| Literature DB >> 27454770 |
Matthias C Roethke1, Timur H Kuru2, Maya B Mueller-Wolf1, Erik Agterhuis3, Christopher Edler1, Markus Hohenfellner4, Heinz-Peter Schlemmer1, Boris A Hadaschik4.
Abstract
OBJECTIVE: To evaluate the diagnostic performance of an automated analysis tool for the assessment of prostate cancer based on multiparametric magnetic resonance imaging (mpMRI) of the prostate.Entities:
Mesh:
Year: 2016 PMID: 27454770 PMCID: PMC4959716 DOI: 10.1371/journal.pone.0159803
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Parameter settings of deployed multiparametric MRI sequences.
| Parameter | T2 TSE | Epi-2D | TWIST |
|---|---|---|---|
| TR (ms) / TE (ms) | 5120/143 | 3100/52 | 4.42/2.2 |
| Flip angle (°) | 90 | 90 | 15 |
| ETL length/epi-factor | 12 | 96 | - |
| Number of averages | 4 | 5 | - |
| b values | - | 0,50,100,150,200,250,800 | - |
| Slice thickness (mm) | 3 | 3 | 1.5 |
| FOV (mm) | 300 | 280 | 400 |
| Pixel size (mm x mm) | 0.8 x 0.7 | 2.2 x 2.2 | 1.6 x 1.6 |
| Acquisition time (min:s) | 4:14 | 5:04 | 5:18 |
Fig 1Example of a MAI map on a T2W image overlay.
Fig 2Examples of MAI profiles.
Confirmed Gleason score 7a (3+4, left) and Gleason score 8 (4+4, right) lesions.
Fig 3Overview of MAI algorithm steps.
Fig 4ROC plot of MAI diagnostic accuracy.
Sensitivity, specificity and Youden index of MAI-based prostate cancer detection at different mean MAI threshold values.
| Mean MAI threshold | 0.15 | 0.2 (optimum) | 0.3 | 0.4 |
|---|---|---|---|---|
| Sensitivity | 90.48% (71.09–97.35) | 85.71% (65.36–95.02) | 72.73% (51.35–87.08) | 56.52% (35.99–75.03) |
| Specificity | 79.17% (59.53–90.76) | 87.50% (69–95.66) | 91.30% (73.69–97.52) | 95.65% (79.50–99.21) |
| Detection accuracy | 84.44% (71.22–92.25) | 86.67% (73.83–93.75) | 82.22% (68.67–90.71) | 76.09% (61.90–86.17) |
| Youden index | 69.64% (30.62–88.10) | 73.21% (34.36–90.67) | 64.03% (25.04–84.6) | 52.17% (15.49–74.24) |
The Youden-selected optimum computed mean MAI threshold was found to be 0.2, which corresponds to an 85.7% sensitivity (with 95% CI of 65.4–95.0) combined with an 87.5% specificity (with 95% CI of 69.0–95.7) and a diagnostic accuracy of 86.7% (with 95% CI of 73.8–93.8) in the detection of prostate cancer with Gleason score > = 6. The Youden index for this optimum was 73.2% (with 95% CI of 34.36–90.67). The area under the curve (AUC) was 0.90 (with 95% CI of 0.66–0.98).
Fig 5Comparison of computed MAI diagnostic accuracy with that of human readers based on PI-RADS scoring.
Comparison of the diagnostic accuracy found in the present study with results reported on reference studies.
| Present study | Roethke et al. | Schimmöller et al. | Portalez et al. | Hamoen et al. | |||||
|---|---|---|---|---|---|---|---|---|---|
| MAI (optimum) | PI-RADS | PI-RADS | PI-RADS | PI-RADS | Pooled data, no further selection | ||||
| ≥ 9 | ≥ 10 | ≥ 9 | ≥ 10 | ≥ 9 | ≥ 9 | ≥ 10 | |||
| Sensitivity (%) | 85.71 (65.36–95.02) | 85.2 (66.3–95.8) | 66.7 (46.0–83.5) | 92.9 | 85.7 | 69.1 (56.7–79.8) | 90 (75–96) | 84 (74–90) | 78 (70–84) |
| Specificity (%) | 87.50 (69–95.66) | 73.0 (55.9–86.2) | 91.9 (78.1–98.3) | 41.7 | 67.6 | 92.2 (89.2–94.5) | 66 (38–87) | 78 (62–89) | 79 (68–86) |
| Youden index (%) | 73.21 (34.36–90.67) | 58.2 (38.6–77.8) | 58.6 (38.7–78.4) | - | - | - | - | - | |
| AUC | 0.90 (0.66–0.98) | 0.848 (0.743–0.953) | - | 0.873 | - | - | |||