Widmung
Diese Arbeit ist Herrn Univ.-Prof. Dr. med. Hans Heinz Schild gewidmet, bei dem wir
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Belangen bedanken möchten.
Key-words
prostate - MR-diffusion/perfusion - computed DWI - exponential ADC - prostate cancer
- MR imaging
Introduction
Magnetic resonance imaging (MRI) has become the most powerful imaging technique in
prostate cancer diagnosis and has been successfully established in the clinical routine
[1]. MRI with subsequent targeted biopsies has been shown to more accurately detect
significant prostate cancer than any other technique [2]. Furthermore, a negative predictive value of up to 97 % was reported for clinically
significant prostate cancer [3]
[4]
[5]. According to current imaging recommendations, multi-parametric prostate MRI (mpMRI)
is based on assessment comprising T2 weighted (T2w), dynamic contrast-enhanced (DCE)
and diffusion-weighted imaging (DWI). According to the PI-RADS V2 classification [6]
[7], DCE only plays a minor role, while T2w imaging and DWI provide the major criteria
for the diagnosis of a clinically significant prostate tumor.
An important characteristic feature of prostate cancer is the T2 hypointensity relative
to the normal glandular tissue. In contrast to malignant tumors in other parts of
the body, T2 relaxation time is shortened in prostate tumors due to the loss of glandular
function in cancerous tissue. This causes an “inverse” T2 shine-through effect in
prostate DWI. In conventional prostate DWI using maximum b-values of 800 – 1000 s/mm²,
diffusion and T2 effects can cancel each other out so that malignant tissue is not
always clearly visualized [8]. Two recent studies demonstrated that the sensitivity of tumor detection in DWI
was improved when a b-value of 1500 or 2000 s/mm2 instead of 1000 s/mm2 was used [9]
[10].
The acquisition of ultra-high b-values, however, requires an increase in the echo
time and has the drawback of an inherently low signal-to-noise-ratio (SNR) [11]. Moreover, these images are prone to severe eddy current distortions caused by the
strong motion-sensitizing gradients. Blackledge et al. developed a method for generating
high-b value images without actually acquiring them [11]. With this method called computed DWI (cDWI), images with ultra-high b-values are
obtained by extrapolation of the signal intensities at lower b-values. The benefit
of this approach is a better SNR, a reduction of artifacts and a shorter acquisition
time compared to actually acquired high b-value images [10]
[12]. First studies have already shown an enhanced lesion-to-background contrast and
contrast-to-noise ratio in prostate imaging with cDWI at b-values > 1500 s/mm2 compared to the conventional apparent diffusion coefficient (ADC) and compared to
the acquired DWI at the same or lower b-values [13]
[14]
[15]
[16]
[17].
Recently, Park et al. applied a different approach called exponential ADC (eADC) to
prostate imaging, again with the aim of avoiding the T2 shine-through effect [18]. The idea of eADC, which was already proposed in 1999 by Provenzale et al., is to
normalize DWI images to the signal intensity at b = 0 [19]. The obtained images should in principle be free of T2 effects. In a pilot study
by Park et al. in which only peripheral zone lesions were analyzed, a significant
increase in lesion-to-background contrast ratio of eADC compared to conventional ADC
was observed [18]. Further data on the value of eADC in prostate imaging is lacking.
The aim of our study was to directly compare the conspicuity and discriminability
of prostate cancer in cDWI and eADC images in a large set of clinical DWI data, and
to compare the results to original DWI images and conventional apparent diffusion
coefficient (ADC) maps. Additionally, exponential ADC maps for the computed high b-value
DWI images were also generated and included in the evaluation.
Materials and Methods
Subjects
DWI datasets of 104 consecutive patients with clinical routine MRI of the prostate
who subsequently underwent MR-guided prostate biopsy were retrospectively analyzed.
In total, 123 lesions with histological workup of MRI-guided in-bore biopsy were analyzed.
In cases in which more than one core was taken per lesion, the highest Gleason score
reported for the lesion was used for lesion classification. Prostate cancer was proven
in 83 lesions with a Gleason score of 6/7a/7b/8/9 in 20/33/11/16/3 cases, respectively.
40 lesions were classified as benign tissue in histopathology. 46 malignant and 11
benign lesions were located in the peripheral zone (PZ), 37 malignant and 29 benign
lesions were located in the transitional zone (TZ) or the central zone (CZ).
MRI technique
All examinations were performed on clinical 3.0-T MRI systems equipped with dual-source
RF transmission technology (Ingenia, 3.0 T; Philips Healthcare, Best, The Netherlands;
gradient system: 80 mT/m maximum amplitude, 200 T/m/s maximum slew rate) using a 32-channel
torso coil with a digital interface for signal detection. A standardized spin-echo
echo-planar DWI sequence (TR = 5000 ms, TE = 53 ms) with three b-values of 0, 50,
800 s/mm² was acquired with diffusion gradients applied in three orthogonal directions.
The number of signal averages of the images was 4 for b = 0 and 50 s/mm² and 9 for
b = 800 s/mm². Isotropic DWI images were directly computed on the scanner. Spectral
attenuated inversion recovery was used for fat suppression. Further sequence parameters
were: field of view = 320x320 mm², slice number/thickness/gap = 24/4 mm/0 mm, acquired
in-plane resolution = 2x2 mm², echo-planar imaging factor = 65, half-Fourier-factor = 0.6,
parallel imaging with sensitivity encoding factor = 3, total acquisition time = 3:38 min.
Postprocessing
Based on the original DWI images, the following conventional ADC maps were computed:
-
ADC0_800 = (ln(S0)–ln(S800))/800 and ADC50_800 = (ln(S50)–ln(S800))/750, with S0, S50 and S800 representing the signal intensities at b = 0, b = 50 and b = 800 s/mm².
-
From ADC0_800 and ADC50_800, computed DWI images were generated at b = 2000 and b = 3000 s/mm²: cDWIb_A = S0*exp(-ADC0_800*b) and cDWIb_B = S0*exp(-ADC50_800*b).
To obtain exponential ADC maps, the signal intensity at b = 800 s/mm² was normalized
to S0:
In analogy to the eADC of the original DWI data, the cDWI images were also normalized
to the signal intensity at b = 0, yielding a computed exponential ADC:
For each lesion, two regions-of-interest (ROIs) were drawn on the conventional ADC
maps and then copied to the calculated and acquired DWI images. The first ROI was
placed within the lesion in the hypointense-appearing area of the ADC map. The second
ROI was placed in the corresponding contralateral segment as a reference ROI. In cases
in which this contralateral segment also showed abnormalities, the reference ROI was
placed in healthy-appearing tissue of the same anatomical zone as the lesion (PZ or
TZ/CZ). For each lesion, mean signal intensities in the lesion ROI (Slesion) and in the reference ROI (Snormal) as well as the standard deviation of the reference ROI (SDnormal) were recorded.
Lesion conspicuity was quantified by the contrast ratio (CR) and the contrast-to-noise
ratio (CNR) which were defined as
All postprocessing steps including the ROI analyses were performed using in-house
software written in MATLAB (The MathWorks, Inc., Natick, MA).
Statistical Analyses
To test for significant differences in CR and CNR between ten different image types
(DWI800 (= S800), ADC0_800, ADC50_800, eADC, cDWI2000_A, cDWI2000_B, cDWI3000_A, cDWI3000_B, c_eADC2000 and c_eADC3000 ), a repeated measures analysis of variance (ANOVA) was performed. For this part of
the analyses, only malignant lesions (Gleason score ≥ 6, n = 83) were included.
In a second step, a one-way ANOVA with post-hoc Bonferroni/Games-Howell correction
(equal/non-equal variances) was performed to test for group differences between benign
(n = 40), low-risk (Gleason score 6 and 7a, n = 53) and high-risk (Gleason 7b, 8,
9, n = 30) lesions. In addition to the CR values obtained for the ten different image
types, the absolute values of the conventional ADCs were also included in this analysis.
Finally, receiver operating characteristic (ROC) curve analyses were performed to
assess the ability to differentiate between benign and malignant and between low-risk
and high-risk lesions. Again, CR values as well as the conventional ADC values were
included in the analysis.
All statistics were performed in SPSS (IBM, Armonk, NY) and MedCalc (Ostend, Belgium).
Results
Image examples of the original DWI images and the generated maps are shown in [Fig. 1]. 15 out of 83 malignant lesions had a CR ≤ 0.05 in the DWI800 image. In these cases the tumor was inconspicuous or hardly noticeable in original
DWI800 due to an inverse T2 shine-through effect, while the lesion was noticeable in ADC
and cDWI images.
Fig. 1 Original and computed DWI images of a 72-year-old patient with histopathologically
confirmed prostate cancer in segment 6 p (Gleason score 7a). The decrease of the T2
relaxation time in the tumor is noticeable in the b0 image (arrow). Due to the “inverse”
T2 shine-through effect, cancerous tissue with restricted diffusion appears inconspicuous
on b800 images. The lesion is noticeable in conventional ADC maps, but more conspicuous
on all cDWI and c_eADC images due to the high contrast between the lesion and the
surrounding prostate tissue. Note that background suppression was applied to all cDWI
and eADC maps (based on signal intensities in b0, b800 and ADC0_800).
Abb. 1 Original und berechnete DWI-Bilder eines 72 Jahre alten Patienten mit histopathologisch
bestätigtem Protatakrebs in Segment 6 p (Gleason Score 7a). Die verkürzte T2 Relaxationszeit
im Tumor zeigt sich im b0 Bild (Pfeil). Durch den „inversen“ T2 Durchscheineffekt
erscheint das tumoröse Gewebe mit eingeschränkter Diffusion im b800 Bild unauffällig.
Die Läsion ist in der konventionellen ADC-Karte erkennbar, sticht in allen cDWI und
c_eADC Karten aufgrund des hohen Kontrastes zwischen Läsion und umgebendem Prostatagewebe
jedoch noch deutlicher hervor. Bei der Erstellung der cDWI- und eADC- Bilder erfolgte
eine Hintergrundunterdrückung (basierend auf den Signalintensitäten in b0, b800 und
ADC0_800).
The repeated measures ANOVA revealed a significant association of CR and CNR with
the image type. The post-hoc tests showed significant differences in CR values between
all ten image types with the exception of non-significant differences between cDWI2000_A and cDWI2000_B and between cDWI3000_A and cDWI3000_B. The CR values were highest for c_eADC3000 followed by the CR values of cDWI3000, c_eADC2000 and cDWI2000. The CR values of the conventional ADC0_800 and ADC50_800 were significantly lower than the CR values of all computed DWIs and computed eADCs.
The CR values of conventional ADCs were minimally but significantly higher than the
CR values of the related eADC. The lowest CR values were obtained for original DWI800 ([Fig. 2a]). In the original DWI800 images, even negative CR values were found in 7 cases.
Fig. 2 a Contrast ratio (CR) and b contrast-to-noise ratio (CNR) of malignant lesions in ten different image types:
acquired DWI800, ADC maps computed from b = 0 and b = 800 s/mm² and from b = 50 and b = 800 s/mm²,
exponential ADC map (eADC), computed DWI images at b = 2000 and 3000 s/mm², and corresponding
computed exponential ADC maps.
Abb. 2 a Kontrastverhältnis (CR) und b Kontrast-zu-Rausch Verhältnis (CNR) der malignen Läsionen in zehn verschiedenen Bildtypen:
akquirierte DWI800-Bilder, ADC-Karten berechnet mit b = 0 und b = 800 s/mm² und mit b = 50 and b = 800 s/mm²,
exponentielle ADC-Karte (eADC), berechnete DWI-Bilder mit b = 2000 und 3000 s/mm²
(cDWI), und die dazugehörigen berechneten exponentiellen ADC-Karten (c_eADC).
[Fig. 2b] shows the results of the CNR analysis. The CNR was also markedly higher in all cDWI
and c_eADC images compared to conventional ADC, eADC and original DWI800 images. In contrast to CR, there was no significant difference in CNR between the
cDWIs and the related/associated c_eADCs. The CNR in eADC images was significantly
higher than in conventional ADC maps and in original DWI800 images. No significant differences were found between DWI800 and ADC0_800 and between ADC0_800 and ADC50_800.
The assessment of group differences between benign (group 0), low-risk (group 1, Gleason
score 6 and 7a) and high-risk (group 2, Gleason score 7b, 8, 9) lesions revealed a
significant association of the investigated parameters (CR values of the ten different
image types and absolute ADC values) with the lesion groups ([Table 1]). There was an increase in the CR values in all image types from group 0 to group
1 to group 2. The group differences between benign and malignant and between low-risk
and high-risk groups were significant with the exception of CR in DWI800 and ADC50_800 images. In DWI800 images only the difference between the benign and the high-risk group and in ADC50_800 maps only the difference between benign and the two malignant groups was statistically
significant. For the absolute ADCs significantly higher values were found for the
benign group compared to the two malignant groups, but differences between the two
malignant groups were not significant.
Table 1
Mean ADC values [10-6 mm2/s] and contrast ratio between lesion and normal-appearing prostate tissue in different
image types for benign tissue (group 0), low-risk (1) and high-risk (2) prostate cancer.
Tab. 1 Mittelwert der ADC-Werte [10-6 mm2/s] und Kontrastwerte zwischen Läsionen und normal erscheinendem Prostatagewebe in
verschiedenen Bildtypen unterteilt in Läsionen mit benignem Gewebe (Gruppe 0), und
Prostatakrebs mit niedrigem (1) und hohem Risiko (2).
group
|
0
|
(n = 40)
|
1
|
(n = 53)
|
2
|
(n = 30)
|
p (asymptotic) two-sided test
|
|
mean
|
std. dev.
|
mean
|
std. dev.
|
mean
|
std. dev.
|
0 vs 1
|
0 vs 2
|
1 vs 2
|
ADC0_800
|
1057
|
148
|
829
|
137
|
811
|
167
|
< 0.001
|
< 0.001
|
1.000
|
ADC50_800
|
983
|
159
|
774
|
143
|
763
|
157
|
< 0.001
|
< 0.001
|
1.000
|
Contrast Ratio (CR)
|
|
|
|
|
|
|
|
|
|
ADC0_800
|
0.192
|
0.064
|
0.285
|
0.090
|
0.345
|
0.105
|
< 0.001
|
< 0.001
|
0.029
|
ADC50_800
|
0.205
|
0.080
|
0.301
|
0.101
|
0.356
|
0.108
|
< 0.001
|
< 0.001
|
0.070
|
DWI800
|
0.089
|
0.073
|
0.118
|
0.071
|
0.138
|
0.099
|
0.251
|
0.035
|
0.816
|
eADC
|
0.193
|
0.067
|
0.255
|
0.084
|
0.324
|
0.098
|
< 0.001
|
< 0.001
|
0.006
|
c_DWI2000_A
|
0.358
|
0.120
|
0.462
|
0.130
|
0.555
|
0.147
|
0.001
|
< 0.001
|
0.008
|
c_DWI2000_B
|
0.359
|
0.124
|
0.464
|
0.134
|
0.550
|
0.155
|
0.001
|
< 0.001
|
0.020
|
c_eADC2000
|
0.432
|
0.134
|
0.553
|
0.140
|
0.662
|
0.147
|
< 0.001
|
< 0.001
|
0.002
|
c_DWI3000_A
|
0.527
|
0.145
|
0.657
|
0.140
|
0.756
|
0.136
|
< 0.001
|
< 0.001
|
0.008
|
c_DWI3000_B
|
0.526
|
0.157
|
0.658
|
0.146
|
0.749
|
0.146
|
< 0.001
|
< 0.001
|
0.027
|
c_eADC3000
|
0.577
|
0.156
|
0.712
|
0.141
|
0.812
|
0.128
|
< 0.001
|
< 0.001
|
0.008
|
The ROC analyses revealed that benign (n = 40) and malignant (n = 83) lesions can
be best discriminated by the absolute ADC0_800 and by the CR of ADC0_800 (area under the curves AUC = 0.868 and AUC = 0.849, respectively), followed by the
absolute ADC50_800 and by the CR of ADC50_800 (AUC = 0.844 and AUC = 0.828, respectively). The AUCs for the CRs of all cDWIs, c_eADC
and eADC images were all in the range of 0.761 to 0.799. However, a markedly lower
value was found for the CR of DWI800 (AUC = 0.643). All results are listed in [Table 2].
Table 2
Results of the ROC analyses for differentiation of malignant (n = 83) and benign (n = 40)
lesions based on the absolute value of ADC and CR in different image types. AUC: area
under the curve with standard error (SE) and 95 % confidence interval (CI). Criterion
is the threshold for which the sum of sensitivity and specificity is maximized.
Tab. 2 Ergebnisse der ROC Auswertung bezüglich Differenzierung von malignen (n = 83) und
benignen (n = 40) Läsionen anhand der Absolutwerte des ADC sowie CR in den verschiedenen
Bildtypen. AUC: Fläche unter der ROC Kurve mit Standardfehler (SE) und 95 % Konfidenzintervall
(CI). Kriterium: Schwellenwert für welchen die Summe aus Sensitivität und Spezifität
maximal ist.
malign vs. benign
|
AUC
|
SE
|
95 % CI
|
p
|
criterion
|
sensitivity
|
95 % CI
|
specificity
|
95 % CI
|
ADC0_800
|
0.868
|
0.039
|
0.795 to 0.922
|
0.0001
|
≤ 911.1824
|
74.7
|
64.0 – 83.6
|
87.5
|
73.2 – 95.8
|
ADC50_800
|
0.844
|
0.042
|
0.767 to 0.903
|
0.0001
|
≤ 8600.0148
|
74.7
|
64.0 – 83.6
|
85
|
70.2 – 94.3
|
Contrast Ratio (CR)
|
|
|
|
|
|
|
|
|
|
ADC0_800
|
0.849
|
0.034
|
0.733 to 0.907
|
0.0001
|
> 0.2294
|
78.31
|
67.9 – 86.6
|
85
|
70.2 – 94.3
|
ADC50_800
|
0.828
|
0.036
|
0.750 to 0.890
|
0.0001
|
> 0.2072
|
86.75
|
77.5 – 93.2
|
67.5
|
50.9 – 81.4
|
DWI800
|
0.643
|
0.051
|
0.552 to 0.728
|
0.005
|
> 0.1226
|
51.81
|
40.6 – 62.9
|
72.5
|
56.1 – 85.4
|
eADC
|
0.785
|
0.041
|
0.702 to 0.854
|
0.0001
|
> 0.1958
|
79.52
|
69.2 – 87.6
|
67.5
|
50.9 – 81.4
|
c_DWI2000_A
|
0.779
|
0.041
|
0.695 to 0.848
|
0.0001
|
> 0.4227
|
65.06
|
53.8 – 75.2
|
82.5
|
67.2 – 92.6
|
c_DWI2000_B
|
0.761
|
0.043
|
0.675 to 0.833
|
0.0001
|
> 0.3452
|
84.34
|
74.7 – 91.4
|
57.5
|
40.9 – 72.9
|
c_eADC2000
|
0.792
|
0.04
|
0.710 to 0.860
|
0.0001
|
> 0.4318
|
90.36
|
81.9 – 95.7
|
57.5
|
40.9 – 72.9
|
c_DWI3000_A
|
0.799
|
0.039
|
0.717 to 0.866
|
0.0001
|
> 0.5673
|
83.13
|
73.3 – 90.5
|
70
|
53.5 – 83.4
|
c_DWI3000_B
|
0.777
|
0.042
|
0.693 to 0.847
|
0.0001
|
> 0.579
|
80.72
|
70.6 – 88.6
|
70
|
53.5 – 83.4
|
c_eADC3000
|
0.797
|
0.04
|
0.715 to 0.864
|
0.0001
|
> 0.5916
|
90.36
|
81.9 – 95.7
|
60
|
43.3 – 75.1
|
For the differentiation between low-risk (n = 53) and high-risk (n = 30) lesions,
the highest AUC was found for the CR of c_eADC3000 (AUC = 0.711), followed by CR of c_eADC2000 and CR of eADC (AUC = 0.706 and AUC = 0.700, respectively). The AUCs for the CRs
of all cDWIs were lower and quite similar (between 0.660 and 0.692). The ability to
discriminate high-risk and low-risk lesions by the CR of ADC0_800 and ADC50_800 was worst (AUC = 0.657 and AUC = 0.636, respectively) and not possible for the absolute
ADC values (see [Table 3]).
Table 3
Results of the ROC analyses for the differentiation of malignant lesions into high-risk
lesions (n = 30) and low-risk lesions (n = 53) based on the value of ADC and CR in
different image types. See the caption of [Table 2] for further details.
Tab. 3 Ergebnisse der ROI-Auswertung bezüglich Differenzierung von malignen Läsionen in
Läsionen mit hohem Risiko (n = 30) und niedrigem Risiko (n = 53) anhand der Absolutwerte
des ADC sowie CR in den verschiedenen Bildtypen. Weitere Details siehe Legende von
[Tab. 2].
high vs. low risk
|
AUC
|
SE
|
95 % CI
|
p
|
criterion
|
sensitivity
|
95 % CI
|
specificity
|
95 % CI
|
ADC0_800
|
0.547
|
0.065
|
0.433 to 0.656
|
0.4769
|
|
|
|
|
|
ADC50_800
|
0.535
|
0.066
|
0.422 to 0.645
|
0.5988
|
|
|
|
|
|
Contrast Ratio (CR)
|
|
|
|
|
|
|
|
|
|
ADC0_800
|
0.657
|
0.064
|
0.545 to 0.758
|
0.0142
|
> 0.3614
|
50
|
31.3 – 68.7
|
81.13
|
68.0 – 90.5
|
ADC50_800
|
0.636
|
0.065
|
0.524 to 0.739
|
0.0355
|
> 0.4019
|
46.67
|
28.4 – 65.7
|
86.79
|
74.7 – 94.5
|
DWI800
|
0.616
|
0.066
|
0.502 to 0.720
|
0.0775
|
|
|
|
|
|
eADC
|
0.700
|
0.062
|
0.589 to 0.796
|
0.0013
|
> 0.3313
|
56.67
|
37.4 – 74.5
|
88.68
|
77.0 – 95.7
|
c_DWI2000_A
|
0.672
|
0.063
|
0.560 to 0.771
|
0.0068
|
> 0.5912
|
50
|
31.3 – 68.7
|
88.68
|
77.0 – 95.7
|
c_DWI2000_B
|
0.660
|
0.064
|
0.547 to 0.760
|
0.0126
|
> 0.6143
|
43.33
|
25.5 – 62.6
|
90.57
|
79.3 – 96.8
|
c_eADC2000
|
0.706
|
0.062
|
0.595 to 0.801
|
0.0009
|
> 0.6814
|
60
|
40.6 – 77.3
|
86.79
|
74.7 – 94.5
|
c_DWI3000_A
|
0.692
|
0.062
|
0.582 to 0.789
|
0.0021
|
> 0.8066
|
53.33
|
34.3 – 71.6
|
88.68
|
77.0 – 95.7
|
c_DWI3000_B
|
0.676
|
0.063
|
0.564 to 0.775
|
0.0054
|
> 0.8102
|
50
|
31.3 – 68.7
|
88.68
|
77.0 – 95.7
|
c_eADC3000
|
0.711
|
0.061
|
0.601 to 0.806
|
0.0006
|
> 0.8939
|
63.33
|
43.9 – 80.0
|
86.79
|
74.7 – 94.5
|
Discussion
In this study the conspicuity and discriminability of prostate cancer was evaluated
by direct comparison of computed DWI images, standard eADC maps, conventional ADC
maps, and computed eADC maps, which has not yet been investigated. The main results
were: Computation of DWI images and eADC maps at b-values of 2000 and 3000 s/mm² clearly
improves the conspicuity of prostate cancer compared to original DWI images with b = 800 s/mm²,
and also compared to conventional ADC and exponential ADC maps at lower b-values.
Exponential ADC maps yielded an improved lesion-to-normal contrast ratio over original
DWI800 images, but there was no clear benefit over the conventional ADC maps. Differentiation
of benign and malignant lesions was best for conventional ADC values and CR values
of conventional ADC. However, for the discrimination of low-risk from high-risk lesions,
CR values of c_eADC were best suited followed by the CR values of cDWI.
There are a few studies with smaller sample sizes that investigated the use of computed
DWI in prostate MRI. However, none of those presented a direct comparison between
cDWI and eADC for the detection and discrimination of prostate cancer. Furthermore,
there is no previous study investigating the use of computed eADC maps.
Based on the existing literature, an increase in lesion-to-normal contrast and contrast-to-noise
ratio compared to conventional ADC is only expected with acquired or computed DWI
images at b-values higher than 1500 s/mm² [13]
[14]
[16]
[20]
[21]. cDWI images compared to original DWI images at the same b-value featured a reduced
artifact level with similar or better CR and CNR values without additional acquisition
time on top of the scan time used to obtain DWI with standard b-values [10]
[12]
[15]
[17]
[21].
Feuerlein et al. analyzed cDWI data of 14 patients with computed b-values up to 4000 s/mm²
and observed an increase in CNR with higher b-values [13]. They recommended the computation of cDWI images with a b-value of at least 2000 s/mm²
for a significant improvement in tumor conspicuity compared to conventional ADC. On
the other hand, Maas et al. noted that extremely high b-values may have some limitations
in clinical practice because extremely high and low signal intensities in such images
may exceed the dynamic range limits of common viewing systems [12]. This limitation may technically be overcome by the use of a memory depth of 16
instead of 12 bit. However, it remains questionable whether a further numerically
detectable increase in contrast-to-noise with extremely high b-values is in fact visually
noticeable, since the intensity of the normal prostate tissue is already very low
at a b-value of 2000 s/mm². Vural et al. computed cDWI images with b-values of 1500,
2000 and 3000 s/mm² in 28 patients [16]. Compared to cDWI2000, they found higher CR values for cDWI3000 images but equal lesion detection rates. Visual assessment of lesion conspicuity
revealed no significant differences between cDWI2000 and cDWI3000 images. However, cDWI2000 images provided a better anatomical delineation and were chosen as the most preferred
image set. Rosenkrantz et al. computed b-values up to 5000 s/mm² and analyzed the
lesion-to-peripheral-zone contrast in 49 patients. Again, contrast increased with
the b-value, but anatomic clarity and visualization of the capsule decreased. Sensitivity
for tumor was highest at b = 1500 to 2500 s/mm² [14]. Motivated by the results of these studies, we computed cDWI images and also c_eADC
maps at b = 2000 and 3000 s/mm² for comparison to original DWI images with b = 800 s/mm²,
to conventional ADC maps, and to exponential ADC maps. We found improved conspicuity
of prostate cancer for the cDWI images. Compared to b = 2000 s/mm², a further increase
in CR and CNR was found for b = 3000 s/mm² in agreement to the previous studies [14]
[16].
The group of Ueno et al. compared cDWI2000 images computed from six different combinations of acquired b-values [15]. For b-value combinations of b = 0, 100, 500 with b = 1000 s/mm², similar CR values,
image quality and lesion conspicuity were obtained, which was worse for b-value combinations
of b = 0, 100 with b = 500 s/mm². In our study, we investigated two combinations of
b-values (b = 0 with 800 and 50 with 800 s/mm²) based on our standard DWI protocol
for prostate examinations, and we also obtained very similar results for both variants
with respect to CR and CNR.
Interestingly, although we did not observe an increase in CR in eADC images (at b = 800 s/mm2) compared to conventional ADC, exponential ADC images of the computed high b-values
led to a slight further increase in CR compared to related cDWI at the same b-value.
This result suggests that c_eADC images may be the method of choice to detect prostate
cancer with DWI. However, a drawback of eADC and c_eADC maps is the presence of high
signal intensities in non-prostate tissue due to the division by S0, which is low in tissue surrounding the prostate. This may hamper the detection of
small lesions close to the rim of the prostate. Since most prostate cancers are located
in the peripheral zone [22], the development of methods for proper suppression of tissue surrounding the prostate
would probably enhance the general applicability of c_eADC.
In the second part of the analyses we investigated whether the generation of cDWI
images and eADC and c_eADC maps has an advantage over the conventional ADC and original
DWI with b = 800 s/mm² for the differentiation of benign and malignant lesions, and
to classify malignant lesions into low-risk and high-risk lesions based on the DWI
data. Conventional ADC values and CR values of conventional ADC were best suited for
the differentiation between benign and malignant lesions (based on the Youden index
an ADC0_800 ≤ 911 s/mm² yielded the maximum sum of sensitivity (74.7 %) and specificity (87.5 %)
in this study). For the classification of lesions into low-risk and high-risk lesions,
the quantification of CR for c_eADC and cDWI yielded higher AUCs than conventional
ADC values and CR values of conventional ADC. This finding is in principle of high
clinical relevance since watchful waiting has become an important option for the management
of low-risk prostate cancers [23]
[24]. However, a valid differentiation between low- and high-risk lesions in the individual
case is still not possible even with computed c_eADC or cDWI. Also Agarwar et al.
investigated the ability of cDWI to identify low-risk lesions based on DWI data. They
analyzed cDWI data of 42 patients with b-values up to 4000 s/mm² and suggested cDWI
with a b-value of 1600 – 2000 s/mm² as a mean for the selection of active surveillance
patients (maximum AUC of 0.75) [20].
These results suggest the following workflow: First, cDWI2000 or e_ADC2000 images (if proper background suppression is applied) should be read for the detection
of suspicious lesions (similar to the inspection of original high-b DWI images in
other organs like the brain). Then, the actual ADC value of a suspicious lesion should
be measured to aid differentiation between benign and malignant lesions.
Our study has several limitations. Only a small number of patients with a negative
biopsy result received a follow-up in our institution so that false-negative classifications
cannot be excluded. Moreover, CNR as determined in the present and in previous studies
[13] represents only a rough measurement of the contrast-to-noise ratio as the standard
deviation in the reference ROI is also influenced by tissue heterogeneity. The contrast
measurements used for the quantification of lesion conspicuity is dependent on the
ROI placement. If only hot spot analyses are performed (i. e. measurements are based
on very small ROIs placed at the most hyperintense area of the lesion), values of
CR and CNR may be even higher. Furthermore, it should be noted that cDWI in general
does not provide information equivalent to the measured DWI at the same b-value [12]. Only the actual acquisition of high b-values increases the accuracy for the quantification
of low ADC values [25] and additionally makes it possible to obtain information about diffusion kurtosis
[26]. Finally, prospective studies or retrospective analyses of MRI data with a complete
histopathological workup after prostatectomy are required to test whether cDWI in
fact increases the detection rate of malignant lesions compared to ADC. To date, this
has only been performed by Vural et al. for different b-values but not in comparison
to ADC or eADC [16].
In conclusion, computed DWI images clearly improve the conspicuity of prostate cancer
compared to original DWI images, conventional ADC and standard eADC maps calculated
from the acquired DWI data. By computing eADC maps from cDWI images, the conspicuity
was further increased. However, standard eADC maps did not show any benefit over conventional
ADC maps. Conventional ADC0_800 was best suited for discrimination between benign and malignant lesions, while computed
eADC maps may be helpful for discrimination between low-risk and high-risk lesions.
Prostate cancer may be overlooked on original DWI images with b = 800 s/mm². Computed
DWI images and eADC maps at b-values of 2000 and 3000 s/mm² clearly improve the conspicuity
of prostate cancer compared to original DWI images and also compared to conventional
ADC and exponential ADC maps at lower b-values. Benign and malignant lesions can be
best discriminated by conventional ADC.