3 results on '"Sukrit Narula"'
Search Results
2. Phenotypic Clustering of Left Ventricular Diastolic Function Parameters: Patterns and Prognostic Relevance
- Author
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Megan Cummins, Lancaster, Alaa Mabrouk, Salem Omar, Sukrit, Narula, Hemant, Kulkarni, Jagat, Narula, and Partho P, Sengupta
- Subjects
Aged, 80 and over ,Echocardiography, Doppler, Pulsed ,Male ,Heart Ventricles ,Middle Aged ,Risk Assessment ,Progression-Free Survival ,Ventricular Function, Left ,Echocardiography, Doppler, Color ,Pattern Recognition, Automated ,Hospitalization ,Machine Learning ,Ventricular Dysfunction, Left ,Phenotype ,Diastole ,Predictive Value of Tests ,Risk Factors ,Cause of Death ,Image Interpretation, Computer-Assisted ,Disease Progression ,Cluster Analysis ,Humans ,Female ,Aged ,Retrospective Studies - Abstract
This study sought to explore the natural clustering of echocardiographic variables used for assessing left ventricular (LV) diastolic dysfunction (DD) in order to isolate high-risk phenotypic patterns and assess their prognostic significance.Assessment of LV DD is important in the management and prognosis of cardiovascular diseases. Data-driven approaches such as cluster analysis may be useful in segregating similar cases without the constraint of an a priori algorithm for risk stratification.The study included a convenience sample of 866 consecutive patients referred for myocardial function assessment (age 65 ± 17 years; 55.3% women; ejection fraction 60 ± 9%) for whom echocardiographic parameters of DD assessment were obtained per conventional guideline recommendations. Unsupervised, hierarchical cluster analysis of these parameters was conducted using the Ward linkage method. Major adverse cardiovascular events, hospitalization, and mortality were compared between conventional and cluster-based classifications.Clustering algorithms for screening the presence of DD in 559 of 866 patients identified 2 distinct groups and revealed modest agreement with conventional classification (kappa = 0.41, p 0.001). Further cluster analysis in 387 patients with DD helped to classify the severity of DD into 2 groups, with good agreement with conventional classification (kappa = 0.619, p 0.001). Survival analyses of patients assessed by both clustering algorithms for screening and grading DD showed improved prediction of event-free survival by clusters over conventional classification for all-cause mortality and cardiac mortality, even after accounting for a multivariable, balanced propensity score.An unsupervised assessment of echocardiographic variables for assessing LV DD revealed unique patterns of grouping. These natural patterns of clustering may better identify patient groups who have similar risk, and their incorporation into clinical practice may help eliminate indeterminate results and improve clinical outcome prediction.
- Published
- 2018
3. Precision Phenotyping in Heart Failure and Pattern Clustering of Ultrasound Data for the Assessment of Diastolic Dysfunction
- Author
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Sukrit Narula, Partho P. Sengupta, Osama Rifaie, Gianni Pedrizzetti, Mohamed Abdel Rahman, Alaa Mabrouk Salem Omar, Jagat Narula, Hala Raslan, Omar, Alaa Mabrouk Salem, Narula, Sukrit, Abdel Rahman, Mohamed Ahmed, Pedrizzetti, Gianni, Raslan, Hala, Rifaie, Osama, Narula, Jagat, and Sengupta, Partho P.
- Subjects
Male ,Radiology, Nuclear Medicine and Imaging ,Cardiac Catheterization ,medicine.medical_treatment ,Speckle tracking echocardiography ,030204 cardiovascular system & hematology ,Ventricular Function, Left ,Pattern Recognition, Automated ,Big-data analytics ,Diastolic dysfunction ,Left ventricular filling pressures ,Speckle-tracking echocardiography ,Cardiology and Cardiovascular Medicine ,Automation ,Ventricular Dysfunction, Left ,0302 clinical medicine ,Diastole ,Nuclear Medicine and Imaging ,Cluster Analysis ,030212 general & internal medicine ,Prospective Studies ,Prospective cohort study ,Cardiac catheterization ,Middle Aged ,Big-data analytic ,Echocardiography, Doppler ,medicine.anatomical_structure ,Cardiology ,End-diastolic volume ,Female ,Radiology ,medicine.medical_specialty ,03 medical and health sciences ,Left ventricular filling pressure ,Predictive Value of Tests ,Internal medicine ,Image Interpretation, Computer-Assisted ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Pulmonary Wedge Pressure ,Pulmonary wedge pressure ,Aged ,Heart Failure ,Chi-Square Distribution ,business.industry ,Reproducibility of Results ,medicine.disease ,Ventricle ,Heart failure ,Multivariate Analysis ,Linear Models ,business - Abstract
Objectives The aim of this study was to investigate whether cluster analysis of left atrial and left ventricular (LV) mechanical deformation parameters provide sufficient information for Doppler-independent assessment of LV diastolic function. Background Medical imaging produces substantial phenotyping data, and superior computational analyses could allow automated classification of repetitive patterns into patient groups with similar behavior. Methods The authors performed a cluster analysis and developed a model of LV diastolic function from an initial exploratory cohort of 130 patients that was subsequently tested in a prospective cohort of 44 patients undergoing cardiac catheterization. Patients in both study groups had standard echocardiographic examination with Doppler-derived assessment of diastolic function. Both the left ventricle and the left atrium were tracked simultaneously using speckle-tracking echocardiography (STE) for measuring simultaneous changes in left atrial and ventricular volumes, volume rates, longitudinal strains, and strain rates. Patients in the validation group also underwent invasive measurements of pulmonary capillary wedge pressure and LV end diastolic pressure immediately after echocardiography. The similarity between STE and conventional 2-dimensional and Doppler methods of diastolic function was investigated in both the exploratory and validation cohorts. Results STE demonstrated strong correlations with the conventional indices and independently clustered the patients into 3 groups with conventional measurements verifying increasing severity of diastolic dysfunction and LV filling pressures. A multivariable linear regression model also allowed estimation of E/e′ and pulmonary capillary wedge pressure by STE in the validation cohort. Conclusions Tracking deformation of the left-sided cardiac chambers from routine cardiac ultrasound images provides accurate information for Doppler-independent phenotypic characterization of LV diastolic function and noninvasive assessment of LV filling pressures.
- Published
- 2016
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