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Published in: Oral Radiology 4/2021

01-10-2021 | Computed Tomography | Original Article

Computed tomography texture analysis of mandibular condylar bone marrow in diabetes mellitus patients

Authors: Kotaro Ito, Hirotaka Muraoka, Naohisa Hirahara, Eri Sawada, Shunya Okada, Takashi Kaneda

Published in: Oral Radiology | Issue 4/2021

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Abstract

Objectives

Diabetes mellitus (DM) is associated with a broad range of complications, such as retinopathy, nephropathy, neuropathy, and cardiovascular disease. Therefore, predicting DM from head and neck images is a challenge for clinicians. The purpose of this study was to assess the mandibular condylar bone marrow in DM patients using computed tomography (CT) texture analysis.

Methods

This retrospective study included 16 DM and age and sex matched 16 control patients (11 men, 5 women; mean age, 56.8 ± 14.4 years; range 31–78 years). Patients with Type I DM, prior history of taking bisphosphonates, osteoarthritis of the temporomandibular joint, and CT images with metal artifacts were excluded from this study. Bilateral mandibular condylar bone marrow was manually contoured on axial CT images. The presence or absence of DM is the primary predictor variable. Texture features of the region of interest was the outcome variable, that were analyzed using an open-access software, MaZda Ver.3.3. For each group, 20 features out of 279 parameters were selected with Fisher, probability of error and average correlation coefficient methods in MaZda. Bivariate statistics were computed with the Mann–Whitney U test and the P value was set at .05.

Results

One histogram feature, 15 Gy level co-occurrence matrix features, and four gray level run length matrix features showed differences between the DM patients and non-DM patients (P < 0.05).

Conclusions

Several texture features of the condyle demonstrated differences between the DM and non-DM patients. CT texture analysis may potentially detect DM from the condylar bone marrow.
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Metadata
Title
Computed tomography texture analysis of mandibular condylar bone marrow in diabetes mellitus patients
Authors
Kotaro Ito
Hirotaka Muraoka
Naohisa Hirahara
Eri Sawada
Shunya Okada
Takashi Kaneda
Publication date
01-10-2021
Publisher
Springer Singapore
Published in
Oral Radiology / Issue 4/2021
Print ISSN: 0911-6028
Electronic ISSN: 1613-9674
DOI
https://doi.org/10.1007/s11282-021-00517-7

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