Objectives To identify the predictive factors of prostate cancer extracapsular extension (ECE) in an institutional cohort of patients who underwent multiparametric MRI of the prostate prior to radical prostatectomy (RP).Patients and methods Overall, 126 patients met the selection criteria, and their medical records were retrospectively collected and analysed; 2 experienced radiologists reviewed the imaging studies. Logistic regression analysis was conducted to identify the variables associated to ECE at whole-mount histology of RP specimens; according to the statistically significant variables associated, a predictive model was developed and calibrated with the Hosmer-Lomeshow test.Results The predictive ability to detect ECE with the generated model was 81.4% by including the length of capsular involvement (LCI) and intraprostatic perineural invasion (IPNI). The predictive accuracy of the model at the ROC curve analysis showed an area under the curve (AUC) of 0.83 [95% CI (0.76-0.90)], p < 0.001. Concordance between radiologists was substantial in all parameters examined (p < 0.001). Limitations include the retrospective design, limited number of cases, and MRI images reassessment according to PI-RADS v2.0.Conclusion The LCI is the most robust MRI factor associated to ECE; in our series, we found a strong predictive accuracy when combined in a model with the IPNI presence. This outcome may prompt a change in the definition of PI-RADS score 5.

Defining the role of multiparametric MRI in predicting prostate cancer extracapsular extension / Sanguedolce, Francesco; Tedde, Alessandro; Granados, Luisa; Hernández, Jonathan; Robalino, Jorge; Suquilanda, Edgar; Tedde, Matteo; Palou, Joan; Breda, Alberto. - In: WORLD JOURNAL OF UROLOGY. - ISSN 1433-8726. - 42:1(2024), p. 37. [10.1007/s00345-023-04720-5]

Defining the role of multiparametric MRI in predicting prostate cancer extracapsular extension

Sanguedolce, Francesco
;
Tedde, Alessandro;
2024-01-01

Abstract

Objectives To identify the predictive factors of prostate cancer extracapsular extension (ECE) in an institutional cohort of patients who underwent multiparametric MRI of the prostate prior to radical prostatectomy (RP).Patients and methods Overall, 126 patients met the selection criteria, and their medical records were retrospectively collected and analysed; 2 experienced radiologists reviewed the imaging studies. Logistic regression analysis was conducted to identify the variables associated to ECE at whole-mount histology of RP specimens; according to the statistically significant variables associated, a predictive model was developed and calibrated with the Hosmer-Lomeshow test.Results The predictive ability to detect ECE with the generated model was 81.4% by including the length of capsular involvement (LCI) and intraprostatic perineural invasion (IPNI). The predictive accuracy of the model at the ROC curve analysis showed an area under the curve (AUC) of 0.83 [95% CI (0.76-0.90)], p < 0.001. Concordance between radiologists was substantial in all parameters examined (p < 0.001). Limitations include the retrospective design, limited number of cases, and MRI images reassessment according to PI-RADS v2.0.Conclusion The LCI is the most robust MRI factor associated to ECE; in our series, we found a strong predictive accuracy when combined in a model with the IPNI presence. This outcome may prompt a change in the definition of PI-RADS score 5.
2024
Defining the role of multiparametric MRI in predicting prostate cancer extracapsular extension / Sanguedolce, Francesco; Tedde, Alessandro; Granados, Luisa; Hernández, Jonathan; Robalino, Jorge; Suquilanda, Edgar; Tedde, Matteo; Palou, Joan; Breda, Alberto. - In: WORLD JOURNAL OF UROLOGY. - ISSN 1433-8726. - 42:1(2024), p. 37. [10.1007/s00345-023-04720-5]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11388/324976
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