6533b831fe1ef96bd1299107
RESEARCH PRODUCT
Usefulness of regional right ventricular and right atrial strain for prediction of early and late right ventricular failure following a left ventricular assist device implant: A machine learning approach
Sir John GorcsanAttilio IacovoniFrancesco ClemenzaClaudia CoronnelloDiego BellaviaSergio SciaccaMichele SenniGiuseppina NovoValentina AgneseMarc A. SimonSalvatore PastaGabriele Di GesaroJoseph F. MaaloufMichele PilatoCalogero Fallettasubject
Malemedicine.medical_specialtyHeart Ventriclesmedicine.medical_treatmentBiomedical EngineeringMedicine (miscellaneous)heart failureBioengineeringStrain (injury)030204 cardiovascular system & hematologyRight atrialstrain imagingBiomaterials03 medical and health sciences0302 clinical medicineInternal medicinemedicineHumansechocardiographyAssisted CirculationHeart Atriacardiovascular diseases030212 general & internal medicinebusiness.industrySettore ING-IND/34 - Bioingegneria IndustrialeGeneral MedicineMiddle AgedPrognosismedicine.diseaseSettore MED/11 - Malattie Dell'Apparato Cardiovascolaremachine learningVentricular assist devicecardiovascular systemCardiologyRight ventricular failureRight ventricleFemaleHeart-Assist DevicesImplantbusinessdescription
Background: Identifying candidates for left ventricular assist device surgery at risk of right ventricular failure remains difficult. The aim was to identify the most accurate predictors of right ventricular failure among clinical, biological, and imaging markers, assessed by agreement of different supervised machine learning algorithms. Methods: Seventy-four patients, referred to HeartWare left ventricular assist device since 2010 in two Italian centers, were recruited. Biomarkers, right ventricular standard, and strain echocardiography, as well as cath-lab measures, were compared among patients who did not develop right ventricular failure (N = 56), those with acute–right ventricular failure (N = 8, 11%) or chronic–right ventricular failure (N = 10, 14%). Logistic regression, penalized logistic regression, linear support vector machines, and naïve Bayes algorithms with leave-one-out validation were used to evaluate the efficiency of any combination of three collected variables in an “all-subsets” approach. Results: Michigan risk score combined with central venous pressure assessed invasively and apical longitudinal systolic strain of the right ventricular–free wall were the most significant predictors of acute–right ventricular failure (maximum receiver operating characteristic–area under the curve = 0.95, 95% confidence interval = 0.91–1.00, by the naïve Bayes), while the right ventricular–free wall systolic strain of the middle segment, right atrial strain (QRS-synced), and tricuspid annular plane systolic excursion were the most significant predictors of Chronic-RVF (receiver operating characteristic–area under the curve = 0.97, 95% confidence interval = 0.91–1.00, according to naïve Bayes). Conclusion: Apical right ventricular strain as well as right atrial strain provides complementary information, both critical to predict acute–right ventricular failure and chronic–right ventricular failure, respectively.
year | journal | country | edition | language |
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2019-01-01 |