Seung Yun Lee, Ji Weon Lee, Jung Im Jung, Kyunghwa Han, Suyon Chang
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The patients' medical records were monitored until November 2023.</p><p><strong>Results: </strong>A total of 269 nodules were identified in 129 patients. With DL-CAD assistance, the readers' sensitivity significantly improved (65% vs. 80% for reader 1; 82% vs. 86% for reader 2; all <i>p</i><0.001), without a notable increase in the number of false-positives per case (0.11 vs. 0.13, <i>p</i>=0.078 for reader 1; 0.11 vs. 0.11, <i>p</i>>0.999 for reader 2). Per-patient analysis also enhanced sensitivity with DL-CAD assistance (73% vs. 84%, <i>p</i><0.001 for reader 1; 89% vs. 91%, <i>p</i>=0.250 for reader 2). During follow-up, lung cancer was diagnosed in four patients (1.5%). Among them, two had lesions detected on CAC-scoring CT, both of which were successfully identified by DL-CAD.</p><p><strong>Conclusion: </strong>DL-CAD based on thin-section images can assist less experienced readers in detecting pulmonary nodules on CAC-scoring CT scans, improving detection sensitivity without significantly increasing false-positives.</p>","PeriodicalId":23765,"journal":{"name":"Yonsei Medical Journal","volume":"66 4","pages":"240-248"},"PeriodicalIF":2.6000,"publicationDate":"2025-04-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11955396/pdf/","citationCount":"0","resultStr":"{\"title\":\"Deep Learning-Based Computer-Aided Diagnosis in Coronary Artery Calcium-Scoring CT for Pulmonary Nodule Detection: A Preliminary Study.\",\"authors\":\"Seung Yun Lee, Ji Weon Lee, Jung Im Jung, Kyunghwa Han, Suyon Chang\",\"doi\":\"10.3349/ymj.2024.0050\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Purpose: </strong>To evaluate the feasibility and utility of deep learning-based computer-aided diagnosis (DL-CAD) for the detection of pulmonary nodules on coronary artery calcium (CAC)-scoring computed tomography (CT).</p><p><strong>Materials and methods: </strong>This retrospective study included 273 patients (aged 63.9±13.2 years; 129 men) who underwent CAC-scoring CT. A DL-CAD system based on thin-section images was used for pulmonary nodule detection, and two independent junior readers reviewed the standard CAC-scoring CT scans with and without referencing DL-CAD results. A reference standard was established through the consensus of two experienced radiologists. Sensitivity, positive predictive value, and F1-score were assessed on a per-nodule and per-patient basis. The patients' medical records were monitored until November 2023.</p><p><strong>Results: </strong>A total of 269 nodules were identified in 129 patients. With DL-CAD assistance, the readers' sensitivity significantly improved (65% vs. 80% for reader 1; 82% vs. 86% for reader 2; all <i>p</i><0.001), without a notable increase in the number of false-positives per case (0.11 vs. 0.13, <i>p</i>=0.078 for reader 1; 0.11 vs. 0.11, <i>p</i>>0.999 for reader 2). 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引用次数: 0
摘要
目的:评价基于深度学习的计算机辅助诊断(DL-CAD)在冠状动脉钙(CAC)评分计算机断层扫描(CT)上检测肺结节的可行性和实用性。材料与方法:本研究纳入273例患者(年龄63.9±13.2岁;129名男性)接受了cac评分CT。基于薄层图像的DL-CAD系统用于肺结节检测,两名独立的初级读者回顾了有无参考DL-CAD结果的标准cac评分CT扫描。通过两位经验丰富的放射科医生的共识,建立了一个参考标准。敏感性、阳性预测值和f1评分以每个结节和每个患者为基础进行评估。这些患者的医疗记录一直被监测到2023年11月。结果:129例患者共发现269个结节。在DL-CAD辅助下,阅读器的灵敏度显著提高(65% vs.阅读器1的80%;82% vs.读者2的86%;阅读器1的所有pp=0.078;0.11 vs. 0.11,阅读器2的p>0.999)。每个患者的分析也增强了DL-CAD辅助的敏感性(73% vs. 84%,阅读器2的pp=0.250)。在随访期间,有4例患者(1.5%)被诊断为肺癌。其中2例均有cac评分CT检出病变,均被DL-CAD成功识别。结论:基于薄层图像的DL-CAD可以帮助经验不足的读者在cac评分的CT扫描上发现肺结节,提高检测灵敏度,而不会显著增加假阳性。
Deep Learning-Based Computer-Aided Diagnosis in Coronary Artery Calcium-Scoring CT for Pulmonary Nodule Detection: A Preliminary Study.
Purpose: To evaluate the feasibility and utility of deep learning-based computer-aided diagnosis (DL-CAD) for the detection of pulmonary nodules on coronary artery calcium (CAC)-scoring computed tomography (CT).
Materials and methods: This retrospective study included 273 patients (aged 63.9±13.2 years; 129 men) who underwent CAC-scoring CT. A DL-CAD system based on thin-section images was used for pulmonary nodule detection, and two independent junior readers reviewed the standard CAC-scoring CT scans with and without referencing DL-CAD results. A reference standard was established through the consensus of two experienced radiologists. Sensitivity, positive predictive value, and F1-score were assessed on a per-nodule and per-patient basis. The patients' medical records were monitored until November 2023.
Results: A total of 269 nodules were identified in 129 patients. With DL-CAD assistance, the readers' sensitivity significantly improved (65% vs. 80% for reader 1; 82% vs. 86% for reader 2; all p<0.001), without a notable increase in the number of false-positives per case (0.11 vs. 0.13, p=0.078 for reader 1; 0.11 vs. 0.11, p>0.999 for reader 2). Per-patient analysis also enhanced sensitivity with DL-CAD assistance (73% vs. 84%, p<0.001 for reader 1; 89% vs. 91%, p=0.250 for reader 2). During follow-up, lung cancer was diagnosed in four patients (1.5%). Among them, two had lesions detected on CAC-scoring CT, both of which were successfully identified by DL-CAD.
Conclusion: DL-CAD based on thin-section images can assist less experienced readers in detecting pulmonary nodules on CAC-scoring CT scans, improving detection sensitivity without significantly increasing false-positives.
期刊介绍:
The goal of the Yonsei Medical Journal (YMJ) is to publish high quality manuscripts dedicated to clinical or basic research. Any authors affiliated with an accredited biomedical institution may submit manuscripts of original articles, review articles, case reports, brief communications, and letters to the Editor.