Revisiting DCE-MRI Classification of Prostate Tissue Using Descriptive Signal Enhancement Features Derived From DCE-MRI Acquisition With High Spatiotemporal Resolution

被引:7
|
作者
Breit, Hanns C. [1 ]
Block, Tobias K. [2 ]
Winkel, David J. [1 ]
Gehweiler, Julian E. [1 ]
Glessgen, Carl G. [1 ]
Seifert, Helge [1 ]
Wetterauer, Christian [1 ]
Boll, Daniel T. [1 ]
Heye, Tobias J. [1 ]
机构
[1] Univ Hosp Basel, Dept Radiol, Petersgraben 4, CH-4031 Basel, Switzerland
[2] NYU, Langone Med Ctr, New York, NY USA
关键词
quantitative imaging; tissue characterization; prostate MRI; noninvasive evaluation of PIRADS lesion; model-free perfusion analysis derived from DCE-MRI acquisition with high spatiotemporal resolution; CANCER DETECTION; CONTRAST; REPRODUCIBILITY; EPIDEMIOLOGY; LOCALIZATION; COMBINATION; VALIDATION; PARAMETERS; REGRESSION; ACCURACY;
D O I
10.1097/RLI.0000000000000772
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose The aim of this study was to investigate the diagnostic value of descriptive prostate perfusion parameters derived from signal enhancement curves acquired using golden-angle radial sparse parallel dynamic contrast-enhanced (DCE) magnetic resonance imaging (MRI) with high spatiotemporal resolution in advanced, quantitative evaluation of prostate cancer compared with the usage of apparent diffusion coefficient (ADC) values. Methods A retrospective study (from January 2016 to July 2019) including 75 subjects (mean, 65 years; 46-80 years) with 2.5-second temporal resolution DCE-MRI and PIRADS 4 or 5 lesions was performed. Fifty-four subjects had biopsy-proven prostate cancer (Gleason 6, 15; Gleason 7, 20; Gleason 8, 13; Gleason 9, 6), whereas 21 subjects had negative MRI/ultrasound fusion-guided biopsies. Voxel-wise analysis of contrast signal enhancement was performed for all time points using custom-developed software, including automatic arterial input function detection. Seven descriptive parameter maps were calculated: normalized maximum signal intensity, time to start, time to maximum, time-to-maximum slope, and maximum slope with normalization on maximum signal and the arterial input function (SMN1, SMN2). The parameters were compared with ADC using multiparametric machine-learning models to determine classification accuracy. A Wilcoxon test was used for the hypothesis test and the Spearman coefficient for correlation. Results There were significant differences (P < 0.05) for all 7 DCE-derived parameters between the normal peripheral zone versus PIRADS 4 or 5 lesions and the biopsy-positive versus biopsy-negative lesions. Multiparametric analysis showed better performance when combining ADC + DCE as input (accuracy/sensitivity/specificity, 97%/93%/100%) relative to ADC alone (accuracy/sensitivity/specificity, 94%/95%/95%) and to DCE alone (accuracy/sensitivity/specificity, 78%/79%/77%) in differentiating the normal peripheral zone from PIRADS lesions, biopsy-positive versus biopsy-negative lesions (accuracy/sensitivity/specificity, 68%/33%/81%), and Gleason 6 versus >= 7 prostate cancer (accuracy/sensitivity/specificity, 69%/60%/72%). Conclusions Descriptive perfusion characteristics derived from high-resolution DCE-MRI using model-free computations show significant differences between normal and cancerous tissue but do not reach the accuracy achieved with solely ADC-based classification. Combining ADC with DCE-based input features improved classification accuracy for PIRADS lesions, discrimination of biopsy-positive versus biopsy-negative lesions, and differentiation between Gleason 6 versus Gleason >= 7 lesions.
引用
收藏
页码:553 / 562
页数:10
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