Automatic determination of the arterial input function in dynamic susceptibility contrast MRI: comparison of different reproducible clustering algorithms

Adult Male Clinical Neurology Functional Neuroradiology Cerebral Arteries Middle Aged Magnetic Resonance Imaging Young Adult 03 medical and health sciences 0302 clinical medicine Radiology Nuclear Medicine and imaging Cerebrovascular Circulation Humans Female Cardiology and Cardiovascular Medicine Algorithms Aged
DOI: 10.1007/s00234-015-1493-9 Publication Date: 2015-01-29T04:24:39Z
ABSTRACT
Arterial input function (AIF) plays an important role in the quantification of cerebral hemodynamics. The purpose of this study was to select the best reproducible clustering method for AIF detection by comparing three algorithms reported previously in terms of detection accuracy and computational complexity.First, three reproducible clustering methods, normalized cut (Ncut), hierarchy (HIER), and fast affine propagation (FastAP), were applied independently to simulated data which contained the true AIF. Next, a clinical verification was performed where 42 subjects participated in dynamic susceptibility contrast MRI (DSC-MRI) scanning. The manual AIF and AIFs based on the different algorithms were obtained. The performance of each algorithm was evaluated based on shape parameters of the estimated AIFs and the true or manual AIF. Moreover, the execution time of each algorithm was recorded to determine the algorithm that operated more rapidly in clinical practice.In terms of the detection accuracy, Ncut and HIER method produced similar AIF detection results, which were closer to the expected AIF and more accurate than those obtained using FastAP method; in terms of the computational efficiency, the Ncut method required the shortest execution time.Ncut clustering appears promising because it facilitates the automatic and robust determination of AIF with high accuracy and efficiency.
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