Abstract

To enable reliable cerebral embolic load monitoring from high-intensity transient signals (HITS) recorded with single-channel transcranial Doppler (TCD) ultrasound. We propose a HITS detection and characterization method using a weighted-frequency Fourier linear combiner that estimates baseline Doppler signal power. An adaptive threshold is determined by examining the Doppler signal power variance about the baseline estimate, and HITS are extracted if their Doppler power exceeds this threshold. As signatures from multiple emboli may be superimposed, we analyze the detected HITS in the time-frequency (TF) domain to segment the signals into individual emboli. A logistic regression classification approach is employed to classify HITS into emboli or artifacts. Data were collected using a commercial TCD device with emboli-detection capabilities from 12 children undergoing mechanical circulatory support or cardiac catheterization. A subset of 696 HITS were reviewed, annotated, and split into training and testing sets for developing and evaluating the HITS classification algorithm. The classifier yielded 98% and 96% sensitivity for 100% specificity on training and testing data, respectively. The TF approach decomposed 38% of candidate embolic signals into two or more embolic events that ultimately account for 69% of the overall embolic counts. Our processing pipeline resulted in highly accurate emboli identification and produced emboli counts that were lower (by a median of 64%) compared to the commercial ultrasound system's estimates. Using only single-channel, single-frequency Doppler ultrasound, the proposed method enables sensitive detection and segmentation of embolic signatures. Our approach paves the way toward accurate real-time cerebral emboli monitoring.

Highlights

  • A CUTE neurological complications remain an important clinical problem in patients undergoing extracorporeal membrane oxygenation (ECMO) [1]–[3] and ventricular assist device (VAD) support [4]

  • In a previous study in children with congenital heart disease undergoing cardiac catheterization, we found the process of visual review and manual annotation of high intensity transient signals (HITS) and their classification into emboli and artifacts to be prohibitively time consuming and essentially impossible when HITS occurred in clusters [8]

  • We found that commercial transcranial Doppler (TCD) emboli-detection software generated excessive false positive events

Read more

Summary

Introduction

A CUTE neurological complications remain an important clinical problem in patients undergoing extracorporeal membrane oxygenation (ECMO) [1]–[3] and ventricular assist device (VAD) support [4]. One cause of acute brain injury in these populations is cerebral embolism, which may be detected clinically in real-time by transcranial Doppler (TCD) ultrasonography as high intensity transient signals (HITS) within the Doppler spectrum [5]–[7]. Cerebral emboli can occlude the cerebral vasculature, potentially causing transient ischemic attacks, stroke, or other acute neurologic injury. A clear understanding of the prevalence and clinical significance of HITS in patients on mechanical circulatory support (ECMO, VAD) or undergoing cardiac catheterization, and at high risk of cerebral embolic events is lacking. We found that commercial TCD emboli-detection software generated excessive false positive events

Objectives
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call