| Literature DB >> 32620120 |
Amirhossein Jalali1,2, Robert W Foley3,4, Robert M Maweni4, Keefe Murphy5,6, Dara J Lundon3,4, Thomas Lynch7, Richard Power8, Frank O'Brien9,10, Kieran J O'Malley11, David J Galvin11,12, Garrett C Durkan13,14, T Brendan Murphy5,6, R William Watson3,4.
Abstract
BACKGROUND: Prostate cancer (PCa) represents a significant healthcare problem. The critical clinical question is the need for a biopsy. Accurate risk stratification of patients before a biopsy can allow for individualised risk stratification thus improving clinical decision making. This study aims to build a risk calculator to inform the need for a prostate biopsy.Entities:
Keywords: Binary logistic regression, cross-validation, Rshiny; Biopsy; Decision-making; Prostate Cancer; Risk calculator
Mesh:
Substances:
Year: 2020 PMID: 32620120 PMCID: PMC7333322 DOI: 10.1186/s12911-020-01174-2
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Clinical Characteristics of all patients included in the Irish prostate cancer risk calculator study cohort
| All patients ( | PCa patients ( | |||||
|---|---|---|---|---|---|---|
| PCa | No PCa | High grade PCa | Low grade PCa | |||
| 2548 (53%) | 2253 (47%) | 1579 (62%) | 969 (38%) | |||
| 64.37 (63.70) | 63.00 (62.28) | < 0.001 (< 0.001) | 65.00 (64.40) | 63.01 (62.57) | < 0.001 (< 0.001) | |
| Yes | 182 (7%) | 128 (6%) | < 0.001 | 114 (7%) | 68 (7%) | 0.173 |
| Not recorded | 1919 (75%) | 1624 (72%) | 1171 (74%) | 748 (77%) | ||
| No | 447 (18%) | 501 (22%) | 294 (19%) | 153 (16%) | ||
| 7.18 (18.87) | 6.30 (7.31) | < 0.001 (< 0.001) | 8.02 (26.04) | 6.20 (7.17) | < 0.001 (< 0.001) | |
| Normal | 1097 (43%) | 1283 (57%) | < 0.001 | 555 (35%) | 542 (56%) | < 0.001 |
| Not recorded | 359 (14%) | 506 (22%) | 210 (13%) | 149 (15%) | ||
| Abnormal | 1092 (43%) | 464 (21%) | 814 (52%) | 278 (29%) | ||
| Yes | 354 (14%) | 68 (20%) | < 0.001 | 152 (10%) | 202 (21%) | < 0.001 |
| No | 2194 (86%) | 1810 (80%) | 1427 (90%) | 767 (79%) | ||
| Gleason 6 | 969 (38%) | 969 (100%) | ||||
| Gleason 7 | 1058 (42%) | 1058 (67%) | ||||
| Gleason 8 | 301 (12%) | 301 (19%) | ||||
| Gleason 9 | 201 (8%) | 201 (13%) | ||||
| Gleason 10 | 19 (< 1%) | 19 (1%) | ||||
Clinical Characteristics of patients whom their prostate volume is recorded
| All patients with prostate volume ( | PCa patients with prostate volume ( | |||||
|---|---|---|---|---|---|---|
| PCa | No PCa | High grade PCa | Low grade PCa | |||
| 1689 (57%) | 1281 (43%) | 1022 (61%) | 667 (39%) | |||
| 64.89 (64.05) | 63.00 (62.00) | < 0.001 (< 0.001) | 65.00 (64.68) | 64.00 (63.09) | < 0.001 (< 0.001) | |
| Yes | 129 (8%) | 91 (7%) | 0.741 | 83 (8%) | 46 (7%) | 0.192 |
| Not recorded | 1186 (70%) | 894 (70%) | 701 (69%) | 485 (73%) | ||
| No | 374 (22%) | 296 (23%) | 238 (23%) | 136 (20%) | ||
| 7.19 (19.45) | 6.42 (7.45) | < 0.001 (< 0.001) | 7.82 (27.43) | 6.30 (7.23) | < 0.001 (< 0.001) | |
| Normal | 735 (44%) | 706 (55%) | < 0.001 | 361 (35%) | 374 (56%) | < 0.001 |
| Not recorded | 241 (14%) | 286 (22%) | 143 (14%) | 98 (15%) | ||
| Abnormal | 713 (42%) | 289 (23%) | 195 (51%) | 195 (29%) | ||
| Yes | 277 (16%) | 303 (24%) | < 0.001 | 113 (11%) | 164 (25%) | < 0.001 |
| No | 1412 (84%) | 978 (76%) | 909 (89%) | 503 (75%) | ||
| 35 (39.9) | 45 (51.9) | < 0.001 (< 0.001) | 34.1 (38.5) | 37.3 (42.0) | < 0.001 (0.001) | |
| Gleason 6 | 667 (40%) | 667 (100%) | ||||
| Gleason 7 | 659 (39%) | 659 (64%) | ||||
| Gleason 8 | 222 (13%) | 222 (22%) | ||||
| Gleason 9 | 124 (7%) | 124 (12%) | ||||
| Gleason 10 | 17 (1%) | 17 (2%) | ||||
The IPRC models for predicting PCa on the left and high-grade PCa on the right. The coefficients, standard deviation and p-value represented for each variable in the logistic regression models
| IPRC – PCa model | IPRC – high-grade PCa model | |||||
|---|---|---|---|---|---|---|
| Coefficients | Std. Error | Coefficients | Std. Error | |||
| −2.100 | 0.202 | < 0.001 | −2.510 | 0.274 | < 0.001 | |
| 0.009 | 0.003 | 0.005 | 0.016 | 0.004 | < 0.001 | |
| 0.396 | 0.093 | < 0.001 | – | – | – | |
| 0.344 | 0.056 | < 0.001 | – | – | – | |
| 0.425 | 0.034 | < 0.001 | 0.604 | 0.050 | < 0.001 | |
| 0.639 | 0.046 | < 0.001 | 0.560 | 0.060 | < 0.001 | |
| −0.230 | 0.063 | < 0.001 | 0.228 | 0.0863 | 0.008 | |
| −0.259 | 0.060 | < 0.001 | −0.679 | 0.091 | < 0.001 | |
Fig. 1IPRC nomograms. The nomograms for PCa model is on the left, and high-grade PCa model on the right. The horizontal line on the top labelled `points’ allows the effect size of each variable to be assessed. To use the nomogram draw a straight line from the values/levels of each variable to measure its corresponding point. The total points on the bottom are then mapped to obtain the risk of cancer or high-grade cancer
The discriminative ability of PSA, PCPT, PBCG, ERSPC and IPRC using the areas under the curve (AUC) and 95% confidence interval of the calculated probabilities. The p-values indicate if the difference between each method and IPRC is significant
| Models | Prostate cancer ( | High grade cancer ( | ||||
|---|---|---|---|---|---|---|
| AUC | 95% CI | AUC | 95% CI | |||
| 0.5948 | 0.5789–0.6107 | 0.6623 | 0.6413–0.6832 | |||
| 0.6304 | 0.6148–0.6460 | 0.6804 | 0.6597–0.7012 | 0. 005 | ||
| 0.6528 | 0.6375–0.6681 | 0.7185 | 0.6988–0.7381 | 0.839 | ||
| 0.6502 | 0.6349–0.6655 | 0.7140 | 0.6942–0.7338 | 0.604 | ||
| 0.6741 | 0.6591–0.6890 | – | 0.7214 | 0.7018–0.7409 | – | |
Fig. 2IPRC calibration and model comparison. The receiver operating characteristic (ROC) curves on the left and decision curves in the middle represent the discriminative ability of PCPT (red), PBCG (orange), ERSPC (blue) and IPRC (green) in diagnosis cancer (on top) and high-grade cancer (on the bottom). The calibration curves on the right indicate that predicted probabilities of both IPRC models are almost similar to the actual outcomes
Fig. 3IPRC discrimination ability. Sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), Youden index of the PCPT (red), PBCG (orange), ERSPC (blue) and IPRC (green) on the variously selected thresholds. The PCa model is displayed on the left and high-grade PCa model on the right
The IPRCv models for predicting PCa on the left and high-grade PCa on the right. The coefficients, standard deviation and p-value represented for each variable in the logistic regression models
| IPRCv – PCa model | IPRCv – high-grade PCa model | |||||
|---|---|---|---|---|---|---|
| Coefficients | Std. Error | Coefficients | Std. Error | |||
| −2.527 | 0.260 | < 0.001 | −2.369 | 0.342 | < 0.001 | |
| 0.033 | 0.004 | < 0.001 | 0.017 | 0.005 | 0.002 | |
| 0.158 | 0.111 | 0.152 | – | – | – | |
| 0.200 | 0.067 | 0.003 | – | – | – | |
| 0.435 | 0.045 | < 0.001 | 0.650 | 0.065 | < 0.001 | |
| 0.498 | 0.059 | < 0.001 | 0.527 | 0.075 | < 0.001 | |
| −0.193 | 0.078 | 0.013 | 0.289 | 0.105 | 0.006 | |
| −0.226 | 0.070 | 0.001 | −0.693 | 0.106 | < 0.001 | |
| −0.019 | 0.001 | < 0.001 | −0.007 | 0.002 | < 0.001 | |
Fig. 4IPRCv nomograms. The nomograms (based on IPRCv which including prostate volume) for PCa model is on the left and high-grade PCa model on the right. The horizontal line on the top labelled `points’ allows the effect size of each variable to be assessed. To use the nomogram draw a straight line from the values/levels of each variable to measure its corresponding point. The total points on the bottom are then mapped to obtain the risk of cancer or high-grade cancer
The discriminative ability of PCPT, ERSPC and IPRCv using the areas under the curve (AUC) and 95% confidence interval of the calculated probabilities for those whom the prostate volume is available. The p-values indicate if the difference between each risk calculator and IPRCv is significant
| Models | Prostate cancer ( | High grade cancer ( | ||||
|---|---|---|---|---|---|---|
| AUC | 95% CI | AUC | 95% CI | |||
| 0.6597 | 0.6404–0.6790 | < 0.001 | 0.7226 | 0.6986–0.7466 | 0.434 | |
| 0.6794 | 0.6604–0.6985 | < 0.001 | 0.7176 | 0.6934–0.7419 | 0.174 | |
| 0.7298 | 0.7119–0.7478 | – | 0.7256 | 0.7017–0.7495 | – | |