatic Cardiac Diagnosis Challenge” dataset (ACDC), the largest publicly available and fully annotated dataset for the purpose of cardiac MRI (CMR) assessment. The dataset contains data from 150 multi-equipments CMRI recordings with reference measurements and classification from two medical experts. The overarching objective of this paper is to measure how far state-of-the-art deep learning methods can go at assessing CMRI, i.e., segmenting the myocardium and the two ventricles as well as classifying pathologies. In the wake of the 2017 MICCAI-ACDC challenge, we report results from deep learning methods provided by nine research groups for the segmentation task and four groups for the classification task. Results show that the best methods faithfully reproduce the expert analysis, leading to a mean value of 0.97 correlation score for the automatic extraction of clinical indices and an accuracy of 0.96 for automatic diagnosis. These results clearly open the door to highly accurate and fully automatic analysis of cardiac CMRI. We also identify scenarios for which deep learning methods are still failing. Both the dataset and detailed results are publicly available online, while the platform will remain open for new submissions.

10.1109/tmi.2018.2837502https://pubmed.ncbi.nlm.nih.gov/29994302