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Development, multi-institutional external validation, and algorithmic audit of an artificial intelligence-based Side-specific Extra-Prostatic Extension Risk Assessment tool (SEPERA) for patients undergoing radical prostatectomy: a retrospective cohort study

Authors :
Jethro C C Kwong, MD
Adree Khondker, BHSc
Eric Meng, BSc
Nicholas Taylor, BSc
Cynthia Kuk, MSc
Nathan Perlis, MD
Girish S Kulkarni, ProfMD
Robert J Hamilton, MD
Neil E Fleshner, ProfMD
Antonio Finelli, ProfMD
Theodorus H van der Kwast, ProfMD
Amna Ali, BSc
Munir Jamal, MD
Frank Papanikolaou, MD
Thomas Short, MD
John R Srigley, ProfMD
Valentin Colinet, MD
Alexandre Peltier, ProfMD
Romain Diamand, MD
Yolene Lefebvre, MD
Qusay Mandoorah, MD
Rafael Sanchez-Salas, MD
Petr Macek, MD
Xavier Cathelineau, ProfMD
Martin Eklund, ProfPhD
Alistair E W Johnson, DPhil
Andrew Feifer, MD
Alexandre R Zlotta, ProfMD
Source :
The Lancet: Digital Health, Vol 5, Iss 7, Pp e435-e445 (2023)
Publication Year :
2023
Publisher :
Elsevier, 2023.

Abstract

Summary: Background: Accurate prediction of side-specific extraprostatic extension (ssEPE) is essential for performing nerve-sparing surgery to mitigate treatment-related side-effects such as impotence and incontinence in patients with localised prostate cancer. Artificial intelligence (AI) might provide robust and personalised ssEPE predictions to better inform nerve-sparing strategy during radical prostatectomy. We aimed to develop, externally validate, and perform an algorithmic audit of an AI-based Side-specific Extra-Prostatic Extension Risk Assessment tool (SEPERA). Methods: Each prostatic lobe was treated as an individual case such that each patient contributed two cases to the overall cohort. SEPERA was trained on 1022 cases from a community hospital network (Trillium Health Partners; Mississauga, ON, Canada) between 2010 and 2020. Subsequently, SEPERA was externally validated on 3914 cases across three academic centres: Princess Margaret Cancer Centre (Toronto, ON, Canada) from 2008 to 2020; L'Institut Mutualiste Montsouris (Paris, France) from 2010 to 2020; and Jules Bordet Institute (Brussels, Belgium) from 2015 to 2020. Model performance was characterised by area under the receiver operating characteristic curve (AUROC), area under the precision recall curve (AUPRC), calibration, and net benefit. SEPERA was compared against contemporary nomograms (ie, Sayyid nomogram, Soeterik nomogram [non-MRI and MRI]), as well as a separate logistic regression model using the same variables included in SEPERA. An algorithmic audit was performed to assess model bias and identify common patient characteristics among predictive errors. Findings: Overall, 2468 patients comprising 4936 cases (ie, prostatic lobes) were included in this study. SEPERA was well calibrated and had the best performance across all validation cohorts (pooled AUROC of 0·77 [95% CI 0·75–0·78] and pooled AUPRC of 0·61 [0·58–0·63]). In patients with pathological ssEPE despite benign ipsilateral biopsies, SEPERA correctly predicted ssEPE in 72 (68%) of 106 cases compared with the other models (47 [44%] in the logistic regression model, none in the Sayyid model, 13 [12%] in the Soeterik non-MRI model, and five [5%] in the Soeterik MRI model). SEPERA had higher net benefit than the other models to predict ssEPE, enabling more patients to safely undergo nerve-sparing. In the algorithmic audit, no evidence of model bias was observed, with no significant difference in AUROC when stratified by race, biopsy year, age, biopsy type (systematic only vs systematic and MRI-targeted biopsy), biopsy location (academic vs community), and D'Amico risk group. According to the audit, the most common errors were false positives, particularly for older patients with high-risk disease. No aggressive tumours (ie, grade >2 or high-risk disease) were found among false negatives. Interpretation: We demonstrated the accuracy, safety, and generalisability of using SEPERA to personalise nerve-sparing approaches during radical prostatectomy. Funding: None.

Details

Language :
English
ISSN :
25897500
Volume :
5
Issue :
7
Database :
Directory of Open Access Journals
Journal :
The Lancet: Digital Health
Publication Type :
Academic Journal
Accession number :
edsdoj.9e48ab8efa664112a1f3da359fa83dba
Document Type :
article
Full Text :
https://doi.org/10.1016/S2589-7500(23)00067-5