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ID 46852
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Author
Kojima, Katsuhide
Oto, Takahiro Kaken ID publons
Mitsuhashi, Toshiharu
Shinya, Takayoshi
Sei, Tetsuro Kaken ID publons
Okumura, Yoshihiro
Miyoshi, Shinichiro Kaken ID publons researchmap
Kanazawa, Susumu Kaken ID publons
Abstract
To determine the effectiveness of living-donor lobar lung transplantation (LDLLT), it is necessary to predict the recipient's postoperative lung function. Traditionally, Date's formula, also called the segmental ratio, has used the number of lung segments to estimate the forced vital capacity (FVC) of grafts in LDLLT. To provide a more precise estimate of graft FVC, we calculated the volumes of the lower lobe and total lung using three-dimensional computed tomography (3D-CT) and the volume ratio between them. We calculated the volume ratio in 52 donors and tested the difference between the segmental volume ratios with a one-tailed t-test. We also calculated the predicted graft FVC in 21 LDLLTs using the segmental ratio pFVC(c) and the volume ratio pFVC(v), and then found the Pearson's correlation coefficients for both pFVC(c) and pFVC(v) with the recipients' actual FVC (rFVC) measured spirometrically 6 months after surgery. Significant differences were found between the segmental ratio and the average volume ratio for both sides (right, p=0.03;left, p=0.0003). Both pFVC(c) and pFVC(v) correlated significantly with rFVC at 6 months after surgery (p=0.007 and 0.006). Both the conventional and the volumetric methods provided FVC predictions that correlated significantly with measured postoperative FVC.
Keywords
living-donor lobar lung transplantation
3D-CT volumetry
Amo Type
Original Article
Publication Title
Acta Medica Okayama
Published Date
2011-08
Volume
volume65
Issue
issue4
Publisher
Okayama University Medical School
Start Page
265
End Page
268
ISSN
0386-300X
NCID
AA00508441
Content Type
Journal Article
language
English
Copyright Holders
CopyrightⒸ 2011 by Okayama University Medical School
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publisher
Refereed
True
PubMed ID
Web of Science KeyUT