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一项旨在为 PET/CT 检测到的偶然乳腺病变提出诊断算法的初步研究:BI-RADS 词汇在 US 与 SUVmax 联合应用中的价值。

A preliminary study to propose a diagnostic algorithm for PET/CT-detected incidental breast lesions: application of BI-RADS lexicon for US in combination with SUVmax.

机构信息

Pediatric Respiratory Diseases Research Center, National Research Institute of Tuberculosis and Lung Diseases (NRITLD), Department of Radiology, Shahid Beheshti University of Medical Sciences, Daar-Abad, Niavaran Ave., 19575-154, Tehran, 1956944413, Iran.

Department of Nuclear Medicine, Vali-Asr Hospital, Tehran University of Medical Sciences, Tehran, Iran.

出版信息

Eur Radiol. 2019 Oct;29(10):5507-5516. doi: 10.1007/s00330-019-06106-x. Epub 2019 Mar 18.

Abstract

OBJECTIVES

To develop a diagnostic algorithm for positron emission tomography (PET)-detected incidental breast lesions using both breast imaging reporting and data system (BI-RADS) and maximum standardized uptake value (SUVmax) criteria.

METHODS

Fifty-six PET-detected incidental breast lesions from 51 patients, which were subsequently investigated by breast ultrasound within 1 month of the PET study, constituted the study cohort and they were finally verified by tissue diagnosis or a 2-year follow-up. Based on the maximum specificity with sensitivity > 60.0% and maximum sensitivity with specificity > 60.0%, two SUVmax cutoff values were calculated at 2 and 3.7. BI-RADS ≥ 4 was considered as highly suspicious for malignancy. The diagnostic accuracies were estimated for SUVmax levels above or below the cutoff points combined with the BI-RADS suspicion level.

RESULTS

Overall, 46 benign and 10 malignant lesions were studied. The diagnostic characteristics of SUVmax ≥ 2, SUVmax ≥ 3.7, and BI-RADS ≥ 4 were 80.0%, 60.0%, and 80.0% for sensitivity, 73.9%, 95.7%, and 92.7% for specificity, and 75.0%, 89.3%, and 90.2% for accuracy, respectively. When the SUVmax threshold was set at 2, combined with BI-RADS suspicion level, the sensitivity, specificity, and accuracy were 100.0%, 69.6%, and 75.0%, respectively. The results for SUVmax threshold set at 3.7 combined with BI-RADS were 90.0%, 91.3%, and 91.1% for the sensitivity, specificity, and accuracy, respectively. A diagnostic algorithm was accordingly generated.

CONCLUSION

The need for biopsy should be justified in low BI-RADS lesions presenting with high SUVmax at 3.7 or higher. The biopsy of patients with high B-IRADS and low SUVmax could be preserved.

KEY POINTS

• A diagnostic algorithm was developed for PET-detected incidental breast lesions using both BI-RADS and SUVmax criteria. • Diagnostic performance was calculated separately and conjunctively for SUVmax ≥ 2, SUVmax ≥ 3.7, and BI-RADS ≥ 4. • The need for biopsy can be justified in BI-RADS < 4 lesions with SUVmax ≥ 3.7. Lesions with BI-RADS < 4 and indeterminate SUVmax (2 < SUVmax < 3.7) benefit from a short-interval follow-up. BI-RADS < 4 lesions with SUVmax < 2 may confidently be scheduled for routine screening.

摘要

目的

利用乳腺影像报告和数据系统(BI-RADS)和最大标准化摄取值(SUVmax)标准,为正电子发射断层扫描(PET)检测到的偶然乳腺病变制定诊断算法。

方法

本研究纳入了 51 例患者的 56 个 PET 检测到的偶然乳腺病变,这些患者在 PET 研究后 1 个月内均接受了乳腺超声检查,最终通过组织诊断或 2 年随访得到证实。基于最大特异性(特异性 > 60.0%,同时灵敏度 > 60.0%)和最大灵敏度(特异性 > 60.0%,同时灵敏度 > 60.0%),计算了 SUVmax 截断值为 2 和 3.7。BI-RADS≥4 被认为高度怀疑恶性。评估了 SUVmax 水平高于或低于截断值结合 BI-RADS 可疑水平的诊断准确性。

结果

共有 46 例良性和 10 例恶性病变。SUVmax≥2、SUVmax≥3.7 和 BI-RADS≥4 的诊断特征分别为:敏感性 80.0%、60.0%和 80.0%,特异性 73.9%、95.7%和 92.7%,准确性 75.0%、89.3%和 90.2%。当 SUVmax 阈值设定为 2 时,结合 BI-RADS 可疑程度,敏感性、特异性和准确性分别为 100.0%、69.6%和 75.0%。当 SUVmax 阈值设定为 3.7 时,SUVmax 联合 BI-RADS 的结果分别为敏感性 90.0%、特异性 91.3%和准确性 91.1%。因此生成了一个诊断算法。

结论

对于 BI-RADS 较低但 SUVmax 较高(≥3.7)的病变,应合理进行活检。对于 BI-RADS 较高而 SUVmax 较低的患者,可以保留活检。

关键要点

  • 使用 BI-RADS 和 SUVmax 标准为 PET 检测到的偶然乳腺病变制定了诊断算法。

  • 分别和联合计算 SUVmax≥2、SUVmax≥3.7 和 BI-RADS≥4 的诊断性能。

  • BI-RADS<4 病变且 SUVmax≥3.7 时需要活检。BI-RADS<4 病变且 SUVmax 不确定(2<SUVmax<3.7)时受益于短期随访。BI-RADS<4 病变且 SUVmax<2 时可自信地安排常规筛查。

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