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Multicenter Multireader Evaluation of an Artificial Intelligence-Based Attention Mapping System for the Detection of Prostate Cancer With Multiparametric MRI.

Accepted version
Peer-reviewed

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Type

Article

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Authors

Mehralivand, Sherif 
Harmon, Stephanie A 
Shih, Joanna H 
Smith, Clayton P 
Lay, Nathan 

Abstract

OBJECTIVE. The purpose of this study was to evaluate in a multicenter dataset the performance of an artificial intelligence (AI) detection system with attention mapping compared with multiparametric MRI (mpMRI) interpretation in the detection of prostate cancer. MATERIALS AND METHODS. MRI examinations from five institutions were included in this study and were evaluated by nine readers. In the first round, readers evaluated mpMRI studies using the Prostate Imaging Reporting and Data System version 2. After 4 weeks, images were again presented to readers along with the AI-based detection system output. Readers accepted or rejected lesions within four AI-generated attention map boxes. Additional lesions outside of boxes were excluded from detection and categorization. The performances of readers using the mpMRI-only and AI-assisted approaches were compared. RESULTS. The study population included 152 case patients and 84 control patients with 274 pathologically proven cancer lesions. The lesion-based AUC was 74.9% for MRI and 77.5% for AI with no significant difference (p = 0.095). The sensitivity for overall detection of cancer lesions was higher for AI than for mpMRI but did not reach statistical significance (57.4% vs 53.6%, p = 0.073). However, for transition zone lesions, sensitivity was higher for AI than for MRI (61.8% vs 50.8%, p = 0.001). Reading time was longer for AI than for MRI (4.66 vs 4.03 minutes, p < 0.001). There was moderate interreader agreement for AI and MRI with no significant difference (58.7% vs 58.5%, p = 0.966). CONCLUSION. Overall sensitivity was only minimally improved by use of the AI system. Significant improvement was achieved, however, in the detection of transition zone lesions with use of the AI system at the cost of a mean of 40 seconds of additional reading time.

Description

Keywords

MRI, artificial intelligence, laparoscopic, multiparametric, prostate cancer, radical prostatectomy, robot-assisted, Adenocarcinoma, Aged, Algorithms, Artificial Intelligence, Diagnosis, Computer-Assisted, Humans, Male, Middle Aged, Multiparametric Magnetic Resonance Imaging, Observer Variation, Prostatic Neoplasms, Random Allocation, Retrospective Studies, Sensitivity and Specificity

Journal Title

AJR Am J Roentgenol

Conference Name

Journal ISSN

0361-803X
1546-3141

Volume Title

215

Publisher

American Roentgen Ray Society

Rights

All rights reserved