Enhanced parameter estimation in multiparametric arterial spin labeling using artificial neural networks

Author:

Ishida Shota1ORCID,Fujiwara Yasuhiro2,Matta Yuki3,Takei Naoyuki4,Kanamoto Masayuki3,Kimura Hirohiko56,Tsujikawa Tetsuya7

Affiliation:

1. Department of Radiological Technology, Faculty of Medical Sciences Kyoto College of Medical Science Nantan Japan

2. Department of Medical Image Sciences, Faculty of Life Sciences Kumamoto University Kumamoto Japan

3. Radiological Center University of Fukui Hospital Eiheiji Japan

4. GE HealthCare Hino Japan

5. Faculty of Medical Sciences University of Fukui Fukui Japan

6. Radiology Section National Health Insurance Echizen‐cho Ota Hospital Echizen Japan

7. Department of Radiology, Faculty of Medical Sciences University of Fukui Fukui Japan

Abstract

AbstractPurposeMultiparametric arterial spin labeling (MP‐ASL) can quantify cerebral blood flow (CBF) and arterial cerebral blood volume (CBVa). However, its accuracy is compromised owing to its intrinsically low SNR, necessitating complex and time‐consuming parameter estimation. Deep neural networks (DNNs) offer a solution to these limitations. Therefore, we aimed to develop simulation‐based DNNs for MP‐ASL and compared the performance of a supervised DNN (DNNSup), physics‐informed unsupervised DNN (DNNUns), and the conventional lookup table method (LUT) using simulation and in vivo data.MethodsMP‐ASL was performed twice during resting state and once during the breath‐holding task. First, the accuracy and noise immunity were evaluated in the first resting state. Second, CBF and CBVa values were statistically compared between the first resting state and the breath‐holding task using the Wilcoxon signed‐rank test and Cliff's delta. Finally, reproducibility of the two resting states was assessed.ResultsSimulation and first resting‐state analyses demonstrated that DNNSup had higher accuracy, noise immunity, and a six‐fold faster computation time than LUT. Furthermore, all methods detected task‐induced CBF and CBVa elevations, with the effect size being larger with the DNNSup (CBF, p = 0.055, Δ = 0.286; CBVa, p = 0.008, Δ = 0.964) and DNNUns (CBF, p = 0.039, Δ = 0.286; CBVa, p = 0.008, Δ = 1.000) than that with LUT (CBF, p = 0.109, Δ = 0.214; CBVa, p = 0.008, Δ = 0.929). Moreover, all the methods exhibited comparable and satisfactory reproducibility.ConclusionDNNSup outperforms DNNUns and LUT with respect to estimation performance and computation time.

Funder

Japan Society for the Promotion of Science

Publisher

Wiley

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