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中华医学超声杂志(电子版) ›› 2020, Vol. 17 ›› Issue (08) : 748 -752. doi: 10.3877/cma.j.issn.1672-6448.2020.08.007

所属专题: 乳腺超声 文献

浅表器官超声影像学

S-Detect超声检查对乳腺病灶诊断价值的探索性研究
马洁玲1, 王心怡1, 张楠1, 秦王燕1, 常洪晶1, 廖盛日1, 霍苓,1   
  1. 1. 100142 北京大学肿瘤医院 北京市肿瘤防治研究所乳腺中心 恶性肿瘤发病机制及转化研究教育部重点实验室
  • 收稿日期:2020-06-11 出版日期:2020-08-01
  • 通信作者: 霍苓

Value of S-Detect in diagnosis of breast lesions

Ma Ma1, Wang Wang1, Zhang Zhang1, Qin Qin1, Chang Chang1, Liao Liao1, Huo Huo,1   

  1. 1. Key Laboratory of Carcinogenesis and Translational Research (Ministry of Education/Beijing), Center for Breast Diseases, Beijing Cancer Hospital, Beijing Institute for Cancer Reasearch, Beijing, 100142, China
  • Received:2020-06-11 Published:2020-08-01
  • Corresponding author: Huo Huo
引用本文:

马洁玲, 王心怡, 张楠, 秦王燕, 常洪晶, 廖盛日, 霍苓. S-Detect超声检查对乳腺病灶诊断价值的探索性研究[J]. 中华医学超声杂志(电子版), 2020, 17(08): 748-752.

Ma Ma, Wang Wang, Zhang Zhang, Qin Qin, Chang Chang, Liao Liao, Huo Huo. Value of S-Detect in diagnosis of breast lesions[J]. Chinese Journal of Medical Ultrasound (Electronic Edition), 2020, 17(08): 748-752.

目的

探讨S-Detectd的诊断效能及其临床应用价值。

方法

选取2019年4月至7月于北京大学肿瘤医院乳腺中心超声室接受超声诊断及S-Detect检查的患者378例,共计390个病灶进行回顾性分析。以组织病理诊断为金标准,应用诊断试验四格表分别计算超声医师及S-Detect对乳腺病灶良恶性诊断的敏感度、特异度、准确性、阳性预测值及阴性预测值,采用Kappa检验对S-Detect及超声医师与病理诊断结果的一致性进行分析;对S-Detect判断不确定的病灶进行假设判定,假设判定均为恶性为S-Detect 1、均为良性为S-Detect 2,并分别计算S-Detect 1与S-Detect2的诊断敏感度、特异度、准确性、阳性预测值及阴性预测值。

结果

病理结果提示,378例患者共计390个病灶中恶性病灶260个,良性病灶130个。S-Detect的诊断敏感度、特异度、阳性预测值、阴性预测值与准确性分别为94.6%、56.2%、81.2%、83.9%、81.8%。超声医师的诊断敏感度、特异度、阳性预测值、阴性预测值与准确性分别为100.0%、9.2%、71.0%、100.0%、69.7%。Kappa分析结果显示:S-Detect与病理诊断结果的一致性较超声医师与病理诊断结果的一致性好(Kappa值:0.553 vs 0.119,P<0.05)。将S-Detect判断不确定的69个病灶进行假设判定,结果显示,S-Detect 1的诊断敏感度、特异度、阳性预测值、阴性预测值和准确性分别为94.6%、56.2%、81.2%、83.9%、81.8%;S-Detect 2的诊断敏感度、特异度、阳性预测值、阴性预测值和准确性分别为79.6%、79.2%、88.5%、66.0%、79.5%。

结论

S-Detect技术对乳腺病灶具有一定的诊断价值,尤其对于良性病灶的诊断符合率优于超声医师,但在临床应用中仍存在部分病灶判断不明确等局限性,如何在临床中更加恰当地结合使用S-Detect还需要更深入的数据研究加以证实。

Objective

To assess the diagnostic efficiency and clinical application value of S-Detect in breast lesions.

Methods

A total of 378 patients with 390 breast lesions who underwent ultrasound and S-Detect examinations at the Ultrasound Department of the Center for Breast Diseases of Peking University Cancer Hospital (Beijing Cancer Hospital) from April to July 2019 were selected for this retrospective analysis. Taking histopathological diagnosis as the gold standard, the four-fold table method was used to calculate the sensitivity, specificity, accuracy, positive predictive value, and negative predictive value of ultrasound and S-Detect for the diagnosis of benign and malignant breast lesions. The Kappa test was used to examine the consistency of the results of ultrasound and S-Detect with the pathological diagnosis. Hypothetical judgments were made on the lesions with an uncertain diagnosis by S-Detect, in which those judged as malignant and benign lesions were designated as S-Detect 1 and S-Detect 2, respectively, and the diagnostic sensitivity, specificity, accuracy, positive predictive value, and negative predictive value for S-Detect 1 and S-Detect 2 were calculated.

Results

The pathological results showed that among the 390 lesions in the 378 patients, 260 were malignant lesions and 130 were benign lesions. The diagnostic sensitivity, specificity, positive predictive value, negative predictive value, and accuracy of S-Detect were 94.6%, 56.2%, 81.2%, 83.9%, and 81.8%, respectively; the corresponding values of ultrasound were 100.0%, 9.2%, 71.0%, 100.0%, and 69.7%. Kappa analysis showed that the consistency between S-Detect and pathological diagnosis results was better than that between ultrasound and pathological diagnosis results (Kappa value: 0.553 vs 0.119, P<0.05). Sixty-nine lesions with an uncertain diagnosis by S-Detect underwent hypothetical judgments. The results showed that the diagnostic sensitivity, specificity, positive predictive value, negative predictive value, and accuracy for S-Detect 1 were 94.6%, 56.2%, 81.2%, 83.9%, and 81.8%, respectively; the corresponding values for S-Detect 2 were 79.6%, 79.2%, 88.5%, 66.0%, and 79.5%.

Conclusion

S-Detect technology has appreciated diagnostic value for breast lesions; especially for benign lesions, the diagnostic performance is better than that of ultrasound. However, there are some limitations in clinical application such as unclear judgment of some lesions. How to use S-Detect more appropriately in clinical setting requires more in-depth research to confirm.

图1 左乳内侧病灶超声图像。图示病灶形状比较规则、边界较清晰,S-Detect判定病灶为良性,超声医师评估病灶为BI-RADS 4b,病理诊断结果为乳腺实性乳头状癌
表1 S-Detect、超声医师与组织病理诊断结果比较(个)
表2 S-Detect 1、S-Detect 2与组织病理诊断结果比较(个)
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