医学
统计显著性
病变
活检
外科切除术
超声波
边距(机器学习)
统计分析
外科
显著性差异
放射科
计算机科学
内科学
数学
统计
机器学习
作者
Maen Farha,J.D. Simons,Jad Kfouri,Michelle Townsend-Day
出处
期刊:American Surgeon
[SAGE Publishing]
日期:2022-05-04
卷期号:89 (6): 2434-2438
被引量:10
标识
DOI:10.1177/00031348221096576
摘要
Background The standard localization of non-palpable breast masses is wire/needle localization (WL). Newer technologies have evolved, allowing more efficient scheduling and improving surgeon and patient experiences. These include Radioactive Seed, MagSeed®, and SAVI Scout® (SS). We adopted SS at our program in July of 2017. We are reporting our experience comparing SAVI Scout® with needle localization. Study Design This is a retrospective study comparing SS and wire localization techniques for the excision of both benign and malignant lesions. Chart reviews of localized patients between 7/1/2017 and 6/30/2019, recording the age of the patient, date of procedure, localization method, pathology of lesion postexcision, number and status of margins, guidance method (mammogram vs. ultrasound), specimen size, and distance of reflector from biopsy clip, were completed to compare these localization methods with the aim of asserting their equality. Results There were 48 wire and 64 SS localized excisions. Successful lesion excision was achieved in 100% of cases for both techniques. There were 1 SS and 4 WL re-excisions for margin clearance not reaching statistical significance. 51 additional margins were obtained in the SS cases compared to 36 margins in the WL cases without a statistically significant difference. Conclusions 1- Both SS and WL achieved 100% excision of targeted lesions 2- SS localization was successfully implemented, offering more convenience for patients and providers 3- More re-excisions in the WL group as compared to the SS group did not reach statistical significance and requires further investigation 4- A prospective controlled trial comparing the different localization techniques can address questions related to effectiveness, cost, patient and provider experiences.
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