Real-World Diagnostic Performance and Clinical Utility of Artificial Intelligence-Assisted Interpretation for Detection of Lung Metastasis on CT in Patients With Colorectal Cancer.

IF 6.1 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
American Journal of Roentgenology Pub Date : 2025-09-01 Epub Date: 2025-06-11 DOI:10.2214/AJR.25.33063
Sowon Jang, Junghoon Kim, Jeong Sub Lee, Younbeom Jeong, Ju Gang Nam, Jihang Kim, Kyung Won Lee
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引用次数: 0

Abstract

BACKGROUND. Studies of artificial intelligence (AI) for lung nodule detection on CT have primarily been conducted in investigational settings and/or focused on lung cancer screening. OBJECTIVE. The purpose of this study was to evaluate the impact of AI assistance on radiologists' diagnostic performance for detecting lung metastases on chest CT in patients with colorectal cancer (CRC) in real-world clinical practice and to assess the clinical utility of AI assistance in this setting. METHODS. This retrospective study included patients with CRC who underwent chest CT as surveillance for lung metastasis from May 2020 to December 2020 (conventional interpretation) or May 2022 to December 2022 (AI-assisted interpretation). Between the two periods, the institution implemented a commercial AI lung nodule detection system. During the second period, radiologists interpreted examinations concurrently with AI-generated reports, using clinical judgment regarding whether to report AI-detected nodules. The reference standard for metastasis incorporated pathologic and clinical follow-up criteria. Diagnostic performance (i.e., sensitivity, specificity, accuracy) and clinical utility (i.e., diagnostic yield, false-referral rate, management changes after positive reports) were compared between groups based on clinical radiology reports. Net benefit was estimated using a decision curve analysis equation. Stand-alone AI interpretation was evaluated. RESULTS. The conventional interpretation group included 647 patients (mean age, 64 ± 11 [SD] years; 394 men, 253 women; metastasis prevalence, 4.3%); the AI-assisted interpretation group included 663 patients (mean age, 63 ± 12 years; 381 men, 282 women; metastasis prevalence, 4.4%). The AI-assisted interpretation group compared with the conventional interpretation group showed higher sensitivity (72.4% vs 32.1%, respectively; p = .008), accuracy (98.5% vs 96.0%, p = .005), and frequency of management changes (55.2% vs 25.0%, p = .02), without significant difference in specificity (99.7% vs 98.9%, p = .11), diagnostic yield (3.2% vs 1.4%, p = .30), or false-referral rate (0.3% vs 1.1%, p = .10). AI-assisted interpretation had positive estimated net benefit across outcome ratios. Stand-alone AI correctly detected metastasis in 24 of 29 patients but had 381 false-positive detections in 634 patients without metastasis; only one AI false-positive was reported as positive by interpretating radiologists. CONCLUSION. AI assistance yielded increased sensitivity, accuracy, and frequency of management changes, without significantly changed specificity. False-positive AI results minimally impacted radiologists' interpretations. CLINICAL IMPACT. The findings support the clinical utility of AI assistance for CRC metastasis surveillance.

人工智能辅助解读在结直肠癌CT肺转移诊断中的临床应用
背景:人工智能(AI)在CT上检测肺结节的研究主要是在研究环境中进行的,或者集中在肺癌筛查上。目的:评估人工智能辅助对放射科医生在实际临床实践中通过胸部CT检测结直肠癌(CRC)患者肺转移的诊断性能的影响,并评估人工智能辅助在这种情况下的临床应用。方法:本回顾性研究纳入了2020年5月至2020年12月(常规解读)或2022年5月至2022年12月(人工智能辅助解读)接受胸部CT监测肺转移的结直肠癌患者。在此期间,该机构实施了商用人工智能肺结节检测系统。在第二阶段,放射科医生将检查结果与人工智能生成的报告同时进行解释,根据临床判断是否报告人工智能检测到的结节。转移的参考标准包括病理和临床随访标准。根据临床放射学报告,比较两组之间的诊断表现(敏感性、特异性、准确性)和临床效用(诊断率、假转诊率、阳性报告后的管理变化)。利用决策曲线分析方程估算净效益。评估了独立的AI解释。结果:常规解释组纳入647例患者(平均年龄64±11岁;男性394人,女性253人;转移率,4.3%);人工智能辅助口译组663例,平均年龄63±12岁;男性381人,女性282人;转移率,4.4%)。人工智能辅助口译组与常规口译组相比,灵敏度更高(72.4% vs 32.1%;P = 0.008),准确率(98.5% vs 96.0%;P = 0.005),管理改变频率(55.2% vs 25.0%, P = 0.02),特异性无显著差异(99.7% vs 98.9%;P =.11),诊断率(3.2%对1.4%,P =.30)或假转诊率(0.3%对1.1%,P =.10)。人工智能辅助口译在整个结果比率中具有正的估计净效益。29例患者中有24例正确检测出转移,634例无转移患者中有381例假阳性;只有一个人工智能假阳性被口译放射科医生报告为阳性。结论:人工智能辅助提高了敏感性、准确性和管理改变的频率,但没有显著改变特异性。人工智能假阳性结果对放射科医生的解释影响最小。临床影响:研究结果支持人工智能辅助CRC转移监测的临床应用。
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来源期刊
CiteScore
12.80
自引率
4.00%
发文量
920
审稿时长
3 months
期刊介绍: Founded in 1907, the monthly American Journal of Roentgenology (AJR) is the world’s longest continuously published general radiology journal. AJR is recognized as among the specialty’s leading peer-reviewed journals and has a worldwide circulation of close to 25,000. The journal publishes clinically-oriented articles across all radiology subspecialties, seeking relevance to radiologists’ daily practice. The journal publishes hundreds of articles annually with a diverse range of formats, including original research, reviews, clinical perspectives, editorials, and other short reports. The journal engages its audience through a spectrum of social media and digital communication activities.
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