Materials and Methods: Fifty-one patients who underwent MRI before application of MRI fusion biyopsies were included 63,57±8,5 (45-88) years) in this study, On midsagittal T2- weighted MR images, the thickness of subcutaneous and periprostatic fat was calculated as the vertical distance from the pubic symphysis both to the skin and to the prostate, respectively.
Results: The mean (±SD) subcutaneous fat thickness (SCFT) and periprostatic fat thickness (PPFT) were 17.38±13.02 mm and 5.64±3.89 mm, respectively. A positive correlation was found between Gleason scores and PPFT (p<0.001), SCFT (p<0.001), body mass indices (BMIs) (p<0.001), prostate spesific antigen values (PSA) (p=0.002), PSA density (p<0.001). In multivariate analysis, only PPFT was found to be statistically significant in predicting GS ≥7 (p=0.005). It has been shown that the risk of detecting GS ≥7 prostate cancer increases 8.9 times with one mm increase in PPFT values.
Conclusion: Periprostatic fat tissue thickness can be used as an independent predictive factor in foreseeing prostate cancer aggressiveness before application of biopsy or radical prostatectomy.
Increased periprostatic fat tissue contributes to the development and progression of PCa which may be due to the disruption of adipokines (such as adiponectin, leptin, CCL7, etc.) secreted from enlarged periprostatic fat tissue [3,4]. Furthermore, increased periprostatic fat thickness (PPFT) is related to a higher stage or grade of PCa [5,6]. Magnetic resonance imaging (MRI) measures PPFT and visceral fat at multiple levels of the body. As a result, we believe that the measurement of PPFT with MRI could be a useful diagnostic tool for PCa. However, few studies have been conducted on the utility of PPFT in detecting PCa or clinically significant PCa (Gleason score 3+4 or higher).
In this study, we aim to investigate the relationship between PPFT on MRI and GS.
Clinical and Pathological Data
Before the MRI-fusion biopsy, we investigated the patients"
medical records to assess clinical and pathological information
about parameters such as height, weight, BMI, PSA, PSA density, and GS. Patients were classified as low (GS=6) and high
(GS ≥7) grade PCa.
MRI Protocol
A 3.0 T MRI scan Siemens Skyra system (Siemens Healthcare
GmbH, Erlangen, Germany) with an abdominal eight-channel
surface phased array coil was used for imaging. Transverse, sagittal,
and coronal T2WI images, DWI images with multiple b-values,
and corresponding ADC maps were obtained for analysis. DCE
images were obtained after intravenous injection of gadoteric acid
(Dotarem®; Guerbet, France) at a dose of 0.1 mmol/kg/bwt and at
a rate of 3 mL/sec by using an automatic injector.
Image Analysis
The radiologist scored lesions in MRI using PIRADS v2.1 without
knowing the patients" clinical information. Images were scored
following the PI-RADS v2.1 standards with T2-weighted imaging,
diffusion-weighted imaging, and dynamic contrast-enhanced
imaging. In addition, prostate volumes were also measured by MRI.
Sagittal T2-weighted images were used to calculate the SCFT and PPFT. The shortest perpendicular distances in the midsagittal plane between the pubic symphysis and the skin and between the pubic symphysis and the prostate, respectively, were used to calculate SCFT, and PPFT (Figures 1 and 2). To avoid overestimating these measurements, the shortest vertical distance was used. The current measurement technique we employed had good repeatability and stability, allowing us to reduce measurement errors from various planes and prevent interference from morphological changes of periprostatic organs, including the bladder and rectum.
Statistical Analysis
To determine fitness to normal distribution patterns,
frequency histograms were examined. Continuous data were
presented as mean ± standard deviation (SD) and subjected to
either the nonparametric Mann-Whitney U test or the Student"s t
test for analysis. The Pearson or Spearman correlation analyses
were used to calculate correlations between continuous variables.
The p<0.05 was accepted as statistically significant. SPSS 22.0
program was used in the analysis. Age, PSA, PSA density,
prostate volume, PIRADS, PPFT, SCFT and BMI values were
assessed with univariate and multivariate regression analysis to
predict high-grade PCa (GS ≥7).
Table 1. Clinical characteristics of study patients
GS was found to be positively correlated with PPFT (p<0.001), SCFT (p<0.001), BMI (p<0.001), PSA (p=0.002), PSA density (p<0.001), and PIRADS (p<0.001). However, no significant correlation was found between age (p=0.065), prostate volume (p=0.426) and GS. Similarly, a positive correlation was detected between GS=6 and GS ≥7 groups, in terms of PPFT (p<0.001), SCFT (p<0.001), BMI (p<0.001), PSA (p=0.003), PSA density (p<0.001), and PIRADS (p=0.002) but any significant correlation was not found between groups in terms of age (p=0.204) and prostate volume (p=0.188).
In the univariate analysis, PSA, PSA density, PIRADS, PPFT, SCFT and BMI values were found to be statistically significant in predicting GS ≥7. However, in multivariate analysis, only PPFT value was found to be statistically significant in predicting GS ≥7 (p=0.005). It has been shown that the risk of detecting GS ≥7 PCa increases 8.9 times with 1 mm increase in PPFT values (Table 2).
Table 2. Results of univariate and multivariate logistic regression analysis
Using various measurement methods in transrectal ultrasonography (TRUS), CT, and MRI, the relationship between periprostatic fat tissue and PCa aggressiveness has been confirmed in recent studies. Van Roermund et al. [8] evaluated periprostatic adipose tissue as a predictive marker for PCa aggressiveness using a single 3-mm thick CT section. They demonstrated that the periprostatic fat area and density, which is calculated as the ratio of the periprostatic fat to the total contour area (percent), were indicators of the aggressiveness of cancer. According to Woo et al., [6] PPFT assessed on a single preoperative mid-sagittal T1-w MRI from the symphysis pubis to the prostate, positively correlated with GS. Periprostatic adiposity has been demonstrated by Zhang et al. [9] as a useful parameter in accurately determining the tumor stage and grade in addition to having an impact on PCa aggressiveness. They emphasized the significance of measuring periprostatic adiposity in preoperative MRI as a predictive prognostic marker.
In this study, we have demonstrated that PPFT is an independent predictor of high-grade PCa on MRI. It was discovered that higher PPFT is a predictive risk factor for highgrade disease. We have found that retropubic PPFT measured on midsagittal images significantly correlated with GS and was able to distinguish PCa with GS ≥7 from PCa with GS=6. Our study raises the possibility that PPFT measurement, in line with previous studies, may have significant clinical implications in the preoperative evaluation of the prostate and will guide effective management in patients with PCa. GS is the best predictor of consequences of PCa among all clinical and pathological markers in patients with PCa [10]. Our study showed a substantial correlation between PPFT and histological scoring and demonstrated the critical function that periprostatic fat tissues play in the carcinogenesis of PCa.
PCa is one of many cancers for which obesity is a known risk factor. The imbalance between proinflammatory and antiinflammatory cytokines in the adipose tissue microenvironment and the differential expression of specific genes may play important roles in prostate carcinogenesis and the spread of the disease, even though the underlying mechanisms are not fully elucidated [11]. We hypothesize that visceral adipose tissue may play a substantial role in determining the severity of PCa based on the significant positive correlation between BMI, PPFT, and SCFT measures and GS that we have observed in our study.
We used MRI to measure the thickness of retropubic fat in the midsagittal plane, which is the technique used for determining the PPFT. We think that there are some advantages of using MRI over transrectal ultrasound (TRUS) and CT, which had been used in previous studies [7,8,12]. TRUS mainly depends on the operator. Additionally, the PPFT may change depending on how much pressure is placed on the prostate during the TRUS examination. Although CT is an important diagnostic tool for identifying and measuring visceral and subcutaneous fat, it is rarely used in patients with PCa unless they are also going to receive radiotherapy. Although estimating the amount of fat using CT yields quite accurate results, calculating the total PPF volume and peri-prostatic fat (PPF) density (%) requires use of a special software. In addition, it is essential to consider radiation exposure. However, because it is frequently used in preoperative evaluation in terms of risk stratification for patients with PCa, MRI is regularly used for the diagnosis, localization, and elimination of an additional imaging method. Additionally, it doesn"t expose the patients to the adverse effects of ionizing radiation. The MRI method is fairly easy to use and doesn"t call for specialized measurement or interpretation knowledge.
In our study, patients diagnosed with PCa by MRI-fusion biopsy, which is a new point-and-shoot technological diagnostic method in PCa, were included in the study. There are many studies in the literature showing that MR-fusion biopsy is more successful than transrectal prostate biopsy, which is a systematically used diagnostic tool for PCa. Xei et al. [13] found that MRI-fusion biopsy detected greater number of clinically significant and high-risk PCa cases and fewer clinically insignificant cases of PCa compared to systematic protocols. The results of the measurements made with the MRI parameters of the patients diagnosed with PCa by MRI-fusion biopsy make our study different from other studies.
Cao et al. [14] showed that PPFT measured on MRI is an independent diagnostic marker for PCa and high-grade PCa. Increased PPFT was detected to be a risk factor indicating the diagnosis of PCa as well as for detecting high-grade PCa by biopsy. They found that each millimeter increase in PPFT had a 55% and 46% increase in the odds of detecting PCa and highgrade PCa, respectively. In our study, we showed that the risk of detecting PCa with GS ≥7 increased 8.9 times with one mm increase in PPFT values.
Also, in a similar study, Bhindi et al., [12] found that PPFT may be a risk factor for the detection of PCa and high-grade PCa in patients who had undergone prostate biopsy. This study is one of the first studies using TRUS biopsy, and our study was performed with a more advanced and new technique, ie. MRIfusion biopsy.
There are several limitations to our study. Indeed, our study was a retrospective analysis, and PPFT was only measured in one plane on the MRI. Establishing a consistent procedure can call for a more precise technique, like volumetric measurement. The findings of our investigation still indicated that PPFT is a viable predictor indicating the need (if any) to perform prostate biopsy. Also the results of the radical prostatectomy were not taken into consideration and the pathology findings of our patients were verified by MR-fusion biopsy. The biological markers (adipokines) quantified from radical prostatectomy samples of PPFT, which is a sign of biological activity, will be correlated with the GS in subsequent studies in order to better understand the cause-andeffect relationship between periprostatic fat tissue and GS.
Ethics Committee Approval: The study was approved by the Ethics Committee of University of Acibadem (Approval date, and registration number: 02.09.2022-14/38).
Informed Consent: An informed consent was obtained from all the patients.
Publication: The results of the study were not published in full or in part in form of abstracts.
Peer-review: Externally peer-reviewed.
Authorship Contributions: Any contribution was not made by any individual not listed as an author. Concept – B.K.S., D.S.; Design – B.K.S., D.S.; Supervision –D.S.; Resources – B.K.S., D.S.; Materials – B.K.S., D.S.; Data Collection and/or Processing – B.K.S., Analysis and/or Interpretation – B.K.S., D.S.; Literature Search – B.K.S., D.S.; Writing Manuscript – B.K.S., D.S.; Critical Review – B.K.S., D.S.
Conflict of Interest: The authors declare that they have no conflict of interest.
Financial Disclosure: The authors declare that this study received no financial support.
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