Part II: Effect of different evaluation methods to the application of a computer-aided prostate MRI detection/diagnosis (CADe/CADx) device on reader performance

IF 1.5 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Current Problems in Diagnostic Radiology Pub Date : 2024-04-21 DOI:10.1067/j.cpradiol.2024.04.003
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Abstract

Introduction

The construction and results of a multiple-reader multiple-case prostate MRI study are described and reported to illustrate recommendations for how to standardize artificial intelligence (AI) prostate studies per the review constituting Part I1.

Methods

Our previously reported approach was applied to review and report an IRB approved, HIPAA compliant multiple-reader multiple-case clinical study of 150 bi-parametric prostate MRI studies across 9 readers, measuring physician performance both with and without the use of the recently FDA cleared CADe/CADx software ProstatID.

Results

Unassisted reader AUC values ranged from 0.418 – 0.759, with AI assisted AUC values ranging from 0.507 – 0.787. This represented a statistically significant AUC improvement of 0.045 (α = 0.05). A free-response ROC (FROC) analysis similarly demonstrated a statistically significant increase in θ from 0.405 to 0.453 (α = 0.05). The standalone performance of ProstatID performed across all prostate tissues demonstrated an AUC of 0.929, while the standalone lesion level performance of ProstatID at all biopsied locations achieved an AUC of 0.710.

Conclusion

This study applies and illustrates suggested reporting and standardization methods for prostate AI studies that will make it easier to understand, evaluate and compare between AI studies. Providing radiologists with the ProstatID CADe/CADx software significantly increased diagnostic performance as assessed by both ROC and free-response ROC metrics. Such algorithms have the potential to improve radiologist performance in the detection and localization of clinically significant prostate cancer.

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第二部分:应用计算机辅助前列腺 MRI 检测/诊断(CADe/CADx)设备的不同评估方法对阅读器性能的影响
引言本文描述并报告了一项多读取器多病例前列腺 MRI 研究的构建和结果,以说明如何根据构成第一部分的综述对人工智能(AI)前列腺研究进行标准化的建议1。方法将我们之前报告的方法应用于审查和报告一项获得 IRB 批准、符合 HIPAA 标准的多读片机多病例临床研究,该研究涉及 9 台读片机的 150 项双参数前列腺 MRI 研究,在使用和不使用最近获得 FDA 批准的 CADe/CADx 软件 ProstatID 的情况下测量医生的表现。结果无辅助读片机的 AUC 值介于 0.418 - 0.759 之间,有人工智能辅助的 AUC 值介于 0.507 - 0.787 之间。这表明 AUC 提高了 0.045(α = 0.05),具有显著的统计学意义。自由反应 ROC(FROC)分析同样表明,θ 从 0.405 提高到 0.453,具有显著的统计学意义(α = 0.05)。ProstatID 在所有前列腺组织中的独立性能的 AUC 为 0.929,而 ProstatID 在所有活检部位的独立病变水平性能的 AUC 为 0.710。向放射科医生提供 ProstatID CADe/CADx 软件可显著提高诊断性能,ROC 和自由响应 ROC 指标均可评估诊断性能。这种算法有可能提高放射科医生检测和定位有临床意义的前列腺癌的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Current Problems in Diagnostic Radiology
Current Problems in Diagnostic Radiology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
3.00
自引率
0.00%
发文量
113
审稿时长
46 days
期刊介绍: Current Problems in Diagnostic Radiology covers important and controversial topics in radiology. Each issue presents important viewpoints from leading radiologists. High-quality reproductions of radiographs, CT scans, MR images, and sonograms clearly depict what is being described in each article. Also included are valuable updates relevant to other areas of practice, such as medical-legal issues or archiving systems. With new multi-topic format and image-intensive style, Current Problems in Diagnostic Radiology offers an outstanding, time-saving investigation into current topics most relevant to radiologists.
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