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以组织病理学为参考标准,评估频谱多普勒指数和超声弹性成像对乳腺影像报告和数据系统3类乳腺病变恶性预测的诊断准确性。

Diagnostic Accuracy of Spectral Doppler Indices and Sonoelastography in Predicting Malignancy in Breast Imaging Reporting and Database System 3 Breast Lesions With Histopathology as the Reference Standard.

作者信息

Prabakaran Linnet, Aiyappan Senthil Kumar, Ramesh Sabari, Ramesh Ragitha, Kumaran Subhalakshmi

机构信息

Radiodiagnosis, Sri Ramaswamy Memorial Medical College Hospital and Research Centre, Chengalpattu, IND.

出版信息

Cureus. 2024 Nov 11;16(11):e73481. doi: 10.7759/cureus.73481. eCollection 2024 Nov.

Abstract

Introduction Breast cancer is a significant health concern in India, representing a large portion of all cancers affecting women and ranking as one of the most common cancers overall. Reliable diagnostic tools are essential for accurately predicting malignancy and reducing the need for unnecessary biopsies. A Breast Imaging Reporting and Database System (BI-RADS) 3 designation suggests a low likelihood of cancer, indicating that findings are likely benign. For these cases, short-term follow-up imaging is generally preferred over immediate biopsy as the probability of malignancy is minimal. This study evaluates the effectiveness of strain elastography, specifically the strain ratio, in predicting malignancy in BI-RADS 3 breast lesions in a cohort of 50 patients. Additionally, it examines the role of Doppler indices, including the Pulsatility Index (PI) and Resistance Index (RI). Histopathological analysis was used as the reference standard. Methods A descriptive cross-sectional study was conducted on 50 patients presenting with palpable breast lumps or abnormalities detected via ultrasonography or mammography. Conventional B-mode ultrasound examinations were performed on all the patients, and those with BI-RADS 3 lesions were identified. The Doppler technique was employed to calculate PI and RI values, followed by strain elastography to determine the strain ratio. Histopathological confirmation was performed for all patients. Results Histopathological analysis revealed that 92% (N=46) of the lesions were benign, while 8% (N=4) were malignant. For strain elastography, the sensitivity was 75%, specificity was 97.83%, positive predictive value (PPV) was 75%, negative predictive value (NPV) was 97.83%, and the diagnostic accuracy was 96%. For Doppler PI, the sensitivity was 75%, specificity was 95.65%, PPV was 60%, NPV was 97.78%, and the overall diagnostic accuracy was 94%. Similarly, for Doppler RI, the sensitivity was 75%, specificity was 95.65%, PPV was 60%, NPV was 97.78%, and the overall diagnostic accuracy was 94%. Conclusion B-mode ultrasound remains the first-line imaging investigation for evaluating breast masses. In BI-RADS 3 lesions, where the likelihood of malignancy is minimal, the combined use of strain elastography and Doppler PI and RI indices can serve as a valuable adjunct in predicting malignancy and reducing the need for unnecessary biopsies. Moreover, strain elastography demonstrates higher diagnostic accuracy compared to Doppler PI and RI.

摘要

引言

乳腺癌是印度一个重大的健康问题,在所有影响女性的癌症中占很大比例,是总体上最常见的癌症之一。可靠的诊断工具对于准确预测恶性肿瘤和减少不必要的活检需求至关重要。乳腺影像报告和数据系统(BI-RADS)3类诊断表明癌症可能性低,意味着检查结果可能为良性。对于这些病例,由于恶性可能性极小,短期随访成像通常比立即活检更可取。本研究评估了应变弹性成像,特别是应变率,在50例患者队列中预测BI-RADS 3类乳腺病变恶性肿瘤的有效性。此外,还研究了多普勒指数的作用,包括搏动指数(PI)和阻力指数(RI)。组织病理学分析用作参考标准。

方法

对50例出现可触及乳腺肿块或经超声或乳腺X线摄影检测到异常的患者进行了描述性横断面研究。对所有患者进行了传统B超检查,并识别出患有BI-RADS 3类病变的患者。采用多普勒技术计算PI和RI值,随后进行应变弹性成像以确定应变率。对所有患者进行了组织病理学确认。

结果

组织病理学分析显示,92%(N = 46)的病变为良性,而8%(N = 4)为恶性。对于应变弹性成像,敏感性为75%,特异性为97.83%,阳性预测值(PPV)为75%,阴性预测值(NPV)为97.83%,诊断准确性为96%。对于多普勒PI,敏感性为75%,特异性为95.65%,PPV为60%,NPV为97.78%,总体诊断准确性为94%。同样,对于多普勒RI,敏感性为75%,特异性为95.65%,PPV为60%,NPV为97.78%,总体诊断准确性为94%。

结论

B超仍然是评估乳腺肿块的一线成像检查方法。在恶性可能性极小的BI-RADS 3类病变中,应变弹性成像与多普勒PI和RI指数联合使用可作为预测恶性肿瘤和减少不必要活检需求的有价值辅助手段。此外,应变弹性成像显示出比多普勒PI和RI更高的诊断准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2640/11638018/f5fbf6b6a297/cureus-0016-00000073481-i01.jpg

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