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Frontiers of Medicine

ISSN 2095-0217

ISSN 2095-0225(Online)

CN 11-5983/R

Postal Subscription Code 80-967

2018 Impact Factor: 1.847

Front. Med.    2014, Vol. 8 Issue (4) : 471-476    https://doi.org/10.1007/s11684-014-0365-8
RESEARCH ARTICLE
In vivo evaluation of renal function using diffusion weighted imaging and diffusion tensor imaging in type 2 diabetics with normoalbuminuria versus microalbuminuria
Xiaoyan Chen1,*(),Wenxia Xiao1,Xinchun Li2,Jianxun He1,Xiaochun Huang1,Yuyu Tan1
1. Department of Endocrinology, First Affiliated Hospital of Guangzhou Medical University, Guangzhou 510120, China
2. Department of Radiology, First Affiliated Hospital of Guangzhou Medical University, Guangzhou 510120,China
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Abstract

This work aims to estimate the value of diffusion weighted imaging (DWI) and diffusion tensor imaging (DTI) in detecting early-stage kidney injury in type 2 diabetic patients with normoalbuminuria (NAU) versus microalbuminuria (MAU) prospectively. A total of 30 T2DM patients with normal kidney function were recruited and assigned to the NAU group (n = 14) or MAU group (n = 16) according to 8 h overnight urinary albuminuria excretion rate (AER) results. A contemporary cohort of health check-up recipients were included as controls (n = 12). DWI and DTI scans were performed on bilateral kidney using SE single-shot EPI, and apparent diffusion coefficient (ADC) and fractional anisotropy (FA) of the renal parenchyma was determined from ADC and FA maps of the three groups. ADC and FA values were compared among the three groups. According to DWI with a b value of 400 s/mm2, the MAU and NAU groups showed significantly lowered mean ADC values compared with the healthy controls (P<0.01). The mean ADC in the MAU group [(2.22±0.07)×10–3 mm2/s] was slightly lower than that of the NAU group [(2.31±0.22)×10–3 mm2/s], but this difference was not statistically significant (P>0.05). The FA value in the MAU group was higher than that in the control group (0.45±0.07 vs. 0.39±0.03, P = 0.004) but did not differ from that in the NAU group (0.42±0.03) (P>0.05). ADC and FA values may be more sensitive than urine AER in reflecting early-stage kidney injury and, hence, may facilitate earlier detection and quantitative evaluation of kidney injury in T2DM patients. Combined evaluation of ADC and FA values may provide a better quantitative approach for identifying diabetic nephropathy at early disease stages.

Keywords type 2 diabetes mellitus      microalbuminuria      diffusion weighted imaging      diffusion tensor imaging      early-stage kidney injury     
Corresponding Author(s): Xiaoyan Chen   
Online First Date: 28 October 2014    Issue Date: 18 December 2014
 Cite this article:   
Xiaoyan Chen,Wenxia Xiao,Xinchun Li, et al. In vivo evaluation of renal function using diffusion weighted imaging and diffusion tensor imaging in type 2 diabetics with normoalbuminuria versus microalbuminuria[J]. Front. Med., 2014, 8(4): 471-476.
 URL:  
https://academic.hep.com.cn/fmd/EN/10.1007/s11684-014-0365-8
https://academic.hep.com.cn/fmd/EN/Y2014/V8/I4/471
Fig.1  Axial T1WI images of both kidneys in the (A) NC group, (B) NAU group, and (C) MAU group. A clear border between the renal cortex and the renal medulla can be seen, and no difference was observed between the two kidneys in terms of dimension and structure.
Fig.2  Axial T2WI images of both kidneys in the (A) NC group, (B) NAU group, and (C) MAU group. A clear border between the renal cortex and the renal medulla can be seen, and no difference was observed between the two kidneys in terms of dimension and structure.
b = 400 s/mm2 b = 500 s/mm2 b = 600 s/mm2 b = 800 s/mm2
NC group (n = 12) 2.51±0.16 2.32±0.07 2.15±0.04 1.95±0.05
NAU group (n = 14) 2.31±0.22* 2.14±0.10* 2.06±0.08* 1.88±0.08*
MAU group (n = 16) 2.22±0.07* 2.11±0.10* 2.00±0.09* 1.84±0.08*
Tab.1  Comparison of renal ADC values among the three groups (×10-3mm2/s)
FA values of the renal cortex FA values of the renal medulla
NC group (n = 12) 0.16±0.03 0.39±0.03
NAU group (n = 14) 0.16±0.02 0.42±0.03
MAU group (n = 16) 0.17±0.05 0.45±0.07*
Tab.2  Comparison of FA values of the renal cortex and medulla among three groups
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