Improved analysis of brachial artery ultrasound using a novel edge-detection software system

R.J. Woodman, D.A. Playford, Gerald Watts, C. Cheetham, C. Reed, R.R. Taylor, Ian Puddey, Lawrence Beilin, Valerie Burke, Trevor Mori, Daniel Green

Research output: Contribution to journalArticlepeer-review

457 Citations (Scopus)

Abstract

Brachial artery ultrasound is commonly employed for noninvasive assessment of endothelial function. However, analysis is observer dependent and susceptible to errors. We describe studies on a computerized edge-detection and wall-tracking software program to allow more accurate and reproducible measurement. In study 1, three purpose-built Perspex phantom arteries, 3.00, 4.00, and 6.00 mm in diameter, were measured with the software. There was a mean bias of 11 mum (P <0.001 at each level) between known and measured values; the mean resolving power of the software was estimated as 8.3 m. In study 2, the mean intraobserver coefficient of variation of repeated measures of flow-mediated dilation (FMD) using the software (6.7%) was significantly lower than that for traditional manual measurements using the intima-lumen interfaces (24.8%, P <0.05) and intima-media interfaces (32.5%, P <0.05). In study 3, 24 healthy volunteers underwent repeat testing twice within 1 wk; the coefficients of variation for between-visit reproducibility of FMD and response to glyceryl trinitrate using the software were 14.7 and 17.6%, respectively. Assuming 80% power and an a of 0.05, eight subjects with matched controls would be required, in a parallel designed study, to detect an absolute 2.5% change in FMD. In summary, we have developed a semiautomated computerized vascular ultrasound analysis system that will improve the power of clinical intervention studies to detect small changes in arterial diameter.
Original languageEnglish
Pages (from-to)929-937
JournalJournal of Applied Physiology
Volume91
Issue number2
Publication statusPublished - 2001

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