Literature DB >> 28026201

The Learning Curve in Prostate MRI Interpretation: Self-Directed Learning Versus Continual Reader Feedback.

Andrew B Rosenkrantz1, Abimbola Ayoola1, David Hoffman1, Anunita Khasgiwala1, Vinay Prabhu1, Paul Smereka1, Molly Somberg1, Samir S Taneja2.   

Abstract

OBJECTIVE: The purpose of this study is to evaluate the roles of self-directed learning and continual feedback in the learning curve for tumor detection by novice readers of prostate MRI.
MATERIALS AND METHODS: A total of 124 prostate MRI examinations classified as positive (n = 52; single Prostate Imaging Reporting and Data System [PI-RADS] category 3 or higher lesion showing Gleason score ≥ 7 tumor at MRI-targeted biopsy) or negative (n = 72; PI-RADS category 2 or lower and negative biopsy) for detectable tumor were included. These were divided into four equal-sized batches, each with matching numbers of positive and negative examinations. Six second-year radiology residents reviewed examinations to localize tumors. Three of the six readers received feedback after each examination showing the preceding case's solution. The learning curve, plotting accuracy over time, was assessed by the Akaike information criterion (AIC). Logistic regression and mixed-model ANOVA were performed.
RESULTS: For readers with and without feedback, the learning curve exhibited an initial rapid improvement that slowed after 40 examinations (change in AIC > 0.2%). Accuracy improved from 58.1% (batch 1) to 71.0-75.3% (batches 2-4) without feedback and from 58.1% to 72.0-77.4% with feedback (p = 0.027-0.046), without a difference in the extent of improvement (p = 0.800). Specificity improved from 53.7% to 68.5-81.5% without feedback and from 55.6% to 74.1-81.5% with feedback (p = 0.006-0.010), without a difference in the extent of improvement (p = 0.891). Sensitivity improved from 59.0-61.5% (batches 1-2) to 71.8-76.9% (batches 3-4) with feedback (p = 0.052), though did not improve without feedback (p = 0.602). Sensitivity for transition zone tumors exhibited larger changes (p = 0.024) with feedback than without feedback. Sensitivity for peripheral zone tumors did not improve in either group (p > 0.3). Reader confidence increased only with feedback (p < 0.001).
CONCLUSION: The learning curve in prostate tumor detection largely reflected self-directed learning. Continual feedback had a lesser effect. Clinical prostate MRI interpretation by novice radiologists warrants caution.

Entities:  

Keywords:  MRI; education; learning curve; prostate cancer

Mesh:

Year:  2016        PMID: 28026201     DOI: 10.2214/AJR.16.16876

Source DB:  PubMed          Journal:  AJR Am J Roentgenol        ISSN: 0361-803X            Impact factor:   3.959


  39 in total

1.  Can Apparent Diffusion Coefficient Values Assist PI-RADS Version 2 DWI Scoring? A Correlation Study Using the PI-RADSv2 and International Society of Urological Pathology Systems.

Authors:  Sonia Gaur; Stephanie Harmon; Lauren Rosenblum; Matthew D Greer; Sherif Mehralivand; Mehmet Coskun; Maria J Merino; Bradford J Wood; Joanna H Shih; Peter A Pinto; Peter L Choyke; Baris Turkbey
Journal:  AJR Am J Roentgenol       Date:  2018-05-07       Impact factor: 3.959

2.  Role of MRI for the detection of prostate cancer.

Authors:  Richard C Wu; Amir H Lebastchi; Boris A Hadaschik; Mark Emberton; Caroline Moore; Pilar Laguna; Jurgen J Fütterer; Arvin K George
Journal:  World J Urol       Date:  2021-01-04       Impact factor: 4.226

3.  Association of training level and outcome of software-based image fusion-guided targeted prostate biopsies.

Authors:  Niklas Westhoff; Henning Haumann; Maximilian Christian Kriegmair; Jost von Hardenberg; Johannes Budjan; Stefan Porubsky; Maurice Stephan Michel; Patrick Honeck; Manuel Ritter
Journal:  World J Urol       Date:  2018-12-17       Impact factor: 4.226

Review 4.  Future Perspectives and Challenges of Prostate MR Imaging.

Authors:  Baris Turkbey; Peter L Choyke
Journal:  Radiol Clin North Am       Date:  2017-12-09       Impact factor: 2.303

5.  Locoregional CT staging of colon cancer: does a learning curve exist?

Authors:  Eun Kyoung Hong; Francesca Castagnoli; Nicolo Gennaro; Federica Landolfi; Carlos Perez-Serrano; Ieva Kurilova; Sander Roberti; Regina Beets-Tan
Journal:  Abdom Radiol (NY)       Date:  2020-07-30

Review 6.  Developing a National Center of Excellence for Prostate Imaging.

Authors:  Annerleim Walton-Diaz; Manuel Madariaga-Venegas; Nicolas Aviles; Juan Carlos Roman; Ivan Gallegos; Mauricio Burotto
Journal:  Curr Urol Rep       Date:  2019-09-02       Impact factor: 3.092

7.  PI-RADS version 2.1 scoring system is superior in detecting transition zone prostate cancer: a diagnostic study.

Authors:  Zhibing Wang; Wenlu Zhao; Junkang Shen; Zhen Jiang; Shuo Yang; Shuangxiu Tan; Yueyue Zhang
Journal:  Abdom Radiol (NY)       Date:  2020-09-09

Review 8.  The Contemporary Role of Multiparametric Magnetic Resonance Imaging in Active Surveillance for Prostate Cancer.

Authors:  Ariel A Schulman; Christina Sze; Efrat Tsivian; Rajan T Gupta; Judd W Moul; Thomas J Polascik
Journal:  Curr Urol Rep       Date:  2017-07       Impact factor: 3.092

Review 9.  PI-RADSv2.1: Current status.

Authors:  Stephanie M Walker; Barış Türkbey
Journal:  Turk J Urol       Date:  2020-10-09

10.  Prospective comparison of PI-RADS version 2 and qualitative in-house categorization system in detection of prostate cancer.

Authors:  Sonia Gaur; Stephanie Harmon; Sherif Mehralivand; Sandra Bednarova; Brian P Calio; Dordaneh Sugano; Abhinav Sidana; Maria J Merino; Peter A Pinto; Bradford J Wood; Joanna H Shih; Peter L Choyke; Baris Turkbey
Journal:  J Magn Reson Imaging       Date:  2018-03-31       Impact factor: 4.813

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