Jeeyeon Lee, Won Hwa Kim, Jaeil Kim, Hye Jung Kim, Joon Suk Moon, Byeongju Kang, Ho Yong Park, Fiona Tsui-Fen Cheng
{"title":"实时人工智能超声系统对乳腺癌计算机辅助检测和诊断的有效性:可行性研究。","authors":"Jeeyeon Lee, Won Hwa Kim, Jaeil Kim, Hye Jung Kim, Joon Suk Moon, Byeongju Kang, Ho Yong Park, Fiona Tsui-Fen Cheng","doi":"10.4048/jbc.2024.0303","DOIUrl":null,"url":null,"abstract":"<p><p>Existing artificial intelligence (AI) breast ultrasound solutions have limitations owing to their non-real-time detection and server dependency. However, novel real-time AI solutions enable on-device detection and differential diagnosis, aiding immediate decision-making. This study evaluated the feasibility of real-time artificial intelligence-based computer-aided detection/diagnosis (AI-CAD) for breast ultrasound in a clinical setting and assessed its preliminary efficacy in comparison with expert evaluations. A feasibility study was conducted from August to December 2023 at a tertiary medical center in Taiwan using a real-time AI solution (CadAI-B for Breast cancer). AI-CAD runs on a tablet PC and streams the display output from the ultrasound vendor's device via HDMI or DVI. Real-time AI-CAD was evaluated for detection and diagnostic performance based on sensitivity, specificity, and area under the curve (AUC). The analysis included 33 patients with 14 malignancies, 17 benign lesions, and 2 normal cases; 30 (90.9%) underwent biopsy. AI-CAD successfully identified all malignancies in real-time. As AUCs were calculated using the malignancy score and Breast Imaging Reporting and Data System (BI-RADS), the overall diagnostic performances were 0.835 and 0.850, respectively. The per-patient sensitivity and specificity were 100.0% and 52.6%, respectively. The BI-RADS distribution was the same between AI-CAD and experts in malignant cases. In benign cases, AI-CAD categorized nine (50.0%) as C4A or C4B, whereas experts classified 13 (72.2%), indicating the potential to reduce the need for biopsy. Real-time AI-CAD is feasible for supporting detection during breast ultrasound scanning, with potential efficacy in aiding differential diagnosis and reducing the risk of unnecessary biopsies.</p>","PeriodicalId":15206,"journal":{"name":"Journal of Breast Cancer","volume":"28 3","pages":"206-214"},"PeriodicalIF":2.4000,"publicationDate":"2025-06-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12230290/pdf/","citationCount":"0","resultStr":"{\"title\":\"Efficacy of a Real-Time Artificial Intelligence Ultrasound System With Computer-Aided Detection and Diagnosis for Breast Cancer: A Feasibility Study.\",\"authors\":\"Jeeyeon Lee, Won Hwa Kim, Jaeil Kim, Hye Jung Kim, Joon Suk Moon, Byeongju Kang, Ho Yong Park, Fiona Tsui-Fen Cheng\",\"doi\":\"10.4048/jbc.2024.0303\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>Existing artificial intelligence (AI) breast ultrasound solutions have limitations owing to their non-real-time detection and server dependency. However, novel real-time AI solutions enable on-device detection and differential diagnosis, aiding immediate decision-making. This study evaluated the feasibility of real-time artificial intelligence-based computer-aided detection/diagnosis (AI-CAD) for breast ultrasound in a clinical setting and assessed its preliminary efficacy in comparison with expert evaluations. A feasibility study was conducted from August to December 2023 at a tertiary medical center in Taiwan using a real-time AI solution (CadAI-B for Breast cancer). AI-CAD runs on a tablet PC and streams the display output from the ultrasound vendor's device via HDMI or DVI. Real-time AI-CAD was evaluated for detection and diagnostic performance based on sensitivity, specificity, and area under the curve (AUC). The analysis included 33 patients with 14 malignancies, 17 benign lesions, and 2 normal cases; 30 (90.9%) underwent biopsy. AI-CAD successfully identified all malignancies in real-time. As AUCs were calculated using the malignancy score and Breast Imaging Reporting and Data System (BI-RADS), the overall diagnostic performances were 0.835 and 0.850, respectively. The per-patient sensitivity and specificity were 100.0% and 52.6%, respectively. The BI-RADS distribution was the same between AI-CAD and experts in malignant cases. In benign cases, AI-CAD categorized nine (50.0%) as C4A or C4B, whereas experts classified 13 (72.2%), indicating the potential to reduce the need for biopsy. 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Efficacy of a Real-Time Artificial Intelligence Ultrasound System With Computer-Aided Detection and Diagnosis for Breast Cancer: A Feasibility Study.
Existing artificial intelligence (AI) breast ultrasound solutions have limitations owing to their non-real-time detection and server dependency. However, novel real-time AI solutions enable on-device detection and differential diagnosis, aiding immediate decision-making. This study evaluated the feasibility of real-time artificial intelligence-based computer-aided detection/diagnosis (AI-CAD) for breast ultrasound in a clinical setting and assessed its preliminary efficacy in comparison with expert evaluations. A feasibility study was conducted from August to December 2023 at a tertiary medical center in Taiwan using a real-time AI solution (CadAI-B for Breast cancer). AI-CAD runs on a tablet PC and streams the display output from the ultrasound vendor's device via HDMI or DVI. Real-time AI-CAD was evaluated for detection and diagnostic performance based on sensitivity, specificity, and area under the curve (AUC). The analysis included 33 patients with 14 malignancies, 17 benign lesions, and 2 normal cases; 30 (90.9%) underwent biopsy. AI-CAD successfully identified all malignancies in real-time. As AUCs were calculated using the malignancy score and Breast Imaging Reporting and Data System (BI-RADS), the overall diagnostic performances were 0.835 and 0.850, respectively. The per-patient sensitivity and specificity were 100.0% and 52.6%, respectively. The BI-RADS distribution was the same between AI-CAD and experts in malignant cases. In benign cases, AI-CAD categorized nine (50.0%) as C4A or C4B, whereas experts classified 13 (72.2%), indicating the potential to reduce the need for biopsy. Real-time AI-CAD is feasible for supporting detection during breast ultrasound scanning, with potential efficacy in aiding differential diagnosis and reducing the risk of unnecessary biopsies.
期刊介绍:
The Journal of Breast Cancer (abbreviated as ''J Breast Cancer'') is the official journal of the Korean Breast Cancer Society, which is issued quarterly in the last day of March, June, September, and December each year since 1998. All the contents of the Journal is available online at the official journal website (http://ejbc.kr) under open access policy. The journal aims to provide a forum for the academic communication between medical doctors, basic science researchers, and health care professionals to be interested in breast cancer. To get this aim, we publish original investigations, review articles, brief communications including case reports, editorial opinions on the topics of importance to breast cancer, and welcome new research findings and epidemiological studies, especially when they contain a regional data to grab the international reader''s interest. Although the journal is mainly dealing with the issues of breast cancer, rare cases among benign breast diseases or evidence-based scientifically written articles providing useful information for clinical practice can be published as well.