Publications by authors named "Naimahmed Nesaragi"

Early identification of coronary artery disease (CAD) can facilitate timely clinical intervention and save lives. This study aims to develop a machine learning framework that uses tensor analysis on heart rate (HR) signals to automate the CAD detection task. A third-order tensor representing a time-frequency relationship is constructed by fusing scalograms as vertical slices of the tensor.

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Early detection of sepsis can facilitate early clinical intervention with effective treatment and may reduce sepsis mortality rates. In view of this, machine learning-based automated diagnosis of sepsis using easily recordable physiological data can be more promising as compared to the gold standard rule-based clinical criteria in current practice. This study aims to develop such a machine learning framework that demonstrates the quantification of heterogeneity within the tabular electronic health records (EHR) data of clinical covariates to capture both linear relationships and nonlinear correlation for the early prediction of sepsis.

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Article Synopsis
  • The research focuses on using soft-computing and machine learning to predict sepsis early, which is crucial for timely patient care.
  • The study uses data from over 60,000 ICU patients and implements a specialized algorithm to analyze clinical variables for identifying sepsis within six hours of onset.
  • The results indicate the potential for a tailored hospital-specific early-warning system for sepsis, though further analysis is needed to generalize the findings across various healthcare settings.
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