TY - JOUR
T1 - Enhancing Diagnostic Precision
T2 - Evaluation of Preprocessing Filters in Simple Diffusion Kurtosis Imaging for Head and Neck Tumors
AU - Nakamitsu, Yuki
AU - Kuroda, Masahiro
AU - Shimizu, Yudai
AU - Kuroda, Kazuhiro
AU - Yoshimura, Yuuki
AU - Yoshida, Suzuka
AU - Nakamura, Yoshihide
AU - Fukumura, Yuka
AU - Kamizaki, Ryo
AU - Al-Hammad, Wlla E.
AU - Oita, Masataka
AU - Tanabe, Yoshinori
AU - Sugimoto, Kohei
AU - Sugianto, Irfan
AU - Barham, Majd
AU - Tekiki, Nouha
AU - Asaumi, Junichi
N1 - Publisher Copyright:
© 2024 by the authors.
PY - 2024/3
Y1 - 2024/3
N2 - Background: Our initial clinical study using simple diffusion kurtosis imaging (SDI), which simultaneously produces a diffusion kurtosis image (DKI) and an apparent diffusion coefficient map, confirmed the usefulness of SDI for tumor diagnosis. However, the obtained DKI had noticeable variability in the mean kurtosis (MK) values, which is inherent to SDI. We aimed to improve this variability in SDI by preprocessing with three different filters (Gaussian [G], median [M], and nonlocal mean) of the diffusion-weighted images used for SDI. Methods: The usefulness of filter parameters for diagnosis was examined in basic and clinical studies involving 13 patients with head and neck tumors. Results: The filter parameters, which did not change the median MK value, but reduced the variability and significantly homogenized the MK values in tumor and normal tissues in both basic and clinical studies, were identified. In the receiver operating characteristic curve analysis for distinguishing tumors from normal tissues using MK values, the area under curve values significantly improved from 0.627 without filters to 0.641 with G (σ = 0.5) and 0.638 with M (radius = 0.5). Conclusions: Thus, image pretreatment with G and M for SDI was shown to be useful for improving tumor diagnosis in clinical practice.
AB - Background: Our initial clinical study using simple diffusion kurtosis imaging (SDI), which simultaneously produces a diffusion kurtosis image (DKI) and an apparent diffusion coefficient map, confirmed the usefulness of SDI for tumor diagnosis. However, the obtained DKI had noticeable variability in the mean kurtosis (MK) values, which is inherent to SDI. We aimed to improve this variability in SDI by preprocessing with three different filters (Gaussian [G], median [M], and nonlocal mean) of the diffusion-weighted images used for SDI. Methods: The usefulness of filter parameters for diagnosis was examined in basic and clinical studies involving 13 patients with head and neck tumors. Results: The filter parameters, which did not change the median MK value, but reduced the variability and significantly homogenized the MK values in tumor and normal tissues in both basic and clinical studies, were identified. In the receiver operating characteristic curve analysis for distinguishing tumors from normal tissues using MK values, the area under curve values significantly improved from 0.627 without filters to 0.641 with G (σ = 0.5) and 0.638 with M (radius = 0.5). Conclusions: Thus, image pretreatment with G and M for SDI was shown to be useful for improving tumor diagnosis in clinical practice.
KW - diffusion-weighted image
KW - Gaussian filter
KW - head and neck tumor
KW - magnetic resonance imaging
KW - mean kurtosis
KW - median filter
KW - nonlocal mean filter
KW - phantom
KW - restricted diffusion-weighted image
KW - simple diffusion kurtosis imaging
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U2 - 10.3390/jcm13061783
DO - 10.3390/jcm13061783
M3 - Article
AN - SCOPUS:85189019884
SN - 2077-0383
VL - 13
JO - Journal of Clinical Medicine
JF - Journal of Clinical Medicine
IS - 6
M1 - 1783
ER -