Literature DB >> 27833401

Comparison of Biexponential and Monoexponential Model of Diffusion-Weighted Imaging for Distinguishing between Common Renal Cell Carcinoma and Fat Poor Angiomyolipoma.

Yuqin Ding1, Mengsu Zeng1, Shengxiang Rao1, Caizhong Chen1, Caixia Fu2, Jianjun Zhou1.   

Abstract

OBJECTIVE: To compare the diagnostic accuracy of intravoxel incoherent motion (IVIM)-derived parameters and apparent diffusion coefficient (ADC) in distinguishing between renal cell carcinoma (RCC) and fat poor angiomyolipoma (AML).
MATERIALS AND METHODS: Eighty-three patients with pathologically confirmed renal tumors were included in the study. All patients underwent renal 1.5T MRI, including IVIM protocol with 8 b values (0-800 s/mm2). The ADC, diffusion coefficient (D), pseudodiffusion coefficient (D*), and perfusion fraction (f) were calculated. One-way ANOVA was used for comparing ADC and IVIM-derived parameters among clear cell RCC (ccRCC), non-ccRCC and fat poor AML. The diagnostic performance of these parameters was evaluated by using receiver operating characteristic (ROC) analysis.
RESULTS: The ADC were significantly greater in ccRCCs than that of non-ccRCCs and fat poor AMLs (each p < 0.010, respectively). The D and D* among the three groups were significantly different (all p < 0.050). The f of non-ccRCCs were less than that of ccRCCs and fat poor AMLs (each p < 0.050, respectively). In ROC analysis, ADC and D showed similar area under the ROC curve (AUC) values (AUC = 0.955 and 0.964, respectively, p = 0.589) in distinguishing between ccRCCs and fat poor AMLs. The combination of D > 0.97 × 10-3 mm2/s, D* < 28.03 × 10-3 mm2/s, and f < 13.61% maximized the diagnostic sensitivity for distinguishing non-ccRCCs from fat poor AMLs. The final estimates of AUC (95% confidence interval), sensitivity, specificity, positive predictive value, negative predictive value and accuracy for the entire cohort were 0.875 (0.719-0.962), 100% (23/23), 75% (9/12), 88.5% (23/26), 100% (9/9), and 91.4% (32/35), respectively.
CONCLUSION: The ADC and D showed similar diagnostic accuracy in distinguishing between ccRCCs and fat poor AMLs. The IVIM-derived parameters were better than ADC in discriminating non-ccRCCs from fat poor AMLs.

Entities:  

Keywords:  Angiomyolipoma; DWI; Diffusion-weighted imaging; Intravoxel incoherent motion; Renal cell carcinoma

Mesh:

Year:  2016        PMID: 27833401      PMCID: PMC5102913          DOI: 10.3348/kjr.2016.17.6.853

Source DB:  PubMed          Journal:  Korean J Radiol        ISSN: 1229-6929            Impact factor:   3.500


INTRODUCTION

Renal cell carcinoma (RCC) is the most common malignant renal tumor in adults, with three major subtypes including clear cell RCC (ccRCC), papillary RCC (pRCC), and chromophobe RCC (chRCC), accounting for 70–80%, 14–17%, and 4–8% of all RCCs, respectively (1). The number of detected renal tumors has been rising, possibly due to increased utilization of cross-sectional imaging (23). However, preoperative characterization of benign and malignant renal masses is imperfect, and approximately 2–6% of the benign solid masses excised from the kidney in surgical series are angiomyolipomas (AML) (456). Most renal AMLs are diagnosed by detecting macroscopic fat on computed tomography (CT) or magnetic resonance imaging (MRI) (7). However, about 5–8% of AMLs with below detectable fat levels on radiological study are referred to as fat poor AMLs (8). Differentiation among ccRCC, non-ccRCC and fat poor AML is difficult but essential for treatment planning (910). Contrast-enhanced CT and conventional MRI are routinely used in the evaluation of renal lesions. However, the use of contrast materials is contraindicated in some patients with renal functional impairment, as a result, unenhanced imaging techniques are of particular help in evaluating such patients. Diffusion-weighted imaging (DWI) derives image contrast from differences in the mobility (Brownian motion) of water in tissues without contrast administration. The degree of diffusion restriction of water molecules in tissue is quantified with apparent diffusion coefficient (ADC) in units of mm2/s. DWI is increasingly used in the evaluation of benign and malignant renal lesions. Renal tumors show significantly lower ADC values, as compared with benign renal lesions (11121314). However, the reported ADC values of fat poor AML shows a non-negligible overlap with that of malignant renal lesions (151617). In addition, contrasting results of ADC in different RCC subtypes are reported in the literature, and quantitative measurements from earlier monoexponential studies on renal masses are hardly comparable. In 1986, Le Bihan et al. (18) proposed the principles of intravoxel incoherent motion (IVIM) and suggested that using a more sophisticated approach to describe the relationship between signal attenuation in tissues with increasing b values would enable the estimation of quantitative parameters that separately reflect tissue diffusivity and microcapillary perfusion. Previous study has shown that IVIM-DWI is more accurate than monoexponential model of DWI in discriminating enhancing and non-enhancing renal lesions (19). In addition, IVIM-DWI is helpful for distinguishing between common RCC subtypes (2021). However, to the best of our knowledge, few studies focus on the value of IVIM-DWI for distinguishing between ccRCC, non-ccRCC and fat poor AML. Therefore, the purpose of our study was to compare the diagnostic accuracy of IVIM-derived parameters and ADC for distinguishing between common RCC and fat poor AML.

MATERIALS AND METHODS

Patients

Our Institutional Review Board waived the requirement of informed patient consent and approved this retrospective study protocol. One hundred and twenty-two patients who presented to our department with known or suspected history of renal neoplasms between May 2013 and August 2015, were included in the study. Sixteen patients were excluded on pathologic analysis due to renal neoplasms other than ccRCC, pRCC, or chRCC, including multilocular cystic RCC (n = 3), liposarcoma (n = 1), non-Hodgkin lymphoma (n = 1), clear cell papillary RCC (n = 1), Xp11.2 translocation/TFE3 gene fusion associated RCC (n = 1), unclassified RCC (n = 1), transitional cell tumor (n = 5), metanephric adenoma (n = 1), oncocytoma (n = 1), and complex cyst (n = 1). In addition, three AMLs with bulk fat were also excluded. Furthermore, patients with enhancing renal masses with lack of histopathologic correlation (n = 13), excessive motion-induced image artifacts (n = 4), and tumors < 1 cm in diameter (n = 3) were also excluded. The final study population included 83 patients with 48 ccRCCs, 11 pRCCs, 12 chRCCs, and 12 fat poor AMLs. For 4 patients with > 1 RCCs, only the largest lesion was chosen for further analysis. Fat poor AMLs in our study referred to renal masses with pathologic confirmed AML and without visible fat in cross-sectional imaging (routine MRI protocols especially the transverse T1-weighted dual-echo in-phase and out-of-phase sequences, slice thickness 3–5 mm).

Routine MRI Protocols

MRI examinations were performed with a 1.5T MRI system (Magnetom Aera; Siemens Healthcare, Erlangen, Germany). Patients were imaged in supine position by using an 18-channel body phase array coil as receiver. For morphologic evaluation of the kidneys, transverse fat-suppressed fast spin echo (TSE) T2-weighted imaging were initially performed, followed by transverse T1-weighted dual-echo in-phase and out-of-phase sequences and by transverse 3-dimensional fat-suppressed gradient echo (volume interpolated breath-hold examination) precontrast and postcontrast T1-weighted sequences under suspended respiration.

IVIM-DWI

Transverse free-breathing twice-refocused spin echo, bipolar gradient, single-shot echo planar IVIM-DWI, with tridirectional trace-weighting diffusion gradients, was performed before contrast administration, using a work-in-progress echo planar imaging sequence (WIP NO. 870) provided by the manufacturer (Siemens Healthcare, Erlangen, Germany). This WIP package supports a motion insensitive PAT reference scan that is suitable for body diffusion measurements in free breathing mode. Sequence parameters for IVIM-DWI were as follows: FATSAT scheme, SPAIR; iPAT factor, 2; iPAT reference mode, flash; 8 b values (0, 25, 50, 80, 150, 300, 500, and 800 s/mm2); averages 2; repetition time/echo time, 5100/70 ms; matrix, 128 × 128; voxel size, 3.0 × 3.0 × 5.0 mm3; bandwidth, 1698 Hz/pix; slice thickness, 5 mm; total acquisition time, 5 minutes 42 seconds.

MRI Analysis

Intravoxel incoherent motion-derived parameter maps (D, D*, f) were generated offline using the postprocessing program provided with WIP NO. 870 and fitting the following biexponential model (22): Sb/S0 = (1 - f).exp (-bD) + f.exp (-b [D* + D]), where Sb was the signal intensity at a given b value, S0 was the signal intensity for b = 0 s/mm2, f was the perfusion fraction of the diffusion linked to microcirculation, D was the diffusion parameter representing pure molecular diffusion, and D* was the pseudodiffusion coefficient representing incoherent microcirculation within the voxel. The fitting algorithm used in the postprocessing program was the same as described by Luciani et al. (22): initial estimation of D using a reduced set of b values larger than a predetermined value (200 s/mm2) and subsequently, the resulting D as a fix parameter to fit the missing parameters. Apparent diffusion coefficient was calculated with monoexponential fit of signal intensity using b = 0 and 800 s/mm2 according to the following equation (22): ln (Sb) = ln (S0) - bADC, where Sb is the signal intensity for each b value and S0 is the signal intensity at a b value of zero. All image measurements (D, D*, f, and ADC) were performed on the Syngo workstation (Siemens Healthcare, Erlangen, Germany). Identification of renal lesions and selection of the representative section for region of interest (ROI) placement were performed by two radiologists (with 4 and 18 years of experience in interpreting renal MR images, respectively) blinded to the clinical and pathologic information. A freehand ROI was drawn on the enhancing solid portion of the renal lesions on D map and the same ROI was copied to the D*, f, and ADC maps at the same level automatically, on the section containing the largest tumor cross-sectional area, excluding areas of hemorrhage and necrosis by comparing with T2-weighted and dynamic contrast-enhanced T1-weighted images. All ROI placements were decided by the two readers, independently. The ADC and IVIM-derived parameters for each reader were analyzed by using the interclass correlation coefficient (ICC).

Statistical Analysis

The results from the more experienced reader (with 18 years of experience in interpreting renal MR images) were used for the main study analysis. Descriptive statistics were calculated for ADC and IVIM-derived parameters, and expressed as mean ± standard deviation (SD). One-way ANOVA was used to compare the differences of these parameters among ccRCCs, non-ccRCCs and fat poor AMLs. The least significant difference analysis was used for pairwise comparison. Receiver operating characteristic (ROC) curves were generated to evaluate the diagnostic performance of ADC and IVIM-derived parameters in differentiating ccRCCs and non-ccRCCs from fat poor AMLs. The sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), accuracy, cut-off value, area under the ROC curve (AUC) as well as differences of AUCs were analyzed according to the method described by DeLong et al. (23). The optimal cut-off values of ADC and IVIM-derived parameters were calculated by using ROC curve analysis to achieve the highest Youden index. The AUC, sensitivity, specificity, PPV, NPV and accuracy for differentiating non-ccRCCs from fat poor AMLs were calculated using odds ratio (OR) combinations of the cutoff values of IVIM-derived parameters to maximize diagnostic accuracy (e.g., D > 0.97 × 10-3 mm2/s or D* ≤ 28.03 × 10-3 mm2/s or f ≤ 13.61%). Interobserver reliability of ADC and IVIM-derived parameters measurements was assessed by using ICCs. An r value of 1.0 was considered as perfect agreement; 0.81–0.99, almost perfect agreement; 0.61–0.80, substantial agreement; 0.41–0.60, moderate agreement; 0.21–0.40, fair agreement; and ≤ 0.20, slight agreement (24). All statistical analyses were performed using SPSS (version 19.0, IBM, Chicago, IL, USA) and MedCalc for Windows (version 14.8.1, Ostend, Belgium). Differences with p values of < 0.050 were considered significant.

RESULTS

Lesion Characteristics

Of the 83 renal lesions included in this study, 48 (57.8%) were ccRCCs, 23 (27.7%) were non-ccRCCs, and 12 (14.5%) were fat poor AMLs. Baseline characteristics for each group were presented in Table 1. The patients comprised 48 men and 35 women (mean age 52 ± 12 years, range, 28–75 years). Patients with RCCs were predominantly male and older than that of fat poor AMLs (p = 0.010 and 0.002, respectively). Mean tumor sizes of RCCs and fat poor AMLs were not significantly different (3.8 ± 1.9 cm vs. 3.4 ± 2.6 cm, p = 0.583). Histopathologic analysis was performed on specimens acquired at radical (n = 43) or partial (n = 40) nephrectomy. Fat poor AMLs were surgically resected either because of failing to differentiate from malignant renal lesions (n = 8) or because of large tumor size (n = 4). The mean interval between MR examination and surgery was 8.4 ± 12.1 days (range, 0–72 days).
Table 1

Characteristics of Patients and Renal Lesions

CharacteristicAll LesionsccRCCNon-ccRCCFat poor AML
Number of lesions83482312
 Size, mean ± SD (range), cm3.7 ± 2.0 (1.2–14.5)3.8 ± 1.3 (1.8–6.7)3.6 ± 2.8 (1.2–14.5)3.4 ± 2.6 (1.8–11.2)
 Age, mean ± SD (range), year52 ± 12 (28–75)55 ± 11 (31–75)52 ± 11 (35–67)44 ± 13 (28–71)
Sex, female/male35/4815/3310/1310/2
Side, left/right41/4223/2510/138/4
Surgery, partial/radical40/4317/3112/1111/1

AML = angiomyolipoma, ccRCC = clear cell RCC, non-ccRCC = papillary RCC and chromophobe RCC, RCC= renal cell carcinoma

ADC and IVIM-Derived Parameters

Mean values ± SD of ADC and IVIM-derived parameters of ccRCCs, non-ccRCCs, and fat poor AMLs were described in Table 2. The ADC values were significantly greater in ccRCCs than that of non-ccRCCs and fat poor AMLs (both p < 0.010, respectively). However, ADC values of non-ccRCCs and fat poor AMLs were not significantly different (p = 0.225). The D and D* values among the three groups were significantly different (all p < 0.050), with the highest D values in ccRCCs and D* values in fat poor AMLs. The f values of non-ccRCCs were less than that of ccRCCs and fat poor AMLs (each p < 0.050, respectively). However, they were not significantly different between ccRCCs and fat poor AMLs (p = 0.858). Box-and-whisker plots of ADC and IVIM-derived parameters were displayed in Figure 1. Example maps of ADC and IVIM-derived parameters of the three groups were shown in Figures 2, 3, 4.
Table 2

ADC and IVIM-Derived Parameters of Renal Lesions on Basis of Histologic Subtypes

ParametersccRCCNon-ccRCCFat poor AML
ADC (10-3 mm2/s)1.71 ± 0.321.23 ± 0.321.10 ± 0.21
D (10-3 mm2/s)1.42 ± 0.351.04 ± 0.270.80 ± 0.13
D* (10-3 mm2/s)26.75 ± 10.3319.78 ± 8.9934.66 ± 14.17
f (100%)22.25 ± 6.5213.96 ± 6.1022.63 ± 7.73

Data were means ± standard deviation. AML = angiomyolipoma, ccRCC = clear cell RCC, non-ccRCC = papillary RCC and chromophobe RCC, RCC = renal cell carcinoma

Fig. 1

Box-and-whisker plots of ADC (A), D (B), D* (C), and f (D) values for ccRCC, non-ccRCC, and fat poor AML.

Bottom and top of boxes indicate 25th and 75th percentiles of values, respectively. Horizontal line inside box indicates median values. ADC = apparent diffusion coefficient, AML = angiomyolipomas, ccRCC = clear cell renal cell carcinoma, non-ccRCC = papillary RCC and chromophobe RCC

Fig. 2

MR images in 37-year-old man with 3.7 cm surgically verified ccRCC in right kidney.

Diffusion-weighted image with b value of 800 s/mm2 (A), and IVIM-derived parametric maps (D, D*, and f, respectively) (B-D) calculated from IVIM-DWI data. Calculated mean values of ADC, D, D*, and f for manually drawn ROIs for ccRCC were 1.85 × 10-3 mm2/s, 1.49 × 10-3 mm2/s, 31.10 × 10-3 mm2/s, and 22.9%, respectively. ADC = apparent diffusion coefficient, ccRCC = clear cell renal cell carcinoma, DWI = diffusion-weighted imaging, IVIM = intravoxel incoherent motion, MR = magnetic resonance, ROIs = region of interests

Fig. 3

MR images in 52-year-old man with 3.5 cm surgically proven chRCC in left kidney.

Diffusion-weighted image with b value of 800 s/mm2 (A), and IVIM-derived parametric maps (D, D*, and f, respectively) (B-D) calculated from IVIM-DWI data. Calculated mean values of ADC, D, D*, and f for manually drawn ROIs for non-ccRCC were 0.92 × 10-3 mm2/s, 0.74 × 10-3 mm2/s, 16.87 × 10-3 mm2/s, and 13.9%, respectively. ADC = apparent diffusion coefficient, chRCC = chromophobe renal cell carcinoma, DWI = diffusion-weighted imaging, IVIM = intravoxel incoherent motion, MR = magnetic resonance, ROIs = region of interests

Fig. 4

MR images in 36-year-old woman with 11.2 cm pathologically proven fat poor AML in right kidney.

Diffusion-weighted image with b value of 800 s/mm2 (A), and IVIM-derived parametric maps (D, D*, and f, respectively) (B-D) calculated from IVIM-DWI data. Calculated mean values of ADC, D, D*, and f for manually drawn ROIs for fat poor AML were 1.16 × 10-3 mm2/s, 0.81 × 10-3 mm2/s, 50.55 × 10-3 mm2/s, and 22.8%, respectively. ADC = apparent diffusion coefficient, AML = angiomyolipomas, DWI = diffusion-weighted imaging, IVIM = intravoxel incoherent motion, MR = magnetic resonance, ROIs = region of interests

ROC Analysis

Receiver operating characteristic analysis of ADC and IVIM-derived parameters in discriminating ccRCCs and non-ccRCCs from fat poor AMLs were summarized in Table 3 and Figure 5. In ROC analysis, ADC and D showed similar AUC values (AUC = 0.955 and 0.964, respectively, p = 0.589) in distinguishing between ccRCCs and fat poor AMLs. In the pairwise comparison of ROC curves among the parameters for differentiating ccRCCs from fat poor AMLs, ADC and D showed significantly greater AUC values than those of D* and f (all p < 0.010). The diagnostic accuracy of ADC, D, D*, and f for distinguishing ccRCCs from fat poor AMLs were 88.3% (53/60), 95% (57/60), 81.7% (49/60), and 73.3% (44/60), respectively. In addition, for distinguishing non-ccRCCs from fat poor AMLs, AUCs of IVIM-derived parameters were greater than that of ADC, without significance (all p > 0.050). The diagnostic accuracy of ADC, D, D*, and f for distinguishing non-ccRCCs from fat poor AMLs were 60% (21/35), 71.4% (25/35), 82.9% (29/35), and 62.9% (22/35), respectively. However, using the OR combination of D > 0.97 × 10-3 mm2/s, D* < 28.03 × 10-3 mm2/s and f < 13.61% maximized the diagnostic sensitivity. The final estimates of AUC (95% confidence interval [CI]), sensitivity, specificity, PPV, NPV, and accuracy for the entire cohort were 0.875 (0.719–0.962), 100% (23/23), 75% (9/12), 88.5% (23/26), 100% (9/9), and 91.4% (32/35), respectively.
Table 3

Results of ROC Analysis for ADC and IVIM-Derived Parameters in Differentiation between RCCs and Fat Poor AMLs

ComparisonAUC (95% CI*)SensitivitySpecificityPPVNPVACCCut-Off ValueP
ccRCC (n = 48) vs. fat poor AML (n = 12)
 ADC0.955 (0.868–0.992)85.4% (41/48)100% (12/12)100% (41/41)63.2% (12/19)88.3% (53/60)> 1.39< 0.001
 D0.964 (0.880–0.995)93.8% (45/48)100% (12/12)100% (45/45)80% (12/15)95% (57/60)> 0.97< 0.001
 D*0.668 (0.535–0.785)89.6% (43/48)50% (6/12)87.8% (43/49)54.5% (6/11)81.7% (49/60)≤ 38.840.103
 f0.506 (0.374–0.638)83.3% (40/48)33.3% (4/12)83.3% (40/48)33.3% (4/12)73.3% (44/60)> 16.170.955
Non-ccRCC (n = 23) vs. fat poor AML (n = 12)
 ADC0.634 (0.455–0.790)39.1% (9/23)100% (12/12)100% (9/9)46.2% (12/26)60% (21/35)> 1.390.167
 D0.757 (0.583–0.886)56.5% (13/23)100% (12/12)100% (13/13)54.5% (12/22)71.4% (25/35)> 0.970.002
 D*0.822 (0.656–0.930)87% (20/23)75% (9/12)87% (20/23)75% (9/12)82.9% (29/35)≤ 28.03< 0.001
 f0.783 (0.611–0.904)43.5% (10/23)100% (12/12)100% (10/10)48% (12/25)62.9% (22/35)≤ 13.61< 0.001

*Numbers in parentheses were 95% confidence intervals (CIs). ACC = accuracy, AML = angiomyolipoma, AUC = area under curve, ccRCC = clear cell RCC, non-ccRCC = papillary RCC and chromophobe RCC, NPV = negative predictive value, PPV = positive predictive value, RCC = renal cell carcinoma

Fig. 5

ROC curves for ADC and IVIM-derived parameters in differentiating renal cell carcinomas and fat poor AMLs.

A. Graph shows comparison of ROC curve analysis for discriminating ccRCC and fat poor AMLs with ADC and IVIM-derived parameters. AUCs for ADC, D, D*, and f were 0.955, 0.964, 0.668, and 0.506, respectively. B. Graph shows comparison of ROC curve analysis for differentiation between non-ccRCC and fat poor AMLs with ADC and IVIM-derived parameters. AUCs for ADC, D, D*, and f were 0.634, 0.757, 0.822, and 0.783, respectively. ADC = apparent diffusion coefficient, AML = angiomyolipomas, AUC = area under the receiver operating characteristic curve, ccRCC = clear cell renal cell carcinoma, IVIM = intravoxel incoherent motion, ROC = receiver operating characteristic

Interobserver Agreement

Evaluation of the agreement between the two readers indicated that the ICCs (95% CI) for ADC and D were 0.911 (0.866–0.942) and 0.834 (0.754–0.889), respectively, indicating almost perfect agreement. The ICCs for D* and f were 0.748 (0.635–0.829) and 0.785 (0.686–0.855), respectively, indicating substantial agreement.

DISCUSSION

The present study compared the diagnostic accuracy of ADC and IVIM-derived parameters for distinguishing between common RCCs and fat poor AMLs. Our results demonstrated that ADC and D showed significantly greater AUC values (AUC = 0.955 and 0.964, respectively) than those of D* and f (AUC = 0.668 and 0.506, respectively, all p < 0.010). This might be due to the specific histological growth modality and tumor cellular density of ccRCCs and fat poor AMLs. The tumor cells of ccRCCs were often interspersed with cystic and hemorrhagic areas and separated by interstitial spaces so that water could spread freely (25). The greater cellular density and collagenous interstitial stroma that reduced water diffusion velocity might contribute to the decreased ADC and D values of fat poor AMLs (2627). In addition, both ccRCCs and fat poor AMLs were hypervascular renal lesions, and the increased D* and f values could be explained by vascular perfusion (10). In our study, IVIM-derived parameters, especially the perfusion-related parameters (D* and f), showed greater diagnostic accuracy than that of ADC values in distinguishing non-ccRCCs from fat poor AMLs. In addition, using the OR combination of D > 0.97 × 10-3 mm2/s, D* < 28.03 × 10-3 mm2/s, and f < 13.6% maximized the diagnostic accuracy (91.4%, 32/35). However, the ADC values of non-ccRCCs and fat poor AMLs were not significantly different (p = 0.225). One possible reason might be that both non-ccRCCs and fat poor AMLs showed lower ADC values owing to compact tissue architecture and great cellular density (2526). Another possible reason might be that the ADC value was calculated by monoexponential fitting of diffusion decay data, containing both the perfusion and diffusion information. The variability of renal ADC values in healthy volunteers was analyzed in a previous study (27), the monoexponential fitting error was significantly higher than that of biexponential fittings, indicating that the monoexponential model was insufficient for renal tissues. Although D* showed the greatest AUC value (AUC = 0.822) in differentiation between non-ccRCCs and fat poor AMLs in our study, paradoxical diagnostic value of D* was described in previous studies. Chandarana et al. (20) reported that the D* was not significantly different between different RCC subtypes. In addition, D* was not significantly different between enhancing masses and non-enhancing masses (p = 0.528) in another study (19). The promising diagnostic value of D* in our study might be due to our strict inclusion criteria for RCCs and fat poor AMLs, carefulness in ROI selection, and improved image quality with motion correction. Evaluation of the agreement between the two readers indicated that the ICCs for D* and f were 0.748 (0.635–0.829) and 0.785 (0.686–0.855), respectively, which indicated substantial agreement. However, artefacts from great vessels and cystic areas of the renal lesions on D* maps were still inevitable. As a result, efforts should be made to improve the image quality of D* maps in order to make this parameter more reliable and reproducible. Previous studies demonstrated that IVIM-DWI could be used to derive both perfusion and diffusion parameters of renal lesions without contrast material. A study by Chandarana et al. (19) showed that the IVIM-derived parameters were more accurate than ADC in distinguishing between enhancing and non-enhancing renal lesions; they subsequently showed the usefulness of IVIM-DWI in distinguishing some RCC subtypes (20). In addition, the perfusion-related parameter (f value) correlated well with enhancement degree of renal lesions, accurately separating avidly enhancing ccRCC and chRCC from hypoenhancing pRCC and cystic RCC. Furthermore, pRCC and cystic RCC could be further separated by degree of tumor cellularity as captured by the metric D, which was higher in cystic RCC, reflecting decreased cellularity in the predominantly cystic tumor. However, only 3 cases of AMLs were included in a study using voxel-based histogram analysis of IVIM-derived parameters (28). In our study, IVIM-derived parameters showed the possibility of simultaneously providing information about perfusion and diffusion characteristics of renal tumors and demonstrated greater diagnostic accuracy when compared with ADC in discriminating non-ccRCCs from fat poor AMLs. Although the ADC value showed significant difference between benign and malignant renal lesions in some studies (13151617), it was not possible to confidently distinguish fat poor AMLs from RCCs. This difficulty might arise from considerable variation and overlap between the ADC values of fat poor AMLs and malignant renal lesions. In common subtypes of RCCs, published ADC values varied from 1.23 × 10-3 mm2/s to 2.11 × 10-3 mm2/s in ccRCCs, 0.61 × 10-3 mm2/s to 2.07 × 10-3 mm2/sec in pRCCs, and 0.99 × 10-3 mm2/s to 1.74 × 10-3 mm2/s in chRCCs, respectively (131726293031). However, the reported ADC values of fat poor AMLs showed a significant overlap with that of malignant renal lesions, ranging from 0.72 × 10-3 mm2/s to 1.11 × 10-3 mm2/s (151617). Several possible explanations exist for the wide range of ADC values of renal lesions, including errors, different methods of ADC measurements, different b values, and imaging protocols. A major challenge to the widespread implementation of DW-MRI is the lack of a standard approach to data collection and analysis (32). The optimal b values for renal DWI have not yet been determined. In our study, b values of 0 and 800 s/mm2 were selected based on the study by Wang et al. (33). In their study, compared with the ADC obtained by using b values of 0 and 500 s/mm2, the ADC obtained by using b values of 0 and 800 s/mm2 could better reflect the diffusion characteristics of common RCC subtypes. In addition, b values > 1000 s/mm2 were not selected because of longer echo time, worse signal-to-noise ratio, and greater image distortion. Eight b values (ranged from 0 to 800 s/mm2) were selected for IVIM model of DWI in our study according to the recommendations of Koh et al. (34), which suggested that 8 to 8 b values in total, with ≥ 4 within the perfusion-sensitive range (b < 100 s/mm2) would be sufficient to evaluate perfusion-related parameters in the clinical setting. This study had several limitations. Firstly, image misalignment due to respiratory motion might influence the reliability of our result because IVIM-DWI was acquired during free breathing. However, according to a recent study (35), free breathing was recommended for liver DWI because of its good reproducibility and shorter acquisition time, as compared with that of multi-breath hold, respiratory triggered, and navigator triggered techniques. DWI of the kidney should be less affected by respiratory motion due to its location, as compared with the liver. In addition, our WIP package (NO. 870) provided by the manufacturer supported a motion insensitive PAT reference scan that was suitable for body diffusion measurements in free breathing mode. As a result, image misalignment should not be a critical problem for our study. Secondly, there were a limited number of patients with non-ccRCCs and fat poor AMLs; therefore, we provided preliminary results by using a relatively small sample size, and further studies in larger populations are warranted. Thirdly, we did not analyze conventional MR protocols (T2-weighted imaging, multiple phase contrast enhanced imaging, etc.) and did not compare IVIM-derived perfusion related parameters (D* and f) with other techniques (arterial spin labeling, dynamic contrast enhanced MR imaging, etc.) in evaluation of vascularity of renal lesions. Therefore, additional studies are required to assess the incremental benefits of the IVIM-derived parameters in the evaluation of renal lesions, especially in patients with impaired renal function. In conclusion, biexponential fit analysis of DWI could be used to explore the perfusion and diffusion characteristics of renal tumors. The ADC and D showed similar diagnostic accuracy in distinguishing between ccRCCs and fat poor AMLs. The combination of IVIM-derived parameters were better than ADC values in discriminating non-ccRCCs from fat poor AMLs.
  35 in total

1.  Comparison of biexponential and monoexponential model of diffusion weighted imaging in evaluation of renal lesions: preliminary experience.

Authors:  Hersh Chandarana; Vivian S Lee; Elizabeth Hecht; Bachir Taouli; Eric E Sigmund
Journal:  Invest Radiol       Date:  2011-05       Impact factor: 6.016

2.  Fat poor renal angiomyolipoma: patient, computerized tomography and histological findings.

Authors:  John Milner; Brian McNeil; Joe Alioto; Kevin Proud; Tara Rubinas; Maria Picken; Terrence Demos; Thomas Turk; Kent T Perry
Journal:  J Urol       Date:  2006-09       Impact factor: 7.450

3.  Investigation of renal lesions by diffusion-weighted magnetic resonance imaging applying intravoxel incoherent motion-derived parameters--initial experience.

Authors:  S Rheinheimer; B Stieltjes; F Schneider; D Simon; S Pahernik; H U Kauczor; P Hallscheidt
Journal:  Eur J Radiol       Date:  2011-11-21       Impact factor: 3.528

4.  Diffusion-weighted intravoxel incoherent motion imaging of renal tumors with histopathologic correlation.

Authors:  Hersh Chandarana; Stella K Kang; Samson Wong; Henry Rusinek; Jeff L Zhang; Shigeki Arizono; William C Huang; Jonathan Melamed; James S Babb; Edgar F Suan; Vivian S Lee; Eric E Sigmund
Journal:  Invest Radiol       Date:  2012-12       Impact factor: 6.016

5.  Diffusion-weighted magnetic resonance imaging in evaluation of primary solid and cystic renal masses using the Bosniak classification.

Authors:  Ercan Inci; Elif Hocaoglu; Sibel Aydin; Tan Cimilli
Journal:  Eur J Radiol       Date:  2011-03-04       Impact factor: 3.528

6.  Rising incidence of small renal masses: a need to reassess treatment effect.

Authors:  John M Hollingsworth; David C Miller; Stephanie Daignault; Brent K Hollenbeck
Journal:  J Natl Cancer Inst       Date:  2006-09-20       Impact factor: 13.506

Review 7.  The Heidelberg classification of renal cell tumours.

Authors:  G Kovacs; M Akhtar; B J Beckwith; P Bugert; C S Cooper; B Delahunt; J N Eble; S Fleming; B Ljungberg; L J Medeiros; H Moch; V E Reuter; E Ritz; G Roos; D Schmidt; J R Srigley; S Störkel; E van den Berg; B Zbar
Journal:  J Pathol       Date:  1997-10       Impact factor: 7.996

8.  Renal cell carcinoma: diffusion-weighted MR imaging for subtype differentiation at 3.0 T.

Authors:  Haiyi Wang; Liuquan Cheng; Xu Zhang; Dianjun Wang; Aitao Guo; Yuangui Gao; Huiyi Ye
Journal:  Radiology       Date:  2010-08-16       Impact factor: 11.105

9.  Diffusion-weighted MRI in the evaluation of renal lesions: preliminary results.

Authors:  M Cova; E Squillaci; F Stacul; G Manenti; S Gava; G Simonetti; R Pozzi-Mucelli
Journal:  Br J Radiol       Date:  2004-10       Impact factor: 3.039

10.  Liver cirrhosis: intravoxel incoherent motion MR imaging--pilot study.

Authors:  Alain Luciani; Alexandre Vignaud; Madeleine Cavet; Jeanne Tran Van Nhieu; Ariane Mallat; Lucile Ruel; Alexis Laurent; Jean-François Deux; Pierre Brugieres; Alain Rahmouni
Journal:  Radiology       Date:  2008-12       Impact factor: 11.105

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  13 in total

1.  Differentiating between malignant and benign renal tumors: do IVIM and diffusion kurtosis imaging perform better than DWI?

Authors:  Yuqin Ding; Qinxuan Tan; Wei Mao; Chenchen Dai; Xiaoyi Hu; Jun Hou; Mengsu Zeng; Jianjun Zhou
Journal:  Eur Radiol       Date:  2019-06-03       Impact factor: 5.315

2.  Capability of intravoxel incoherent motion and diffusion tensor imaging to detect early kidney injury in type 2 diabetes.

Authors:  Haoran Zhang; Peng Wang; Dafa Shi; Xiang Yao; Yanfei Li; Xuedan Liu; Yang Sun; Jie Ding; Siyuan Wang; Guangsong Wang; Ke Ren
Journal:  Eur Radiol       Date:  2022-01-15       Impact factor: 5.315

3.  MR texture analysis in differentiating renal cell carcinoma from lipid-poor angiomyolipoma and oncocytoma.

Authors:  Abdul Razik; Ankur Goyal; Raju Sharma; Devasenathipathy Kandasamy; Amlesh Seth; Prasenjit Das; Balaji Ganeshan
Journal:  Br J Radiol       Date:  2020-08-26       Impact factor: 3.039

4.  Application of different methods used to measure the apparent diffusion coefficient of renal cell carcinoma on the same lesion and its correlation with ISUP nuclear grading.

Authors:  Gülhan Kılıçarslan; Yeşim Eroğlu; Ahmet Kılıçarslan
Journal:  Abdom Radiol (NY)       Date:  2022-05-16

Review 5.  Thoracoabdominal imaging of tuberous sclerosis.

Authors:  Cara E Morin; Nicholas P Morin; David N Franz; Darcy A Krueger; Andrew T Trout; Alexander J Towbin
Journal:  Pediatr Radiol       Date:  2018-08-04

6.  Diagnostic test accuracy of ADC values for identification of clear cell renal cell carcinoma: systematic review and meta-analysis.

Authors:  Mickael Tordjman; Rahul Mali; Guillaume Madelin; Vinay Prabhu; Stella K Kang
Journal:  Eur Radiol       Date:  2020-03-06       Impact factor: 5.315

7.  Quantitative assessment of renal allograft pathologic changes: comparisons of mono-exponential and bi-exponential models using diffusion-weighted imaging.

Authors:  Min Fan; Zhaoyu Xing; Yanan Du; Liang Pan; Yangyang Sun; Xiaozhou He
Journal:  Quant Imaging Med Surg       Date:  2020-06

8.  Selection and Reporting of Statistical Methods to Assess Reliability of a Diagnostic Test: Conformity to Recommended Methods in a Peer-Reviewed Journal.

Authors:  Ji Eun Park; Kyunghwa Han; Yu Sub Sung; Mi Sun Chung; Hyun Jung Koo; Hee Mang Yoon; Young Jun Choi; Seung Soo Lee; Kyung Won Kim; Youngbin Shin; Suah An; Hyo-Min Cho; Seong Ho Park
Journal:  Korean J Radiol       Date:  2017-09-21       Impact factor: 3.500

9.  RE: Distinguishing between Renal Cell Carcinoma and Fat Poor Angiomyolipoma in Diffusion-Weighted Imaging.

Authors:  Ali Kemal Sivrioglu; Serkan Arıbal; Önder Hakan
Journal:  Korean J Radiol       Date:  2017-02-07       Impact factor: 3.500

10.  Comparison of Monoexponential, Biexponential, Stretched-Exponential, and Kurtosis Models of Diffusion-Weighted Imaging in Differentiation of Renal Solid Masses.

Authors:  Jianjian Zhang; Shiteng Suo; Guiqin Liu; Shan Zhang; Zizhou Zhao; Jianrong Xu; Guangyu Wu
Journal:  Korean J Radiol       Date:  2019-05       Impact factor: 3.500

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